Simple, robust and (almost) Unsupervised generation of polarity lexicons for multiple languages

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Abstract

This paper presents a simple, robust and (almost) unsupervised dictionary-based method, qwn-ppv (Q-WordNet as Personalized PageRanking Vector) to automatically generate polarity lexicons. We show that qwn-ppv outperforms other automatically generated lexicons for the four extrinsic evaluations presented here. It also shows very competitive and robust results with respect to manually annotated ones. Results suggest that no single lexicon is best for every task and dataset and that the intrinsic evaluation of polarity lexicons is not a good performance indicator on a Sentiment Analysis task. The qwn-ppv method allows to easily create quality polarity lexicons whenever no domain-based annotated corpora are available for a given language. © 2014 Association for Computational Linguistics.

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APA

Vicente, I. S., Agerri, R., & Rigau, G. (2014). Simple, robust and (almost) Unsupervised generation of polarity lexicons for multiple languages. In 14th Conference of the European Chapter of the Association for Computational Linguistics 2014, EACL 2014 (pp. 88–97). Association for Computational Linguistics (ACL). https://doi.org/10.3115/v1/e14-1010

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