对数据变化趋势提出建议

T. Nguyen, Phuc Quang Tran, H. T. Nguyen, Toan Phung Huynh, L. Hạnh, H. Huynh
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引用次数: 0

摘要

目前对推荐系统的研究主要集中在用户和数据项之间存在或不存在优先关系的逻辑性质上,而不考虑基于特定上下文中用户和数据项之间的比例或隐含关系的统计。因此,本文提出了一种基于数据变化趋势的推荐系统新方法;这种方法将有助于形成一种新的方法来推荐系统基于知识的隐式形式,通过计算的偏导数的兴趣度测量。此外,实验以MSWeb数据集为经验数据,对所提模型与传统模型的有效性进行了评价,并对所提模型得到的结果进行了比较和讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards data variation trends recommendation
Present study on recommender systems mainly focuses on the logical nature of the existence or non-existence of a priority relationship between the user and data item, regardless of the ratio or implicative relationship based on statistics between users and data items in a particular context. Therefore, this report proposes a new approach to recommender systems based on data variation trends; such method will help form a new approach to recommender systems on basis of knowledge available in the form of implicity by computation of partial derivatives for interestingness measurements. In addition, experiments aim at evaluating the effectiveness of the proposed model with traditional models based on using MSWeb dataset as empirical data, comparing and discussing the results obtained from the proposed model.
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