| 2009 | ||
|---|---|---|
| 98 | Manuel Garber, Mitchell Guttman, Michele E. Clamp, Michael C. Zody, Nir Friedman, Xiaohui Xie: Identifying novel constrained elements by exploiting biased substitution patterns. Bioinformatics 25(12): (2009) | |
| 2008 | ||
| 97 | Moran Yassour, Tommy Kaplan, Ariel Jaimovich, Nir Friedman: Nucleosome positioning from tiling microarray data. ISMB 2008: 139-146 | |
| 96 | Tal El-Hay, Nir Friedman, Raz Kupferman: Gibbs Sampling in Factorized Continuous-Time Markov Processes. UAI 2008: 169-178 | |
| 2007 | ||
| 95 | Ilan Wapinski, Avi Pfeffer, Nir Friedman, Aviv Regev: Automatic genome-wide reconstruction of phylogenetic gene trees. ISMB/ECCB (Supplement of Bioinformatics) 2007: 549-558 | |
| 94 | Matan Ninio, Eyal Privman, Tal Pupko, Nir Friedman: Phylogeny reconstruction: increasing the accuracy of pairwise distance estimation using Bayesian inference of evolutionary rates. Bioinformatics 23(2): 136-141 (2007) | |
| 2006 | ||
| 93 | Tal El-Hay, Nir Friedman, Daphne Koller, Raz Kupferman: Continuous Time Markov Networks. UAI 2006 | |
| 92 | Nir Friedman, Raz Kupferman: Dimension Reduction in Singularly Perturbed Continuous-Time Bayesian Networks. UAI 2006 | |
| 91 | Ariel Jaimovich, Gal Elidan, Hanah Margalit, Nir Friedman: Towards an Integrated Protein-Protein Interaction Network: A Relational Markov Network Approach. Journal of Computational Biology 13(2): 145-164 (2006) | |
| 90 | Noam Slonim, Nir Friedman, Naftali Tishby: Multivariate Information Bottleneck. Neural Computation 18(8): 1739-1789 (2006) | |
| 2005 | ||
| 89 | Itay Mayrose, Nir Friedman, Tal Pupko: A Gamma mixture model better accounts for among site rate heterogeneity. ECCB/JBI 2005: 158 | |
| 88 | Ariel Jaimovich, Gal Elidan, Hanah Margalit, Nir Friedman: Towards an Integrated Protein-Protein Interaction Network. RECOMB 2005: 14-30 | |
| 87 | Tommy Kaplan, Nir Friedman, Hanah Margalit: Predicting Transcription Factor Binding Sites Using Structural Knowledge. RECOMB 2005: 522-537 | |
| 86 | Yoseph Barash, Gal Elidan, Tommy Kaplan, Nir Friedman: Y. Barash, G. Elidan, T. Kaplan, , N. Friedman. Bioinformatics 21(5): 596-600 (2005) | |
| 85 | Eran Segal, Dana Pe'er, Aviv Regev, Daphne Koller, Nir Friedman: Learning Module Networks. Journal of Machine Learning Research 6: 557-588 (2005) | |
| 84 | Gal Elidan, Nir Friedman: Learning Hidden Variable Networks: The Information Bottleneck Approach. Journal of Machine Learning Research 6: 81-127 (2005) | |
| 2004 | ||
| 83 | Iftach Nachman, Aviv Regev, Nir Friedman: Inferring quantitative models of regulatory networks from expression data. ISMB/ECCB (Supplement of Bioinformatics) 2004: 248-256 | |
| 82 | Iftach Nachman, Gal Elidan, Nir Friedman: "Ideal Parent" Structure Learning for Continuous Variable Networks. UAI 2004: 400-409 | |
| 81 | Yoseph Barash, Elinor Dehan, Meir Krupsky, Wilbur Franklin, Marc Geraci, Nir Friedman, Naftali Kaminski: Comparative analysis of algorithms for signal quantitation from oligonucleotide microarrays. Bioinformatics 20(6): 839-846 (2004) | |
| 80 | Gill Bejerano, Nir Friedman, Naftali Tishby: Efficient Exact p-Value Computation for Small Sample, Sparse, and Surprising Categorical Data. Journal of Computational Biology 11(5): 867-886 (2004) | |
| 2003 | ||
| 79 | Nir Friedman: Probabilistic models for identifying regulation networks. ECCB 2003: 57 | |
| 78 | Yoseph Barash, Gal Elidan, Nir Friedman, Tommy Kaplan: Modeling dependencies in protein-DNA binding sites. RECOMB 2003: 28-37 | |
