Publications
[
Bioinformatics]
[
Classification]
[
Control and Reinforcement]
[
Graphical Models]
[
Human Motor Control]
[
Independent Component Analysis]
[
Information Retrieval]
[
Kernel Methods]
[
Mixture Models]
[
Neural Networks]
[
Nonparametric Bayes]
[
Optimization]
[
Spectral Methods]
[
Speech and Language]
[
Systems]
[
Tutorials]
[
Variational Methods]
2008
-
The phylogenetic Indian buffet process: A non-exchangeable nonparametric
prior for latent features.
K. Miller, T. Griffiths and M. I. Jordan.
In Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Twenty-Fourth Conference, 2008.
-
An HDP-HMM for systems with state persistence.
E. Fox, E. Sudderth, M. I. Jordan, and A. Willsky.
Proceedings of the 25th International Conference on Machine
Learning (ICML), 2008.
-
An analysis of generative, discriminative, and pseudolikelihood
estimators. P. Liang and M. I. Jordan.
Proceedings of the 25th International Conference on Machine
Learning (ICML), 2008.
-
On divergences, surrogate loss functions and decentralized detection.
X. Nguyen, M. J. Wainwright and M. I. Jordan.
To appear, Annals of Statistics, 2008.
-
On the inference of ancestries in admixed populations.
S. Sankararaman, G. Kimmel, E. Halperin, and M. I. Jordan.
Genome Research, 18, 668-675, 2008.
-
A dual receptor cross-talk model of G protein-coupled signal transduction.
P. Flaherty, M. A. Radhakrishnan, T. Dinh, M. I. Jordan, and A. P. Arkin.
To appear, PLoS Computational Biology, 2008.
-
On optimal quantization rules for some sequential decision problems.
X. Nguyen, M. J. Wainwright, and M. I. Jordan.
To appear, IEEE Transactions on Information Theory, 2008.
-
Consistent probabilistic outputs for protein function prediction.
G. Obozinski, C. E. Grant, G. R. G. Lanckriet, M. I. Jordan, and W. W. Noble.
Genome Biology, 9, 2008.
-
Quantitative gene function assignment from genomic datasets in M. musculus.
L. Pena-Castillo, et al. Genome Biology, 9, 2008.
-
Feature selection methods for improving protein structure prediction
with Rosetta.
B. Blum, M. I. Jordan, D. Kim, R. Das, P. Bradley, and D. Baker.
In J. Platt, D. Koller, Y. Singer and A. McCallum (Eds.),
Advances in Neural Information Processing Systems (NIPS) 20, 2008.
-
Agreement-based learning.
P. Liang, D. Klein and M. I. Jordan.
In J. Platt, D. Koller, Y. Singer and A. McCallum (Eds.),
Advances in Neural Information Processing Systems (NIPS) 20, 2008.
-
Estimating divergence functionals and the likelihood ratio by
penalized convex risk minimization.
X. Nguyen, M. J. Wainwright and M. I. Jordan.
In J. Platt, D. Koller, Y. Singer and A. McCallum (Eds.),
Advances in Neural Information Processing Systems (NIPS) 20, 2008.
2007
-
A direct formulation for sparse PCA using semidefinite programming.
A. d'Aspremont, L. El Ghaoui, M. I. Jordan, and G. R. G. Lanckriet.
SIAM Review, 49, 434-448, 2007.
[Winner of the 2008 SIAM Optimization Prize].
[Software].
-
A randomization test for controlling population stratification in
whole-genome association studies.
G. Kimmel, M. I. Jordan, E. Halperin, R. Shamir, and R. Karp.
American Journal of Human Genetics, 81, 895-905, 2007.
-
Bayesian haplotype inference via the Dirichlet process.
E. P. Xing, M. I. Jordan and R. Sharan.
Journal of Computational Biology, 14, 267-284, 2007.
-
Hierarchical beta processes and the Indian buffet process.
R. Thibaux and M. I. Jordan.
Proceedings of the Conference on Artificial Intelligence
and Statistics (AISTATS), 2007.
-
Joint covariate selection for grouped classification.
G. Obozinski, B. Taskar, and M. I. Jordan.
Technical Report 734, Department of Statistics,
University of California, Berkeley, 2007.
-
Regression on manifolds using kernel dimension reduction.
J. Nilsson, F. Sha, and M. I. Jordan.
Proceedings of the 24th International Conference on Machine
Learning (ICML), 2007.
-
The infinite PCFG using hierarchical Dirichlet processes.
P. Liang, S. Petrov, M. I. Jordan, and D. Klein.
Empirical Methods in Natural Language Processing (EMNLP), 2007.
-
A permutation-augmented sampler for DP mixture models.
P. Liang, M. I. Jordan, and B. Taskar.
Proceedings of the 24th International Conference on Machine
Learning (ICML), 2007.
-
Nonparametric estimation of the likelihood ratio and divergence functionals.
X. Nguyen, M. J. Wainwright and M. I. Jordan.
International Symposium on Information Theory (ISIT),
Nice, France, 2007.
-
Learning multiscale representations of natural scenes using
Dirichlet processes.
J. J. Kivinen, E. B. Sudderth, and M. I. Jordan.
IEEE International Conference on Computer Vision (ICCV), 2007.
-
In-network PCA and anomaly detection.
L. Huang, X. Nguyen, M. Garofalakis, M. I. Jordan, A. Joseph, and N. Taft.
In B. Schoelkopf, J. Platt and T. Hofmann (Eds.),
Advances in Neural Information Processing Systems (NIPS) 19, 2007.
[Long version].
-
Communication-efficient online detection of network-wide anomalies.
L. Huang, X. Nguyen, M. Garofalakis, J. M. Hellerstein, M. I. Jordan,
A. Joseph, and N. Taft.
26th Annual IEEE Conference on Computer Communications (INFOCOM'07), 2007.
-
Image denoising with nonparametric hidden Markov trees.
J. J. Kivinen, E. B. Sudderth, and M. I. Jordan.
IEEE International Conference on Image Processing (ICIP), 2007.
-
Solving consensus and semi-supervised clustering problems using
nonnegative matrix factorization.
T. Li, C. Ding, and M. I. Jordan
IEEE International Conference on Data Mining (ICDM), 2007.
2006
-
Hierarchical Dirichlet processes.
Y. W. Teh, M. I. Jordan, M. J. Beal and D. M. Blei.
Journal of the American Statistical Association, 101, 1566-1581, 2006.
[Software].
-
Learning spectral clustering, with application to speech separation.
F. R. Bach and M. I. Jordan.
Journal of Machine Learning Research, 7, 1963-2001, 2006.
-
Convexity, classification, and risk bounds.
P. L. Bartlett, M. I. Jordan, and J. D. McAuliffe.
Journal of the American Statistical Association, 101, 138-156,
2006.
-
Log-determinant relaxation for approximate inference in discrete
Markov random fields.
M. J. Wainwright and M. I. Jordan.
IEEE Transactions on Signal Processing, 54, 2099-2109, 2006.
-
Nonparametric empirical Bayes for the Dirichlet process mixture model.
J. D. McAuliffe, D. M. Blei and M. I. Jordan.
Statistics and Computing, 16, 5-14, 2006.
-
Structured prediction, dual extragradient and Bregman projections.
B. Taskar, S. Lacoste-Julien and M. I. Jordan.
Journal of Machine Learning Research, 7, 1627-1653, 2006.
-
Mining the Caenorhabditis Genetic Center bibliography for genes
related to life span.
D. M. Blei, M. I. Jordan, and S. Mian.
BMC Bioinformatics, 7, 250-269, 2006.
-
Convex and semi-nonnegative matrix factorizations.
C. Ding, T. Li, and M. I. Jordan.
Technical Report 60428, Lawrence Berkeley National Laboratory, 2006.
