JMLR Volume 7
- Statistical Comparisons of Classifiers over Multiple Data Sets
- Janez Demšar; 7(Jan):1--30, 2006.
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- Incremental Algorithms for Hierarchical Classification
- Nicolò Cesa-Bianchi, Claudio Gentile, Luca Zaniboni; 7(Jan):31--54, 2006.
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- On the Complexity of Learning Lexicographic Strategies
- Michael Schmitt, Laura Martignon; 7(Jan):55--83, 2006.
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- Generalized Bradley-Terry Models and Multi-Class Probability Estimates
- Tzu-Kuo Huang, Ruby C. Weng, Chih-Jen Lin; 7(Jan):85--115, 2006.
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- Bounds for Linear Multi-Task Learning
- Andreas Maurer; 7(Jan):117--139, 2006.
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- Active Learning in Approximately Linear Regression Based on Conditional Expectation of Generalization Error
- Masashi Sugiyama; 7(Jan):141--166, 2006.
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- MinReg: A Scalable Algorithm for Learning Parsimonious Regulatory Networks in Yeast and Mammals
- Dana Pe'er, Amos Tanay, Aviv Regev; 7(Feb):167--189, 2006.
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- Learning the Structure of Linear Latent Variable Models
- Ricardo Silva, Richard Scheine, Clark Glymour, Peter Spirtes; 7(Feb):191--246, 2006.
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- In Search of Non-Gaussian Components of a High-Dimensional Distribution
- Gilles Blanchard, Motoaki Kawanabe, Masashi Sugiyama, Vladimir Spokoiny, Klaus-Robert Müller; 7(Feb):247--282, 2006.
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- Some Discriminant-Based PAC Algorithms
- Paul W. Goldberg; 7(Feb):283--306, 2006.
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- Kernels on Prolog Proof Trees: Statistical Learning in the ILP Setting (Special Topic on Inductive Programming)
- Andrea Passerini, Paolo Frasconi, Luc De Raedt; 7(Feb):307--342, 2006.
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- Using Machine Learning to Guide Architecture Simulation
- Greg Hamerly, Erez Perelman, Jeremy Lau, Brad Calder, Timothy Sherwood; 7(Feb):343--378, 2006.
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- Superior Guarantees for Sequential Prediction and Lossless Compression via Alphabet Decomposition
- Ron Begleiter, Ran El-Yaniv; 7(Feb):379--411, 2006.
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- Geometric Variance Reduction in Markov Chains: Application to Value Function and Gradient Estimation
- Rémi Munos; 7(Feb):413--427, 2006.
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- Inductive Synthesis of Functional Programs: An Explanation Based Generalization Approach (Special Topic on Inductive Programming)
- Emanuel Kitzelmann, Ute Schmid; 7(Feb):429--454, 2006.
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- Optimising Kernel Parameters and Regularisation Coefficients for Non-linear Discriminant Analysis
- Tonatiuh Peña Centeno, Neil D. Lawrence; 7(Feb):455--491, 2006.
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- Learning Recursive Control Programs from Problem Solving (Special Topic on Inductive Programming)
- Pat Langley, Dongkyu Choi; 7(Mar):493--518, 2006.
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- Learning Coordinate Covariances via Gradients
- Sayan Mukherjee, Ding-Xuan Zhou; 7(Mar):519--549, 2006.
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- Online Passive-Aggressive Algorithms
- Koby Crammer, Ofer Dekel, Joseph Keshet, Shai Shalev-Shwartz, Yoram Singer; 7(Mar):551--585, 2006.
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- Toward Attribute Efficient Learning of Decision Lists and Parities
- Adam R. Klivans, Rocco A. Servedio; 7(Apr):587--602, 2006.
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- A Direct Method for Building Sparse Kernel Learning Algorithms
- Mingrui Wu, Bernhard Schölkopf, Gökhan Bakır; 7(Apr):603--624, 2006.
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- Stochastic Complexities of Gaussian Mixtures in Variational Bayesian Approximation
- Kazuho Watanabe, Sumio Watanabe; 7(Apr):625--644, 2006.
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- Pattern Recognition for Conditionally Independent Data
- Daniil Ryabko; 7(Apr):645--664, 2006.
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- Learning Minimum Volume Sets
- Clayton D. Scott, Robert D. Nowak; 7(Apr):665--704, 2006.
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- Some Theory for Generalized Boosting Algorithms
- Peter J. Bickel, Ya'acov Ritov, Alon Zakai; 7(May):705--732, 2006.
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- QP Algorithms with Guaranteed Accuracy and Run Time for Support Vector Machines
- Don Hush, Patrick Kelly, Clint Scovel, Ingo Steinwart; 7(May):733--769, 2006.
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- Policy Gradient in Continuous Time
- Rémi Munos; 7(May):771--791, 2006.
