Analysis of Movie Recommendation System Data Sets using machine learning techniques

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Abstract

Multimedia has emerged as one of the top entertainment source due to cheap and uninterrupted availability of high internet speeds. “Movie recommendation system have attracted much research interest within the field of recommendation systems. Two widely used techniques, one is collaborative filtering (CF) and second is content-based (CB). However, the accuracy performance of any hybrid system which utilizes more advantage of both systems to better results. Movie recommendation systems has suffered from different problems, such as “, Sparsity, Grey sheep problem, Cold start problem, Long-tail problem” etc. Basic Issues can be solved if we take the right choice on what kind of movies to ignore, what movies to suggest. The suggestions generated using approaches such as Linear Regression, Decision Trees, and Bayesian Analysis are examined in this study. Movie-Lens-1M and Movie-Lens-10M are the dataset considered. The results of this experiment suggest that Decision Tree and Linear Regression & Random Forest work well as compared to Bayesian Learning.
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使用机器学习技术分析电影推荐系统数据集
由于廉价和不间断的高速互联网,多媒体已经成为顶级娱乐来源之一。电影推荐系统在推荐系统领域引起了广泛的研究兴趣。两种广泛使用的技术,一种是协同过滤(CF),另一种是基于内容的过滤(CB)。然而,任何混合系统的精度性能都是利用两种系统的优势来获得更好的结果。电影推荐系统遇到了不同的问题,如“稀疏性问题、灰羊问题、冷启动问题、长尾问题”等。如果我们在忽略哪些电影,建议哪些电影上做出正确的选择,基本问题是可以解决的。使用线性回归、决策树和贝叶斯分析等方法产生的建议在本研究中进行了检验。Movie-Lens-1M和Movie-Lens-10M是考虑的数据集。实验结果表明,与贝叶斯学习相比,决策树和线性回归&随机森林的效果更好。
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