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Med-Recommender System for Predictive Analysis of Hospitals and Doctors

机译:Med-Recommender系统,用于医院和医生的预测分析

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A recommender system is proposed and developed to help users to find the best hospital for a particular treatment. Finding a best hospital that can cure one's ailment is of paramount importance. A good hospital is one in which there are always enough staff on duty with the right skills, knowledge and experience. Customer experience is how customers perceive their interactions with a company or an organization. A customer's experience is reflected in the comments that he makes about the organization through online public forums. Med-recommender system aims to provide accurate analysis of hospitals by taking into account the reviews by thousands of patients, which were written by the patients themselves in various online forums. Our recommendation system performs sentiment analysis on the reviews of various patients using Natural Language Processing techniques to classify them as positive and negative reviews. It weighs the ranking of hospitals on three different parameters namely polarity, subjectivity and intensity. The hospital with the best ranking for curing a particular disease is then given as result to the user asking for a recommendation. The system is evaluated using 300 online reviews about hospitals and specialties and found to yield 90% of accuracy. The proposed system also helps the users to understand the quality of a certain hospital by providing star ratings for the hospital when the user needs.
机译:提出并开发了推荐系统,以帮助用户找到针对特定治疗的最佳医院。寻找可以治愈自己疾病的最佳医院至关重要。好的医院就是其中总是有足够的工作人员拥有正确的技能,知识和经验。客户体验是客户如何看待他们与公司或组织的互动。客户通过在线公共论坛对组织的评论反映了客户的体验。 Med-recommender系统旨在通过考虑数千名患者的评论来提供对医院的准确分析,这些评论是由患者自己在各种在线论坛上撰写的。我们的推荐系统使用自然语言处理技术对各种患者的评论进行情感分析,以将其分为正面评论和负面评论。它根据极性,主观性和强度这三个不同的参数权衡了医院的排名。然后,将具有最佳治愈特定疾病排名的医院作为结果提供给用户,要求其推荐。该系统使用有关医院和专科的300条在线评论进行评估,发现其准确性为90%。所提出的系统还通过在用户需要时为医院提供星级评定来帮助用户了解某家医院的质量。

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