


default search action
28th ICML 2011: Bellevue, Washington, USA
- Lise Getoor, Tobias Scheffer:

Proceedings of the 28th International Conference on Machine Learning, ICML 2011, Bellevue, Washington, USA, June 28 - July 2, 2011. Omnipress 2011 - Wei Liu, Jun Wang, Sanjiv Kumar, Shih-Fu Chang:

Hashing with Graphs. 1-8 - Wenliang Zhong, James T. Kwok:

Efficient Sparse Modeling with Automatic Feature Grouping. 9-16 - Wei Bi, James T. Kwok:

MultiLabel Classification on Tree- and DAG-Structured Hierarchies. 17-24 - Jingrui He, Rick Lawrence:

A Graphbased Framework for Multi-Task Multi-View Learning. 25-32 - Tianyi Zhou, Dacheng Tao:

GoDec: Randomized Lowrank & Sparse Matrix Decomposition in Noisy Case. 33-40 - Jia Yuan Yu, Shie Mannor:

Unimodal Bandits. 41-48 - Francesco Dinuzzo, Cheng Soon Ong, Peter V. Gehler, Gianluigi Pillonetto:

Learning Output Kernels with Block Coordinate Descent. 49-56 - Ha Quang Minh, Vikas Sindhwani:

Vector-valued Manifold Regularization. 57-64 - Masashi Sugiyama, Makoto Yamada, Manabu Kimura, Hirotaka Hachiya:

On Information-Maximization Clustering: Tuning Parameter Selection and Analytic Solution. 65-72 - Richard Nock, Brice Magdalou, Eric Briys, Frank Nielsen:

On tracking portfolios with certainty equivalents on a generalization of Markowitz model: the Fool, the Wise and the Adaptive. 73-80 - Boris Babenko, Nakul Verma, Piotr Dollár, Serge J. Belongie:

Multiple Instance Learning with Manifold Bags. 81-88 - Yi Jiang, Jiangtao Ren:

Eigenvalue Sensitive Feature Selection. 89-96 - Jiang Su, Jelber Sayyad Shirab, Stan Matwin:

Large Scale Text Classification using Semisupervised Multinomial Naive Bayes. 97-104 - KyungHyun Cho, Tapani Raiko, Alexander Ilin:

Enhanced Gradient and Adaptive Learning Rate for Training Restricted Boltzmann Machines. 105-112 - Daniel Tarlow, Dhruv Batra, Pushmeet Kohli, Vladimir Kolmogorov:

Dynamic Tree Block Coordinate Ascent. 113-120 - Michael W. Mahoney, Lorenzo Orecchia:

Implementing regularization implicitly via approximate eigenvector computation. 121-128 - Richard Socher, Cliff Chiung-Yu Lin, Andrew Y. Ng, Christopher D. Manning:

Parsing Natural Scenes and Natural Language with Recursive Neural Networks. 129-136 - Philip S. Thomas, Andrew G. Barto:

Conjugate Markov Decision Processes. 137-144 - Tyler Lu, Craig Boutilier:

Learning Mallows Models with Pairwise Preferences. 145-152 - Clayton Scott:

Surrogate losses and regret bounds for cost-sensitive classification with example-dependent costs. 153-160 - Pratik Jawanpuria, Jagarlapudi Saketha Nath, Ganesh Ramakrishnan:

Efficient Rule Ensemble Learning using Hierarchical Kernels. 161-168 - André F. T. Martins, Mário A. T. Figueiredo, Pedro M. Q. Aguiar, Noah A. Smith, Eric P. Xing:

An Augmented Lagrangian Approach to Constrained MAP Inference. 169-176 - Shie Mannor, John N. Tsitsiklis:

Mean-Variance Optimization in Markov Decision Processes. 177-184 - Lei Li, B. Aditya Prakash:

Time Series Clustering: Complex is Simpler! 185-192 - Stephen Gould:

