Accepted Papers of ICML 2004

Please refer to papers in this volume as:
Russ Greiner, Dale Schuurmans (Eds.) Proceedings of the 21st International Machine Learning Conference, ACM Press, 2004
A Comparative Study on Methods for Reducing Myopia of Hill-Climbing Search in Multirelational Learning
[Abstract][Paper]
Lourdes Pena Castillo - Otto-von-Guericke-University Magdeburg
Stefan Wrobel - Fraunhofer AIS and University Bonn
Active Learning of Label Ranking Functions
[Abstract][Paper]
Klaus Brinker - University of Paderborn
Active Learning Using Pre-clustering
[Abstract][Paper]
Hieu Nguyen - University of Amsterdam
Arnold Smeulders - University of Amsterdam
Adaptive Cognitive Orthotics: Combining Reinforcement Learning and Constraint-Based Temporal Reasoning
[Abstract][Paper]
Matthew Rudary - University of Michigan
Satinder Singh - University of Michigan
Martha Pollack - University of Michigan
A Fast Iterative Algorithm for Fisher Discriminant using Heterogeneous Kernels
[Abstract][Paper]
Glenn Fung - CAD, Siemens Medical Solutions USA
Murat Dundar - CAD, Siemens Medical Solutions USA
Jinbo Bi - CAD, Siemens Medical Solutions USA
Bharat Rao - CAD, Siemens Medical Solutions USA
A Graphical Model for Protein Secondary Structure Prediction
[Abstract][Paper]
Wei Chu - Gatsby Computational Neuroscience Unit, University College London
Zoubin Ghahramani - Gatsby Computational Neuroscience Unit, University College London
David Wild - Keck Graduate Institute of Applied Life Sciences
A Hierarchical Method for Multi-Class Support Vector Machines
[Abstract][Paper]
Volkan Vural - Northeastern University
Jennifer Dy - Northeastern University
A Kernel View of the Dimensionality Reduction of Manifolds
[Abstract][Paper]
Jihun Ham - University of Pennsylvania
Daniel Lee - University of Pennsylvania
Sebastian Mika - Fraunhofer FIRST.IDA
Bernhard Schoelkopf - Max-Planck-Institut fuer biologische Kybernetik
A Maximum Entropy Approach to Species Distribution Modeling
[Abstract][Paper]
Steven Phillips - AT&T Labs - Research
Miroslav Dudik - Princeton University
Robert Schapire - Princeton University
A MFoM Learning Approach to Robust Multiclass Multi-Label Text Categorization
[Abstract][Paper]
sheng Gao - Institute for Infocomm Research, Singapore
Wen Wu - Language Technologies Institute, School of Computer Science, Carnegie Mellon University, USA
Chin - School of Electrical and Computer Engineering, Georgia Institute of Technology, USA
Tat - School of Computing, National University of Singapore
A Monte Carlo Analysis of Ensemble Classification
[Abstract][Paper]
Roberto Esposito - Università di Torino
Lorenza Saitta - Università del Piemonte Orientale
A Multiplicative Up-Propagation Algorithm
[Abstract][Paper]
Jong - POSTECH
Seungjin Choi - POSTECH
Jong - POSTECH
A Needle in a Haystack: Local One-Class Optimization
[Abstract][Paper]
Koby Crammer - Hebrew University
Gal Chechik - Stanford University
An Information Theoretic Analysis of Maximum Likelihood Mixture Estimation for Exponential Families
[Abstract][Paper]
Arindam Banerjee - University of Texas at Austin
Inderjit Dhillon - University of Texas at Austin
Joydeep Ghosh - University of Texas at Austin
Srujana Merugu - University of Texas at Austin
A Pitfall and Solution in Multi-Class Feature Selection for Text Classification
[Abstract][Paper]
George Forman - Hewlett-Packard Labs
Apprenticeship Learning by Inverse Reinforcement Learning
[Abstract][Paper]
Pieter Abbeel - Stanford University
Andrew Ng - Stanford University
Approximate Inference by Markov Chains on Union Spaces
[Abstract][Paper]
Max Welling - University of California Irvine
Michal Rosen - University of California Irvine
Yee Whye Teh - University of California in Berkeley
A Spatio-temporal Extension to Isomap Nonlinear Dimension Reduction
[Abstract][Paper]
Odest Jenkins - University of Southern California
Maja Mataric - University of Southern California
A Theoretical Characterization of Linear SVM-Based Feature Selection
[Abstract][Paper]
Douglas Hardin - Vanderbilt University
Ioannis Tsamardinos - Vanderbilt University
