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Design and Implementation of Short Video Recommendation Algorithm Based on Latent Factor Model

机译:基于潜在因子模型的短路推荐算法的设计与实现

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With the continuous Internet development, network information amount has increased significantly. In this way, users faced with extensive network information cannot quickly find information that meets their needs, leading to decreased efficiency in network information usage. Accordingly, personalized recommendation system should be an important part of the electronic platform system as recommendation efficiency directly affects the user experience and the use of electronic platforms. In recent years, the data of electronic platforms presents a trend of massive growth, resulting in decreased accuracy in system recommendations, increased errors, and decreased efficiency. Therefore, it is particularly necessary to study and analyze personalized recommendation algorithms. Based on the research and application of latent factor model in short video recommendation algorithm, this paper aims to recommend users with video content that truly meets user needs and interests.
机译:随着持续的互联网发展,网络信息量的显着增加。 通过这种方式,面临广泛的网络信息的用户无法快速找到满足其需求的信息,从而降低了网络信息使用中的效率。 因此,个性化推荐系统应该是电子平台系统的重要组成部分,因为推荐效率直接影响了用户体验和电子平台的使用。 近年来,电子平台的数据具有大量增长的趋势,导致系统建议,误差增加和效率下降的准确性下降。 因此,特别需要研究和分析个性化推荐算法。 基于短视频推荐算法潜伏因子模型的研究和应用,本文旨在推荐具有真正满足用户需求和兴趣的视频内容的用户。

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