-
Kernel dimension reduction in regression.
K. Fukumizu, F. R. Bach, and M. I. Jordan.
Technical Report 715, Department of Statistics,
University of California, Berkeley, 2006.
-
Bayesian multi-population haplotype inference via a hierarchical
Dirichlet process mixture.
E. P. Xing, K.-A. Song, M. I. Jordan, and Y. W. Teh.
Proceedings of the 23rd International Conference on Machine
Learning (ICML), 2006.
-
Statistical debugging: Simultaneous identification of multiple bugs.
A. Zheng, M. I. Jordan, B. Liblit, M. Nayur, and A. Aiken.
Proceedings of the 23rd International Conference on Machine
Learning (ICML), 2006.
-
A statistical graphical model for predicting protein molecular function.
B. Engelhardt, M. I. Jordan, and S. Brenner.
Proceedings of the 23rd International Conference on Machine
Learning (ICML), 2006.
-
Word alignment via quadratic assignment.
S. Lacoste-Julien, B. Taskar, D. Klein, and M. I. Jordan.
Proceedings of the North American Chapter of the Association
for Computational Linguistics Annual Meeting (HLT-NAACL), 2006.
-
Bayesian multicategory support vector machines.
Z. Zhang, and M. I. Jordan.
In Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Twenty-Second Conference, 2006.
-
On optimal quantization rules for sequential decision problems.
X. Nguyen, M. J. Wainwright and M. I. Jordan.
International Symposium on Information Theory (ISIT),
Seattle, WA, 2006.
[Long version].
-
Advanced tools for operators at Amazon.com.
P. Bodik, A. Fox, M. I. Jordan, D. Patterson, A. Banerjee,
R. Jagannathan, T. Su, S. Tenginakai, B. Turner, and J. Ingalls.
First Workshop on Hot Topics in Autonomic Computing (HotAC),
Dublin, Ireland, 2006.
-
Comment on 'Support vector machines with applications'.
P. L. Bartlett, M. I. Jordan, and J. D. McAuliffe.
Statistical Science, 21, 341-346, 2006.
-
Robust design of biological experiments.
P. Flaherty, M. I. Jordan and A. P. Arkin.
In Y. Weiss and B. Schoelkopf and J. Platt (Eds.),
Advances in Neural Information Processing Systems
(NIPS) 18, 2006.
-
Structured prediction via the extragradient method.
B. Taskar, S. Lacoste-Julien and M. I. Jordan.
In Y. Weiss and B. Schoelkopf and J. Platt (Eds.),
Advances in Neural Information Processing Systems
(NIPS) 18, 2006.
[Long version].
-
Divergences, surrogate loss functions and experimental design.
X. Nguyen, M. J. Wainwright and M. I. Jordan.
In Y. Weiss and B. Schoelkopf and J. Platt (Eds.),
Advances in Neural Information Processing Systems
(NIPS) 18, 2006,
[Long version].
2005
-
Dirichlet processes, Chinese restaurant processes and all that.
M. I. Jordan. Tutorial presentation at the NIPS Conference, 2005.
-
Subtree power analysis and species selection for comparative genomics.
J. D. McAuliffe, M. I. Jordan, and L. Pachter.
Proceedings of the National Academy of Sciences, 102, 7900-7905, 2005.
-
Variational inference for Dirichlet process mixtures.
D. M. Blei and M. I. Jordan.
Bayesian Analysis, 1, 121-144, 2005.
-
Protein function prediction by Bayesian phylogenomics.
B. E. Engelhardt, M. I. Jordan, K. E. Muratore, and S. E. Brenner.
PLoS Computational Biology, 1, 432-445, 2005.
-
Nonparametric decentralized detection using kernel methods.
X. Nguyen, M. J. Wainwright, and M. I. Jordan.
IEEE Transactions on Signal Processing, 53, 4053-4066, 2005.
-
Genome-wide requirements for resistance to functionally distinct
DNA-damaging agents.
L. William, R. P. St. Onge, M. Proctor, P. Flaherty, M. I. Jordan,
A. P. Arkin, R. W. Davis, C. Nislow, and G. Giaever.
PLoS Genetics, 1, 235-246, 2005.
-
A kernel-based learning approach to ad hoc sensor network localization.
X. Nguyen, M. I. Jordan, and B. Sinopoli.
ACM Transactions on Sensor Networks, 1, 134-152, 2005.
-
Sulfur and nitrogen limitation in Escherichia coli K12:
specific homeostatic responses.
P. Gyaneshwar, O. Paliy, J. McAuliffe, A. Jones, M. I. Jordan, and S. Kustu.
Journal of Bacteriology, 187, 1074-1090, 2005.
-
A latent variable model for chemogenomic profiling.
P. Flaherty, G. Giaever, J. Kumm, M. I. Jordan, and A. P. Arkin.
Bioinformatics, 21, 3286-3293, 2005.
-
Predictive low-rank decomposition for kernel methods.
F. R. Bach and M. I. Jordan.
Proceedings of the 22nd International Conference on Machine
Learning (ICML), 2005.
[Matlab code]
-
The DLR hierarchy of approximate inference.
M. Rosen-Zvi, M. I. Jordan, and A. Yuille.
In Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Twenty-First Conference, 2005.
-
A variational principle for graphical models.
M. J. Wainwright and M. I. Jordan.
New Directions in Statistical Signal Processing: From Systems to Brain.
Cambridge, MA: MIT Press, 2005.
-
Scalable statistical bug isolation.
B. Liblit, M. Naik, A. X. Zheng, A. Aiken, and M. I. Jordan.
ACM SIGPLAN Conference on Programming Language Design and
Implementation (PLDI), 2005.
[Software]
-
A probabilistic interpretation of canonical correlation analysis.
F. R. Bach and M. I. Jordan.
Technical Report 688, Department of Statistics,
University of California, Berkeley, 2005.
-
Extensions of the informative vector machine.
N. D. Lawrence, J. C. Platt, & M. I. Jordan.
In J. Winkler and N. D. Lawrence and M. Niranjan (Eds.),
Proceedings of the Sheffield Machine Learning Workshop,
Lecture Notes in Computer Science, New York: Springer, 2005.
-
Discriminative training of Hidden Markov models for multiple
pitch tracking.
F. R. Bach and M. I. Jordan.
Proceedings of the International Conference on Acoustics,
Speech and Signal Processing (ICASSP), 2005.
-
Multi-instrument musical transcription using a dynamic graphical model.
B. Vogel, M. I. Jordan and D. Wessel.
Proceedings of the International Conference on Acoustics,
Speech and Signal Processing (ICASSP), 2005.
-
Combining visualization and statistical analysis to improve
operator confidence and efficiency for failure detection
and localization.
P. Bodik, G. Friedman, L. Biewald, H. Levine, G. Candea,
K. Patel, G. Tolle, J. Hui, A. Fox, M. I. Jordan, and D. Patterson.
International Conference on Autonomic Computing (ICAC), 2005.
-
On information divergence measures, surrogate loss functions and
decentralized hypothesis testing.
X. Nguyen, M. J. Wainwright and M. I. Jordan.
Forty-second Annual Allerton Conference on Communication,
Control, and Computing, Urbana-Champaign, IL, 2005.
-
Gaussian processes and the null-category noise model.
N. D. Lawrence and M. I. Jordan.
In O. Chapelle, B. Schoelkopf & A. Zien (Eds),
Semi-Supervised Learning, Cambridge, MA: MIT Press, 2005.
-
Semiparametric latent factor models.
Y. W. Teh, M. Seeger, and M. I. Jordan.
Proceedings of the Conference on Artificial Intelligence
and Statistics (AISTATS), 2005.
-
Sharing clusters among related groups: Hierarchical Dirichlet processes.
