History and Overview of the Recommender Systems

Author:

M. Venkatesan1,K. Thangadurai1

Affiliation:

1. Government Arts College (Autonomous), India

Abstract

This Chapter analyzes the recommender systems, their history and its framework in brief. The current generation of filtering techniques in recommendation methods can be broadly classified into the following five categories. Techniques used in these categories are discussed in detail. Data mining algorithms techniques are implemented in recommender systems to filters user data ratings. Area of application of Recommender Systems gives broad idea and such as how it gives impact and why it is used in the e-commerce, Online Social Networks (OSN), and so on. It has shifted the core of Internet applications from devices to users. In this chapter, issues and recent research in recommender system are also discussed.

Publisher

IGI Global

Reference56 articles.

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2. Amatriain, X., Jaimes, A., Oliver, N. & Pujol, J.M. (2011). Data Mining Methods for Recommender Systems,, by Springer

3. Beyond spreadsheets: tools for building decision support systems

4. Bouza, A., Reif, G., Bernstein, A., & Gall, H. (2008). Semtree: ontology-based decision tree algorithm for recommender systems. Proceedings of theInternational Semantic Web Conference.

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