一种面向web个性化推荐系统的快速协同过滤方法

Fayaz Dafedar, K. Bharati
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引用次数: 3

摘要

协同过滤(CF)是推荐系统中最重要的技术之一。然而,这个CF技术领域受到推荐质量、预测误差大和数据稀疏性等问题的困扰。TYCO的一个独特特点是根据用户的典型程度获得“邻居”。在协同网络个性化推荐系统(WRS)中,通过相似性度量支持熵生成推荐,从而向系统用户推荐建议。首先计算用户之间基于熵的相似度,从而实现可量化。基于这种基于熵的相似性,将生成在线推荐,并根据用户以前的数据和偏好向用户提供进一步的建议。此外,该系统能够以较小的大误差预测获得最准确的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast collaborative filtering approach for web personalized recommendation system
Collaborative Filtering (CF) is that the most significant technology that is employed in recommender systems (RS). However, this CF techniques area unit plagued by issues like quality in recommendation, big-error in predictions and data sparsity. A unique characteristic of TYCO is obtaining ‘neighbours’ based on typicality degree of user. In the collaborative web personalized Recommender system (WRS) the recommendations are created by similarity measure supported entropy so as to recommend the advice to the users of the system. Primarily the entropy based similarity is calculated between the users so as to realize quantifiability. Based on this entropy based similarity the online recommendations are going to generate and further suggestions can be given to the users based on their previous data and preferences. Moreover the proposed system can procure most accurate predictions with lesser big-error predictions.
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