Constantin Aliferis - Vanderbilt University
Authorship Verification as a One-Class Classification Problem
[Abstract][Paper]
Moshe Koppel - Bar-Ilan University
Jonathan Schler - Bar-Ilan University
Automated Hierarchical Mixtures of Probabilistic Principal Component Analyzers
[Abstract][Paper]
Ting Su - Northeastern University
Jennifer Dy - Northeastern University
Bayesian Haplotype Inference via the Dirichlet Process
[Abstract][Paper]
Eric Xing - University of California, Berkeley
Roded Sharan - International Computer Science Institute
Michael Jordan - University of California, Berkeley
Bayesian Inference for Transductive Learning of Kernel Matrix Using the Tanner-Wong Data Augmentation Algorithm
[Abstract][Paper]
Zhihua Zhang - Hong Kong University of Science and Technology
Dit - Hong Kong University of Science and Technology
James T. Kwok - Hong Kong University of Science and Technology
Bellman goes Relational
[Abstract][Paper]
Kristian Kersting - University of Freiburg
Martijn van Otterlo - University of Twente
Luc De Raedt - University of Freiburg
Bias and Variance in Value Function Estimation
[Abstract][Paper]
Shie Mannor - MIT
Duncan Simester - MIT
Peng Sun - Duke
John Tsitsiklis - MIT
Boosting Grammatical Inference with Confidence Oracles
[Abstract][Paper]
Jean - EURISE-Faculty of Sciences-University of Saint-Etienne
Richard Nock - GRIMAAG-French West Indies and Guyana University
Marc Sebban - EURISE-Faculty of Sciences-University of Saint-Etienne
Henri - EURISE-Faculty of Sciences-University of Saint-Etienne
Boosting Margin Based Distance Functions for Clustering
[Abstract][Paper]
Tomer Hertz - Hebrew University, Jerusalem Israel
Aharon Bar - Hebrew University, Jerusalem Israel
Daphna Weinshall - Hebrew University, Jerusalem Israel
C4.5 Competence Map: A Phase Transition-inspired Approach
[Abstract][Paper]
Nicolas Baskiotis - LRI, Universite Paris-Sud
Michele Sebag - LRI, Universite Paris-Sud
Coalition Calculation in a Dynamic Agent Environment
[Abstract][Paper]
Ted Scully - National University of Ireland, Galway
Michael G. Madden - National University of Ireland, Galway
Gerard Lyons - National University of Ireland, Galway
Co-EM Support Vector Learning
[Abstract][Paper]
Ulf Brefeld - Humboldt-Universitaet zu Berlin
Tobias Scheffer - Humboldt-Universitaet zu Berlin
Communication Complexity as a Lower Bound for Learning in Games
[Abstract][Paper]
Vincent Conitzer - Carnegie Mellon University
Tuomas Sandholm - Carnegie Mellon University
Convergence of Synchronous Reinforcement Learning with Linear Function Approximation
[Abstract][Paper]
Artur Merke - University of Dortmund
Ralf Schoknecht - University of Karlsruhe
Decentralized Detection and Classification using Kernel Method
[Abstract][Paper]
XuanLong Nguyen - U.C. Berkeley
Martin Wainwright - U.C. Berkeley
Michael Jordan - U.C. Berkeley
Decision Trees with Minimal Costs
[Abstract][Paper]
Charles X. Ling - The University of Western Ontario
Qiang Yang - The Hong Kong University of Science & Technology
Jianning Wang - The University of Western Ontario
Shichao Zhang - Guangxi Normal University
Delegating Classifiers
[Abstract][Paper]
Cesar Ferri - Universitat Politecnica de Valencia
Peter Flach - University of Bristol
Jose Hernandez - Universitat Politecnica de Valencia
Distribution Kernels Based on Moments of Counts
[Abstract][Paper]
Corinna Cortes - Google Labs
Mehryar Mohri - AT&T Labs - Research
Diverse Ensembles for Active Learning
[Abstract][Paper]
Prem Melville - University of Texas at Austin
Raymond Mooney - University of Texas at Austin
Dynamic Abstraction in Reinforcement Learning via Clustering
[Abstract][Paper]
Shie Mannor - MIT
Ishai Menache - Technion
Amit Hoze - Technion
Uri Klein - Technion
Dynamic Conditional Random Fields: Factorized Probabilistic Models for Labeling and Segmenting Sequence Data
[Abstract][Paper]
Charles Sutton - University of Massachusetts
Khasayar Rohanimanesh - University of Massachusetts
Andrew McCallum - University of Massachusetts
Efficient hierarchical MCMC for policy search
[Abstract][Paper]
Malcolm Strens - QinetiQ Ltd.