Y. W. Teh, M. I. Jordan, M. J. Beal and D. M. Blei.
In L. Saul, Y. Weiss, and L. Bottou (Eds.),
Advances in Neural Information Processing Systems (NIPS) 17, 2005.
[Long version].
[Software]
-
Blind one-microphone speech separation: A spectral learning approach.
F. R. Bach and M. I. Jordan.
In L. Saul, Y. Weiss, and L. Bottou (Eds.),
Advances in Neural Information Processing Systems (NIPS) 17, 2005.
-
A direct formulation for sparse PCA using semidefinite programming.
A. d'Aspremont, L. El Ghaoui, M. I. Jordan, and G. R. G. Lanckriet.
In L. Saul, Y. Weiss, and L. Bottou (Eds.),
Advances in Neural Information Processing Systems (NIPS) 17, 2005.
-
Semi-supervised learning via Gaussian processes.
N. D. Lawrence and M. I. Jordan.
In L. Saul, Y. Weiss, and L. Bottou (Eds.),
Advances in Neural Information Processing Systems (NIPS) 17, 2005.
-
Computing regularization paths for learning multiple kernels.
F. R. Bach, R. Thibaux, and M. I. Jordan.
In L. Saul, Y. Weiss, and L. Bottou (Eds.),
Advances in Neural Information Processing Systems (NIPS) 17, 2005.
[Matlab code]
2004
-
Graphical models. M. I. Jordan.
Statistical Science (Special Issue on Bayesian Statistics),
19, 140-155, 2004.
-
Multiple-sequence functional annotation and the generalized hidden
Markov phylogeny.
J. D. McAuliffe, L. Pachter, and M. I. Jordan.
Bioinformatics, 20, 1850-1860, 2004.
-
Learning graphical models for stationary time series.
F. R. Bach and M. I. Jordan.
IEEE Transactions on Signal Processing, 52, 2189-2199, 2004.
-
Kalman filtering with intermittent observations.
B. Sinopoli, L. Schenato, M. Franceschetti, K. Poolla,
M. I. Jordan, and S. Sastry.
IEEE Transactions on Automatic Control, 49, 1453-1464, 2004.
-
Chemogenomic profiling: Identifying the functional interactions of
small molecules in yeast. G. Giaever, P. Flaherty, J. Kumm,
M. Proctor, D. F. Jaramillo, A. M. Chu, M. I. Jordan, A. P. Arkin,
and R. W. Davis.
Proceedings of the National Academy of Sciences, 3, 793-798, 2004.
-
A statistical framework for genomic data fusion.
G. R. G. Lanckriet, T. De Bie, N. Cristianini, M. I. Jordan,
and W. S. Noble. Bioinformatics, 20, 2626-2635, 2004.
-
Learning the kernel matrix with semidefinite programming.
G. R. G. Lanckriet, N. Cristianini, L. El Ghaoui, P. L. Bartlett, and M. I. Jordan.
Journal of Machine Learning Research, 5, 27-72, 2004.
-
Dimensionality reduction for supervised learning with reproducing kernel
Hilbert spaces.
K. Fukumizu, F. R. Bach, and M. I. Jordan.
Journal of Machine Learning Research, 5, 73-79, 2004.
-
Robust sparse hyperplane classifiers: application to uncertain
molecular profiling data.
C. Bhattacharyya, L. R. Grate, M. I. Jordan, L. El Ghaoui, and
Mian, I. S.
Journal of Computational Biology, 11, 1073-1089, 2004.
[Software]
-
Discussion of boosting.
P. L. Bartlett, M. I. Jordan, and J. D. McAuliffe.
Annals of Statistics, 32, 85-91, 2004.
-
LOGOS: A modular Bayesian model for de novo motif detection.
E. P. Xing, W. Wu, M. I. Jordan, and R. M. Karp.
Journal of Bioinformatics and Computational Biology, 2,
127-154, 2004.
-
Treewidth-based conditions for exactness of the Sherali-Adams
and Lasserre relaxations.
M. J. Wainwright and M. I. Jordan.
Technical Report 671, Department of Statistics,
University of California, Berkeley, 2004.
-
Multiple kernel learning, conic duality, and the SMO algorithm.
F. R. Bach, G. R. G. Lanckriet, and M. I. Jordan.
Proceedings of the 21st International Conference on Machine
Learning (ICML), 2004.
[Long version].
[Software].
-
Bayesian haplotype inference via the Dirichlet process.
E. P. Xing, R. Sharan, and M. I. Jordan.
Proceedings of the 21st International Conference on Machine
Learning (ICML), 2004.
-
Decentralized detection and classification using kernel methods.
X. Nguyen, M. J. Wainwright, and M. I. Jordan.
Proceedings of the 21st International Conference on Machine
Learning (ICML), 2004.
-
Variational methods for the Dirichlet process.
D. M. Blei and M. I. Jordan.
Proceedings of the 21st International Conference on Machine
Learning (ICML), 2004.
[Long version].
-
Sparse Gaussian process classification with multiple classes.
M. Seeger and M. I. Jordan.
Technical Report 661, Department of Statistics,
University of California, Berkeley, 2004.
-
Variational inference in graphical models: The view from the marginal
polytope. M. J. Wainwright and M. I. Jordan. Forty-first Annual
Allerton Conference on Communication, Control, and Computing,
Urbana-Champaign, IL, 2004.
-
Graph partition strategies for generalized mean field inference.
E. P. Xing, M. I. Jordan, and S. Russell.
In Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Twentieth Conference, 2004.
-
Kernel-based data fusion and its application to protein function prediction in yeast.
G. R. G. Lanckriet, M. Deng, N. Cristianini, M. I. Jordan, and W. S. Noble.
Pacific Symposium on Biocomputing (PSB), 2004.
[Supplementary information].
-
Combining statistical monitoring and predictable recovery for
self-management.
A. Fox, E. Kiciman, D. A. Patterson, R. H. Katz and M. I. Jordan.
ACM SIGSOFT Proceedings of the Workshop on Self-Managed Systems
(WOSS), 2004.
-
Public deployment of cooperative bug isolation.
B. Liblit, A. Aiken, A. X. Zheng, and M. I. Jordan.
Workshop on Remote Analysis and
Measurement of Software Systems (RAMSS), 2004.
-
Failure diagnosis using decision trees.
M. Chen, A. X. Zheng, J. Lloyd, M. I. Jordan, and E. Brewer.
International Conference on Autonomic Computing (ICAC), 2004.
-
Semidefinite relaxations for approximate inference on graphs with cycles.
M. J. Wainwright and M. I. Jordan.
In S. Thrun, L. Saul, and B. Schoelkopf (Eds.),
Advances in Neural Information Processing Systems (NIPS) 16,
(long version), 2004.
-
Learning spectral clustering.
F. R. Bach and M. I. Jordan.
In S. Thrun, L. Saul, and B. Schoelkopf (Eds.),
Advances in Neural Information Processing Systems (NIPS) 16,
(long version), 2004.
-
Hierarchical topic models and the nested Chinese restaurant process.
D. M. Blei, T. Griffiths, M. I. Jordan, and J. Tenenbaum.
In S. Thrun, L. Saul, and B. Schoelkopf (Eds.),
Advances in Neural Information Processing Systems (NIPS) 16, 2004.
-
Kernel dimensionality reduction for supervised learning.
K. Fukumizu, F. R. Bach, and M. I. Jordan.
In S. Thrun, L. Saul, and B. Schoelkopf (Eds.),
Advances in Neural Information Processing Systems (NIPS) 16, 2004.
-
Large margin classifiers: convex loss, low noise, and convergence rates.
P. L. Bartlett, M. I. Jordan, and J. D. McAuliffe.
In S. Thrun, L. Saul, and B. Schoelkopf (Eds.),
Advances in Neural Information Processing Systems (NIPS) 16, 2004.