Max-margin Learning for Lower Linear Envelope Potentials in Binary Markov Random Fields. 193-200 - Alexander Clark:

Inference of Inversion Transduction Grammars. 201-208 - Enliang Hu, Bo Wang, Songcan Chen:

BCDNPKL: Scalable Non-Parametric Kernel Learning Using Block Coordinate Descent. 209-216 - Laurens van der Maaten:

Learning Discriminative Fisher Kernels. 217-224 - Samory Kpotufe, Ulrike von Luxburg:

Pruning nearest neighbor cluster trees. 225-232 - Peilin Zhao, Steven C. H. Hoi, Rong Jin, Tianbao Yang:

Online AUC Maximization. 233-240 - Yisong Yue, Thorsten Joachims:

Beat the Mean Bandit. 241-248 - Francesco Orabona, Jie Luo:

Ultra-Fast Optimization Algorithm for Sparse Multi Kernel Learning. 249-256 - Brian Potetz:

Estimating the Bayes Point Using Linear Knapsack Problems. 257-264 - Quoc V. Le, Jiquan Ngiam, Adam Coates, Ahbik Lahiri, Bobby Prochnow, Andrew Y. Ng:

On optimization methods for deep learning. 265-272 - Koby Crammer, Claudio Gentile:

Multiclass Classification with Bandit Feedback using Adaptive Regularization. 273-280 - David P. Helmbold, Philip M. Long:

On the Necessity of Irrelevant Variables. 281-288 - Simon Barthelmé, Nicolas Chopin:

ABC-EP: Expectation Propagation for Likelihoodfree Bayesian Computation. 289-296 - Pascal Germain, Alexandre Lacoste, François Laviolette, Mario Marchand, Sara Shanian:

A PAC-Bayes Sample-compression Approach to Kernel Methods. 297-304 - Aviv Tamar, Dotan Di Castro, Ron Meir:

Integrating Partial Model Knowledge in Model Free RL Algorithms. 305-312 - Álvaro Barbero Jiménez, Suvrit Sra:

Fast Newton-type Methods for Total Variation Regularization. 313-320 - Joseph K. Bradley, Aapo Kyrola, Danny Bickson, Carlos Guestrin:

Parallel Coordinate Descent for L1-Regularized Loss Minimization. 321-328 - Shai Shalev-Shwartz, Alon Gonen, Ohad Shamir:

Large-Scale Convex Minimization with a Low-Rank Constraint. 329-336 - Lauren Hannah, David B. Dunson:

Approximate Dynamic Programming for Storage Problems. 337-344 - Stefanie Jegelka, Jeff A. Bilmes:

Online Submodular Minimization for Combinatorial Structures. 345-352 - Mohammad Norouzi, David J. Fleet:

Minimal Loss Hashing for Compact Binary Codes. 353-360 - Bo Chen, Gungor Polatkan, Guillermo Sapiro, David B. Dunson, Lawrence Carin:

The Hierarchical Beta Process for Convolutional Factor Analysis and Deep Learning. 361-368 - Andrew Guillory, Jeff A. Bilmes:

Simultaneous Learning and Covering with Adversarial Noise. 369-376 - Haojun Chen, David B. Dunson, Lawrence Carin:

Topic Modeling with Nonparametric Markov Tree. 377-384 - Ankit Kuwadekar, Jennifer Neville:

Relational Active Learning for Joint Collective Classification Models. 385-392 - Abhishek Kumar, Hal Daumé III:

A Co-training Approach for Multi-view Spectral Clustering. 393-400 - Maayan Harel, Shie Mannor:

Learning from Multiple Outlooks. 401-408 - Michele Cossalter, Rong Yan, Lu Zheng:

Adaptive Kernel Approximation for Large-Scale Non-Linear SVM Prediction. 409-416 - Dario García-García, Ulrike von Luxburg, Raúl Santos-Rodríguez:

