Knowledge Discovery in Databases: PKDD 2005: 9th European Conference on Principles and Practice of Knowledge Discovery in Databases, Porto, Portugal, October 3-7, 2005, Proceedings / Edition 1

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Overview

This book constitutes the refereed proceedings of the 9th European Conference on Principles and Practice of Knowledge Discovery in Databases, PKDD 2005, held in Porto, Portugal, in October 2005, jointly with ECML 2005.

The 35 revised full papers and 35 revised short papers presented together with abstracts of 6 invited talks were carefully reviewed and selected from 220 papers submitted to PKDD and 30 papers submitted to both, PKDD and ECML. The papers present a wealth of new results in knowledge discovery in databases and address all current issues in the area.

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Table of Contents

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.- Long Papers.- k-Anonymous Patterns.- Interestingness is Not a Dichotomy: Introducing Softness in Constrained Pattern Mining.- Generating Dynamic Higher-Order Markov Models in Web Usage Mining.- Tree 2 – Decision Trees for Tree Structured Data.- Agglomerative Hierarchical Clustering with Constraints: Theoretical and Empirical Results.- Cluster Aggregate Inequality and Multi-level Hierarchical Clustering.- Ensembles of Balanced Nested Dichotomies for Multi-class Problems.- Protein Sequence Pattern Mining with Constraints.- An Adaptive Nearest Neighbor Classification Algorithm for Data Streams.- Support Vector Random Fields for Spatial Classification.- Realistic, Mathematically Tractable Graph Generation and Evolution, Using Kronecker Multiplication.- A Correspondence Between Maximal Complete Bipartite Subgraphs and Closed Patterns.- Improving Generalization by Data Categorization.- Mining Model Trees from Spatial Data.- Word Sense Disambiguation for Exploiting Hierarchical Thesauri in Text Classification.- Mining Paraphrases from Self-anchored Web Sentence Fragments.- M2SP: Mining Sequential Patterns Among Several Dimensions.- A Systematic Comparison of Feature-Rich Probabilistic Classifiers for NER Tasks.- Knowledge Discovery from User Preferences in Conversational Recommendation.- Unsupervised Discretization Using Tree-Based Density Estimation.- Weighted Average Pointwise Mutual Information for Feature Selection in Text Categorization.- Non-stationary Environment Compensation Using Sequential EM Algorithm for Robust Speech Recognition.- Hybrid Cost-Sensitive Decision Tree.- Characterization of Novel HIV Drug Resistance Mutations Using Clustering, Multidimensional Scaling and SVM-Based Feature Ranking.- Object Identification with Attribute-Mediated Dependences.- Weka4WS: A WSRF-Enabled Weka Toolkit for Distributed Data Mining on Grids.- Using Inductive Logic Programming for Predicting Protein-Protein Interactions from Multiple Genomic Data.- ISOLLE: Locally Linear Embedding with Geodesic Distance.- Active Sampling for Knowledge Discovery from Biomedical Data.- A Multi-metric Index for Euclidean and Periodic Matching.- Fast Burst Correlation of Financial Data.- A Propositional Approach to Textual Case Indexing.- A Quantitative Comparison of the Subgraph Miners MoFa, gSpan, FFSM, and Gaston.- Efficient Classification from Multiple Heterogeneous Databases.- A Probabilistic Clustering-Projection Model for Discrete Data.- Short Papers.- Collaborative Filtering on Data Streams.- The Relation of Closed Itemset Mining, Complete Pruning Strategies and Item Ordering in Apriori-Based FIM Algorithms.- Community Mining from Multi-relational Networks.- Evaluating the Correlation Between Objective Rule Interestingness Measures and Real Human Interest.- A Kernel Based Method for Discovering Market Segments in Beef Meat.- Corpus-Based Neural Network Method for Explaining Unknown Words by WordNet Senses.- Segment and Combine Approach for Non-parametric Time-Series Classification.- Producing Accurate Interpretable Clusters from High-Dimensional Data.- Stress-Testing Hoeffding Trees.- Rank Measures for Ordering.- Dynamic Ensemble Re-Construction for Better Ranking.- Frequency-Based Separation of Climate Signals.- Efficient Processing of Ranked Queries with Sweeping Selection.- Feature Extraction from Mass Spectra for Classification of Pathological States.- Numbers in Multi-relational Data Mining.- Testing Theories in Particle Physics Using Maximum Likelihood and Adaptive Bin Allocation.- Improved Naive Bayes for Extremely Skewed Misclassification Costs.- Clustering and Prediction of Mobile User Routes from Cellular Data.- Elastic Partial Matching of Time Series.- An Entropy-Based Approach for Generating Multi-dimensional Sequential Patterns.- Visual Terrain Analysis of High-Dimensional Datasets.- An Auto-stopped Hierarchical Clustering Algorithm for Analyzing 3D Model Database.- A Comparison Between Block CEM and Two-Way CEM Algorithms to Cluster a Contingency Table.- An Imbalanced Data Rule Learner.- Improvements in the Data Partitioning Approach for Frequent Itemsets Mining.- On-Line Adaptive Filtering of Web Pages.- A Bi-clustering Framework for Categorical Data.- Privacy-Preserving Collaborative Filtering on Vertically Partitioned Data.- Indexed Bit Map (IBM) for Mining Frequent Sequences.- STochFS: A Framework for Combining Feature Selection Outcomes Through a Shastic Process.- Speeding Up Logistic Model Tree Induction.- A Random Method for Quantifying Changing Distributions in Data Streams.- Deriving Class Association Rules Based on Levelwise Subspace Clustering.- An Incremental Algorithm for Mining Generators Representation.- Hybrid Technique for Artificial Neural Network Architecture and Weight Optimization.

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