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Entropy based classifier for cross-domain opinion mining
Author(s) -
Jyoti Deshmukh,
Amiya Kumar Tripathy
Publication year - 2017
Publication title -
applied computing and informatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.665
H-Index - 22
eISSN - 2634-1964
pISSN - 2210-8327
DOI - 10.1016/j.aci.2017.03.001
Subject(s) - computer science , sentiment analysis , bipartite graph , domain adaptation , classifier (uml) , artificial intelligence , domain (mathematical analysis) , cluster analysis , entropy (arrow of time) , pattern recognition (psychology) , data mining , machine learning , graph , mathematics , theoretical computer science , mathematical analysis , physics , quantum mechanics
In recent years, the growth of social network has increased the interest of people in analyzing reviews and opinions for products before they buy them. Consequently, this has given rise to the domain adaptation as a prominent area of research in sentiment analysis. A classifier trained from one domain often gives poor results on data from another domain. Expression of sentiment is different in every domain. The labeling cost of each domain separately is very high as well as time consuming. Therefore, this study has proposed an approach that extracts and classifies opinion words from one domain called source domain and predicts opinion words of another domain called target domain using a semi-supervised approach, which combines modified maximum entropy and bipartite graph clustering. A comparison of opinion classification on reviews on four different product domains is presented. The results demonstrate that the proposed method performs relatively well in comparison to the other methods. Comparison of SentiWordNet of domain-specific and domain-independent words reveals that on an average 72.6% and 88.4% words, respectively, are correctly classified

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