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A Method for Using Neural Networks and Machine Learning to Effectively Classify the Sentiment of Travel Reviews Based on Co-Referential Aspect and Entity

Sheetal K. Bhala

Abstract


The travel industry is a broadly expanding industry and vacationer reveiws assumes the imperative part for individuals to choose the spot, inn, eateries and others. In some cases there is assortment of unimportant information which prompts the undesirable blunders. In order to limit this uproarious information we utilize angle based feeling characterization. In this paper we are attempting to recognize the implied unequivocal and co referential angles and play out the feeling characterization with the higher productivity. Here in this paper we would utilize the AI Calculations and the brain network calculations for the feeling characterization.


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