Risk-Based Generalizations of f-divergences. 417-424 - Novi Quadrianto, Christoph H. Lampert:

Learning Multi-View Neighborhood Preserving Projections. 425-432 - Francesco Orabona, Nicolò Cesa-Bianchi:

Better Algorithms for Selective Sampling. 433-440 - Sylvain Robbiano, Stéphan Clémençon:

Minimax Learning Rates for Bipartite Ranking and Plug-in Rules. 441-448 - Nikolay Jetchev, Marc Toussaint:

Task Space Retrieval Using Inverse Feedback Control. 449-456 - Seppo Virtanen, Arto Klami, Samuel Kaski:

Bayesian CCA via Group Sparsity. 457-464 - Marc Peter Deisenroth, Carl Edward Rasmussen:

PILCO: A Model-Based and Data-Efficient Approach to Policy Search. 465-472 - Masayuki Karasuyama, Ichiro Takeuchi:

Suboptimal Solution Path Algorithm for Support Vector Machine. 473-480 - Yi Sun, Faustino J. Gomez, Mark B. Ring, Jürgen Schmidhuber:

Incremental Basis Construction from Temporal Difference Error. 481-488 - Sean Gerrish, David M. Blei:

Predicting Legislative Roll Calls from Text. 489-496 - Shinichi Nakajima, Masashi Sugiyama, S. Derin Babacan:

On Bayesian PCA: Automatic Dimensionality Selection and Analytic Solution. 497-504 - Tom Bylander:

Learning Linear Functions with Quadratic and Linear Multiplicative Updates. 505-512 - Xavier Glorot

, Antoine Bordes, Yoshua Bengio:
Domain Adaptation for Large-Scale Sentiment Classification: A Deep Learning Approach. 513-520 - Zhuoliang Kang, Kristen Grauman, Fei Sha:

Learning with Whom to Share in Multi-task Feature Learning. 521-528 - Lev Reyzin:

Boosting on a Budget: Sampling for Feature-Efficient Prediction. 529-536 - Elena Ikonomovska, João Gama, Bernard Zenko, Saso Dzeroski:

Speeding-Up Hoeffding-Based Regression Trees With Options. 537-544 - Gilles Meyer, Silvère Bonnabel, Rodolphe Sepulchre:

Linear Regression under Fixed-Rank Constraints: A Riemannian Approach. 545-552 - Dijun Luo, Chris H. Q. Ding, Feiping Nie, Heng Huang:

Cauchy Graph Embedding. 553-560 - Manuel Gomez-Rodriguez, David Balduzzi, Bernhard Schölkopf:

Uncovering the Temporal Dynamics of Diffusion Networks. 561-568 - Tianshi Gao, Daphne Koller:

Multiclass Boosting with Hinge Loss based on Output Coding. 569-576 - Stefanie Jegelka, Jeff A. Bilmes:

Approximation Bounds for Inference using Cooperative Cuts. 577-584 - José Hernández-Orallo, Peter A. Flach, Cèsar Ferri Ramirez:

Brier Curves: a New Cost-Based Visualisation of Classifier Performance. 585-592 - Céline Brouard, Florence d'Alché-Buc, Marie Szafranski:

Semi-supervised Penalized Output Kernel Regression for Link Prediction. 593-600 - Sergey I. Nikolenko, Alexander Sirotkin:

A New Bayesian Rating System for Team Competitions. 601-608 - Arvind K. Sujeeth, HyoukJoong Lee, Kevin J. Brown, Tiark Rompf, Hassan Chafi, Michael Wu, Anand R. Atreya, Martin Odersky, Kunle Olukotun:

OptiML: An Implicitly Parallel Domain-Specific Language for Machine Learning. 609-616 - Jun Zhu, Ning Chen, Eric P. Xing:

Infinite SVM: a Dirichlet Process Mixture of Large-margin Kernel Machines. 617-624 - Lingbo Li, Mingyuan Zhou, Guillermo Sapiro, Lawrence Carin:

