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A Recommendation Method Based on Contents and User Feedback

机译:基于内容和用户反馈的推荐方法

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摘要

Nowadays, user is provided with many contents, which the previous search engines failed to find, thanks to various recommendation systems. These recommendation algorithms are usually carried out using collaborating filtering algorithm, which predicts user's preference, or contents based algorithm, which calculates on the basis of the similarity between contents. In addition to the above algorithms, many algorithms using user's context have been recently developed. Based on the previous researches, this paper proposes a new system to categorize contents information into various factors and learn user's selection. First, we divide information of items into four types and make user preference pattern using each information type. The information types can express more various user preferences and user preference pattern can calmly deal with user preference. Then, we calculate the score for recommendation using user preference pattern. That is, our system is constructed on these three modules: item analyzing module, user pattern analyzing module and recommendation score module. Lastly, we provide entire system flow to show how they work.
机译:如今,由于各种推荐系统,用户提供了许多内容,因此之前搜索引擎未能找到哪些内容。这些推荐算法通常使用协作滤波算法进行,该算法预测用户的偏好或基于内容的算法,其基于内容之间的相似性计算。除了上述算法之外,最近已经开发了许多使用用户上下文的算法。基于以前的研究,本文提出了一种新系统,可以将内容信息分类为各种因素并学习用户的选择。首先,我们将物品的信息除以四种类型,并使用每个信息类型进行用户偏好模式。信息类型可以表达更多各种用户偏好,用户偏好模式可以冷静地处理用户偏好。然后,我们使用用户偏好模式计算推荐的分数。也就是说,我们的系统是在这三个模块上构建的:项目分析模块,用户模式分析模块和推荐得分模块。最后,我们提供整个系统流动以显示它们的工作方式。

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