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A Deep Neural Network Model for Cross-Domain Sentiment Analysis

A Deep Neural Network Model for Cross-Domain Sentiment Analysis
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Author(s): Suman Kumari (Swami Keshvanand Institute of Technology, Management, and Gramothan, Jaipur, India), Basant Agarwal (Indian Institute of Information Technology, Kota, India)and Mamta Mittal (G.B. Pant Government Engineering College, New Delhi, India)
Copyright: 2022
Pages: 17
Source title: Research Anthology on Implementing Sentiment Analysis Across Multiple Disciplines
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-6684-6303-1.ch008

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Abstract

Sentiment analysis is used to detect the opinion/sentiment expressed from the unstructured text. Most of the existing state-of-the-art methods are based on supervised learning, and therefore, a labelled dataset is required to build the model, and it is very difficult task to obtain a labelled dataset for every domain. Cross-domain sentiment analysis is to develop a model which is trained on labelled dataset of one domain, and the performance is evaluated on another domain. The performance of such cross-domain sentiment analysis is still very limited due to presence of many domain-related terms, and the sentiment analysis is a domain-dependent problem in which words changes their polarity depending upon the domain. In addition, cross-domain sentiment analysis model suffers with the problem of large number of out-of-the-vocabulary (unseen words) words. In this paper, the authors propose a deep learning-based approach for cross-domain sentiment analysis. Experimental results show that the proposed approach improves the performance on the benchmark dataset.

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