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首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >Learning Relational User Profiles and Recommending Items as Their Preferences Change
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Learning Relational User Profiles and Recommending Items as Their Preferences Change

机译:学习关系用户配置文件并根据其首选项更改推荐项目

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摘要

Over the last decade a vast number of businesses have developed online e-shops in the web. These online stores are supported by sophisticated systems that manage the products and record the activity of customers. There exist many research works that strive to answer the question "what items are the customers going to like" given their historical profiles. However, most of these works do not take into account the time dimension and cannot respond efficiently when data are huge. In this paper, we study the problem of recommendations in the context of multi-relational stream mining. Our algorithm "xStreams" first separates customers based on their historical data into clusters. It then employs collaborative filtering (CF) to recommend new items to the customers based on their group similarity. To evaluate the working of xStreams, we use a multi-relational data generator for streams. We evaluate xStreams on real and synthetic datasets.
机译:在过去的十年中,大量企业在网络上开发了在线电子商店。这些在线商店由管理产品并记录客户活动的复杂系统支持。考虑到他们的历史资料,有许多研究工作试图回答“顾客喜欢什么物品”这个问题。但是,大多数这些工作没有考虑时间维度,并且在数据量巨大时无法有效地响应。在本文中,我们研究了在多关系流挖掘中的建议问题。我们的算法“ xStreams”首先根据客户的历史数据将其分为几类。然后,它采用协作过滤(CF)来根据客户的组相似性向他们推荐新项目。为了评估xStreams的工作情况,我们对流使用了多关系数据生成器。我们在真实和合成数据集上评估xStreams。

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