Collaborative Movie Recommendation System using Enhanced Fuzzy C-Means Clustering with Dove Swarm Optimization Algorithm

Q3 Engineering
S. S, C. Jeyalakshmi
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引用次数: 0

Abstract

Recommender Systems (RSs) aid in filtering information seeking to envisage user and item ratings, primarily from huge data to recommend the likes. Movie RSs offer a scheme to help users categorize them based on comparable interests. This enables RSs to be a dominant part of websites and e-commerce applications. This paper proposes an optimized RS for movies, primarily aiming to suggest an RS by clustering data and Computational Intelligence (CI). Unsupervised clustering, a model-based Collaborative Filtering (CF) category, is preferred as it offers simple and practical recommendations. Nevertheless, it involves an increased error rate and consumes more iterations for converging. Enhanced Fuzzy C-Means (EFCM) clustering is proposed to handle these issues. Dove Swarm Optimisation Algorithm (DSOA)-based RS is proposed for optimising Data Points (DPs) in every cluster, providing effcient recommendations. The performance of the proposed EFCM-DSOA-based RS is analysed by performing an experimental study on benchmarked MovieLens Dataset. To ensure the effciency of the proposed EFCM-DSOA-based RS, the outcomes are compared with EFCM-Particle Swarm Optimization (EFCM-PSO) and EFCM-Cuckoo Search (EFCM-CS) based on standard optimization functions. The proposed EFCM-DSOA-based RS offers improved F-measure, Accuracy, and Fitness convergence.
基于鸽群优化算法的增强型模糊c均值聚类协同电影推荐系统
推荐系统(RSs)有助于过滤信息,以设想用户和商品的评级,主要是从大量数据中推荐喜欢的内容。电影RSs提供了一种方案,帮助用户根据可比较的兴趣对它们进行分类。这使得RSs成为网站和电子商务应用程序的主导部分。本文提出了一种基于数据聚类和计算智能(CI)的电影分类算法。无监督聚类是一种基于模型的协同过滤(CF)类别,因为它提供了简单实用的建议,所以更受欢迎。然而,它涉及到增加的错误率,并且需要更多的迭代来收敛。针对这些问题,提出了增强模糊c均值聚类方法。提出了基于鸽子群优化算法(DSOA)的RS算法,对每个集群中的数据点(DPs)进行优化,提供有效的推荐。通过对基准MovieLens数据集进行实验研究,分析了所提出的基于efcm - dsoa的RS的性能。为了验证该算法的有效性,将结果与基于标准优化函数的efcm -粒子群优化(EFCM-PSO)和efcm -布谷鸟搜索(EFCM-CS)进行了比较。提出的基于efcm - dsoa的RS提供了改进的F-measure、精度和适应度收敛性。
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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来源期刊
Transactions on Electrical Engineering, Electronics, and Communications
Transactions on Electrical Engineering, Electronics, and Communications Engineering-Electrical and Electronic Engineering
CiteScore
1.60
自引率
0.00%
发文量
45
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