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- Learning Image Components for Object Recognition
- Michael W. Spratling; 7(May):793--815, 2006.
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- Consistency and Convergence Rates of One-Class SVMs and Related Algorithms
- Régis Vert, Jean-Philippe Vert; 7(May):817--854, 2006.
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- Infinite-σ Limits For Tikhonov Regularization
- Ross A. Lippert, Ryan M. Rifkin; 7(May):855--876, 2006.
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- Evolutionary Function Approximation for Reinforcement Learning
- Shimon Whiteson, Peter Stone; 7(May):877--917, 2006.
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- Rearrangement Clustering: Pitfalls, Remedies, and Applications
- Sharlee Climer, Weixiong Zhang; 7(Jun):919--943, 2006.
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- Segmental Hidden Markov Models with Random Effects for Waveform Modeling
- Seyoung Kim, Padhraic Smyth; 7(Jun):945--969, 2006.
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- Lower Bounds and Aggregation in Density Estimation
- Guillaume Lecué; 7(Jun):971--981, 2006.
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- Quantile Regression Forests
- Nicolai Meinshausen; 7(Jun):983--999, 2006.
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- Sparse Boosting
- Peter Bühlmann, Bin Yu; 7(Jun):1001--1024, 2006.
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- One-Class Novelty Detection for Seizure Analysis from Intracranial EEG
- Andrew B. Gardner, Abba M. Krieger, George Vachtsevanos, Brian Litt; 7(Jun):1025--1044, 2006.
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- A Graphical Representation of Equivalence Classes of AMP Chain Graphs
- Alberto Roverato, Milan Studený; 7(Jun):1045--1078, 2006.
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- Action Elimination and Stopping Conditions for the Multi-Armed Bandit and Reinforcement Learning Problems
- Eyal Even-Dar, Shie Mannor, Yishay Mansour; 7(Jun):1079--1105, 2006.
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- Step Size Adaptation in Reproducing Kernel Hilbert Space
- S. V. N. Vishwanathan, Nicol N. Schraudolph, Alex J. Smola; 7(Jun):1107--1133, 2006.
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- New Algorithms for Efficient High-Dimensional Nonparametric Classification
- Ting Liu, Andrew W. Moore, Alexander Gray; 7(Jun):1135--1158, 2006.
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- A Very Fast Learning Method for Neural Networks Based on Sensitivity Analysis
- Enrique Castillo, Bertha Guijarro-Berdiñas, Oscar Fontenla-Romero, Amparo Alonso-Betanzos; 7(Jul):1159--1182, 2006.
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- Computational and Theoretical Analysis of Null Space and Orthogonal Linear Discriminant Analysis
- Jieping Ye, Tao Xiong; 7(Jul):1183--1204, 2006.
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- Worst-Case Analysis of Selective Sampling for Linear Classification
- Nicolò Cesa-Bianchi, Claudio Gentile, Luca Zaniboni; 7(Jul):1205--1230, 2006.
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- Nonparametric Quantile Estimation
- Ichiro Takeuchi, Quoc V. Le, Timothy D. Sears, Alexander J. Smola; 7(Jul):1231--1264, 2006.
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- The Interplay of Optimization and Machine Learning Research (Special Topic on Machine Learning and Optimization)
- Kristin P. Bennett, Emilio Parrado-Hernández; 7(Jul):1265--1281, 2006.
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- Second Order Cone Programming Approaches for Handling Missing and Uncertain Data (Special Topic on Machine Learning and Optimization)
- Pannagadatta K. Shivaswamy, Chiranjib Bhattacharyya, Alexander J. Smola; 7(Jul):1283--1314, 2006.
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- Ensemble Pruning Via Semi-definite Programming (Special Topic on Machine Learning and Optimization)
- Yi Zhang, Samuel Burer, W. Nick Street; 7(Jul):1315--1338, 2006.
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- Linear Programs for Hypotheses Selection in Probabilistic Inference Models (Special Topic on Machine Learning and Optimization)
- Anders Bergkvist, Peter Damaschke, Marcel Lüthi; 7(Jul):1339--1355, 2006.
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- Bayesian Network Learning with Parameter Constraints (Special Topic on Machine Learning and Optimization)
- Radu Stefan Niculescu, Tom M. Mitchell, R. Bharat Rao; 7(Jul):1357--1383, 2006.
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- Learning Sparse Representations by Non-Negative Matrix Factorization and Sequential Cone Programming (Special Topic on Machine Learning and Optimization)
- Matthias Heiler, Christoph Schnörr; 7(Jul):1385--1407, 2006.
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- Fast SDP Relaxations of Graph Cut Clustering, Transduction, and Other Combinatorial Problems (Special Topic on Machine Learning and Optimization)
- Tijl De Bie, Nello Cristianini; 7(Jul):1409--1436, 2006.
