I: CLUSTERING & CLASSIFICATION: * Cluster-preserving dimension reduction methods for efficient classification of text data * Automatic discovery of similar words * Simultaneous clustering and dynamic keyword weighting for text documents * Feature selection and document clustering II: INFORMATION E
Survey of Text Mining: Clustering, Classification, and Retrieval
โ Scribed by Peg Howland, Haesun Park (auth.), Michael W. Berry (eds.)
- Publisher
- Springer-Verlag New York
- Year
- 2004
- Tongue
- English
- Leaves
- 250
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
As the volume of digitized textual information continues to grow, so does the critical need for designing robust and scalable indexing and search strategies/software to meet a variety of user needs. Knowledge extraction or creation from text requires systematic, yet reliable processing that can be codified and adapted for changing needs and environments.
Survey of Text Mining is a comprehensive edited survey organized into three parts: Clustering and Classification; Information Extraction and Retrieval; and Trend Detection. Many of the chapters stress the practical application of software and algorithms for current and future needs in text mining. Authors from industry provide their perspectives on current approaches for large-scale text mining and obstacles that will guide R&D activity in this area for the next decade.
Topics and features:
* Highlights issues such as scalability, robustness, and software tools
* Brings together recent research and techniques from academia and industry
* Examines algorithmic advances in discriminant analysis, spectral clustering, trend detection, and synonym extraction
* Includes case studies in mining Web and customer-support logs for hot- topic extraction and query characterizations
* Extensive bibliography of all references, including websites
This useful survey volume taps the expertise of academicians and industry professionals to recommend practical approaches to purifying, indexing, and mining textual information. Researchers, practitioners, and professionals involved in information retrieval, computational statistics, and data mining, who need the latest text-mining methods and algorithms, will find the book an indispensable resource.
โฆ Table of Contents
Front Matter....Pages i-xvii
Front Matter....Pages 1-1
Cluster-Preserving Dimension Reduction Methods for Efficient Classification of Text Data....Pages 3-23
Automatic Discovery of Similar Words....Pages 25-43
Simultaneous Clustering and Dynamic Keyword Weighting for Text Documents....Pages 45-72
Feature Selection and Document Clustering....Pages 73-100
Front Matter....Pages 101-101
Vector Space Models for Search and Cluster Mining....Pages 103-122
HotMiner: Discovering Hot Topics from Dirty Text....Pages 123-157
Combining Families of Information Retrieval Algorithms Using Metalearning....Pages 159-169
Front Matter....Pages 171-171
Trend and Behavior Detection from Web Queries....Pages 173-183
A Survey of Emerging Trend Detection in Textual Data Mining....Pages 185-224
Back Matter....Pages 225-244
โฆ Subjects
Multimedia Information Systems; Information Storage and Retrieval; Information Systems and Communication Service; Applications of Mathematics
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