Title
Unsupervised Commonsense Knowledge Enrichment for Domain-Specific Sentiment Analysis.
Abstract
Sentiment analysis in natural language text is a challenging task involving a deep understanding of both syntax and semantics. Leveraging the polarity of multiword expressions—or concepts—rather than single words can mitigate the difficulty of such a task as these expressions carry more contextual information than isolated words. Such contextual information is the key to understanding both the syntactic and semantic structure of natural language text and hence is useful in tasks such as sentiment analysis. In this work, we propose a new method to enrich SenticNet (a publicly available knowledge base for concept-level sentiment analysis) with domain-level concepts composed of aspects and sentiment word pairs, along with a measure of their polarity. We process a set of unlabeled texts and, by considering the statistical co-occurrence information, generate a direct acyclic graph (DAG) of concepts. The polarity score of known concepts is propagated and used to compute polarity scores of new concepts. By designing and implementing our exhaustive algorithm, we are able to use a seed set containing only two sentiment words ( and ). In our evaluation conducted on a dataset of hotel reviews, SenticNet was enriched by a factor of three (from 30,000 to nearly 90,000 concepts). The experiments demonstrate the merit of the concepts discovered by our method at improving sentence-level and aspect-level sentiment analysis tasks. Results of the two-factor ANOVA statistical test showed a confidence level of 95 %, verifying that the improvements are statistically significant.
Year
DOI
Venue
2016
https://doi.org/10.1007/s12559-015-9375-3
Cognitive Computation
Keywords
Field
DocType
Sentiment analysis,Sentiment lexicon,SenticNet,Sentic patterns
Commonsense knowledge,Expression (mathematics),Computer science,Artificial intelligence,Natural language processing,Knowledge base,Syntax,Statistical hypothesis testing,Pattern recognition,Sentiment analysis,Natural language,Semantics,Machine learning
Journal
Volume
Issue
ISSN
8
3
1866-9956
Citations 
PageRank 
References 
12
0.49
22
Authors
6
Name
Order
Citations
PageRank
Nir Ofek1807.69
Soujanya Poria2133660.98
Lior Rokach32127142.59
Erik Cambria43873183.70
Amir Hussain570529.16
Asaf Shabtai61176100.03