Ensemble Selection from Libraries of Models
[Abstract][Paper]
Rich Caruana - Cornell University
Alexandru Niculescu - Cornell University
Geoff Crew - Cornell University
Alex Ksikes - Cornell University
Ensembles of Nested Dichotomies for Multi-class Problems
[Abstract][Paper]
Eibe Frank - University of Waikato
Stefan Kramer - Technical University of Munich
Entropy-Based Criterion in Categorical Clustering
[Abstract][Paper]
Tao Li - University of Rochester
Sheng Ma - IBM Research
Mitsunori Ogihara - University of Rochester
Estimating Replicability of Classifier Learning Experiments
[Abstract][Paper]
Remco Bouckaert - University of Waikato
Extensions of Marginalized Graph Kernels
[Abstract][Paper]
Pierre Mahé - Ecole des Mines de Paris
Nobuhisa Ueda - Kyoto University
Tatsuya Akutsu - Kyoto University
Jean - Kyoto University
Jean - Ecole des Mines de Paris
Feature Extraction via Generalized Uncorrelated Linear Discriminant Analysis
[Abstract][Paper]
Jieping Ye - University of Minnesota
Ravi Janardan - University of Minnesota
Qi Li - University of Delaware
Haesun Park - University of Minnesota
Feature selection, L1 vs. L2 regularization, and rotational invariance
[Abstract][Paper]
Andrew Ng - Stanford University
Feature Subset Selection for Learning Preferences: A Case Study
[Abstract][Paper]
Antonio Bahamonde - Centro de Inteligencia Artificial. Universidad de Oviedo at Gijón, Spain
Gustavo Bayón - Centro de Inteligencia Artificial. Universidad de Oviedo at Gijón, Spain
Jorge Díez - Centro de Inteligencia Artificial. Universidad de Oviedo at Gijón, Spain
José R. Quevedo - Centro de Inteligencia Artificial. Universidad de Oviedo at Gijón, Spain
Oscar Luaces - Centro de Inteligencia Artificial. Universidad de Oviedo at Gijón, Spain
Juan José del Coz - Centro de Inteligencia Artificial. Universidad de Oviedo at Gijón, Spain
Jaime Alonso - Centro de Inteligencia Artificial. Universidad de Oviedo at Gijón, Spain
Félix Goyache - SERIDA-CENSYRA-Somió, Spain
Gaussian Process Classification for Segmenting and Annotating Sequences
[Abstract][Paper]
Yasemin Altun - Brown University
Thomas Hofmann - Brown University
Alexander Smola - Australian National University
Generalized Low Rank Approximations of Matrices
[Abstract][Paper]
Jieping Ye - University of Minnesota
Generative Modeling for Continuous Non-Linearly Embedded Visual Inference
[Abstract][Paper]
Cristian Sminchisescu - University of Toronto
Allan Jepson - University of Toronto
Gradient LASSO for feature selection
[Abstract][Paper]
Yongdai Kim - Seoul National University, Korea
Jinseog Kim - Seoul National University, Korea
Hyperplane Margin Classifiers on the Multinomial Manifold
[Abstract][Paper]
Guy Lebanon - Carnegie Mellon University
John Lafferty - Carnegie Mellon University
Improving SVM Accuracy by Training on Auxiliary Data Sources
[Abstract][Paper]
Pengcheng Wu - Oregon State University
Thomas Dietterich - Oregon State University
Incremental Learning of Linear Model Trees
[Abstract][Paper]
Duncan Potts - University of New South Wales
Integrating Constraints and Metric Learning in Semi-Supervised Clustering
[Abstract][Paper]
Mikhail Bilenko - Department of Computer Sciences, University of Texas at Austin
Sugato Basu - Department of Computer Sciences, University of Texas at Austin
Raymond J. Mooney - Department of Computer Sciences, University of Texas at Austin
Interpolation-based Q-learning
[Abstract][Paper]
Csaba Szepesvari - Computer and Automation Research Institute of the Hungarian Academy of Sciences
William D. Smart - Department of Computer Science and Engineering, Washington University in St. Louis
Kernel-Based Discriminative Learning Algorithms for Labeling Sequences, Trees, and Graphs
[Abstract][Paper]
Hisashi Kashima - IBM Tokyo Research Laboratory