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- Maximum-Gain Working Set Selection for SVMs (Special Topic on Machine Learning and Optimization)
- Tobias Glasmachers, Christian Igel; 7(Jul):1437--1466, 2006.
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- Parallel Software for Training Large Scale Support Vector Machines on Multiprocessor Systems (Special Topic on Machine Learning and Optimization)
- Luca Zanni, Thomas Serafini, Gaetano Zanghirati; 7(Jul):1467--1492, 2006.
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- Building Support Vector Machines with Reduced Classifier Complexity (Special Topic on Machine Learning and Optimization)
- S. Sathiya Keerthi, Olivier Chapelle, Dennis DeCoste; 7(Jul):1493--1515, 2006.
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- Exact 1-Norm Support Vector Machines Via Unconstrained Convex Differentiable Minimization (Special Topic on Machine Learning and Optimization)
- Olvi L. Mangasarian; 7(Jul):1517--1530, 2006.
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- Large Scale Multiple Kernel Learning (Special Topic on Machine Learning and Optimization)
- Sören Sonnenburg, Gunnar Rätsch, Christin Schäfer, Bernhard Schölkopf; 7(Jul):1531--1565, 2006.
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- Efficient Learning of Label Ranking by Soft Projections onto Polyhedra (Special Topic on Machine Learning and Optimization)
- Shai Shalev-Shwartz, Yoram Singer; 7(Jul):1567--1599, 2006.
[abs][pdf] [code]
- Kernel-Based Learning of Hierarchical Multilabel Classification Models (Special Topic on Machine Learning and Optimization)
- Juho Rousu, Craig Saunders, Sandor Szedmak, John Shawe-Taylor; 7(Jul):1601--1626, 2006.
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- Structured Prediction, Dual Extragradient and Bregman Projections (Special Topic on Machine Learning and Optimization)
- Ben Taskar, Simon Lacoste-Julien, Michael I. Jordan; 7(Jul):1627--1653, 2006.
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- Active Learning with Feedback on Features and Instances
- Hema Raghavan, Omid Madani, Rosie Jones; 7(Aug):1655--1686, 2006.
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- Large Scale Transductive SVMs
- Ronan Collobert, Fabian Sinz, Jason Weston, Léon Bottou; 7(Aug):1687--1712, 2006.
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- Considering Cost Asymmetry in Learning Classifiers
- Francis R. Bach, David Heckerman, Eric Horvitz; 7(Aug):1713--1741, 2006.
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- Learning Factor Graphs in Polynomial Time and Sample Complexity
- Pieter Abbeel, Daphne Koller, Andrew Y. Ng; 7(Aug):1743--1788, 2006.
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- Collaborative Multiagent Reinforcement Learning by Payoff Propagation
- Jelle R. Kok, Nikos Vlassis; 7(Sep):1789--1828, 2006.
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- Estimating the "Wrong" Graphical Model: Benefits in the Computation-Limited Setting
- Martin J. Wainwright; 7(Sep):1829--1859, 2006.
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- Streamwise Feature Selection
- Jing Zhou, Dean P. Foster, Robert A. Stine, Lyle H. Ungar; 7(Sep):1861--1885, 2006.
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- Linear Programming Relaxations and Belief Propagation -- An Empirical Study (Special Topic on Machine Learning and Optimization)
- Chen Yanover, Talya Meltzer, Yair Weiss; 7(Sep):1887--1907, 2006.
[abs][pdf] [data]
- Incremental Support Vector Learning: Analysis, Implementation and Applications (Special Topic on Machine Learning and Optimization)
- Pavel Laskov, Christian Gehl, Stefan Krüger, Klaus-Robert Müller; 7(Sep):1909--1936, 2006.
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- A Simulation-Based Algorithm for Ergodic Control of Markov Chains Conditioned on Rare Events
- Shalabh Bhatnagar, Vivek S. Borkar, Madhukar Akarapu; 7(Oct):1937--1962, 2006.
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- Learning Spectral Clustering, With Application To Speech Separation
- Francis R. Bach, Michael I. Jordan; 7(Oct):1963--2001, 2006.
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- A Linear Non-Gaussian Acyclic Model for Causal Discovery
- Shohei Shimizu, Patrik O. Hoyer, Aapo Hyvärinen, Antti Kerminen; 7(Oct):2003--2030, 2006.
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- Walk-Sums and Belief Propagation in Gaussian Graphical Models
- Dmitry M. Malioutov, Jason K. Johnson, Alan S. Willsky; 7(Oct):2031--2064, 2006.
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- Distance Patterns in Structural Similarity
- Thomas Kämpke; 7(Oct):2065--2086, 2006.
