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Building user profiles based on sequences for content and collaborative filtering

机译:根据内容和协作过滤的顺序构建用户配置文件

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Modeling user profiles is a necessary step for most information filtering systems – such as recommender systems – to provide personalized recommendations. However, most of them work with users or items as vectors, by applying different types of mathematical operations between them and neglecting sequential or content-based information. Hence, in this paper we study how to propose an adaptive mechanism to obtain user sequences using different sources of information, allowing the generation of hybrid recommendations as a seamless, transparent technique from the system viewpoint. As a proof of concept, we develop the Longest Common Subsequence (LCS) algorithm as a similarity metric to compare the user sequences, where, in the process of adapting this algorithm to recommendation, we include different parameters to control the efficiency by reducing the information used in the algorithm (preference filter), to decide when a neighbor is considered useful enough to be included in the process (confidence filter), to identify whether two interactions are equivalent (δ-matching threshold), and to normalize the length of the LCS in a bounded interval (normalization functions). These parameters can be extended to work with any type of sequential algorithm.We evaluate our approach with several state-of-the-art recommendation algorithms using different evaluation metrics measuring the accuracy, diversity, and novelty of the recommendations, and analyze the impact of the proposed parameters. We have found that our approach offers a competitive performance, outperforming content, collaborative, and hybrid baselines, and producing positive results when either content- or rating-based information is exploited.
机译:对用户资料进行建模是大多数信息过滤系统(例如推荐系统)提供个性化推荐的必要步骤。但是,大多数用户通过在用户或项目之间应用不同类型的数学运算,而忽略顺序或基于内容的信息,从而将用户或项目作为向量使用。因此,在本文中,我们研究如何提出一种自适应机制,以使用不同的信息源获取用户序列,从而允许从系统角度将混合推荐生成为一种无缝,透明的技术。作为概念的证明,我们开发了最长公共子序列(LCS)算法作为相似性度量来比较用户序列,其中,在使该算法适应推荐的过程中,我们包括不同的参数以通过减少信息来控制效率在算法中使用(首选项过滤器),确定何时将邻居视为足够有用的对象(置信过滤器),确定两个交互是否等效(δ匹配阈值),并规范化长度有界间隔中的LCS(归一化函数)。这些参数可以扩展为适用于任何类型的顺序算法。我们使用几种最新的推荐算法,使用不同的评估指标来评估我们的方法,这些评估指标可测量推荐的准确性,多样性和新颖性,并分析建议的参数。我们发现,当利用基于内容或基于评级的信息时,我们的方法具有竞争优势,优于内容,协作基准和混合基准,并产生积极的结果。

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