Yuta Tsuboi - IBM Tokyo Research Laboratory
Kernel Conditional Random Fields: Representation and Clique Selection
[Abstract][Paper]
John Lafferty - School of Computer Science, Carnegie Mellon University
Xiaojin Zhu - School of Computer Science, Carnegie Mellon University
Yan Liu - School of Computer Science, Carnegie Mellon University
K-means Clustering via Principal Component Analysis
[Abstract][Paper]
Chris Ding - Lawrence Berkeley National Laboratory
Xiaofeng He - Lawrence Berkeley National Laboratory
Large Margin Hierarchical Classification
[Abstract][Paper]
Ofer Dekel - The Hebrew University
Joseph Keshet - The Hebrew University
Yoram Singer - The Hebrew University
Learning a Kernel Matrix for Nonlinear Dimensionality Reduction
[Abstract][Paper]
Kilian Weinberger - University of Pennsylvania
Fei Sha - University of Pennsylvania
Lawrence Saul - University of Pennsylvania
Learning and Discovery of Predictive State Representations in Dynamical Systems with Reset
[Abstract][Paper]
Michael James - University of Michigan
Satinder Singh - University of Michigan
Learning and Evaluating Classifiers under Sample Selection Bias
[Abstract][Paper]
Bianca Zadrozny - IBM T.J. Watson Research Center
Learning Associative Markov Networks
[Abstract][Paper]
Ben Taskar - Stanford University
Vassil Chatalbashev - Stanford University
Daphne Koller - Stanford University
Learning Bayesian Network Classifiers by Maximizing Conditional Likelihood
[Abstract][Paper]
Daniel Grossman - University of Washington
Pedro Domingos - University of Washington
Learning First-order Rules from Data with Multiple Parts: Applications on Mining Chemical Compound Data
[Abstract][Paper]
Cholwich Nattee - Osaka University
Sukree Sinthupinyo - Osaka University
Masayuki Numao - Osaka University
Takashi Okada - Kwansei Gakuin University
Learning Large Margin Classifiers Locally and Globally
[Abstract][Paper]
Kaizhu Huang - The Chinese University of Hong Kong
Haiqin Yang - The Chinese University of Hong Kong
Irwin King - The Chinese University of Hong Kong
Michael R. Lyu - The Chinese University of Hong Kong
Learning Low Dimensional Predictive Representations
[Abstract][Paper]
Matthew Rosencrantz - Carnegie Mellon University
Geoffrey Gordon - Carnegie Mellon University
Sebastian Thrun - Stanford University
Learning Probabilistic Motion Models for Mobile Robots
[Abstract][Paper]
Austin Eliazar - Duke University
Ronald Parr - Duke University
Learning Random Walks for Inducing Word Dependency Distributions
[Abstract][Paper]
Kristina Toutanova - Stanford University
Christopher Manning - Stanford University
Andrew Ng - Stanford University
Learning to Cluster using Local Neighborhood Structure
[Abstract][Paper]
Romer Rosales - University of Toronto / MIT
Kannan Achan - University of Toronto
Brendan Frey - University of Toronto
Learning to Fly by Combining Reinforcement Learning with Behavioural Cloning
[Abstract][Paper]
Eduardo Morales - Tec de Monterrey - Campus Cuernavaca
Claude Sammut - University of New South Wales
Learning to Learn with the Informative Vector Machine
[Abstract][Paper]
Neil Lawrence - University of Sheffield
John Platt - Microsoft Research
Learning to Track 3D Human Motion from Silhouettes
[Abstract][Paper]
Ankur Agarwal - GRAVIR - INRIA Rhone Alpes, Grenoble
Bill Triggs - GRAVIR-INRIA-CNRS, Grenoble
Learning with Non Positive Kernels
[Abstract][Paper]
Cheng Soon Ong - Australian National University
Xavier Mary - ENSAE-CREST-LS
Stephane Canu - INSA de Rouen
Alexander Smola - Australian National University and NICTA
Leveraging the Margin More Carefully
[Abstract][Paper]
Nir Krause - The Hebrew University of Jerusalem
Yoram Singer - The Hebrew University of Jerusalem
Linearized Cluster Assignment via Spectral Ordering
[Abstract][Paper]
