In this paper information extraction task for the restaurant recommendation system is considered. We develop an information extraction system which is intended to gather restaurants aspects from users’ reviews and output them to the recommendation module. As many of the restaurant aspects are subjective, our task can also be called sentiment analysis, or opinion mining. Thus, we present an aspect-based approach towards sentiment analysis of reviews about restaurants for e-tourism recommender systems. The analyzed frames are service and food quality, cuisine, price level, noise level, etc. In this paper we focus on service quality, cuisine type and food quality. As part of the preprocessing phase, a method for Russian reviews corpus analysis (as part of information extraction) is proposed. Its importance is shown at the experimental phase, when the application of machine learning techniques to aspects extraction is analyzed. It is shown that the information obtained during corpus analysis improve system perfor
Original languageEnglish
Pages (from-to)pp 371-385
JournalLecture Notes in Computer Science
VolumeVolume 9561
DOIs
StatePublished - 2016
Externally publishedYes

    Research areas

  • Corpus analysis Restaurant reviews Aspect-based information extraction Recommendation system Machine learning E-tourism Sentiment analysis Opinion mining

ID: 7633603