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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence, 25 / No. 1: Twenty-Fifth AAAI Conference on Artificial Intelligence

Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity

March 8, 2023

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Abstract:

Sentiment analysis is the task of determining the attitude (positive or negative) of documents. While the polarity of words in the documents is informative for this task, polarity of some words cannot be determined without domain knowledge. Detecting word polarity thus poses a challenge for multiple-domain sentiment analysis. Previous approaches tackle this problem with transfer learning techniques, but they cannot handle multiple source domains and multiple target domains. This paper proposes a novel Bayesian probabilistic model to handle multiple source and multiple target domains. In this model, each word is associated with three factors: Domain label, domain dependence/independence and word polarity. We derive an efficient algorithm using Gibbs sampling for inferring the parameters of the model, from both labeled and unlabeled texts. Using real data, we demonstrate the effectiveness of our model in a document polarity classification task compared with a method not considering the differences between domains. Moreover our method can also tell whether each word's polarity is domain-dependent or domain-independent. This feature allows us to construct a word polarity dictionary for each domain.

Authors

Yasuhisa Yoshida

Nara Institute of Science and Technology


Tsutomu Hirao

NTT Communication Science Laboratories


Tomoharu Iwata

NTT Communication Science Laboratories


Masaaki Nagata

NTT Communication Science Laboratories


Yuji Matsumoto

Nara Institute of Science and Technology


DOI:

10.1609/aaai.v25i1.8081


Topics: AAAI

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HOW TO CITE:

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity Proceedings of the AAAI Conference on Artificial Intelligence, 25 (2011) 1286.

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity AAAI 2011, 1286.

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto (2011). Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity. Proceedings of the AAAI Conference on Artificial Intelligence, 25, 1286.

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto. Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity. Proceedings of the AAAI Conference on Artificial Intelligence, 25 2011 p.1286.

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto. 2011. Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity. "Proceedings of the AAAI Conference on Artificial Intelligence, 25". 1286.

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto. (2011) "Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity", Proceedings of the AAAI Conference on Artificial Intelligence, 25, p.1286

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto, "Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity", AAAI, p.1286, 2011.

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto. "Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity". Proceedings of the AAAI Conference on Artificial Intelligence, 25, 2011, p.1286.

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto. "Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity". Proceedings of the AAAI Conference on Artificial Intelligence, 25, (2011): 1286.

Yasuhisa Yoshida|| Tsutomu Hirao|| Tomoharu Iwata|| Masaaki Nagata|| Yuji Matsumoto. Transfer Learning for Multiple-Domain Sentiment Analysis — Identifying Domain Dependent/Independent Word Polarity. AAAI[Internet]. 2011[cited 2023]; 1286.


ISSN: 2374-3468


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