| 77 | Gal Elidan, Nir Friedman: The Information Bottleneck EM Algorithm. UAI 2003: 200-208 | |
| 76 | Eran Segal, Dana Pe'er, Aviv Regev, Daphne Koller, Nir Friedman: Learning Module Networks. UAI 2003: 525-534 | |
| 75 | Nir Friedman, Joseph Y. Halpern: Modeling Belief in Dynamic Systems, Part I: Foundations CoRR cs.AI/0307070: (2003) | |
| 74 | Nir Friedman, Joseph Y. Halpern: Modeling Belief in Dynamic Systems, Part II: Revisions and Update CoRR cs.AI/0307071: (2003) | |
| 73 | Nir Friedman, Daphne Koller: Being Bayesian About Network Structure. A Bayesian Approach to Structure Discovery in Bayesian Networks. Machine Learning 50(1-2): 95-125 (2003) | |
| 2002 | ||
| 72 | Adnan Darwiche, Nir Friedman: UAI '02, Proceedings of the 18th Conference in Uncertainty in Artificial Intelligence, University of Alberta, Edmonton, Alberta, Canada, August 1-4, 2002 Morgan Kaufmann 2002 | |
| 71 | Gal Elidan, Matan Ninio, Nir Friedman, Dale Shuurmans: Data Perturbation for Escaping Local Maxima in Learning. AAAI/IAAI 2002: 132-139 | |
| 70 | Eran Segal, Yoseph Barash, Itamar Simon, Nir Friedman, Daphne Koller: From promoter sequence to expression: a probabilistic framework. RECOMB 2002: 263-272 | |
| 69 | Noam Slonim, Nir Friedman, Naftali Tishby: Unsupervised document classification using sequential information maximization. SIGIR 2002: 129-136 | |
| 68 | Shai Shalev-Shwartz, Shlomo Dubnov, Nir Friedman, Yoram Singer: Robust temporal and spectral modeling for query By melody. SIGIR 2002: 331-338 | |
| 67 | Tal Pupko, Itsik Pe'er, Masami Hasegawa, Dan Graur, Nir Friedman: A branch-and-bound algorithm for the inference of ancestral amino-acid sequences when the replacement rate varies among sites: Application to the evolution of five gene families. Bioinformatics 18(8): 1116-1123 (2002) | |
| 66 | Yoseph Barash, Nir Friedman: Context-Specific Bayesian Clustering for Gene Expression Data. Journal of Computational Biology 9(2): 169-191 (2002) | |
| 65 | Nir Friedman, Matan Ninio, Itsik Pe'er, Tal Pupko: A Structural EM Algorithm for Phylogenetic Inference. Journal of Computational Biology 9(2): 331-353 (2002) | |
| 64 | Lise Getoor, Nir Friedman, Daphne Koller, Benjamin Taskar: Learning Probabilistic Models of Link Structure. Journal of Machine Learning Research 3: 679-707 (2002) | |
| 2001 | ||
| 63 | Lise Getoor, Nir Friedman, Daphne Koller, Benjamin Taskar: Learning Probabilistic Models of Relational Structure. ICML 2001: 170-177 | |
| 62 | Dana Pe'er, Aviv Regev, Gal Elidan, Nir Friedman: Inferring subnetworks from perturbed expression profiles. ISMB (Supplement of Bioinformatics) 2001: 215-224 | |
| 61 | Eran Segal, Benjamin Taskar, Audrey Gasch, Nir Friedman, Daphne Koller: Rich probabilistic models for gene expression. ISMB (Supplement of Bioinformatics) 2001: 243-252 | |
| 60 | Noam Slonim, Nir Friedman, Naftali Tishby: Agglomerative Multivariate Information Bottleneck. NIPS 2001: 929-936 | |
| 59 | Yoseph Barash, Nir Friedman: Context-specific Bayesian clustering for gene expression data. RECOMB 2001: 12-21 | |
| 58 | Nir Friedman, Matan Ninio, Itsik Pe'er, Tal Pupko: A structural EM algorithm for phylogenetic inference. RECOMB 2001: 132-140 | |
| 57 | Amir Ben-Dor, Nir Friedman, Zohar Yakhini: Class discovery in gene expression data. RECOMB 2001: 31-38 | |
| 56 | Tal El-Hay, Nir Friedman: Incorporating Expressive Graphical Models in VariationalApproximations: Chain-graphs and Hidden Variables. UAI 2001: 136-143 | |
| 55 | Gal Elidan, Nir Friedman: Learning the Dimensionality of Hidden Variables. UAI 2001: 144-151 | |