Chris Ding - Lawrence Berkeley National Laboratory
Xiaofeng He - Lawrence Berkeley National Laboratory
Links between Perceptrons, MLPs and SVMs
[Abstract][Paper]
Ronan Collobert - IDIAP
Samy Bengio - IDIAP
Locally Linear Metric Adaptation for Semi-Supervised Clustering
[Abstract][Paper]
Hong Chang - Hong Kong University of Science and Technology
Dit - Hong Kong University of Science and Technology
Lookahead Based Algorithms for Anytime Induction of Decision Trees
[Abstract][Paper]
Saher Esmeir - Technion---Israel Institute of Technology
Shaul Markovitch - Technion---Israel Institute of Technology
Margin Based Feature Selection - Theory and Algorithms
[Abstract][Paper]
Ran Gilad - Hebrew University
Amir Navot - Hebrew University
Naftali Tishby - Hebrew University
Model Selection via the AUC
[Abstract][Paper]
Saharon Rosset - IBM T.J. Watson Research Center
Multiple Kernel Learning, Conic Duality, and the SMO Algorithm
[Abstract][Paper]
Francis Bach - UC Berkeley
Gert Lanckriet - UC Berkeley
Michael Jordan - UC Berkeley
Multi-Task Feature and Kernel Selection for SVMs
[Abstract][Paper]
Tony Jebara - Columbia University
Nonparametric Classification with Polynomial MPMC Cascades
[Abstract][Paper]
Sander Bohte - University of Colorado at Boulder / CWI
Markus Breitenbach - University of Colorado at Boulder
Gregory Grudic - University of Colorado at Boulder
Online Learning of Conditionally I.I.D. Data
[Abstract][Paper]
Daniil Ryabko - Computer Learning Research Centre, Royal Holloway, University of London
Online Learning of Pseudo-Metrics
[Abstract][Paper]
Shai Shalev - The Hebrew University
Andrew Ng - Stanford University
Yoram Singer - The Hebrew University
Optimising Area Under the ROC Curve Using Gradient Descent
[Abstract][Paper]
Alan Herschtal - Telstra Corporation, Australia
Bhavani Raskutti - Telstra Corporation, Australia
P3VI: A Partitioned, Prioritized, Parallel Value Iterator
[Abstract][Paper]
David Wingate - Brigham Young University
Kevin Seppi - Brigham Young University
Parameter Space Exploration With Gaussian Process Trees
[Abstract][Paper]
Robert B. Gramacy - UC Santa Cruz
Herbert K. H. Lee - UC Santa Cruz
William G. MacReady - Research Institute for Advanced Computer Science / NASA AMES
Predictive Automatic Relevance Determination by Expectation Propagation
[Abstract][Paper]
Yuan Qi - MIT
Thomas Minka - Microsoft Research
Rosalind Picard - MIT
Zoubin Ghahramani - University Colledge London
Probabilistic Score Estimation with Piecewise Logistic Regression
[Abstract][Paper]
Jian Zhang - Carnegie Mellon University
Yiming Yang - Carnegie Mellon University
Probabilistic Tangent Subspace: A Unified View
[Abstract][Paper]
Jianguo Lee - Department of Automation, Tsinghua University
Jingdong Wang - Department of Automation, Tsinghua University
Changshui Zhang - Department of Automation, Tsinghua University
Zhaoqi Bian - Department of Automation, Tsinghua University
Redundant Feature Elimination for Multi-Class Problems
[Abstract][Paper]
Annalisa Appice - University of Bari
Michelangelo Ceci - University of Bari
Simon Rawles - University of Bristol
Peter Flach - University of Bristol
Relational Sequential Inference with Reliable Observations
[Abstract][Paper]
Alan Fern - Purdue University
Robert Givan - Purdue University
Robust Feature Induction for Support Vector Machines
[Abstract][Paper]
Rong Jin - Michigan State University
Huan Liu - Arizona State University
Semi-Supervised Learning Using Randomized Mincuts
[Abstract][Paper]
Avrim Blum - Carnegie Mellon University
John Lafferty - Carnegie Mellon University
Mugizi Rwebangira - Carnegie Mellon University
Rajashekar Reddy - Carnegie Mellon University
Sequential Information Bottleneck for Finite Data
[Abstract][Paper]
Jaakko Peltonen - Helsinki University of Technology, Neural Networks Research Centre
