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Sparse factor analysis for analysis of user content preferences

机译:稀疏因子分析,用于分析用户内容偏好

摘要

A mechanism for discerning user preferences for categories of provided content. A computer receives response data including a set of preference values that have been assigned to content items by content users. Output data is computed based on the response data using a latent factor model. The output data includes at least: an association matrix that defines K concepts associated with the content items, wherein K is smaller than the number of the content items, wherein, for each of the K concepts, the association matrix defines the concept by specifying strengths of association between the concept and the content items; and a concept-preference matrix including, for each content user and each of the K concepts, an extent to which the content user prefers the concept. The computer may display a visual representation of the association strengths in the association matrix and/or the extents in the concept-preference matrix.
机译:一种用于识别用户对所提供内容类别的偏好的机制。计算机接收响应数据,该响应数据包括已由内容用户分配给内容项的一组偏好值。使用潜在因子模型基于响应数据计算输出数据。输出数据至少包括:关联矩阵,其定义与内容项相关联的K个概念,其中K小于内容项的数目,其中,对于K个概念中的每一个,关联矩阵通过指定强度来定义概念概念与内容项之间的关联;对于每个内容用户和K个概念中的每一个,概念偏好矩阵都包括内容用户偏爱该概念的程度。计算机可以显示关联矩阵中的关联强度和/或概念偏好矩阵中的范围的视觉表示。

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