-
On the concentration of expectation and approximate inference in layered
Bayesian networks. X. Nguyen and M. I. Jordan.
In S. Thrun, L. Saul, and B. Schoelkopf (Eds.),
Advances in Neural Information Processing Systems (NIPS) 16,
(long version), 2004.
-
Statistical debugging of sampled programs.
A. X. Zheng, M. I. Jordan, B. Liblit, and A. Aiken.
In S. Thrun, L. Saul, and B. Schoelkopf (Eds.),
Advances in Neural Information Processing Systems (NIPS) 16, 2004.
-
Autonomous helicopter flight via reinforcement learning.
A. Y. Ng, H. J. Kim, M. I. Jordan, and S. Sastry.
In S. Thrun, L. Saul, and B. Schoelkopf (Eds.),
Advances in Neural Information Processing Systems (NIPS) 16, 2004.
2003
-
Graphical models, exponential families, and variational inference.
M. J. Wainwright and M. I. Jordan.
Technical Report 649, Department of Statistics,
University of California, Berkeley, 2003.
-
Latent Dirichlet allocation.
D. M. Blei, A. Y. Ng, and M. I. Jordan.
Journal of Machine Learning Research, 3, 993-1022, 2003.
[C code].
-
Toward a protein profile of Escherichia coli: Comparison to its transcription
profile.
R. W. Corbin, O. Paliy, F. Yang, J. Shabanowitz, M. Platt, C. E. Lyons,
Jr., K. Root, J. D. McAuliffe, M. I. Jordan, S. Kustu, E. Soupene, and D. F. Hunt.
Proceedings of the National Academy of Sciences, 100, 9232-9237, 2003.
-
Beyond independent components: Trees and clusters.
F. R. Bach and M. I. Jordan.
Journal of Machine Learning Research, 4, 1205-1233, 2003.
[Matlab code]
-
Matching words and pictures.
K. Barnard, P. Duygulu, N. de Freitas, D. A. Forsyth, D. M. Blei, and M. I. Jordan.
Journal of Machine Learning Research, 3, 1107-1135, 2003.
-
Hierarchical Bayesian models for applications in information retrieval.
D. M. Blei, M. I. Jordan and A. Y. Ng.
In: J. M. Bernardo, M. Bayarri, J. O. Berger, A. P. Dawid, D. Heckerman,
A. F. M. Smith, and M. West (Eds.), Bayesian Statistics 7, 2003.
-
Simultaneous relevant feature identification and classification
in high-dimensional spaces: Application to molecular profiling data..
C. Bhattacharyya, L. R. Grate, A. Rizki, D. Radisky, F. J. Molina,
M. I. Jordan, M. J. Bissell, and I. S. Mian. Signal Processing,
83, 729-743, 2003.
-
An introduction to MCMC for machine learning.
C. Andrieu, N. de Freitas, A. Doucet and M. I. Jordan.
Machine Learning, 50, 5-43, 2003.
-
Modeling annotated data.
D. M. Blei and M. I. Jordan.
26th International Conference on Research and Development
in Information Retrieval (SIGIR), New York: ACM Press, 2003.
-
Bug isolation via remote program sampling.
B. Liblit, A. Aiken, A. X. Zheng, and M. I. Jordan.
ACM SIGPLAN 2003 Conference on Programming
Language Design and Implementation (PLDI), San Diego, 2003.
-
Kernel-based integration of genomic data using semidefinite programming.
G. R. G. Lanckriet, N. Cristianini, M. I. Jordan, and W. S. Noble.
In B. Schoelkopf, K. Tsuda and J-P. Vert (Eds.), Kernel Methods
in Computational Biology, Cambridge, MA: MIT Press, 2003.
-
On semidefinite relaxation for normalized k-cut and connections to spectral clustering.
E. P. Xing and M. I. Jordan.
Technical Report CSD-03-1265, Computer Science Division,
University of California, Berkeley, 2003.
-
Support vector machines for analog circuit performance representation.
F. De Bernardinis, M. I. Jordan, and A. L. Sangiovanni-Vincentelli.
Proceedings of the Design Automation Conference (DAC), 2003.
-
Robust novelty detection with single-class MPM.
G. R. G. Lanckriet, L. El Ghaoui, and M. I. Jordan.
In S. Becker, S. Thrun, and K. Obermayer (Eds.),
Advances in Neural Information Processing Systems (NIPS) 15, 2003.
-
A generalized mean field algorithm for variational inference in
exponential families.
E. P. Xing, M. I. Jordan, and S. Russell.
In C. Meek and U. Kjaerulff,
Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Eighteenth Conference, 2003.
-
Kernel independent component analysis.
F. R. Bach and M. I. Jordan. International Conference on Acoustics,
Speech, and Signal Processing (ICASSP), 2003,
[Long version].
[Matlab code]
-
Kalman filtering with intermittent observations.
B. Sinopoli, L. Schenato, M. Franceschetti, K. Poolla,
M. I. Jordan, and S. Sastry.
42nd IEEE Conference on Decision and Control (CDC), 2004.
-
Learning graphical models with Mercer kernels.
F. R. Bach and M. I. Jordan.
In S. Becker, S. Thrun, and K. Obermayer (Eds.),
Advances in Neural Information Processing Systems (NIPS) 15, 2003.
-
A minimal intervention principle for coordinated movement.
E. Todorov and M. I. Jordan.
In S. Becker, S. Thrun, and K. Obermayer (Eds.),
Advances in Neural Information Processing Systems (NIPS) 15, 2003.
-
Finding clusters in independent component analysis.
F. R. Bach and M. I. Jordan.
Fourth International Symposium on Independent Component Analysis
and Blind Signal Separation (ICA), 2003.
-
A hierarchical Bayesian Markovian model for motifs in biopolymer sequences.
E. P. Xing, M. I. Jordan, R. M. Karp and S. Russell.
In S. Becker, S. Thrun, and K. Obermayer (Eds.),
Advances in Neural Information Processing Systems (NIPS) 15, 2003.
-
Integrated analysis of transcript profiling and protein sequence data.
L. R. Grate, C. Bhattacharyya, M. I. Jordan, and I. S. Mian.
Mechanisms of Ageing and Development, 124, 109-114, 2003.
-
Distance metric learning, with application to clustering with side-information.
E. P. Xing, A. Y. Ng, M. I. Jordan and S. Russell.
In S. Becker, S. Thrun, and K. Obermayer (Eds.),
Advances in Neural Information Processing Systems (NIPS) 15, 2003.
-
Sampling user executions for bug isolation.
B. Liblit, A. Aiken, A. X. Zheng, and M. I. Jordan.
Workshop on Remote Analysis and
Measurement of Software Systems (RAMSS), 2003.
-
LOGOS: A modular Bayesian model for de novo motif detection.
E. P. Xing, W. Wu, M. I. Jordan, and R. M. Karp.
IEEE Computer Society Bioinformatics Conference (CSB), 2004.
2002
-
Kernel independent component analysis.
F. R. Bach and M. I. Jordan. Journal of Machine Learning Research, 3, 1-48, 2002.
[Matlab code]
-
Optimal feedback control as a theory of motor coordination.
E. Todorov and M. I. Jordan. Nature Neuroscience, 5, 1226-1235, 2002.
[Supplementary information].
[News and views].
-
A robust minimax approach to classification.
G. R. G. Lanckriet, L. El Ghaoui, C. Bhattacharyya, and M. I. Jordan.
Journal of Machine Learning Research, 3, 552-582, 2002.
[Matlab code]
-
Sensorimotor adaptation of speech I: Compensation and adaptation.
J. F. Houde and M. I. Jordan. Journal of Speech, Language,
and Hearing Research, 45, 239-262, 2002.
-
Graphical models: Probabilistic inference.
