Intelligent Techniques in Recommender Systems and Contextual Advertising

Author:

Armano Giuliano1,Giuliani Alessandro1,Vargiu Eloisa2

Affiliation:

1. University of Cagliari, Italy

2. University of Cagliari, Italy & Barcelona Digital Technology Center, Spain

Abstract

Information Filtering deals with the problem of selecting relevant information for a given user, according to her/his preferences and interests. In this chapter, the authors consider two ways of performing information filtering: recommendation and contextual advertising. In particular, they study and analyze them according to a unified view. In fact, the task of suggesting an advertisement to a Web page can be viewed as the task of recommending an item (the advertisement) to a user (the Web page), and vice versa. Starting from this insight, the authors propose a content-based recommender system based on a generic solution for contextual advertising and a hybrid contextual advertising system based on a generic hybrid recommender system. Relevant case studies have been considered (i.e., a photo recommender and a Web advertiser) with the goal of highlighting how the proposed approach works in practice. In both cases, results confirm the effectiveness of the proposed solutions.

Publisher

IGI Global

Reference71 articles.

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3. Addis, A., Armano, G., Giuliani, A., & Vargiu, E. (2010b). A novel recommender system inspired by contextual advertising approach. In Proceedings of IADIS International Conference Intelligent Systems and Agents 2010, (pp. 67-74). IADIS.

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