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Machine Learning: ECML 2005  16th European Conference on Machine Learning, Porto, Portugal, October 3-7, 2005, Proceedings  João Gama (u. a.)  Taschenbuch  Lecture Notes in Computer Science  Book - Gama, João
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Gama, João:

Machine Learning: ECML 2005 16th European Conference on Machine Learning, Porto, Portugal, October 3-7, 2005, Proceedings João Gama (u. a.) Taschenbuch Lecture Notes in Computer Science Book - Taschenbuch

2005, ISBN: 9783540292432

[ED: Taschenbuch], [PU: Springer Berlin], The European Conference on Machine Learning (ECML) and the European Conference on Principles and Practice of Knowledge Discovery in Databases (PK… Mehr…

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João Gama; Rui Camacho; Pavel Brazdil; Alípio Jorge; Luís Torgo:

Machine Learning: ECML 2005 - Taschenbuch

2005, ISBN: 9783540292432

16th European Conference on Machine Learning, Porto, Portugal, October 3-7, 2005, Proceedings, Buch, Softcover, The European Conference on Machine Learning (ECML) and the European Confere… Mehr…

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Machine Learning by Jo Gama Paperback | Indigo Chapters - neues Buch

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ISBN: 9783540292432

The European Conference on Machine Learning (ECML) and the European Conference on Principles and Practice of Knowledge Discovery in Databases (PKDD) were jointly organized this year for t… Mehr…

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2005, ISBN: 9783540292432

The European Conference on Machine Learning (ECML) and the European Conference on Principles and Practice of Knowledge Discovery in Databases (PKDD) were jointly organized this year for t… Mehr…

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João Gama; Rui Camacho; Pavel Brazdil; Alípio Jorge; Luís Torgo:
Machine Learning: ECML 2005 - Taschenbuch

2005, ISBN: 9783540292432

16th European Conference on Machine Learning, Porto, Portugal, October 3-7, 2005, Proceedings, Buch, Softcover, [PU: Springer Berlin], Springer Berlin, 2005

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Machine Learning by Jo Gama Paperback | Indigo Chapters

This book constitutes the refereed proceedings of the 16th European Conference on Machine Learning, ECML 2005, jointly held with PKDD 2005 in Porto, Portugal, in October 2005. The 40 revised full papers and 32 revised short papers presented together with abstracts of 6 invited talks were carefully reviewed and selected from 335 papers submitted to ECML and 30 papers submitted to both, ECML and PKDD. The papers present a wealth of new results in the area and address all current issues in machine learning.

Detailangaben zum Buch - Machine Learning by Jo Gama Paperback | Indigo Chapters


EAN (ISBN-13): 9783540292432
ISBN (ISBN-10): 3540292438
Gebundene Ausgabe
Taschenbuch
Erscheinungsjahr: 2005
Herausgeber: Jo Gama

Buch in der Datenbank seit 2007-05-28T02:16:57+02:00 (Vienna)
Detailseite zuletzt geändert am 2023-09-19T09:14:15+02:00 (Vienna)
ISBN/EAN: 9783540292432

ISBN - alternative Schreibweisen:
3-540-29243-8, 978-3-540-29243-2
Alternative Schreibweisen und verwandte Suchbegriffe:
Autor des Buches: gama, brazdil, joão, berlin, jorge camacho, pavel
Titel des Buches: european conference artificial intelligence, porto portugal, ecm, machine learning, porto brief, 2005, gama


Daten vom Verlag:

Autor/in: João Gama; Rui Camacho; Pavel Brazdil; Alípio Jorge; Luís Torgo
Titel: Lecture Notes in Computer Science; Lecture Notes in Artificial Intelligence; Machine Learning: ECML 2005 - 16th European Conference on Machine Learning, Porto, Portugal, October 3-7, 2005, Proceedings
Verlag: Springer; Springer Berlin
769 Seiten
Erscheinungsjahr: 2005-09-22
Berlin; Heidelberg; DE
Sprache: Englisch
106,99 € (DE)
109,99 € (AT)
118,00 CHF (CH)
Available
XXIII, 769 p.

BC; Hardcover, Softcover / Informatik, EDV/Informatik; Künstliche Intelligenz; Verstehen; Informatik; Bayesian network; Boosting; Hidden Markov Model; Markov decision process; Support Vector Machine; algorithmic learning; association rule mining; case-based learning; classifier systems; inductive inference; k-Means; knowledge discovery; machine learning; reinforcement learning; statistical learning; algorithm analysis and problem complexity; Artificial Intelligence; Algorithms; Formal Languages and Automata Theory; Database Management; Algorithmen und Datenstrukturen; Theoretische Informatik; Datenbanken; EA