M. I. Jordan and Y. Weiss. In M. Arbib (Ed.),
The Handbook of Brain Theory and Neural Networks, 2nd edition.
Cambridge, MA: MIT Press, 2002.
-
Loopy belief propagation and Gibbs measures.
S. Tatikonda and M. I. Jordan.
In D. Koller and A. Darwiche (Eds)., Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Eighteenth Conference, 2002.
-
Tree-dependent component analysis.
F. R. Bach and M. I. Jordan.
In D. Koller and A. Darwiche (Eds)., Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Eighteenth Conference, 2002.
[Matlab code]
-
Random sampling of a continuous-time stochastic dynamical system.
M. Micheli and M. I. Jordan.
Proceedings of the Fifteenth International Symposium on Mathematical Theory
of Networks and Systems, 2002.
-
Learning the kernel matrix with semidefinite programming.
G. R. G. Lanckriet, P. L. Bartlett, N. Cristianini, L. El Ghaoui, and M. I. Jordan.
Machine Learning: Proceedings of the Nineteenth International Conference
(ICML),
San Mateo, CA: Morgan Kaufmann, 2002.
-
Thin junction trees.
F. R. Bach and M. I. Jordan.
In T. Dietterich, S. Becker and Z. Ghahramani (Eds.),
Advances in Neural Information Processing Systems (NIPS) 14, 2002.
-
On spectral clustering: Analysis and an algorithm.
A. Y. Ng, M. I. Jordan, and Y. Weiss.
In T. Dietterich, S. Becker and Z. Ghahramani
(Eds.), Advances in Neural Information Processing Systems (NIPS) 14, 2002.
-
Minimax probability machine.
G. R. G. Lanckriet, L. El Ghaoui, C. Bhattacharyya, and M. I. Jordan.
In T. Dietterich, S. Becker and Z. Ghahramani
(Eds.), Advances in Neural Information Processing Systems (NIPS) 14, 2002.
-
On discriminative vs. generative classifiers: A comparison of logistic
regression and naive Bayes.
A. Y. Ng and M. I. Jordan.
In T. Dietterich, S. Becker and Z. Ghahramani
(Eds.), Advances in Neural Information Processing Systems (NIPS) 14, 2002.
-
Latent Dirichlet allocation.
D. M. Blei, A. Y. Ng and M. I. Jordan.
In T. Dietterich, S. Becker and Z. Ghahramani
(Eds.), Advances in Neural Information Processing Systems (NIPS) 14, 2002,
[Long version],
[C code].
-
Simultaneous relevant feature identification and classification
in high-dimensional spaces.
L. R. Grate, C. Bhattacharyya, M. I. Jordan and I. S. Mian.
Workshop on Algorithms in Bioinformatics, 2002.
[matlab code],
[perl/lp_solve code].
-
Learning in modular and hierarchical systems.
M. I. Jordan and R. A. Jacobs. In M. Arbib (Ed.),
The Handbook of Brain Theory and Neural Networks, 2nd edition.
Cambridge, MA: MIT Press, 2002.
2001
-
Stable algorithms for link analysis.
A. Y. Ng, A. X. Zheng, and M. I. Jordan. Proceedings of the
24th International Conference on Research and Development
in Information Retrieval (SIGIR), New York, NY: ACM Press, 2001.
-
Efficient stepwise selection in decomposable models.
A. Deshpande, M. N. Garofalakis, and M. I. Jordan.
In J. Breese and D. Koller (Ed)., Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Seventeenth Conference, 2001.
-
Convergence rates of the Voting Gibbs classifier, with application
to Bayesian feature selection.
A. Y. Ng and M. I. Jordan. Machine Learning: Proceedings of the
Eighteenth International Conference, San Mateo, CA: Morgan Kaufmann, 2001.
-
Link analysis, eigenvectors, and stability.
A. Y. Ng, A. X. Zheng, and M. I. Jordan.
International Joint Conference on Artificial Intelligence (IJCAI), 2001.
-
Variational MCMC.
N. de Freitas, P. Højen-Sørensen, M. I. Jordan, and S. Russell.
In J. Breese and D. Koller (Ed)., Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Seventeenth Conference, 2001.
-
Feature selection for high-dimensional genomic microarray data.
E. P. Xing, M. I. Jordan, and R. M. Karp. Machine Learning: Proceedings
of the Eighteenth International Conference, San Mateo, CA: Morgan Kaufmann,
2001.
-
Discorsi sulle reti neurali e l'apprendimento.
C. Domeniconi and M. I. Jordan. Milan: Edizioni Franco Angeli, 2001.
2000
-
Learning with mixtures of trees.
M. Meila and M. I. Jordan.
Journal of Machine Learning Research, 1, 1-48, 2000.
-
Attractor dynamics for feedforward neural networks.
L. K. Saul and M. I. Jordan. Neural Computation, 12, 1313-1335, 2000.
-
Bayesian logistic regression: a variational approach.
T. S. Jaakkola and M. I. Jordan. Statistics and Computing, 10, 25-37, 2000.
-
Asymptotic convergence rate of the EM algorithm for gaussian mixtures.
J. Ma, L. Xu, and M. I. Jordan.
Neural Computation, 12, 2881-290, 2000.
-
PEGASUS: A policy search method for large MDPs and POMDPs.
A. Y. Ng and M. I. Jordan.
Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Sixteenth Conference, 2000.
-
Approximate inference algorithms for two-layer Bayesian networks.
A. Y. Ng and M. I. Jordan. Advances in Neural Information Processing
Systems (NIPS) 12, Cambridge MA: MIT Press, 2000.
1999
-
Mixed memory Markov models: Decomposing complex stochastic processes
as mixture of simpler ones.
L. K. Saul and M. I. Jordan.
Machine Learning, 37, 75-87, 1999.
-
Variational probabilistic inference and the QMR-DT network.
T. S. Jaakkola and M. I. Jordan. Journal of Artificial Intelligence
Research, 10, 291-322, 1999.
-
Are reaching movements planned to be straight and invariant in
the extrinsic space?
M. Desmurget, C. Prablanc, M. I. Jordan, and M. Jeannerod, M.
Quarterly Journal of Experimental Psychology, 52, 981-1020, 1999.
-
Loopy belief-propagation for approximate inference: An empirical study.
K. Murphy, Y. Weiss, and M. I. Jordan.
In K. B. Laskey and H. Prade (Eds.), Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Fifteenth Conference, San Mateo, CA: Morgan Kaufmann, 1999.
-
Learning from dyadic data.
T. Hofmann, J. Puzicha, and M. I. Jordan.
In Kearns, M. S., Solla, S. A., and Cohn, D. (Eds.),
Advances in Neural Information Processing Systems (NIPS) 11,
Cambridge MA: MIT Press, 1999.
-
An introduction to variational methods for graphical models.
M. I. Jordan, Z. Ghahramani, T. S. Jaakkola, and L. K. Saul.
In M. I. Jordan (Ed.), Learning in Graphical Models,
Cambridge: MIT Press, 1999.
-
Computational motor control.
M. I. Jordan and D. M. Wolpert.
In M. Gazzaniga (Ed.), The Cognitive Neurosciences, 2nd edition,
Cambridge: MIT Press, 1999.
-
Improving the mean field approximation via the use of mixture
distributions.
T. S. Jaakkola and M. I. Jordan.
In M. I. Jordan (Ed.), Learning in Graphical Models,
Cambridge: MIT Press, 1999.
-
Learning in graphical models.
M. I. Jordan (Ed.),
Cambridge MA: MIT Press, 1999.
-
Recurrent networks.
M. I. Jordan.
In R. A. Wilson and F. C. Keil (Eds.),
The MIT Encyclopedia of the Cognitive Sciences,
Cambridge, MA: MIT Press, 1999.
-
Neural networks.