Janne Sinkkonen - Helsinki University of Technology, Neural Networks Research Centre
Samuel Kaski - Helsinki University of Technology, Neural Networks Research Centre
Sequential Skewing: An Improved Skewing Algorithm
[Abstract][Paper]
Soumya Ray - University of Wisconsin
David Page - University of Wisconsin
Solving cluster ensemble problems by bipartite graph partitioning
[Abstract][Paper]
Xiaoli Fern - Purdue University
Carla Brodley - Purdue University
Solving Large Scale Linear Prediction Problems using Stochastic Gradient Descent Algorithms
[Abstract][Paper]
Tong Zhang - IBM T.J. Watson Research Center
Sparse Cooperative Q-learning
[Abstract][Paper]
Jelle Kok - University of Amsterdam
Nikos Vlassis - University of Amsterdam
Support Vector Machine Learning for Interdependent and Structured Output Spaces
[Abstract][Paper]
Ioannis Tsochantaridis - Brown University
Thomas Hofmann - Brown University
Thorsten Joachims - Cornell University
Yasemin Altun - Brown University
Surrogate Maximization/Minimization Algorithms for AdaBoost and the Logistic Regression Model
[Abstract][Paper]
Zhihua Zhang - Hong Kong University of Science and Technology
James T. Kwok - Hong Kong University of Science and Technology
Dit - Hong Kong University of Science and Technology
SVM-Based Generalized Multiple-Instance Learning via Approximate Box Counting
[Abstract][Paper]
Qingping Tao - University of Nebraska
Stephen Scott - University of Nebraska
Vinodchandran Variyam - University of Nebraska
Thomas Osugi - University of Nebraska
Take a Walk and Cluster Genes: A TSP-based Approach to Optimal Rearrangement Clustering
[Abstract][Paper]
Sharlee Climer - Washington University in St. Louis
Weixiong Zhang - Washington University in St. Louis
Testing the Significance of Attribute Interactions
[Abstract][Paper]
Aleks Jakulin - University of Ljubljana
Ivan Bratko - University of Ljubljana
Text Categorization with Many Redundant Features: Using Aggressive Feature Selection to Make SVMs Competitive with C4.5
[Abstract][Paper]
Evgeniy Gabrilovich - Technion - Israel Institute of Technology
Shaul Markovitch - Technion - Israel Institute of Technology
The Bayesian Backfitting Relevance Vector Machine
[Abstract][Paper]
Aaron D'Souza - University of Southern California
Sethu Vijayakumar - University of Edinburgh
Stefan Schaal - University of Southern California & ATR Computational Neuroscience Laboratory
The Multiple Multiplicative Factor Model For Collaborative Filtering
[Abstract][Paper]
Benjamin Marlin - University of Toronto
Richard Zemel - University of Toronto
Towards Tight Bounds for Rule Learning
[Abstract][Paper]
Ulrich Rückert - TU München
Stefan Kramer - TU München
Tractable Learning of Large Bayes Net Structures from Sparse Data
[Abstract][Paper]
Anna Goldenberg - Carnegie Mellon University
Andrew Moore - Carnegie Mellon University
Training Conditional Random Fields via Gradient Tree Boosting
[Abstract][Paper]
Thomas Dietterich - Oregon State University
Adam Ashenfelter - Oregon State University and Cleverset, Inc.
Yaroslav Bulatov - Oregon State University
Unifying Collaborative and Content-Based Filtering
[Abstract][Paper]
Justin Basilico - Brown University
Thomas Hofmann - Brown University
Using Relative Novelty to Identify Useful Temporal Abstractions in Reinforcement Learning
[Abstract][Paper]
Ozgur Simsek - University of Massachusetts Amherst
Andrew Barto - University of Massachusetts Amherst
Utile Distinction Hidden Markov Models
[Abstract][Paper]
Daan Wierstra - Utrecht University
Marco Wiering - Utrecht University
Variational methods for the Dirichlet process
[Abstract][Paper]
David Blei - U. C. Berkeley
Michael Jordan - U. C. Berkeley

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