Impact of Matrix Factorization and Regularization Hyperparameter on a Recommender System for Movies

Gess Fathan, T. B. Adji, R. Ferdiana
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引用次数: 7

Abstract

Recommendation system is developed to match consumers with product to meet their variety of special needs and tastes in order to enhance user satisfaction and loyalty. The popularity of personalized recommendation system has been increased in recent years and applied in several areas include movies, songs, books, news, friend recommendations on social media, travel products, and other products in general. Collaborative Filtering methods are widely used in recommendation systems. The collaborative filtering method is divided into neighborhood-based and model-based. In this study, we are implementing matrix factorization which is part of model-based that learns latent factor for each user and item and uses them to make rating predictions. The method will be trained using stochastic gradient descent and optimization of regularization hyperparameter. In the end, neighborhood-based collaborative filtering and matrix factorization with different values of regularization hyperparameter will be compared. Our result shows that matrix factorization method is better than item-based collaborative filtering method and even better with tuning the regularization hyperparameter by achieving lowest RMSE score. In this study, the used functions are available from Graphlab and using Movielens 100k data set for building the recommendation systems.
矩阵分解和正则化超参数对电影推荐系统的影响
推荐系统的开发是为了将消费者与产品相匹配,以满足消费者的各种特殊需求和口味,从而提高用户满意度和忠诚度。近年来,个性化推荐系统的普及程度越来越高,应用于电影、歌曲、书籍、新闻、社交媒体上的朋友推荐、旅游产品以及其他一般产品等领域。协同过滤方法在推荐系统中应用广泛。协同过滤方法分为基于邻域和基于模型两种。在这项研究中,我们正在实现矩阵分解,这是基于模型的一部分,它学习每个用户和物品的潜在因素,并使用它们进行评级预测。该方法将使用随机梯度下降和正则化超参数优化进行训练。最后,比较了基于邻域的协同过滤和不同正则化超参数值的矩阵分解。结果表明,矩阵分解方法优于基于项目的协同过滤方法,并且通过调整正则化超参数达到最低RMSE得分。在本研究中,使用的函数来自Graphlab,并使用Movielens 100k数据集构建推荐系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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