M. I. Jordan.
In R. A. Wilson and F. C. Keil (Eds.),
The MIT Encyclopedia of the Cognitive Sciences,
Cambridge, MA: MIT Press, 1999.
-
Computational intelligence.
M. I. Jordan, and S. Russell
In R. A. Wilson and F. C. Keil (Eds.),
The MIT Encyclopedia of the Cognitive Sciences,
Cambridge, MA: MIT Press, 1999.
1998
-
Adaptation in speech production.
J. Houde and M. I. Jordan.
Science, 279, 1213-1216, 1998.
-
Smoothness maximization along a predefined path accurately
predicts the speed profiles of complex arm movements.
E. Todorov and M. I. Jordan.
Journal of Neurophysiology, 80, 696-714, 1998.
-
The role of inertial sensitivity in motor planning.
P. N. Sabes, M. I. Jordan and D. M. Wolpert.
Journal of Neuroscience, 18, 5948-5959, 1998.
-
Approximating posterior distributions in belief networks using mixtures.
C. M. Bishop, N. D. Lawrence, T. S. Jaakkola, and M. I. Jordan.
In Jordan, M. I., Kearns, M. J. and Solla, S. A. (Eds.),
Advances in Neural Information Processing Systems (NIPS) 10,
Cambridge, MA: MIT Press, 1998.
-
Estimating dependency structure as a hidden variable.
M. Meila and M. I. Jordan.
In Jordan, M. I., Kearns, M. J. and Solla, S. A. (Eds.),
Advances in Neural Information Processing Systems (NIPS) 10,
Cambridge, MA: MIT Press, 1998.
-
Advances in neural information processing systems 10,
M. I. Jordan, M. J. Kearns, and S. A. Solla, (Eds.),
Cambridge MA: MIT Press, 1998.
-
Adaptation in speech motor control.
J. F. Houde and M. I. Jordan.
In Jordan, M. I., Kearns, M. J. and Solla, S. A. (Eds.),
Advances in Neural Information Processing Systems (NIPS) 10,
Cambridge, MA: MIT Press, 1998.
-
Mixture representations for inference and learning in Boltzmann machines.
N. D. Lawrence, C. M. Bishop and M. I. Jordan.
In G. F. Cooper and S. Moral (Eds.), Uncertainty in Artificial
Intelligence (UAI), Proceedings of the Fourteenth Conference,
San Mateo, CA: Morgan Kaufman, 1998.
1997
-
Factorial hidden Markov models.
Z. Ghahramani and M. I. Jordan.
Machine Learning, 29, 245--273, 1997.
-
Obstacle avoidance and a perturbation sensitivity model for
motor planning.
P. N. Sabes and M. I. Jordan.
Journal of Neuroscience, 17, 7119-7128, 1997.
-
Probabilistic independence networks for hidden Markov probability
models.
P. Smyth, D. Heckerman, and M. I. Jordan.
Neural Computation, 9, 227-270, 1997.
-
Viewing the hand prior to movement improves accuracy of pointing performed
toward the unseen contralateral hand.
M. Desmurget, Y. Rossetti, M. I. Jordan, C. Meckler, and C. Prablanc.
Experimental Brain Research, 115, 180--186, 1997.
-
Constrained and unconstrained movements involve different control strategies.
M. Desmurget, M. I. Jordan, C. Prablanc, and M. Jeannerod.
Journal of Neurophysiology, 77, 1644--1650, 1997.
-
Optimal triangulation with continuous cost functions.
M. Meila and M. I. Jordan. In M. C. Mozer, M. I. Jordan,
and T. Petsche (Eds.), Advances in Neural Information
Processing Systems (NIPS) 9, Cambridge MA: MIT Press, 1997.
-
A variational principle for model-based interpolation.
L. K. Saul and M. I. Jordan.
In M. C. Mozer, M. I. Jordan, and T. Petsche
(Eds.), Advances in Neural Information Processing Systems (NIPS) 9, Cambridge MA:
MIT Press, 1997.
-
Recursive algorithms for approximating probabilities in graphical
models.
T. S. Jaakkola and M. I. Jordan.
In M. C. Mozer, M. I. Jordan, and T. Petsche
(Eds.), Advances in Neural Information Processing Systems (NIPS) 9, Cambridge MA:
MIT Press, 1997.
-
Hidden Markov decision trees.
M. I. Jordan, Z. Ghahramani,
and L. K. Saul. In M. C. Mozer, M. I. Jordan, and T. Petsche (Eds.),
Advances in Neural Information Processing Systems (NIPS) 9, Cambridge MA: MIT Press,
1997.
-
Neural networks.
M. I. Jordan and C. Bishop.
In Tucker, A. B. (Ed.), CRC Handbook of Computer Science,
Boca Raton, FL: CRC Press, 1997.
-
Computational models of sensorimotor organization.
Z. Ghahramani, D. M. Wolpert, and M. I. Jordan.
In P. Morasso and V. Sanguineti (Eds.),
Self-Organization Computational Maps and Motor Control,
Amsterdam: North-Holland, 1997.
-
Advances in neural information processing systems 9,
M. Mozer, M. I. Jordan, and T. Petsche, (Eds.),
Cambridge MA: MIT Press, 1997.
-
Mixture models for learning from incomplete data.
Z. Ghahramani and M. I. Jordan.
In Greiner, R., Petsche, T., and Hanson, S. J. (Eds.),
Computational Learning Theory and Natural Learning Systems,
Cambridge, MA: MIT Press, 1997.
-
Active learning with statistical models.
D. Cohn, Z. Ghahramani, and M. I. Jordan.
In Murray-Smith, R., and Johansen, T. A. (Eds.),
Multiple Model Approaches to Modelling and Control,
London: Taylor and Francis, 1997.
-
An objective function for belief net triangulation.
M. Meila and M. I. Jordan.
In D. Madigan and P. Smyth (Eds.),
Proceedings of the 1997 Conference on Artificial Intelligence and Statistics,
Ft. Lauderdale, FL, 1997.
-
Markov mixtures of experts.
M. Meila and M. I. Jordan.
In Murray-Smith, R., and Johansen, T. A. (Eds.),
Multiple Model Approaches to Modelling and Control,
London: Taylor and Francis, 1997.
-
Serial order: A parallel, distributed processing approach.
M. I. Jordan.
In J. W. Donahoe and V. P. Dorsel, (Eds.).
Neural-network Models of Cognition: Biobehavioral Foundations,
Amsterdam: Elsevier Science Press, 1997.
1996
-
Mean field theory for sigmoid belief networks.
L. K. Saul, T. Jaakkola, and M. I. Jordan.
Journal of Artificial Intelligence Research, 4, 61-76, 1996.
-
Computational aspects of motor control and motor learning.
M. I. Jordan.
In H. Heuer and S. Keele (Eds.), Handbook of Perception and Action:
Motor Skills, New York: Academic Press, 1996.
-
Fast learning by bounding likelihoods in sigmoid belief networks.
T. S. Jaakkola, L. K. Saul, and M. I. Jordan.
In D. S. Touretzky, M. C. Mozer, and M. E. Hasselmo (Eds.),
Advances in Neural Information Processing Systems (NIPS) 8,
Cambridge MA: MIT Press, 1996.
-
Reinforcement learning by probability matching.
P. N. Sabes and M. I. Jordan.
In D. S. Touretzky, M. C. Mozer, and M. E. Hasselmo (Eds.),
Advances in Neural Information Processing Systems (NIPS) 8,
Cambridge MA: MIT Press, 1996.
-
Active learning with statistical models.
D. Cohn, Z. Ghahramani, and M. I. Jordan.
Journal of Artificial Intelligence Research, 4, 129-145, 1996.
-
Computing upper and lower bounds on likelihoods in intractable
networks.