On the Integration of Topic Modeling and Dictionary Learning. 625-632 - Benjamin M. Marlin, Mohammad Emtiyaz Khan, Kevin P. Murphy:

Piecewise Bounds for Estimating Bernoulli-Logistic Latent Gaussian Models. 633-640 - Ruth Urner, Shai Shalev-Shwartz, Shai Ben-David:

Access to Unlabeled Data can Speed up Prediction Time. 641-648 - Jean-Francis Roy, François Laviolette, Mario Marchand:

From PAC-Bayes Bounds to Quadratic Programs for Majority Votes. 649-656 - Peter A. Flach, José Hernández-Orallo, Cèsar Ferri Ramirez:

A Coherent Interpretation of AUC as a Measure of Aggregated Classification Performance. 657-664 - Vojtech Franc, Alexander Zien, Bernhard Schölkopf:

Support Vector Machines as Probabilistic Models. 665-672 - Omer Tamuz, Ce Liu, Serge J. Belongie, Ohad Shamir, Adam Kalai:

Adaptively Learning the Crowd Kernel. 673-680 - Max Welling, Yee Whye Teh:

Bayesian Learning via Stochastic Gradient Langevin Dynamics. 681-688 - Jiquan Ngiam, Aditya Khosla, Mingyu Kim, Juhan Nam, Honglak Lee, Andrew Y. Ng:

Multimodal Deep Learning. 689-696 - JooSeuk Kim, Clayton D. Scott:

On the Robustness of Kernel Density M-Estimators. 697-704 - Piyush Rai, Hal Daumé III:

Beam Search based MAP Estimates for the Indian Buffet Process. 705-712 - Ofer Dekel, Ran Gilad-Bachrach, Ohad Shamir, Lin Xiao:

Optimal Distributed Online Prediction. 713-720 - David A. Knowles, Jurgen Van Gael, Zoubin Ghahramani:

Message Passing Algorithms for the Dirichlet Diffusion Tree. 721-728 - Jian Peng, Tamir Hazan, David A. McAllester, Raquel Urtasun:

Convex Max-Product over Compact Sets for Protein Folding. 729-736 - Doran Chakraborty, Peter Stone:

Structure Learning in Ergodic Factored MDPs without Knowledge of the Transition Function's In-Degree. 737-744 - Toby Hocking, Jean-Philippe Vert, Francis R. Bach, Armand Joulin:

Clusterpath: an Algorithm for Clustering using Convex Fusion Penalties. 745-752 - Albert Shieh, Tatsunori B. Hashimoto, Edoardo M. Airoldi:

Tree preserving embedding. 753-760 - Raman Arora, Maya R. Gupta, Amol Kapila, Maryam Fazel:

Clustering by Left-Stochastic Matrix Factorization. 761-768 - Miao Liu, Xuejun Liao, Lawrence Carin:

The Infinite Regionalized Policy Representation. 769-776 - Michael L. Wick, Khashayar Rohanimanesh, Kedar Bellare, Aron Culotta, Andrew McCallum:

SampleRank: Training Factor Graphs with Atomic Gradients. 777-784 - XianXing Zhang, David B. Dunson, Lawrence Carin:

Tree-Structured Infinite Sparse Factor Model. 785-792 - Andrea Vattani, Deepayan Chakrabarti, Maxim Gurevich:

Preserving Personalized Pagerank in Subgraphs. 793-800 - Lin Xiao, Dengyong Zhou, Mingrui Wu:

Hierarchical Classification via Orthogonal Transfer. 801-808 - Maximilian Nickel, Volker Tresp, Hans-Peter Kriegel:

A Three-Way Model for Collective Learning on Multi-Relational Data. 809-816 - Gerhard Neumann:

Variational Inference for Policy Search in changing situations. 817-824 - David Buffoni, Clément Calauzènes, Patrick Gallinari, Nicolas Usunier:

