基于矩阵分解的个性化电影推荐模型

Siripen Pongpaichet, Thatchapon Unprasert, Suppawong Tuarob, Petch Sajjacholapunt
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引用次数: 2

摘要

个性化推荐一直是一个活跃的研究领域。许多公司,如Facebook、Amazon和eBay,都加入了这样的功能来增强用户体验和参与度。在今天的市场中,流媒体数字内容(例如,在线电影)已经无处不在,随时随地都可以访问。流媒体市场的快速增长促使许多提供商提供个性化的体验来获取客户忠诚度。在本文中,我们提出了一个基于奇异值分解(SVD)的评分预测算法的电影推荐系统。本文以MovieLens和thaaiware movie为例,对评分预测和电影推荐两项任务进行了实证评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SGD-Rec: A Matrix Decomposition Based Model for Personalized Movie Recommendation
A personalized recommendation has been an active area of research. Many companies such as Facebook, Amazon, and eBay have incorporated such functionality to enhance user experience and engagement. In today’s market, streaming digital contents (e.g., online movies) have become ubiquitous and accessi-ble from anywhere and anytime. The rapid growth of streaming market urges many providers to offer a personalized experience to capture customer loyalty. In this paper, we present a movie recommending system based on our proposed rating prediction algorithm using singular value decomposition (SVD). Empirical evaluation is conducted on two tasks: rating prediction and movie recommendation, using two case studies from MovieLens and Thaiware Movie.
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