RIVER PUBLISHERS IS AN INTERNATIONAL PUBLISHER THAT PUBLISHES RESEARCH MONOGRAPHS, PROFESSIONAL BOOKS, HANDBOOKS, EDITED VOLUMES AND JOURNALS WITH FOCUS ON KEY RESEARCH AREAS WITHIN THE FIELDS OF SCIENCE, TECHNOLOGY AND MEDICINE (STM).

  • Title Subjects
  • Data
River Publishers Series in Information Science and Technology Series

Web Mining

A Synergic Approach Resorting to Classifications and Clustering

Hardback
February 2017
9788793379831
More details
  • Publisher
    River Publishers
  • Published
    22nd February 2017
  • ISBN 9788793379831
  • Language English
  • Pages 200 pp.
  • Size 6.125" x 9.25"
$85.00
Lib E-Book

Library E-Books

We have signed up with three aggregators who resell networkable e-book editions of our titles to academic libraries. These aggregators offer a variety of plans to libraries, such as simultaneous access by multiple library patrons, and access to portions of titles at a fraction of list price under what is commonly referred to as a “patron-driven demand” model.

These editions, priced at par with simultaneous hardcover editions of our titles, are not available direct from Stylus, but only from the following aggregators:

  • Ebook Library, a service of Ebooks Corporation Ltd. of Australia
  • ebrary, based in Palo Alto, a subsidiary of ProQuest
  • EBSCO / netLibrary, Alabama

as well as through the following wholesalers: The Yankee Book Peddler subsidiary of Baker & Taylor, Inc.

November 2016
9788793379848
More details
  • Publisher
    River Publishers
  • Published
    11th November 2016
  • ISBN 9788793379848
  • Language English
  • Pages 200 pp.
  • Size 6.125" x 9.25"
$85.00

Web mining is the application of data mining strategies to excerpt learning from web information, i.e. web content, web structure, and web usage data. With the emergence of the web as the predominant and converging platform for communication, business and scholastic information dissemination, especially in the last five years, there are ever increasing research groups working on different aspects of web mining mainly in three directions: mining of web content, web structure, and web usage. In this context, there are a good number of frameworks and benchmarks related to the metrics of the websites which is certainly weighty for B2B, B2C and in general in any e-commerce paradigm. This book lays more emphasis on the classification and clustering aspects of the websites in order to come out with the true perception of the websites in light of their usability.

In a nutshell, Web Mining: A Synergic Approach Resorting to Classifications and Clustering showcases an effective methodology for classification and clustering of web sites from their usability point of view. While the clustering and classification is accomplished by using an open source tool WEKA, the basic dataset for the selected websites has been emanated by using a free tool site-analyzer. As a case study, several commercial websites have been analyzed. The dataset preparation using site-analyzer and classification through WEKA by embedding different algorithms is one of the unique selling points of this book. This text projects a complete spectrum of web mining from its very inception through data mining and takes the reader up to the application level.

Salient features of the book include:
* Literature review of research work in the area of web mining
* Business websites domain researched, and data collected using site-analyzer tool
* Accessibility, design, text, multimedia, and networking are assessed
* Datasets are filtered further by selecting vital attributes which are Search Engine Optimized for processing using the WEKA attributed tool
* Dataset with labels have been classified using J48, RBFNetwork, NaïveBayes, and SMO techniques using Weka
* A comparative analysis of all classifiers is reported
* Commercial applications for improving website performance based on SEO is given

Preface;
Contents;
List of figures;
List of tables;
1.Introduction;
2. Current Literature Assessment in Data and Web Mining;
3. Dataset Creation for Web Mining;
4. Classification of Websites;
References

V. S. Kumbhar

V. S. Kumbhar , Shivaji University, Kolhapur, India

K. S. Oza

No information

R. K. Kamat

No information