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Cross Domain Framework for Implementing Recommendation Systems Based on Context Based Implicit Negative Feedback

机译:基于上下文隐式负反馈实现推荐系统的跨域框架

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摘要

The last decade met a remarkable proliferation of P2P networks, PDMS, semantic web, communitarian websites, electronic stores, etc. resulting in an overload of available information. One of the solutions to this information overload problem is using efficient tools such as the recommender system which is a personalization system that helps users to find items of interest based on their preferences. Several such recommendation engines do exist under different domains. However these recommendation systems are not very effective due to several issues like lack of data, changing data, changing user preferences, and unpredictable items. This paper proposes a novel model of Recommendation systems in e-commerce domain which will address issues of cold start problem and change in user preference problem. This model is based on studying implicit negative feedback from users in cross domain collaborative environment to identify user preferences effectively. The authors have also identified a list of parameters for this study.
机译:在过去的十年中,P2P网络,PDMS,语义网,社区网站,电子商店等出现了惊人的增长,导致可用信息过多。解决此信息超载问题的方法之一是使用有效的工具,例如推荐系统,这是一种个性化系统,可以帮助用户根据自己的偏好找到感兴趣的项目。在不同的领域中确实存在几个这样的推荐引擎。但是,由于一些问题,例如数据不足,数据更改,用户偏好更改以及项目不可预测,这些推荐系统并不是很有效。本文提出了一种电子商务领域的推荐系统模型,该模型将解决冷启动问题和用户偏好问题的变化。该模型基于研究跨域协作环境中用户的隐式负反馈,以有效识别用户偏好。作者还确定了这项研究的参数清单。

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