协同过滤在推荐系统中的作用

Taufique Umar Bux, Bhavya Varshney, Arjun K P
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引用次数: 0

摘要

推荐系统(RS)可以使用不同类别的技术,如按内容过滤或混合过滤。然而,最广泛和流行的RS是协同过滤(CF)。它的主要思想是计算和预测用户对任何物品的兴趣。如果提供足够的数据,基于CF的RS足以提供最准确的预测,因为它是基于用户偏好的技术。RS最关键的部分是预测用户的行为,在过去,基于用户的CF已经成功地做到了这一点。但是它们的特定用法暴露了一些真正的问题,比如信息稀疏性和信息多功能性,客户机和事物的数量一点一点地增加。这项工作提出了CF的核心思想,它对具有多功能网络的客户的基本用途,CF计算的假设和实践,以及有关评级框架和评估安全的计划解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Role of Collaborative Filtering in Recommendation Systems
Different categories of techniques can be utilized in recommendation systems (RS), like filtering by the content or hybrid filtering. However, the most extensive and popular RS is collaborative filtering (CF). Its main idea is to calculate and predict the user's interest in any item. If enough data is provided, CF -based RS is sufficient to provide the most accurate prediction as it is a user's preference-based technique. The most crucial part of RS is to predict its user's behavior, and in the past, user-based CF has done it successfully. But their specific usage has uncovered a few genuine problems, like information sparsity and information versatility, with, bit by bit increasing the number of clients and things. This work presents the central ideas of CF, its essential usage for clients with versatile networks, the hypothesis and practice for the calculation of CF and plan settlements concerning rating frameworks & appraisals securing.
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