Improvements of Webometrics by Using Sentiment Analysis for Better Accessibility of the Web

  • Radek Malinský
  • Ivan Jelínek
Part of the Lecture Notes in Computer Science book series (LNCS, volume 6385)

Abstract

The paper discusses the webometric model for effective acquirement of relevant information from the web that would better separate the useful data from the useless. Our research emphasis has been placed on techniques that would better reflect the semantic content of single pages. Webometrics is purely a quantitative approach to the web, which can be enhanced by qualitative methods and thereby allows us to expand the possibilities of a study problem. Sentiment analysis may be used as a qualitative complement to quantitative approach. This analysis provides a technique of sophisticated analysis of sentences using mathematical and statistical methods and linguistic analysis of text. Extension of the webometric techniques of sentiment analysis methods leads up to a better machine understanding of a web page and its overall semantic meaning. It can be assumed that the designed model will reduce the irrelevant web search results and thereby facilitate user access to the information on the web. The introductory part of the paper explains the concept of the sentiment analysis and the basic functional background of the webometric techniques.

Keywords

Webometrics Sentiment analysis Semantics Web 2.0 

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Copyright information

© Springer-Verlag Berlin Heidelberg 2010

Authors and Affiliations

  • Radek Malinský
    • 1
  • Ivan Jelínek
    • 1
  1. 1.Department of Computer Science and Engineering, Faculty of Electrical EngineeringCzech Technical University in PraguePragueCzech Republic

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