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Tommi Jaakkola Vis

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*2008
70EEDavid Sontag, Amir Globerson, Tommi Jaakkola: Clusters and Coarse Partitions in LP Relaxations. NIPS 2008: 1537-1544
69EEDavid Sontag, Talya Meltzer, Amir Globerson, Tommi Jaakkola, Yair Weiss: Tightening LP Relaxations for MAP using Message Passing. UAI 2008: 503-510
2007
68EEAmir Globerson, Tommi Jaakkola: Fixing Max-Product: Convergent Message Passing Algorithms for MAP LP-Relaxations. NIPS 2007
67EEDavid Sontag, Tommi Jaakkola: New Outer Bounds on the Marginal Polytope. NIPS 2007
2006
66EEYuan (Alan) Qi, Patrycja E. Missiuro, Ashish Kapoor, Craig P. Hunter, Tommi Jaakkola, David K. Gifford, Hui Ge: Semi-supervised analysis of gene expression profiles for lineage-specific development in the Caenorhabditis elegans embryo. ISMB (Supplement of Bioinformatics) 2006: 417-423
65EELuis Pérez-Breva, Luis E. Ortiz, Chen-Hsiang Yeang, Tommi Jaakkola: Game Theoretic Algorithms for Protein-DNA binding. NIPS 2006: 1081-1088
64EEYuan (Alan) Qi, Tommi Jaakkola: Parameter Expanded Variational Bayesian Methods. NIPS 2006: 1097-1104
63EEAmir Globerson, Tommi Jaakkola: Approximate inference using planar graph decomposition. NIPS 2006: 473-480
62EEChen-Hsiang Yeang, Tommi Jaakkola: Modeling the Combinatorial Functions of Multiple Transcription Factors. Journal of Computational Biology 13(2): 463-480 (2006)
61EEMarina Meila, Tommi Jaakkola: Tractable Bayesian learning of tree belief networks. Statistics and Computing 16(1): 77-92 (2006)
2005
60EEChen-Hsiang Yeang, Tommi Jaakkola: Modeling the Combinatorial Functions of Multiple Transcription Factors. RECOMB 2005: 506-521
59EEJason D. M. Rennie, Tommi Jaakkola: Using term informativeness for named entity detection. SIGIR 2005: 353-360
58EEMartin J. Wainwright, Tommi Jaakkola, Alan S. Willsky: MAP estimation via agreement on (hyper)trees: Message-passing and linear programming CoRR abs/cs/0508070: (2005)
57EEMartin J. Wainwright, Tommi Jaakkola, Alan S. Willsky: MAP estimation via agreement on trees: message-passing and linear programming. IEEE Transactions on Information Theory 51(11): 3697-3717 (2005)
56EEMartin J. Wainwright, Tommi Jaakkola, Alan S. Willsky: A new class of upper bounds on the log partition function. IEEE Transactions on Information Theory 51(7): 2313-2335 (2005)
55EEChen-Hsiang Yeang, Tommi Jaakkola: Time Series Analysis of Gene Expression and Location Data. International Journal on Artificial Intelligence Tools 14(5): 755-770 (2005)
2004
54EEKaren Sachs, Omar D. Perez, Dana Pe'er, Garry P. Nolan, David K. Gifford, Tommi Jaakkola, Douglas A. Lauffenburger: Analysis of Signaling Pathways in Human T-Cells Using Bayesian Network Modeling of Single Cell Data. CSB 2004: 644
53EEHarald Steck, Tommi Jaakkola: Predictive Discretization During Model Selection. DAGM-Symposium 2004: 1-8
52EEAdrian Corduneanu, Tommi Jaakkola: Distributed Information Regularization on Graphs. NIPS 2004