Learning Scoring Functions with Order-Preserving Losses and Standardized Supervision. 825-832 - Salah Rifai, Pascal Vincent, Xavier Muller, Xavier Glorot, Yoshua Bengio:

Contractive Auto-Encoders: Explicit Invariance During Feature Extraction. 833-840 - Miguel Lázaro-Gredilla, Michalis K. Titsias:

Variational Heteroscedastic Gaussian Process Regression. 841-848 - Qiang Liu, Alexander Ihler:

Bounding the Partition Function using Holder's Inequality. 849-856 - Duy Quang Vu, Arthur U. Asuncion, David R. Hunter, Padhraic Smyth:

Dynamic Egocentric Models for Citation Networks. 857-864 - Kevin Small, Byron C. Wallace, Carla E. Brodley, Thomas A. Trikalinos:

The Constrained Weight Space SVM: Learning with Ranked Features. 865-872 - Yudong Chen, Huan Xu, Constantine Caramanis, Sujay Sanghavi:

Robust Matrix Completion and Corrupted Columns. 873-880 - Alborz Geramifard, Finale Doshi, Josh Redding, Nicholas Roy, Jonathan P. How:

Online Discovery of Feature Dependencies. 881-888 - John W. Paisley, Lawrence Carin, David M. Blei:

Variational Inference for Stick-Breaking Beta Process Priors. 889-896 - Monica Babes, Vukosi Marivate, Kaushik Subramanian, Michael L. Littman:

Apprenticeship Learning About Multiple Intentions. 897-904 - Jascha Sohl-Dickstein, Peter Battaglino, Michael Robert DeWeese:

Minimum Probability Flow Learning. 905-912 - Finale Doshi, David Wingate, Joshua B. Tenenbaum, Nicholas Roy:

Infinite Dynamic Bayesian Networks. 913-920 - Adam Coates, Andrew Y. Ng:

The Importance of Encoding Versus Training with Sparse Coding and Vector Quantization. 921-928 - Marco Cuturi:

Fast Global Alignment Kernels. 929-936 - Loris Bazzani, Nando de Freitas, Hugo Larochelle, Vittorio Murino, Jo-Anne Ting:

Learning attentional policies for tracking and recognition in video with deep networks. 937-944 - Yann N. Dauphin, Xavier Glorot, Yoshua Bengio:

Large-Scale Learning of Embeddings with Reconstruction Sampling. 945-952 - Minmin Chen, Kilian Q. Weinberger, Yixin Chen:

Automatic Feature Decomposition for Single View Co-training. 953-960 - Kilho Shin, Marco Cuturi, Tetsuji Kuboyama:

Mapping kernels for trees. 961-968 - Pierre Machart, Thomas Peel, Sandrine Anthoine, Liva Ralaivola, Hervé Glotin:

Stochastic Low-Rank Kernel Learning for Regression. 969-976 - Kiyohito Nagano, Yoshinobu Kawahara, Kazuyuki Aihara:

Size-constrained Submodular Minimization through Minimum Norm Base. 977-984 - Lubor Ladicky, Philip H. S. Torr:

Locally Linear Support Vector Machines. 985-992 - Hachem Kadri, Asma Rabaoui, Philippe Preux, Emmanuel Duflos, Alain Rakotomamonjy:

Functional Regularized Least Squares Classication with Operator-valued Kernels. 993-1000 - Ali Jalali, Yudong Chen, Sujay Sanghavi, Huan Xu:

Clustering Partially Observed Graphs via Convex Optimization. 1001-1008 - Eunho Yang, Pradeep Ravikumar:

On the Use of Variational Inference for Learning Discrete Graphical Model. 1009-1016 - Ilya Sutskever, James Martens, Geoffrey E. Hinton:

Generating Text with Recurrent Neural Networks. 1017-1024 - Amrudin Agovic, Arindam Banerjee, Snigdhansu Chatterjee:

