Information (Jan 2019)

Using Opinion Mining in Context-Aware Recommender Systems: A Systematic Review

  • Camila Vaccari Sundermann,
  • Marcos Aurélio Domingues,
  • Roberta Akemi Sinoara,
  • Ricardo Marcondes Marcacini,
  • Solange Oliveira Rezende

DOI
https://doi.org/10.3390/info10020042
Journal volume & issue
Vol. 10, no. 2
p. 42

Abstract

Read online

Recommender systems help users by recommending items, such as products and services, that can be of interest to these users. Context-aware recommender systems have been widely investigated in both academia and industry because they can make recommendations based on a user’s current context (e.g., location and time). Moreover, the advent of Web 2.0 and the growing popularity of social and e-commerce media sites have encouraged users to naturally write texts describing their assessment of items. There are increasing efforts to incorporate the rich information embedded in user’s reviews/texts into the recommender systems. Given the importance of this type of texts and their usage along with opinion mining and contextual information extraction techniques for recommender systems, we present a systematic review on the recommender systems that explore both contextual information and opinion mining. This systematic review followed a well-defined protocol. Its results were based on 17 papers, selected among 195 papers identified in four digital libraries. The results of this review give a general summary of the current research on this subject and point out some areas that may be improved in future primary works.

Keywords