Movie Rating Prediction Recommendation Algorithm based on XGBoost-DNN

Saisai Yu, Jianlong Qiu, Xin Bao, Ming Guo, Xiangyong Chen, Jianqiang Sun
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引用次数: 2

Abstract

In the traditional movie recommendation, because the features of users and movies are not considered, only the users' ratings of movies are considered, so there is a problem that the recommendation is not accurate enough. In response to this problem, this paper proposes a movie rating prediction recommendation algorithm based on XGBoost-DNN. First, XG-Boost is used to screen user features and movie features, and the features that have a great impact on movie rating prediction are screened out, and then the screened features are used as the input of DNN, the user network, and the movie network is trained to obtain the user feature vector and movie feature vector respectively, and then the user's predicted rating of the movie is obtained through the neural network, and finally compared with LightGBM, SVR, KNN, and RandomForest, this paper proposed XGBoost-DNN model reduces the MSE indicator by 0.223, 0.75, 0.451, and 0.306 respectively, which effectively improves the accuracy of rating prediction, and thus improves the accuracy of movie recommendation.
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基于XGBoost-DNN的电影评分预测推荐算法
在传统的电影推荐中,由于没有考虑用户和电影的特征,只考虑了用户对电影的评分,因此存在推荐不够准确的问题。针对这一问题,本文提出了一种基于XGBoost-DNN的电影评分预测推荐算法。首先,XG-Boost用于屏幕用户特性和电影的特性,和特性有很大的影响电影评级预测筛选出来,然后筛选功能是用作输入款,用户网络,和电影网络训练来获取用户特征向量和电影特征向量分别,然后预测用户的评级的电影是通过神经网络,最后与LightGBM相比,SVR,然而,RandomForest,本文提出的XGBoost-DNN模型分别将MSE指标降低了0.223、0.75、0.451和0.306,有效提高了评分预测的准确率,从而提高了电影推荐的准确率。
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