Ontology-Enhanced Aspect-Based Sentiment Analysis

Kim Schouten, Flavius Frasincar, F.M.G. de Jong

Research output: Contribution to conferencePaperOther research output

Abstract

With many people freely expressing their opinions and feelings on the Web, much research has gone into modeling and monetizing opinionated, and usually unstructured and textual, Web-based content. Aspect-based sentiment analysis aims to extract the fine-grained topics, or aspects, that people are talking about, together with the sentiment expressed on those aspects. This allows for a detailed analysis of the sentiment expressed in, for instance, product and service reviews. In this work we focus on knowledge-driven solutions that aim to complement standard machine learning methods. By encoding common domain knowledge into a knowledge repository, or ontology, we are able to exploit this information to improve classification performance for both aspect detection and aspect sentiment analysis. For aspect detection, the ontology-enhanced method needs only 20% of the training data to achieve results comparable with a standard bag-of-words approach that uses all training data.
Original languageEnglish
Pages302-320
DOIs
Publication statusPublished - 2017
EventICWE 2017: Web Engineering - Rome, Netherlands
Duration: 5 Jun 20178 Jun 2017

Conference

ConferenceICWE 2017
Country/TerritoryNetherlands
CityRome
Period5/06/178/06/17

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