Probabilistic Matrix Addition. 1025-1032 - James Martens, Ilya Sutskever:

Learning Recurrent Neural Networks with Hessian-Free Optimization. 1033-1040 - Jacob Eisenstein, Amr Ahmed, Eric P. Xing:

Sparse Additive Generative Models of Text. 1041-1048 - Victor Gabillon, Alessandro Lazaric, Mohammad Ghavamzadeh, Bruno Scherrer:

Classification-based Policy Iteration with a Critic. 1049-1056 - Abhimanyu Das, David Kempe:

Submodular meets Spectral: Greedy Algorithms for Subset Selection, Sparse Approximation and Dictionary Selection. 1057-1064 - Ankur P. Parikh, Le Song, Eric P. Xing:

A Spectral Algorithm for Latent Tree Graphical Models. 1065-1072 - Yue Guan, Jennifer G. Dy, Michael I. Jordan:

A Unified Probabilistic Model for Global and Local Unsupervised Feature Selection. 1073-1080 - Yufeng Li, Zhi-Hua Zhou:

Towards Making Unlabeled Data Never Hurt. 1081-1088 - Andrew M. Saxe, Pang Wei Koh, Zhenghao Chen, Maneesh Bhand, Bipin Suresh, Andrew Y. Ng:

On Random Weights and Unsupervised Feature Learning. 1089-1096 - Miroslav Dudík, John Langford, Lihong Li:

Doubly Robust Policy Evaluation and Learning. 1097-1104 - Jiquan Ngiam, Zhenghao Chen, Pang Wei Koh, Andrew Y. Ng:

Learning Deep Energy Models. 1105-1112 - Wojciech Kotlowski, Krzysztof Dembczynski, Eyke Hüllermeier:

Bipartite Ranking through Minimization of Univariate Loss. 1113-1120 - Sangkyun Lee, Stephen J. Wright:

Manifold Identification of Dual Averaging Methods for Regularized Stochastic Online Learning. 1121-1128 - Alekh Agarwal, Sahand N. Negahban, Martin J. Wainwright:

Noisy matrix decomposition via convex relaxation: Optimal rates in high dimensions. 1129-1136 - Daniel Vainsencher, Ofer Dekel, Shie Mannor:

Bundle Selling by Online Estimation of Valuation Functions. 1137-1144 - Aaron C. Courville, James Bergstra, Yoshua Bengio:

Unsupervised Models of Images by Spikeand-Slab RBMs. 1145-1152 - Hetunandan Kamisetty, Eric P. Xing, Christopher James Langmead:

Approximating Correlated Equilibria using Relaxations on the Marginal Polytope. 1153-1160 - Yan Yan, Rómer Rosales, Glenn Fung, Jennifer G. Dy:

Active Learning from Crowds. 1161-1168 - Kevin Waugh, Brian D. Ziebart, Drew Bagnell:

Computational Rationalization: The Inverse Equilibrium Problem. 1169-1176 - Mohammad Ghavamzadeh, Alessandro Lazaric, Rémi Munos, Matthew W. Hoffman:

Finite-Sample Analysis of Lasso-TD. 1177-1184 - Jason Pazis, Ronald Parr:

Generalized Value Functions for Large Action Sets. 1185-1192 - Alex Kulesza, Ben Taskar:

k-DPPs: Fixed-Size Determinantal Point Processes. 1193-1200 - Kevin Swersky, Marc'Aurelio Ranzato, David Buchman, Benjamin M. Marlin, Nando de Freitas:

On Autoencoders and Score Matching for Energy Based Models. 1201-1208 - Alexander Grubb, Drew Bagnell:

Generalized Boosting Algorithms for Convex Optimization. 1209-1216

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.


Google
Google Scholar
Semantic Scholar
Internet Archive Scholar
CiteSeerX
ORCID