Invited Talks.- Data Analysis in the Life Sciences — Sparking Ideas —.- Machine Learning for Natural Language Processing (and Vice Versa?).- Statistical Relational Learning: An Inductive Logic Programming Perspective.- Recent Advances in Mining Time Series Data.- Focus the Mining Beacon: Lessons and Challenges from the World of E-Commerce.- Data Streams and Data Synopses for Massive Data Sets (Invited Talk).- Long Papers.- Clustering and Metaclustering with Nonnegative Matrix Decompositions.- A SAT-Based Version Space Algorithm for Acquiring Constraint Satisfaction Problems.- Estimation of Mixture Models Using Co-EM.- Nonrigid Embeddings for Dimensionality Reduction.- Multi-view Discriminative Sequential Learning.- Robust Bayesian Linear Classifier Ensembles.- An Integrated Approach to Learning Bayesian Networks of Rules.- Thwarting the Nigritude Ultramarine: Learning to Identify Link Spam.- Rotational Prior Knowledge for SVMs.- On the LearnAbility of Abstraction Theories from Observations for Relational Learning.- Beware the Null Hypothesis: Critical Value Tables for Evaluating Classifiers.- Kernel Basis Pursuit.- Hybrid Algorithms with Instance-Based Classification.- Learning and Classifying Under Hard Budgets.- Training Support Vector Machines with Multiple Equality Constraints.- A Model Based Method for Automatic Facial Expression Recognition.- Margin-Sparsity Trade-Off for the Set Covering Machine.- Learning from Positive and Unlabeled Examples with Different Data Distributions.- Towards Finite-Sample Convergence of Direct Reinforcement Learning.- Infinite Ensemble Learning with Support Vector Machines.- A Kernel Between Unordered Sets of Data: The Gaussian Mixture Approach.- Active Learning for Probability Estimation Using Jensen-Shannon Divergence.- Natural Actor-Critic.- Inducing Head-Driven PCFGs with Latent Heads: Refining a Tree-Bank Grammar for Parsing.- Learning (k,l)-Contextual Tree Languages for Information Extraction.- Neural Fitted Q Iteration – First Experiences with a Data Efficient Neural Reinforcement Learning Method.- MCMC Learning of Bayesian Network Models by Markov Blanket Decomposition.- On Discriminative Joint Density Modeling.- Model-Based Online Learning of POMDPs.- Simple Test Strategies for Cost-Sensitive Decision Trees.- -Likelihood and -Updating Algorithms: Statistical Inference in Latent Variable Models.- An Optimal Best-First Search Algorithm for Solving Infinite Horizon DEC-POMDPs.- Ensemble Learning with Supervised Kernels.- Using Advice to Transfer Knowledge Acquired in One Reinforcement Learning Task to Another.- A Distance-Based Approach for Action Recommendation.- Multi-armed Bandit Algorithms and Empirical Evaluation.- Annealed Discriminant Analysis.- Network Game and Boosting.- Model Selection in Omnivariate Decision Trees.- Bayesian Network Learning with Abstraction Hierarchies and Context-Specific Independence.- Short Papers.- Learning to Complete Sentences.- The Huller: A Simple and EfficientOnline SVM.- Inducing Hidden Markov Models to Model Long-Term Dependencies.- A Similar Fragments Merging Approach to Learn Automata on Proteins.- Nonnegative Lagrangian Relaxation of K-Means and Spectral Clustering.- Severe Class Imbalance: Why Better Algorithms Aren’t the Answer.- Approximation Algorithms for Minimizing Empirical Error by Axis-Parallel Hyperplanes.- A Comparison of Approaches for Learning Probability Trees.- Counting Positives Accurately Despite Inaccurate Classification.- Optimal Stopping and Constraints for Diffusion Models of Signals with Discontinuities.- An Evolutionary Function Approximation Approach to Compute Prediction in XCSF.- Using Rewards for Belief State Updates in Partially Observable Markov Decision Processes.- Active Learning in Partially Observable Markov Decision Processes.- Machine Learning of Plan Robustness Knowledge About Instances.- Two Contributions of Constraint Programming to Machine Learning.- A Clustering Model Based on Matrix Approximation with Applications to Cluster System Log Files.- Detecting Fraud in Health Insurance Data: Learning to Model Incomplete Benford’s Law Distributions.- Efficient Case Based Feature Construction.- Fitting the Smallest Enclosing Bregman Ball.- Similarity-Based Alignment and Generalization.- Fast Non-negative Dimensionality Reduction for Protein Fold Recognition.- Mode Directed Path Finding.- Classification with Maximum Entropy Modeling of Predictive Association Rules.- Classification of Ordinal Data Using Neural Networks.- Independent Subspace Analysis on Innovations.- On Applying Tabling to Inductive Logic Programming.- Learning Models of Relational Stochastic Processes.- Error-Sensitive Grading for Model Combination.- Strategy Learning for Reasoning Agents.- Combining Bias and Variance Reduction Techniques for Regression Trees.- Analysis of Generic Perceptron-Like Large Margin Classifiers.- Multimodal Function Optimizing by a New Hybrid Nonlinear Simplex Search and Particle Swarm Algorithm.

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