Mining semantic data for solving first-rater and cold-start problems in recommender systems

  • Authors:
  • María N. Moreno;Saddys Segrera;Vivian F. López;María Dolores Muñoz;Ángel Luis Sánchez

  • Affiliations:
  • University of Salamanca, Salamanca;University of Salamanca, Salamanca;University of Salamanca, Salamanca;University of Salamanca, Salamanca;University of Salamanca, Salamanca

  • Venue:
  • Proceedings of the 15th Symposium on International Database Engineering & Applications
  • Year:
  • 2011

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Abstract

Recommender systems are becoming very popular in recent years, mainly in the e-commerce sites, although they are increasing in importance in other areas such as e-learning, tourism, news pages, etc. These systems are endowed with intelligent mechanisms to personalize recommendations about products or services. However, they present some serious drawbacks that impact in user satisfaction. First-rater and cold-start problems are two important drawbacks that take place respectively when new products or new users are introduced in the system. The lack of rating about these products or from these users prevents from making recommendations. Nowadays, traditional collaborative filtering methods have being replaced by web mining techniques in order to deal with scalability and performance problems, but first-rater and cold-start ones require a different strategy. In this work, we propose a methodology that combines data mining techniques with semantic data in order to overcome these two important shortcomings.