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DualSentiNet : Dual Prediction of Word and Document Sentiments Using Shared Word Embedding

Title
DualSentiNet : Dual Prediction of Word and Document Sentiments Using Shared Word Embedding
Authors
YU, HWANJOLEE, DONGHAJU, HYUNJUNPARK, JUNGMIKIM, KYEYOON
Date Issued
2018-01-07
Publisher
ACM
Abstract
With the popularization of social networking services, numerous words are newly emerging every day in personalized document sources. Slang terms, abbreviations, newly coined words, and nongrammatical words or expressions belong here, and people are more likely to use these words with a certain sentimental tendency compared to other standard words. Thus, it becomes important to nd their meanings or sentiments to analyze the sentiment of user-generated texts. This paper proposes a novel sentiment analysis model, termed DualSentiNet, which predicts the sentiments of newly emerged words and documents at the same time. Our model is composed of three parts: (i) a word-level sentiment regression network, (ii) a document-level sentiment classi cation network, and (iii) a shared word embedding layer. DualSentiNet makes a word embedding layer shared by two different networks, thereby learning richer information about both word-level and document-level sentiments through two-way back-propagation. Consequently, it improves the performance of sentiment prediction by preventing word vectors from being over tted. Experimental results show that DualSentiNet signi cantly outperforms competitors in terms of both document sentiment classi cation accuracy and the word sentiment regression RMSE. In addition, DualSentiNet produces better word embedding by reecting both word and document sentiments. © 2018 ACM.
URI
https://oasis.postech.ac.kr/handle/2014.oak/41637
ISSN
0000-0000
Article Type
Conference
Citation
ACM International Conference on Ubiquitous Information Management and Communication (IMCOM), 2018-01-07
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유환조YU, HWANJO
Dept of Computer Science & Enginrg
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