| 54 | Nir Friedman, Ori Mosenzon, Noam Slonim, Naftali Tishby: Multivariate Information Bottleneck. UAI 2001: 152-161 | |
| 53 | Yoseph Barash, Gill Bejerano, Nir Friedman: A Simple Hyper-Geometric Approach for Discovering Putative Transcription Factor Binding Sites. WABI 2001: 278-293 | |
| 52 | Ronen I. Brafman, Nir Friedman: On decision-theoretic foundations for defaults. Artif. Intell. 133(1-2): 1-33 (2001) | |
| 51 | Nir Friedman, Joseph Y. Halpern: Belief Revision: A Critique CoRR cs.AI/0103020: (2001) | |
| 50 | Nir Friedman, Joseph Y. Halpern: Plausibility measures and default reasoning. J. ACM 48(4): 648-685 (2001) | |
| 2000 | ||
| 49 | Gal Elidan, Noam Lotner, Nir Friedman, Daphne Koller: Discovering Hidden Variables: A Structure-Based Approach. NIPS 2000: 479-485 | |
| 48 | Nir Friedman, Michal Linial, Iftach Nachman, Dana Pe'er: Using Bayesian networks to analyze expression data. RECOMB 2000: 127-135 | |
| 47 | Amir Ben-Dor, Laurakay Bruhn, Nir Friedman, Iftach Nachman, Michèl Schummer, Zohar Yakhini: Tissue classification with gene expression profiles. RECOMB 2000: 54-64 | |
| 46 | Nir Friedman, Dan Geiger, Noam Lotner: Likelihood Computations Using Value Abstraction. UAI 2000: 192-200 | |
| 45 | Nir Friedman, Daphne Koller: Being Bayesian about Network Structure. UAI 2000: 201-210 | |
| 44 | Nir Friedman, Iftach Nachman: Gaussian Process Networks. UAI 2000: 211-219 | |
| 43 | Nir Friedman, Joseph Y. Halpern, Daphne Koller: First-order conditional logic for default reasoning revisited. ACM Trans. Comput. Log. 1(2): 175-207 (2000) | |
| 42 | Amir Ben-Dor, Laurakay Bruhn, Nir Friedman, Iftach Nachman, Michèl Schummer, Zohar Yakhini: Tissue Classification with Gene Expression Profiles. Journal of Computational Biology 7(3-4): 559-583 (2000) | |
| 41 | Nir Friedman, Michal Linial, Iftach Nachman, Dana Pe'er: Using Bayesian Networks to Analyze Expression Data. Journal of Computational Biology 7(3-4): 601-620 (2000) | |
| 1999 | ||
| 40 | Nir Friedman, Lise Getoor, Daphne Koller, Avi Pfeffer: Learning Probabilistic Relational Models. IJCAI 1999: 1300-1309 | |
| 39 | Joseph Y. Halpern, Nir Friedman: Plausibility Measures and Default Reasoning: An Overview. LICS 1999: 130-135 | |
| 38 | Richard Dearden, Nir Friedman, David Andre: Model based Bayesian Exploration. UAI 1999: 150-159 | |
| 37 | Nir Friedman, Moisés Goldszmidt, Abraham Wyner: Data Analysis with Bayesian Networks: A Bootstrap Approach. UAI 1999: 196-205 | |
| 36 | Nir Friedman, Iftach Nachman, Dana Pe'er: Learning Bayesian Network Structure from Massive Datasets: The "Sparse Candidate" Algorithm. UAI 1999: 206-215 | |
| 35 | Xavier Boyen, Nir Friedman, Daphne Koller: Discovering the Hidden Structure of Complex Dynamic Systems. UAI 1999: 91-100 | |
| 34 | Nir Friedman, Joseph Y. Halpern: Modeling Belief in Dynamic Systems, Part II: Revision and Update CoRR cs.AI/9903016: (1999) | |
| 33 | Nir Friedman, Joseph Y. Halpern: Modeling Belief in Dynamic Systems, Part II: Revision and Update. J. Artif. Intell. Res. (JAIR) 10: 117-167 (1999) | |
| 32 | Nir Friedman, Joseph Y. Halpern: Belief Revision: A Critique. Journal of Logic, Language and Information 8(4): 401-420 (1999) | |
| 1998 | ||
| 31 | Craig Boutilier, Nir Friedman, Joseph Y. Halpern: Belief Revision with Unreliable Observations. AAAI/IAAI 1998: 127-134 | |
| 30 | Nir Friedman, Daphne Koller, Avi Pfeffer: Structured Representation of Complex Stochastic Systems. AAAI/IAAI 1998: 157-164 | |
| 29 | Richard Dearden, Nir Friedman, Stuart J. Russell: Bayesian Q-Learning. AAAI/IAAI 1998: 761-768 | |
