Htait, Amal, Fournier, Sébastien and Bellot, Patrice (2017). LSIS at SemEval-2017 Task 4: Using Adapted Sentiment Similarity Seed Words For English and Arabic Tweet Polarity Classification. IN: International Workshop on Semantic Evaluation. Association for Computational Linguistics.
Abstract
We present, in this paper, our contribution in SemEval2017 task 4 : " Sentiment Analysis in Twitter " , subtask A: " Message Polarity Classification " , for En-glish and Arabic languages. Our system is based on a list of sentiment seed words adapted for tweets. The sentiment relations between seed words and other terms are captured by cosine similarity between the word embedding representations (word2vec). These seed words are extracted from datasets of annotated tweets available online. Our tests, using these seed words, show significant improvement in results compared to the use of Turney and Littman's (2003) seed words, on polarity classification of tweet messages.
Divisions: | ?? 50811700Jl ?? College of Business and Social Sciences > Aston Institute for Forensic Linguistics |
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Last Modified: | 04 Nov 2024 09:48 |
Date Deposited: | 20 Dec 2022 14:02 |
Full Text Link: |
https://hal.arc ... fr/hal-01771654 https://aclanth ... y.org/S17-2120/ |
Related URLs: | PURE Output Type: | Conference contribution |
Published Date: | 2017 |
Authors: |
Htait, Amal
(
0000-0003-4647-9996)
Fournier, Sébastien Bellot, Patrice |