51EENathan Srebro, Noga Alon, Tommi Jaakkola: Generalization Error Bounds for Collaborative Prediction with Low-Rank Matrices. NIPS 2004
50EENathan Srebro, Jason D. M. Rennie, Tommi Jaakkola: Maximum-Margin Matrix Factorization. NIPS 2004
49EEChen-Hsiang Yeang, Trey Ideker, Tommi Jaakkola: Physical Network Models. Journal of Computational Biology 11(2/3): 243-262 (2004)
48EEMartin J. Wainwright, Tommi Jaakkola, Alan S. Willsky: Tree consistency and bounds on the performance of the max-product algorithm and its generalizations. Statistics and Computing 14(2): 143-166 (2004)
2003
47EEChen-Hsiang Yeang, Tommi Jaakkola: Time Series Analysis of Gene Expression and Location Data. BIBE 2003: 305-312
46 Nathan Srebro, Tommi Jaakkola: Weighted Low-Rank Approximations. ICML 2003: 720-727
45EEHarald Steck, Tommi Jaakkola: Bias-Corrected Bootstrap and Model Uncertainty. NIPS 2003
44EENathan Srebro, Tommi Jaakkola: Linear Dependent Dimensionality Reduction. NIPS 2003
43EEClaire Monteleoni, Tommi Jaakkola: Online Learning of Non-stationary Sequences. NIPS 2003
42EEChen-Hsiang Yeang, Tommi Jaakkola: Physical network models and multi-source data integration. RECOMB 2003: 312-321
41 Adrian Corduneanu, Tommi Jaakkola: On Information Regularization. UAI 2003: 151-158
40 Ziv Bar-Joseph, Erik D. Demaine, David K. Gifford, Nathan Srebro, Angèle M. Hamel, Tommi Jaakkola: K-ary Clustering with Optimal Leaf Ordering for Gene Expression Data. Bioinformatics 19(9): 1070-1078 (2003)
39 Martin J. Wainwright, Tommi Jaakkola, Alan S. Willsky: Tree-based reparameterization framework for analysis of sum-product and related algorithms. IEEE Transactions on Information Theory 49(5): 1120-1146 (2003)
38EEZiv Bar-Joseph, Georg Gerber, David K. Gifford, Tommi Jaakkola, Itamar Simon: Continuous Representations of Time-Series Gene Expression Data. Journal of Computational Biology 10(3/4): 341-356 (2003)
2002
37EEMartin Szummer, Tommi Jaakkola: Information Regularization with Partially Labeled Data. NIPS 2002: 1025-1032
36EEHarald Steck, Tommi Jaakkola: On the Dirichlet Prior and Bayesian Regularization. NIPS 2002: 697-704
35EEMartin J. Wainwright, Tommi Jaakkola, Alan S. Willsky: Exact MAP Estimates by (Hyper)tree Agreement. NIPS 2002: 809-816
34EEAlexander J. Hartemink, David K. Gifford, Tommi Jaakkola, Richard A. Young: Combining Location and Expression Data for Principled Discovery of Genetic Regulatory Network Models. Pacific Symposium on Biocomputing 2002: 437-449
33EEZiv Bar-Joseph, Georg Gerber, David K. Gifford, Tommi Jaakkola, Itamar Simon: A new approach to analyzing gene expression time series data. RECOMB 2002: 39-48
32 Adrian Corduneanu, Tommi Jaakkola: Continuation Methods for Mixing Heterogenous Sources. UAI 2002: 111-118
31 Harald Steck, Tommi Jaakkola: Unsupervised Active Learning in Large Domains. UAI 2002: 469-476
30 Martin J. Wainwright, Tommi Jaakkola, Alan S. Willsky: A New Class of upper Bounds on the Log Partition Function. UAI 2002: 536-543