T. S. Jaakkola and M. I. Jordan.
In E. Horvitz (Ed.), Uncertainty in Artificial Intelligence (UAI),
Proceedings of the Twelth Conference,
Portland, Oregon, 1996.
-
Generalization to local remappings of the visuomotor coordinate
representation.
Z. Ghahramani, D. M. Wolpert, and M. I. Jordan.
Journal of Neuroscience, 16, 7085-7096, 1996.
-
Exploiting tractable substructures in intractable networks.
L. K. Saul and M. I. Jordan.
In D. Touretzky, M. Mozer, and M. Hasselmo (Eds.), Advances in Neural
Information Processing Systems (NIPS) 8, MIT Press, 1996.
-
On convergence properties of the EM Algorithm for Gaussian mixtures.
L. Xu and M. I. Jordan. Neural Computation, 8, 129-151, 1996.
-
Markov mixtures of experts.
M. Meila and M. I. Jordan.
In D. Touretzky, M. Mozer, and M. Hasselmo (Eds.), Advances in Neural
Information Processing Systems (NIPS) 8, MIT Press, 1996.
-
Local linear perceptrons for classification.
E. Alpaydin and M. I. Jordan.
IEEE Transactions on Neural Networks, 7, 788--792, 1996.
-
Factorial Hidden Markov models.
Z. Ghahramani and M. I. Jordan.
In D. Touretzky, M. Mozer, and M. Hasselmo (Eds.), Advances in Neural
Information Processing Systems (NIPS) 8, MIT Press, 1996.
1995
-
Boltzmann chains and hidden Markov Models.
L. K. Saul and M. I. Jordan. In G. Tesauro, D. S. Touretzky and
T. K. Leen, (Eds.), Advances in Neural Information Processing Systems (NIPS) 7,
MIT Press, 1995.
-
Reinforcement learning algorithm for partially observable Markov
decision problems.
T. S. Jaakkola, S. P. Singh, and M. I. Jordan.
In G. Tesauro, D. S. Touretzky and T. K. Leen, (Eds.),
Advances in Neural Information Processing Systems (NIPS) 7,
Cambridge, MA: MIT Press, 1995.
-
Are arm trajectories planned in kinematic or dynamic coordinates?
An adaptation study.
D. M. Wolpert, Z. Ghahramani, and M. I. Jordan.
Experimental Brain Research, 103, 460-470, 1995.
-
Learning in modular and hierarchical systems.
M. I. Jordan and R. A. Jacobs. In M. Arbib (Ed.),
The Handbook of Brain Theory and Neural Networks,
Cambridge, MA: MIT Press, 1995.
-
An internal forward model for sensorimotor integration.
D. M. Wolpert, Z. Ghahramani, and M. I. Jordan.
Science, 269, 1880--1882, 1995.
-
Reinforcement learning with soft state aggregation.
S. P. Singh, T. S. Jaakkola, and M. I. Jordan.
In G. Tesauro, D. S. Touretzky and T. K. Leen, (Eds.),
Advances in Neural Information Processing Systems (NIPS) 7,
Cambridge, MA: MIT Press, 1995.
-
Why the logistic function? A tutorial discussion on probabilities
and neural networks.
M. I. Jordan.
MIT Computational Cognitive Science Report 9503, August 1995.
-
Convergence results for the EM approach to mixtures of experts
architectures.
M. I. Jordan and L. Xu.
Neural Networks, 8, 1409-1431, 1995.
-
The organization of action sequences: Evidence from a relearning task.
M. I. Jordan.
Journal of Motor Behavior, 27, 179--192, 1995.
-
Adaptation in speech production to transformed auditory feedback.
J. Houde and M. I. Jordan.
Journal of the Acoustical Society of America, 97, 3243.
-
Computational structure of coordinate transformations: A generalization study.
Z. Ghahramani, D. M. Wolpert, and M. I. Jordan.
In G. Tesauro, D. S. Touretzky and T. K. Leen, (Eds.),
Advances in Neural Information Processing Systems (NIPS) 7,
Cambridge, MA: MIT Press, 1995.
-
Neural forward dynamic models in human motor control: Psychophysical evidence.
D. M. Wolpert, Z. Ghahramani, and M. I. Jordan.
In G. Tesauro, D. S. Touretzky and T. K. Leen, (Eds.),
Advances in Neural Information Processing Systems (NIPS) 7,
Cambridge, MA: MIT Press, 1995.
-
An alternative model for mixtures of experts.
L. Xu, M. I. Jordan, and G. E. Hinton.
In G. Tesauro, D. S. Touretzky and T. K. Leen, (Eds.),
Advances in Neural Information Processing Systems (NIPS) 7,
Cambridge, MA: MIT Press, 1995.
-
Active learning with statistical models.
D. Cohn, Z. Ghahramani, and M. I. Jordan.
In G. Tesauro, D. S. Touretzky and T. K. Leen, (Eds.),
Advances in Neural Information Processing Systems (NIPS) 7,
Cambridge, MA: MIT Press, 1995.
-
The moving basin: Effective action-search in adaptive control.
W. Fun and M. I. Jordan, M. I.
Proceedings of the World Conference on Neural Networks,
Washington, DC, 1995.
-
Goal-based speech motor control: A theoretical framework
and some preliminary data.
J. S. Perkell, M. L. Matthies, M. A. Svirsky, and M. I. Jordan.
In D. A. Robin, K. M. Yorkston, and D. R. Beukelman (Eds.),
Disorders of Motor Speech: Assessment, Treatment, and Clinical Characterization,
Baltimore, MD: Brookes Publishing Co, 1993.
1994
-
Hierarchical mixtures of experts and the EM algorithm.
M. I. Jordan and R. A. Jacobs. Neural Computation, 6, 181-214, 1994.
-
Learning in Boltzmann trees.
L. K. Saul and M. I. Jordan.
Neural Computation, 6, 1173-1183, 1994.
-
Learning without state estimation in partially observable Markovian decision
processes.
S. P. Singh, T. S. Jaakkola, and M. I. Jordan.
Machine Learning: Proceedings of the Eleventh International Conference,
San Mateo, CA: Morgan Kaufmann, 284--292, 1994.
-
Supervised learning from incomplete data via the EM approach.
Z. Ghahramani and M. I. Jordan.
In Cowan, J., Tesauro, G., and Alspector, J., (Eds.),
Advances in Neural Information Processing Systems 6,
San Mateo, CA: Morgan Kaufmann, 1994.
-
Perceptual distortion contributes to the curvature of human
reaching movements.
D. M. Wolpert, Z. Ghahramani, and M. I. Jordan.
Experimental Brain Research, 98, 153-156, 1994.
-
A statistical approach to decision tree modeling.
M. I. Jordan. In M. Warmuth (Ed.), Proceedings of the Seventh
Annual ACM Conference on Computational Learning Theory,
New York: ACM Press, 1994.
-
Learning from incomplete data.
Z. Ghahramani and M. I. Jordan.
MIT Center for Biological and Computational Learning Technical Report 108, 1994.
-
On the convergence of stochastic iterative dynamic programming algorithms.
T. Jaakkola, M. I. Jordan and S. Singh.
Neural Computation, 6, 1183--1190, 1994.
-
A model of the learning of arm trajectories from spatial targets.
M. I. Jordan, T. Flash, and Y. Arnon.
Journal of Cognitive Neuroscience, 6, 359--376, 1994.
-
Theoretical and experimental studies of convergence properties of
EM algorithm based on finite Gaussian mixtures.
L. Xu and M. I. Jordan, M. I.
Proceedings of the 1994 International Symposium on Artificial Neural Networks,
Tainan, Taiwan, pp. 380--385, 1994.
-
A statistical approach to decision tree modeling.