| 28 | Nir Friedman, Moisés Goldszmidt, Thomas J. Lee: Bayesian Network Classification with Continuous Attributes: Getting the Best of Both Discretization and Parametric Fitting. ICML 1998: 179-187 | |
| 27 | Nir Friedman, Yoram Singer: Efficient Bayesian Parameter Estimation in Large Discrete Domains. NIPS 1998: 417-423 | |
| 26 | Nir Friedman: The Bayesian Structural EM Algorithm. UAI 1998: 129-138 | |
| 25 | Nir Friedman, Kevin P. Murphy, Stuart J. Russell: Learning the Structure of Dynamic Probabilistic Networks. UAI 1998: 139-147 | |
| 24 | Nir Friedman, Joseph Y. Halpern, Daphne Koller: First-Order Conditional Logic Revisited CoRR cs.AI/9808005: (1998) | |
| 23 | Nir Friedman, Joseph Y. Halpern: Plausibility Measures and Default Reasoning CoRR cs.AI/9808007: (1998) | |
| 1997 | ||
| 22 | Nir Friedman: Learning Belief Networks in the Presence of Missing Values and Hidden Variables. ICML 1997: 125-133 | |
| 21 | Nir Friedman, Moisés Goldszmidt, David Heckerman, Stuart J. Russell: Challenge: What is the Impact of Bayesian Networks on Learning? IJCAI (1) 1997: 10-15 | |
| 20 | David Andre, Nir Friedman, Ronald Parr: Generalized Prioritized Sweeping. NIPS 1997 | |
| 19 | Nir Friedman, Moisés Goldszmidt: Sequential Update of Bayesian Network Structure. UAI 1997: 165-174 | |
| 18 | Nir Friedman, Stuart J. Russell: Image Segmentation in Video Sequences: A Probabilistic Approach. UAI 1997: 175-181 | |
| 17 | Nir Friedman, Joseph Y. Halpern: Modeling Belief in Dynamic Systems, Part I: Foundations. Artif. Intell. 95(2): 257-316 (1997) | |
| 16 | Nir Friedman, Dan Geiger, Moisés Goldszmidt: Bayesian Network Classifiers. Machine Learning 29(2-3): 131-163 (1997) | |
| 1996 | ||
| 15 | Nir Friedman, Moisés Goldszmidt: Building Classifiers Using Bayesian Networks. AAAI/IAAI, Vol. 2 1996: 1277-1284 | |
| 14 | Nir Friedman, Joseph Y. Halpern: Plausibility Measures and Default Reasoning. AAAI/IAAI, Vol. 2 1996: 1297-1304 | |
| 13 | Nir Friedman, Joseph Y. Halpern, Daphne Koller: First-Order Conditional Logic Revisited. AAAI/IAAI, Vol. 2 1996: 1305-1312 | |
| 12 | Nir Friedman, Moisés Goldszmidt: Discretizing Continuous Attributes While Learning Bayesian Networks. ICML 1996: 157-165 | |
| 11 | Nir Friedman, Joseph Y. Halpern: Belief Revision: A Critique. KR 1996: 421-431 | |
| 10 | Craig Boutilier, Nir Friedman, Moisés Goldszmidt, Daphne Koller: Context-Specific Independence in Bayesian Networks. UAI 1996: 115-123 | |
| 9 | Nir Friedman, Moisés Goldszmidt: Learning Bayesian Networks with Local Structure. UAI 1996: 252-262 | |
| 8 | Nir Friedman, Joseph Y. Halpern: A Qualitative Markov Assumption and Its Implications for Belief Change. UAI 1996: 263-273 | |
| 7 | Nir Friedman, Zohar Yakhini: On the Sample Complexity of Learning Bayesian Networks. UAI 1996: 274-282 | |
| 1995 | ||
| 6 | Ronen I. Brafman, Nir Friedman: On Decision-Theoretic Foundations for Defaults. IJCAI 1995: 1458-1465 | |
| 5 | Nir Friedman, Joseph Y. Halpern: Plausibility Measures: A User's Guide. UAI 1995: 175-184 | |
| 1994 | ||
| 4 | Nir Friedman, Joseph Y. Halpern: Conditional Logics of Belief Change. AAAI 1994: 915-921 | |
| 3 | Nir Friedman, Joseph Y. Halpern: A Knowledge-Based Framework for Belief Change, Part II: Revision and Update. KR 1994: 190-201 | |
| 2 | Nir Friedman, Joseph Y. Halpern: On the Complexity of Conditional Logics. KR 1994: 202-213 | |
| 1 | Nir Friedman, Joseph Y. Halpern: A Knowledge-Based Framework for Belief change, Part I: Foundations. TARK 1994: 44-64 | |