29EEZiv Bar-Joseph, Erik D. Demaine, David K. Gifford, Angèle M. Hamel, Tommi Jaakkola, Nathan Srebro: K-ary Clustering with Optimal Leaf Ordering for Gene Expression Data. WABI 2002: 506-520
28EEAlexander J. Hartemink, David K. Gifford, Tommi Jaakkola, Richard A. Young: Bayesian Methods for Elucidating Genetic Regulatory Networks. IEEE Intelligent Systems 17(2): 37-43 (2002)
2001
27 Ziv Bar-Joseph, David K. Gifford, Tommi Jaakkola: Fast optimal leaf ordering for hierarchical clustering. ISMB (Supplement of Bioinformatics) 2001: 22-29
26EEMartin J. Wainwright, Tommi Jaakkola, Alan S. Willsky: Tree-based reparameterization for approximate inference on loopy graphs. NIPS 2001: 1001-1008
25EETommi Jaakkola, Hava T. Siegelmann: Active Information Retrieval. NIPS 2001: 777-784
24EEMartin Szummer, Tommi Jaakkola: Partially labeled classification with Markov random walks. NIPS 2001: 945-952
23EEAlexander J. Hartemink, David K. Gifford, Tommi Jaakkola, Richard A. Young: Using Graphical Models and Genomic Expression Data to Statistically Validate Models of Genetic Regulatory Networks. Pacific Symposium on Biocomputing 2001: 422-433
2000
22 Brendan J. Frey, Relu Patrascu, Tommi Jaakkola, Jodi Moran: Sequentially Fitting ``Inclusive'' Trees for Inference in Noisy-OR Networks. NIPS 2000: 493-499
21 Martin Szummer, Tommi Jaakkola: Kernel Expansions with Unlabeled Examples. NIPS 2000: 626-632
20EETony Jebara, Tommi Jaakkola: Feature Selection and Dualities in Maximum Entropy Discrimination. UAI 2000: 291-300
19EEMarina Meila, Tommi Jaakkola: Tractable Bayesian Learning of Tree Belief Networks. UAI 2000: 380-388
18 Tommi Jaakkola, Mark Diekhans, David Haussler: A Discriminative Framework for Detecting Remote Protein Homologies. Journal of Computational Biology 7(1-2): 95-114 (2000)
17 Satinder P. Singh, Tommi Jaakkola, Michael L. Littman, Csaba Szepesvári: Convergence Results for Single-Step On-Policy Reinforcement-Learning Algorithms. Machine Learning 38(3): 287-308 (2000)
1999
16 Tommi Jaakkola, Mark Diekhans, David Haussler: Using the Fisher Kernel Method to Detect Remote Protein Homologies. ISMB 1999: 149-158
15EETommi Jaakkola, Marina Meila, Tony Jebara: Maximum Entropy Discrimination. NIPS 1999: 470-476
14EETommi Jaakkola, Michael I. Jordan: Variational Probabilistic Inference and the QMR-DT Network. J. Artif. Intell. Res. (JAIR) 10: 291-322 (1999)
13 Michael I. Jordan, Zoubin Ghahramani, Tommi Jaakkola, Lawrence K. Saul: An Introduction to Variational Methods for Graphical Models. Machine Learning 37(2): 183-233 (1999)
1998
12EETommi Jaakkola, David Haussler: Exploiting Generative Models in Discriminative Classifiers. NIPS 1998: 487-493
1997
11 Christopher M. Bishop, Neil D. Lawrence, Tommi Jaakkola, Michael I. Jordan: Approximating Posterior Distributions in Belief Networks Using Mixtures. NIPS 1997
1996
10EETommi Jaakkola, Michael I. Jordan: Recursive Algorithms for Approximating Probabilities in Graphical Models. NIPS 1996: 487-493
