Publication: Implicit aspect detection in restaurant reviews using cooccurence of words
DOI
Files
Type:
Article
Date
2016-06
Journal Title
Journal ISSN
Volume Title
Publisher
Proceedings of the 7th Workshop on computational approaches to subjectivity, sentiment and social media analysis
Abstract
For aspect-level sentiment analysis, the important first step is to identify the aspects and
their associated entities present in customer
reviews. Aspects can be either explicit or implicit, where the identification of the latter is
more difficult. For restaurant reviews, this difficulty is escalated due to the vast number of
entities and aspects present in reviews. The
problem of implicit aspect identification has
been studied for customer reviews in different
domains, including restaurant reviews. However, the existing work for implicit aspect
identification in customer reviews has the limitation of choosing at most one implicit aspect
for each sentence. Furthermore, they deal only
with a limited set of aspects related to a particular domain, thus have not faced the problem of ambiguity that arises when an opinion
word is used to describe different aspects.
This paper presents a novel approach for implicit aspect detection, which overcomes these
two limitations. Our approach yields an F1-
measure of 0.842 when applied for a set of
restaurant reviews collected from Yelp.
Description
Keywords
Restaurant Reviews, Detection, Implicit Aspect
