Sentiment Classification for Domain Adaptation Using Cross Domains
نویسنده
چکیده
Sentiment analysis aims to determine the attitude and the feelings of the opinion holder for the given reviews. Reviews contain features and opinion. Automatic extraction of customer opinion which is used by both manufacturers and customers. The Sentiment Classifier might classify reviews as positive or negative based on the sentiment expressed in review. Sentiment classification is domain dependent that is the same opinion word gives different meaning in different domains. Cross domains sentiment classification must identify the source domain features that are related to the target domain features. Classify reviews as positive Also the Challenges of training a classifier from one or more domains and applying the trained classifier on different domain are handled here. Most of the sentiment analysis tool handles single domain or domain specific.
منابع مشابه
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