9EETommi Jaakkola, Michael I. Jordan: Computing upper and lower bounds on likelihoods in intractable networks. UAI 1996: 340-348
8EELawrence K. Saul, Tommi Jaakkola, Michael I. Jordan: Mean Field Theory for Sigmoid Belief Networks CoRR cs.AI/9603102: (1996)
7 Lawrence K. Saul, Tommi Jaakkola, Michael I. Jordan: Mean Field Theory for Sigmoid Belief Networks. J. Artif. Intell. Res. (JAIR) 4: 61-76 (1996)
1995
6EETommi Jaakkola, Lawrence K. Saul, Michael I. Jordan: Fast Learning by Bounding Likelihoods in Sigmoid Type Belief Networks. NIPS 1995: 528-534
1994
5 Satinder P. Singh, Tommi Jaakkola, Michael I. Jordan: Learning Without State-Estimation in Partially Observable Markovian Decision Processes. ICML 1994: 284-292
4EETommi Jaakkola, Satinder P. Singh, Michael I. Jordan: Reinforcement Learning Algorithm for Partially Observable Markov Decision Problems. NIPS 1994: 345-352
3EESatinder P. Singh, Tommi Jaakkola, Michael I. Jordan: Reinforcement Learning with Soft State Aggregation. NIPS 1994: 361-368
2EETommi Jaakkola, Michael I. Jordan, Satinder P. Singh: On the Convergence of Stochastic Iterative Dynamic Programming Algorithms. Neural Computation 6(6): 1185-1201 (1994)
1993
1EETommi Jaakkola, Michael I. Jordan, Satinder P. Singh: Convergence of Stochastic Iterative Dynamic Programming Algorithms. NIPS 1993: 703-710

Coauthor Index

1Noga Alon [51]
2Ziv Bar-Joseph [27] [29] [33] [38] [40]
3Christopher M. Bishop [11]
4Adrian Corduneanu [32] [41] [52]
5Erik D. Demaine [29] [40]
6Mark Diekhans [16] [18]
7Brendan J. Frey [22]
8Hui Ge [66]
9Georg Gerber [33] [38]
10Zoubin Ghahramani [13]
11David K. Gifford [23] [27] [28] [29] [33] [34] [38] [40] [54] [66]
12Amir Globerson [63] [68] [69] [70]
13Angèle M. Hamel [29] [40]
14Alexander J. Hartemink [23] [28] [34]
15David Haussler [12] [16] [18]
16Craig P. Hunter [66]
17Trey Ideker [49]
18Tony Jebara [15] [20]
19Michael I. Jordan [1] [2] [3] [4] [5] [6] [7] [8] [9] [10] [11] [13] [14]
20Ashish Kapoor [66]
21Douglas A. Lauffenburger [54]
22Neil D. Lawrence [11]
23Michael L. Littman [17]
24Marina Meila [15] [19] [61]
25Talya Meltzer [69]
26Patrycja E. Missiuro [66]
27Claire Monteleoni [43]
28Jodi Moran [22]
29Garry P. Nolan [54]
30Luis E. Ortiz [65]
31Relu Patrascu [22]
32Dana Pe'er [54]
33Omar D. Perez [54]
34Luis Pérez-Breva [65]
35Yuan (Alan) Qi [64] [66]
36Jason D. M. Rennie [50] [59]
37Karen Sachs [54]
38Lawrence K. Saul [6] [7] [8] [13]
39Hava T. Siegelmann [25]
40Itamar Simon [33] [38]
41Satinder P. Singh [1] [2] [3] [4] [5] [17]
42David Sontag [67] [69] [70]
43Nathan Srebro [29] [40] [44] [46] [50] [51]
44Harald Steck [31] [36] [45] [53]
45Csaba Szepesvári [17]
46Martin Szummer [21] [24] [37]
47Martin J. Wainwright [26] [30] [35] [39] [48] [56] [57] [58]
48Yair Weiss [69]
49Alan S. Willsky [26] [30] [35] [39] [48] [56] [57] [58]
50Chen-Hsiang Yeang [42] [47] [49] [55] [60] [62] [65]
51Richard A. Young [23] [28] [34]

Colors in the list of coauthors

Copyright © Tue Nov 3 08:52:44 2009 by Michael Ley (ley@uni-trier.de)