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A Personalized Electronic Movie Recommendation System Based on Support Vector Machine and Improved Particle Swarm Optimization

机译:基于支持向量机和改进粒子群算法的个性化电子电影推荐系统

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摘要

With the rapid development of ICT and Web technologies, a large an amount of information is becoming available and this is producing, in some instances, a condition of information overload. Under these conditions, it is difficult for a person to locate and access useful information for making decisions. To address this problem, there are information filtering systems, such as the personalized recommendation system (PRS) considered in this paper, that assist a person in identifying possible products or services of interest based on his/her preferences. Among available approaches, collaborative Filtering (CF) is one of the most widely used recommendation techniques. However, CF has some limitations, e.g., the relatively simple similarity calculation, cold start problem, etc. In this context, this paper presents a new regression model based on the support vector machine (SVM) classification and an improved PSO (IPSO) for the development of an electronic movie PRS. In its implementation, a SVM classification model is first established to obtain a preliminary movie recommendation list based on which a SVM regression model is applied to predict movies’ ratings. The proposed PRS not only considers the movie’s content information but also integrates the users’ demographic and behavioral information to better capture the users’ interests and preferences. The efficiency of the proposed method is verified by a series of experiments based on the MovieLens benchmark data set.
机译:随着ICT和Web技术的飞速发展,大量信息正变得可用,并且在某些情况下,这会导致信息过载的状况。在这种情况下,一个人很难找到并访问有用的信息以进行决策。为了解决这个问题,有一些信息过滤系统,例如本文中考虑的个性化推荐系统(PRS),可以帮助人们根据自己的喜好识别可能感兴趣的产品或服务。在可用的方法中,协作过滤(CF)是最广泛使用的推荐技术之一。但是,CF具有一些局限性,例如,相对简单的相似度计算,冷启动问题等。在此背景下,本文提出了一种基于支持向量机(SVM)分类的新回归模型,以及一种针对PVM(IPSO)的改进回归模型。电子电影PRS的发展。在其实施中,首先建立SVM分类模型以获得初步的电影推荐列表,基于该列表,将SVM回归模型应用于预测电影的收视率。拟议的PRS不仅会考虑电影的内容信息,而且会整合用户的人口统计信息和行为信息,以更好地捕捉用户的兴趣和偏好。通过基于MovieLens基准数据集的一系列实验,验证了该方法的有效性。

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