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- A Hierarchy of Support Vector Machines for Pattern Detection
- Hichem Sahbi, Donald Geman; 7(Oct):2087--2123, 2006.
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- Adaptive Prototype Learning Algorithms: Theoretical and Experimental Studies
- Fu Chang, Chin-Chin Lin, Chi-Jen Lu; 7(Oct):2125--2148, 2006.
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- A Scoring Function for Learning Bayesian Networks based on Mutual Information and Conditional Independence Tests
- Luis M. de Campos; 7(Oct):2149--2187, 2006.
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- Noisy-OR Component Analysis and its Application to Link Analysis
- Tomáš Šingliar, Miloš Hauskrecht; 7(Oct):2189--2213, 2006.
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- Learning a Hidden Hypergraph
- Dana Angluin, Jiang Chen; 7(Oct):2215--2236, 2006.
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- An Efficient Implementation of an Active Set Method for SVMs (Special Topic on Machine Learning and Optimization)
- Katya Scheinberg; 7(Oct):2237--2257, 2006.
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- Causal Graph Based Decomposition of Factored MDPs
- Anders Jonsson, Andrew Barto; 7(Nov):2259--2301, 2006.
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- Accurate Error Bounds for the Eigenvalues of the Kernel Matrix
- Mikio L. Braun; 7(Nov):2303--2328, 2006.
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- Point-Based Value Iteration for Continuous POMDPs
- Josep M. Porta, Nikos Vlassis, Matthijs T.J. Spaan, Pascal Poupart; 7(Nov):2329--2367, 2006.
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- Learning Parts-Based Representations of Data
- David A. Ross, Richard S. Zemel; 7(Nov):2369--2397, 2006.
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- Manifold Regularization: A Geometric Framework for Learning from Labeled and Unlabeled Examples
- Mikhail Belkin, Partha Niyogi, Vikas Sindhwani; 7(Nov):2399--2434, 2006.
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- Consistency of Multiclass Empirical Risk Minimization Methods Based on Convex Loss
- Di-Rong Chen, Tao Sun; 7(Nov):2435--2447, 2006.
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- Bounds for the Loss in Probability of Correct Classification Under Model Based Approximation
- Magnus Ekdahl, Timo Koski; 7(Nov):2449--2480, 2006.
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- Estimation of Gradients and Coordinate Covariation in Classification
- Sayan Mukherjee, Qiang Wu; 7(Nov):2481--2514, 2006.
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- Expectation Correction for Smoothed Inference in Switching Linear Dynamical Systems
- David Barber; 7(Nov):2515--2540, 2006.
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- On Model Selection Consistency of Lasso
- Peng Zhao, Bin Yu; 7(Nov):2541--2563, 2006.
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- Stability Properties of Empirical Risk Minimization over Donsker Classes
- Andrea Caponnetto, Alexander Rakhlin; 7(Dec):2565--2583, 2006.
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- Linear State-Space Models for Blind Source Separation
- Rasmus Kongsgaard Olsson, Lars Kai Hansen; 7(Dec):2585--2602, 2006.
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- On Representing and Generating Kernels by Fuzzy Equivalence Relations
- Bernhard Moser; 7(Dec):2603--2620, 2006.
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- A Robust Procedure For Gaussian Graphical Model Search From Microarray Data With p Larger Than n
- Robert Castelo, Alberto Roverato; 7(Dec):2621--2650, 2006.
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- Universal Kernels
- Charles A. Micchelli, Yuesheng Xu, Haizhang Zhang; 7(Dec):2651--2667, 2006.
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- Machine Learning for Computer Security (Special Topic on Machine Learning for Computer Security)
- Philip K. Chan, Richard P. Lippmann; 7(Dec):2669--2672, 2006.
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- Spam Filtering Using Statistical Data Compression Models
(Special Topic on Machine Learning for Computer Security)
- Andrej Bratko, Gordon V. Cormack, Bogdan Filipič, Thomas R. Lynam, Blaž Zupan; 7(Dec):2673--2698, 2006.
[abs][pdf]
- Spam Filtering Based On The Analysis Of Text Information Embedded Into Images
(Special Topic on Machine Learning for Computer Security)
- Giorgio Fumera, Ignazio Pillai, Fabio Roli; 7(Dec):2699--2720, 2006.
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- Learning to Detect and Classify Malicious Executables in the Wild
(Special Topic on Machine Learning for Computer Security)
- J. Zico Kolter, Marcus A. Maloof; 7(Dec):2721--2744, 2006.
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- On Inferring Application Protocol Behaviors in Encrypted Network Traffic
(Special Topic on Machine Learning for Computer Security)
- Charles V. Wright, Fabian Monrose, Gerald M. Masson; 7(Dec):2745--2769, 2006.
[abs][pdf]