M. I. Jordan.
In M. Warmuth (Ed.), Proceedings of the Seventh
Annual ACM Conference on Computational Learning Theory,
New York: ACM Press, 1994.
pre-1994
-
Forward models: Supervised learning with a distal teacher.
M. I. Jordan and D. E. Rumelhart. Cognitive Science, 16, 307-354, 1992.
-
Adaptive mixtures of local experts.
R. A. Jacobs, M. I. Jordan, S. Nowlan, and G. E. Hinton.
Neural Computation, 3, 1-12, 1991.
-
Learning piecewise control strategies in a modular neural network architecture.
R. A. Jacobs and M. I. Jordan.
IEEE Transactions on Systems, Man, and Cybernetics, 23,
337--345, 1993.
-
Trading relations between tongue-body raising and lip rounding in
production of the vowel /u/: A pilot motor equivalence study.
J. S. Perkell, M. L. Matthies, M. A. Svirsky, and M. I. Jordan.
Journal of the Acoustical Society of America, 93, 2948--2961, 1993.
-
Supervised learning and divide-and-conquer: A statistical approach.
M. I. Jordan, and R. A. Jacobs.
In P. E. Utgoff, (Ed.), Machine Learning: Proceedings of
the Tenth International Workshop, San Mateo, CA: Morgan Kaufmann, 1993.
-
A dynamical model of priming and repetition blindness.
D. Bavelier and M. I. Jordan.
In Hanson, S. J., Cowan, J. D., and Giles, C. L., (Eds.),
Advances in Neural Information Processing Systems (NIPS) 5,
San Mateo, CA: Morgan Kaufmann, 1993.
-
EM learning of a generalized finite mixture model for combining
multiple classifiers.
L. Xu and M. I. Jordan.
Proceedings of the World Conference on Neural Networks,
Portland, OR, pp. 431--434, 1993.
-
The cascade neural network model and a speed-accuracy tradeoff of arm movement.
M. Hirayama, M. Kawato, and M. I. Jordan.
Journal of Motor Behavior, 25, 162--175, 1993.
-
Constrained supervised learning.
M. I. Jordan.
Journal of Mathematical Psychology, 36, 396--425, 1992.
-
Computational consequences of a bias towards short connections.
R. A. Jacobs and M. I. Jordan.
Journal of Cognitive Neuroscience, 4, 331--344, 1992.
-
Hierarchies of adaptive experts.
M. I. Jordan and R. A. Jacobs.
In J. Moody, S. Hanson, and R. Lippmann (Eds.),
Advances in Neural Information Processing Systems (NIPS) 4,
San Mateo, CA: Morgan Kaufmann, 1992.
-
Forward dynamics modeling of speech motor control using
physiological data.
M. Hirayama, E. Vatikiotis-Bateson, M. Kawato, and M. I. Jordan.
In J. Moody, S. Hanson, and R. Lippmann (Eds.),
Advances in Neural Information Processing Systems (NIPS) 4,
San Mateo, CA: Morgan Kaufmann, 1992.
-
Supervised learning and excess degrees of freedom.
Jordan, M. I.
In P. Mehra, and B. Wah, (Eds.),
Artificial Neural Networks: Concepts and Theory,
Los Alamitos, CA: IEEE Computer Society Press, 1992.
-
Optimal control: A foundation for intelligent control.
D. A. White and M. I. Jordan.
In D. A. White, and D. A. Sofge (Eds.), Handbook of Intelligent Control,
Amsterdam: Van Nostrand, 1992.
-
Constraints on underspecified target trajectories.
M. I. Jordan.
In P. Dario, G. Sandini, and P. Aebischer, (Eds.),
Robots and Biological Systems: Toward a New Bionics,
Heidelberg: Springer-Verlag, 1992.
-
A more biologically plausible learning network model for neural networks.
P. Mazzoni, R. Andersen, and M. I. Jordan.
Proceedings of the National Academy of Sciences, 88,
4433--4437, 1991.
-
Task decomposition through competition in a modular connectionist
architecture: The what and where vision tasks.
R. A. Jacobs, M. I. Jordan, and A. G. Barto.
Cognitive Science, 15, 219--250, 1991.
-
Internal world models and supervised learning.
M. I. Jordan, and D. E. Rumelhart.
In L. Birnbaum and G. Collins, (Eds.),
Machine Learning: Proceedings of the Eighth International
Workshop, San Mateo, CA: Morgan Kaufmann, pp. 70--75, 1991.
-
A competitive modular connectionist architecture.
R. A. Jacobs and M. I. Jordan.
In D. Touretzky (Ed.), Advances in Neural Information Processing Systems (NIPS) 3,
San Mateo, CA: Morgan Kaufmann, 1991.
-
Speech motor control model using electromyography.
M. Hirayama, E. Vatikiotis-Bateson, M. Kawato, and M. I. Jordan.
INCN Conference on Speech Communications, 39--46, 1991.
-
A modular connectionist architecture for learning piecewise control strategies.
R. A. Jacobs and M. I. Jordan.
Proceedings of the 1991 American Control Conference,
Boston, MA, pp. 343--351, 1991.
-
A more biologically plausible learning rule than backpropagation applied
to a network model of cortical area 7a.
P. Mazzoni, R. Andersen, and M. I. Jordan.
Cerebral Cortex, 1, 293--307, 1991.
-
Modularity, supervised learning, and unsupervised learning.
M. I. Jordan, and R. A. Jacobs.
In S. Davis (Ed.), Connectionism: Theory and practice,
Oxford: Oxford University Press, 1991.
-
A non-empiricist perspective on learning in layered networks.
M. I. Jordan.
Behavioral and Brain Sciences, 13, 497--498, 1990.
-
Simulation of vocalic gestures using an
articulatory model driven by a sequential neural network.
G. Bailly, M. I. Jordan, M. Mantakas, J-L. Schwartz, M. Bach,
and O. Olesen.
Journal of the Acoustical Society of America, 87:S105, 1990.
-
Learning to control an unstable system with forward modeling.
M. I. Jordan, and R. A. Jacobs.
In D. Touretzky (Ed.),
Advances in Neural Information Processing Systems (NIPS) 2,
San Mateo, CA: Morgan Kaufmann, pp. 324--331, 1990.
-
AR-P learning applied to a network model of cortical area 7a.
P. Mazzoni, R. Andersen, and M. I. Jordan.
Proceedings of the International Joint Conference On Neural Networks,
San Diego, CA, pp. 373--379, 1990.
-
Motor learning and the degrees of freedom problem.
M. I. Jordan.
Attention and Performance, XIII, 796--836, 1990.
-
Learning inverse mappings with forward models.
M. I. Jordan.
In K. S. Narendra (Ed.), Proceedings of the Sixth Yale Workshop
on Adaptive and Learning Systems, New York: Plenum Press, 1990.
-
Action.
M. I. Jordan, and D. A. Rosenbaum.
In M. I. Posner (Ed.), Foundations of Cognitive Science,
Cambridge, MA: MIT Press, 1989.
-
Gradient following without backpropagation in layered networks.
A. G. Barto and M. I. Jordan.
Proceedings of the IEEE First Annual International Conference on
Neural Networks,
New York: IEEE Publishing Services, 1987.
-
An introduction to linear algebra in parallel, distributed processing.
M. I. Jordan.
In D. E. Rumelhart and J. L. McClelland, (Eds.),
Parallel Distributed Processing: Explorations in the Microstructure of Cognition,
Cambridge, MA: MIT Press, 1986.
-
Attractor dynamics and parallelism in a connectionist sequential machine.
Jordan, M. I.
Proceedings of the Eighth Annual Conference of the Cognitive Science Society,
Englewood Cliffs, NJ: Erlbaum, pp. 531--546. [Reprinted in IEEE Tutorials
Series, New York: IEEE Publishing Services, 1990], 1986.
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