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XGBRS Framework Integrated with Word2Vec Sentiment Analysis for Augmented Drug Recommendation
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作者 Shweta Paliwal Amit Kumar mishra +2 位作者 ram krishn mishra Nishad Nawaz M.Senthilkumar 《Computers, Materials & Continua》 SCIE EI 2022年第9期5345-5362,共18页
Machine Learning is revolutionizing the era day by day and the scope is no more limited to computer science as the advancements are evident in the field of healthcare.Disease diagnosis,personalized medicine,and Recomm... Machine Learning is revolutionizing the era day by day and the scope is no more limited to computer science as the advancements are evident in the field of healthcare.Disease diagnosis,personalized medicine,and Recommendation system(RS)are among the promising applications that are using Machine Learning(ML)at a higher level.A recommendation system helps inefficient decision-making and suggests personalized recommendations accordingly.Today people share their experiences through reviews and hence designing of recommendation system based on users’sentiments is a challenge.The recommendation system has gained significant attention in different fields but considering healthcare,little is being done from the perspective of drugs,disease,and medical recommendations.This study is engrossed in designing a recommendation system that is based on the fusion of sentiment analysis and radiant boosting.The polarity of the sentiments is analyzed through user reviews and the processed data is fed into the Extreme Gradient Boosting(XGBOOST)framework to generate the drug recommendation.To establish the applicability of the concept a comparative study is performed between the proposed approach and the existing approaches. 展开更多
关键词 Recommendation system Word2Vec XGBOOST sentiment analysis natural language processing(NLP) machine learning
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