基于余弦相似度和情感分析的电影推荐系统

Harsh Khatter, Nishtha Goel, Naina Gupta, Muskan Gulati
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引用次数: 13

摘要

多媒体被认为是最好的娱乐来源之一。各个年龄段的人都喜欢看电影。电影推荐系统在我们的社会生活中是必不可少的,因为它提高了娱乐领域。本文提出的电影推荐系统满足了用户的需求。主要目的是从互联网上的半结构化内容中为最终用户提供清晰的相关内容。其主要目的是为用户生成准确、高效和个性化的推荐。详细讨论了论文的绪论、文献综述、建议系统、实施与结果、比较分析、结论和未来工作等各个组成部分。对提出的机器学习模型进行训练、测试,并生成一个情感分类器,将情感分类为好情绪或坏情绪。推荐系统是通过应用余弦相似度和调用API生成的。因此,系统的实时工作可以为最终用户生成准确和个性化的建议以及情感分析。余弦相似度为推荐系统提供了更好、更高效的结果。
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Movie Recommendation System using Cosine Similarity with Sentiment Analysis
Multimedia is considered as one of the best sources of entertainment. People of all age groups love to watch movies. Movie Recommender System is essential in our social lives as it enhances the field of entertainment. The proposed system on Movie Recommendation System caters the requirements of the user. The major aim is to provide crisp relevant content to the end-users out of semi-structured content on the internet. The main purpose is to generate accurate, efficient and personalized recommendations to the user. Various building blocks of the paper like Introduction, Literature Survey, Proposed System, Implementation & Result, Comparative Analysis, Conclusion and Future Work are discussed in detail. The proposed machine learning model is trained, tested, and a sentiment classifier is generated which classify the sentiments as a good or a bad sentiment. The recommender system is generated by applying Cosine similarity and making API Calls. As a result, the live working of the system generates accurate and personalized recommendations along with the analysis of sentiments for the end users. It is also concluded that Cosine Similarity provides better and efficient results for a recommender system.
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