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Data mining the Web [electronic resource] : uncovering patterns in Web content, structure, and usage / Zdravko Markov and Daniel T. Larose.

By: Contributor(s): Material type: TextSeries: Wiley series on methods and applications in data miningPublication details: Hoboken, N.J. : Wiley-Interscience, c2007.Description: 1 online resource (236 p.)Content type:
  • text
Media type:
  • computer
Carrier type:
  • online resource
ISBN:
  • 1280901039
  • 9781280901034
  • 9786610901036
  • 6610901031
  • 0470108096
  • 9780470108093
  • 0470108088
  • 9780470108086
Subject(s): Additional physical formats: No titleDDC classification:
  • 005.74
LOC classification:
  • QA76.9.D343 M38 2007
Online resources:
Contents:
DATA MINING THE WEB; CONTENTS; PREFACE; ACKNOWLEDGMENTS; PART I WEB STRUCTURE MINING; 1 INFORMATION RETRIEVAL AND WEB SEARCH; Web Challenges; Web Search Engines; Topic Directories; Semantic Web; Crawling the Web; Web Basics; Web Crawlers; Indexing and Keyword Search; Document Representation; Implementation Considerations; Relevance Ranking; Advanced Text Search; Using the HTML Structure in Keyword Search; Evaluating Search Quality; Similarity Search; Cosine Similarity; Jaccard Similarity; Document Resemblance; References; Exercises; 2 HYPERLINK-BASED RANKING; Introduction
Social Networks AnalysisPageRank; Authorities and Hubs; Link-Based Similarity Search; Enhanced Techniques for Page Ranking; References; Exercises; PART II WEB CONTENT MINING; 3 CLUSTERING; Introduction; Hierarchical Agglomerative Clustering; k-Means Clustering; Probabilty-Based Clustering; Finite Mixture Problem; Classification Problem; Clustering Problem; Collaborative Filtering (Recommender Systems); References; Exercises; 4 EVALUATING CLUSTERING; Approaches to Evaluating Clustering; Similarity-Based Criterion Functions; Probabilistic Criterion Functions
MDL-Based Model and Feature EvaluationMinimum Description Length Principle; MDL-Based Model Evaluation; Feature Selection; Classes-to-Clusters Evaluation; Precision, Recall, and F-Measure; Entropy; References; Exercises; 5 CLASSIFICATION; General Setting and Evaluation Techniques; Nearest-Neighbor Algorithm; Feature Selection; Naive Bayes Algorithm; Numerical Approaches; Relational Learning; References; Exercises; PART III WEB USAGE MINING; 6 INTRODUCTION TO WEB USAGE MINING; Definition of Web Usage Mining; Cross-Industry Standard Process for Data Mining; Clickstream Analysis
Web Server Log FilesRemote Host Field; Date/Time Field; HTTP Request Field; Status Code Field; Transfer Volume (Bytes) Field; Common Log Format; Identification Field; Authuser Field; Extended Common Log Format; Referrer Field; User Agent Field; Example of a Web Log Record; Microsoft IIS Log Format; Auxiliary Information; References; Exercises; 7 PREPROCESSING FOR WEB USAGE MINING; Need for Preprocessing the Data; Data Cleaning and Filtering; Page Extension Exploration and Filtering; De-Spidering the Web Log File; User Identification; Session Identification; Path Completion
Directories and the Basket TransformationFurther Data Preprocessing Steps; References; Exercises; 8 EXPLORATORY DATA ANALYSIS FOR WEB USAGE MINING; Introduction; Number of Visit Actions; Session Duration; Relationship between Visit Actions and Session Duration; Average Time per Page; Duration for Individual Pages; References; Exercises; 9 MODELING FOR WEB USAGE MINING: CLUSTERING, ASSOCIATION, AND CLASSIFICATION; Introduction; Modeling Methodology; Definition of Clustering; The BIRCH Clustering Algorithm; Affinity Analysis and the A Priori Algorithm
Summary: This book introduces the reader to methods of data mining on the web, including uncovering patterns in web content (classification, clustering, language processing), structure (graphs, hubs, metrics), and usage (modeling, sequence analysis, performance).
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DATA MINING THE WEB; CONTENTS; PREFACE; ACKNOWLEDGMENTS; PART I WEB STRUCTURE MINING; 1 INFORMATION RETRIEVAL AND WEB SEARCH; Web Challenges; Web Search Engines; Topic Directories; Semantic Web; Crawling the Web; Web Basics; Web Crawlers; Indexing and Keyword Search; Document Representation; Implementation Considerations; Relevance Ranking; Advanced Text Search; Using the HTML Structure in Keyword Search; Evaluating Search Quality; Similarity Search; Cosine Similarity; Jaccard Similarity; Document Resemblance; References; Exercises; 2 HYPERLINK-BASED RANKING; Introduction

Social Networks AnalysisPageRank; Authorities and Hubs; Link-Based Similarity Search; Enhanced Techniques for Page Ranking; References; Exercises; PART II WEB CONTENT MINING; 3 CLUSTERING; Introduction; Hierarchical Agglomerative Clustering; k-Means Clustering; Probabilty-Based Clustering; Finite Mixture Problem; Classification Problem; Clustering Problem; Collaborative Filtering (Recommender Systems); References; Exercises; 4 EVALUATING CLUSTERING; Approaches to Evaluating Clustering; Similarity-Based Criterion Functions; Probabilistic Criterion Functions

MDL-Based Model and Feature EvaluationMinimum Description Length Principle; MDL-Based Model Evaluation; Feature Selection; Classes-to-Clusters Evaluation; Precision, Recall, and F-Measure; Entropy; References; Exercises; 5 CLASSIFICATION; General Setting and Evaluation Techniques; Nearest-Neighbor Algorithm; Feature Selection; Naive Bayes Algorithm; Numerical Approaches; Relational Learning; References; Exercises; PART III WEB USAGE MINING; 6 INTRODUCTION TO WEB USAGE MINING; Definition of Web Usage Mining; Cross-Industry Standard Process for Data Mining; Clickstream Analysis

Web Server Log FilesRemote Host Field; Date/Time Field; HTTP Request Field; Status Code Field; Transfer Volume (Bytes) Field; Common Log Format; Identification Field; Authuser Field; Extended Common Log Format; Referrer Field; User Agent Field; Example of a Web Log Record; Microsoft IIS Log Format; Auxiliary Information; References; Exercises; 7 PREPROCESSING FOR WEB USAGE MINING; Need for Preprocessing the Data; Data Cleaning and Filtering; Page Extension Exploration and Filtering; De-Spidering the Web Log File; User Identification; Session Identification; Path Completion

Directories and the Basket TransformationFurther Data Preprocessing Steps; References; Exercises; 8 EXPLORATORY DATA ANALYSIS FOR WEB USAGE MINING; Introduction; Number of Visit Actions; Session Duration; Relationship between Visit Actions and Session Duration; Average Time per Page; Duration for Individual Pages; References; Exercises; 9 MODELING FOR WEB USAGE MINING: CLUSTERING, ASSOCIATION, AND CLASSIFICATION; Introduction; Modeling Methodology; Definition of Clustering; The BIRCH Clustering Algorithm; Affinity Analysis and the A Priori Algorithm

Discretizing the Numerical Variables: Binning.

This book introduces the reader to methods of data mining on the web, including uncovering patterns in web content (classification, clustering, language processing), structure (graphs, hubs, metrics), and usage (modeling, sequence analysis, performance).

English.

Includes bibliographical references and index.

John Wiley and Sons Wiley Online Library: Complete oBooks

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