An improved collaborative filtering recommendation algorithm not based on item rating

Zhisheng Zhong, Yong Sun, Yue Wang, Pengfei Zhu, Yue Gao, Huanle Lv, Xiaolin Zhu
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引用次数: 1

Abstract

As e-commerce grows fast nowadays, recommender systems have become an integral part of every electricity business. A number of the recommendation algorithms need score matrix (i.e., matrix that is used to record the data of the score that users value the item) as a mean of input. However, in many cases, the data only obtained the user's record matrix (i.e., matrix that contained only whether users have purchased or downloaded the item, without a score that is about a particular range), instead of the users' score matrix. Under this circumstance, the record matrix fails to reflect the preference of the user, the function of the recommendation algorithm declined. The feature of the improved algorithm the paper presents that, by recording a neighbor user (i.e., a similar user) data of purchase or download history, the current users' preference of the item can be predicted, and by record matrix authors can predict users' preferences of an item, thereby improve the effectiveness of recommendation algorithm which requires score matrix as an input.
一种改进的不基于物品评级的协同过滤推荐算法
在电子商务快速发展的今天,推荐系统已经成为每一个电子商务中不可或缺的一部分。许多推荐算法需要分数矩阵(即用于记录用户对项目的评分数据的矩阵)作为输入的平均值。但是,在很多情况下,数据只获得用户的记录矩阵(即仅包含用户是否购买或下载了该商品的矩阵,而没有关于特定范围的分数),而不是用户的分数矩阵。在这种情况下,记录矩阵不能反映用户的偏好,推荐算法的功能下降。本文提出的改进算法的特点是,通过记录邻居用户(即相似用户)的购买或下载历史数据,可以预测当前用户对该商品的偏好,通过记录矩阵可以预测用户对该商品的偏好,从而提高了需要分数矩阵作为输入的推荐算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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