Design of a Hybrid Movie Recommender System Using Machine Learning

Vishal Paranjape, Neelu Nihalani, Nishchol Mishra
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Abstract

The primary aim of recommender system is to predict items which are of most interest to the users and today recommender systems play a vital role in boosting the sales in any e-commerce based platform. The present paper proposes an approach for recommending movies to the users on the basis on their choices. A novel technique for evaluation of collaborative filtering using SVD and hit ratio as a metric is taken in our proposed approach. We attempted to build a model-based Collaborative filtering technique. The proposed paper makes use of matrix factorization techniques like SVD & SVD++ for filtering movie recommendation system based on latent features. It makes better recommendations based on choice of user because it captures the underlying features driving the raw data. In this paper we are proposing a hybrid recommender system fusion of Content Based and SVD to get a new hybrid recommender system. Our proposed model gives the value of RMSE 0.87 for SVD model and RMSE 0.938 for SVD++ model. Keywords-- Collaborative filtering, movie recommendation, SVD, content based filtering
基于机器学习的混合电影推荐系统设计
推荐系统的主要目的是预测用户最感兴趣的商品,在当今的电子商务平台中,推荐系统在促进销售方面起着至关重要的作用。本文提出了一种基于用户选择向用户推荐电影的方法。本文提出了一种以奇异值分解和命中率为度量标准的协同过滤评价方法。我们尝试建立一种基于模型的协同过滤技术。本文利用SVD和svd++等矩阵分解技术对基于潜在特征的电影推荐系统进行过滤。它根据用户的选择提供更好的建议,因为它捕获了驱动原始数据的底层特性。本文提出了一种融合基于内容和奇异值分解的混合推荐系统,从而得到一种新的混合推荐系统。我们提出的模型给出了SVD模型的RMSE 0.87和svd++模型的RMSE 0.938的值。关键词:协同过滤,电影推荐,SVD,基于内容的过滤
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