책 이미지

책 정보
· 분류 : 외국도서 > 컴퓨터 > 데이터베이스 관리 > 데이터 마이닝
· ISBN : 9781420059403
· 쪽수 : 328쪽
· 출판일 : 2009-06-15
목차
Analysis of Text Patterns Using Kernel Methods
Marco Turchi, Alessia Mammone, and Nello Cristianini
Introduction
General Overview on Kernel Methods
Kernels for Text
Example
Conclusion and Further Reading
Detection of Bias in Media Outlets with Statistical Learning Methods
Blaz Fortuna, Carolina Galleguillos, and Nello Cristianini
Introduction
Overview of the Experiments
Data Collection and Preparation
News Outlet Identification
Topic-Wise Comparison of Term Bias
News Outlets Map
Related Work
Conclusion
Appendix A: Support Vector Machines
Appendix B: Bag of Words and Vector Space Models
Appendix C: Kernel Canonical Correlation Analysis
Appendix D: Multidimensional Scaling
Collective Classification for Text Classification
Galileo Namata, Prithviraj Sen, Mustafa Bilgic, and Lise Getoor
Introduction
Collective Classification: Notation and Problem Definition
Approximate Inference Algorithms for Approaches Based on Local Conditional Classifiers
Approximate Inference Algorithms for Approaches Based on Global Formulations
Learning the Classifiers
Experimental Comparison
Related Work
Conclusion
Topic Models
David M. Blei and John D. Lafferty
Introduction
Latent Dirichlet Allocation (LDA)
Posterior Inference for LDA
Dynamic Topic Models and Correlated Topic Models
Discussion
Nonnegative Matrix and Tensor Factorization for Discussion Tracking
Brett W. Bader, Michael W. Berry, and Amy N. Langville
Introduction
Notation
Tensor Decompositions and Algorithms
Enron Subset
Observations and Results
Visualizing Results of the NMF Clustering
Future Work
Text Clustering with Mixture of von Mises?Fisher Distributions
Arindam Banerjee, Inderjit Dhillon, Joydeep Ghosh, and Suvrit Sra
Introduction
Related Work
Preliminaries
EM on a Mixture of vMFs (moVMF)
Handling High-Dimensional Text Datasets
Algorithms
Experimental Results
Discussion
Conclusions and Future Work
Constrained Partitional Clustering of Text Data: An Overview
Sugato Basu and Ian Davidson
Introduction
Uses of Constraints
Text Clustering
Partitional Clustering with Constraints
Learning Distance Function with Constraints
Satisfying Constraints and Learning Distance Functions
Experiments
Conclusions
Adaptive Information Filtering
Yi Zhang
Introduction
Standard Evaluation Measures
Standard Retrieval Models and Filtering Approaches
Collaborative Adaptive Filtering
Novelty and Redundancy Detection
Other Adaptive Filtering Topics
Utility-Based Information Distillation
Yiming Yang and Abhimanyu Lad
Introduction
A Sample Task
Technical Cores
Evaluation Methodology
Data
Experiments and Results
Concluding Remarks
Text Search Enhanced with Types and Entities
Soumen Chakrabarti, Sujatha Das, Vijay Krishnan, and Kriti Puniyani
Entity-Aware Search Architecture
Understanding the Question
Scoring Potential Answer Snippets
Indexing and Query Processing
Conclusion
Index