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A Class-Based Strategy to User Behavior Modeling in Recommend er Systems

机译:推荐ER系统中的基于类策略的用户行为建模

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A recommender system is a tool employed to filter the huge amounts of data that companies have to deal with, and produce effective suggestions to the users. The estimation of the interest of a user toward an item, however, is usually performed at the level of a single item, i.e., for each item not evaluated by a user, canonical approaches look for the rating given by similar users for that item, or for an item with similar content. Such approach leads toward the so-called overspecial-ization/serendipity problem, in which the recommended items are trivial and users do not come across surprising items. This work first shows that user preferences are actually distributed over a small set of classes of items, leading the recommended items to be too similar to the ones already evaluated, then we propose a novel model, named Class Path Information (CPI), able to represent the current and future preferences of the users in terms of a ranked set of classes of items. The proposed approach is based on a semantic analysis of the items evaluated by the users, in order to extend their ground truth and infer the future preferences. The performed experiments show that our approach, by including in the CPI model the same classes predicted by a state-of-the-art recommender system, is able to accurately model the user preferences in terms of classes, instead of in terms of single items, allowing to recommend non trivial items.
机译:推荐系统是一个用于过滤公司必须处理的大量数据的工具,并为用户提供有效的建议。然而,用户对项目的兴趣估计通常在单个项目的级别执行,即,对于未被用户评估的每个项目,规范方法查找由该项目的类似用户给出的评级,或者对于具有类似内容的项目。这种方法导致所谓的超薄 - 释放/偶然问题,其中推荐的物品是琐碎的,用户不会遇到令人惊讶的物品。这首作品首先显示用户偏好实际上是分布在一小组类别的项目上,引导推荐的项目太类似于已经评估的项目,然后我们提出了一个名为Class Path信息(CPI)的小说模型,能够代表用户在排名的项目类别方面的当前和未来偏好。所提出的方法基于对用户评估的项目的语义分析,以延长其基础事实并推断未来的偏好。所执行的实验表明,我们的方法包括在CPI模型中,通过最先进的推荐系统预测的相同类,能够在类方面准确地模拟用户偏好,而不是在单个项目方面,允许推荐非琐碎的物品。

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