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 language | English |
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Pages | 302-320 |
DOIs | |
Publication status | Published - 2017 |
Event | ICWE 2017: Web Engineering - Rome, Netherlands Duration: 5 Jun 2017 → 8 Jun 2017 |
Conference
Conference | ICWE 2017 |
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Country/Territory | Netherlands |
City | Rome |
Period | 5/06/17 → 8/06/17 |