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Exploiting Positive and Negative Graded Relevance Assessments for Content Recommendation

机译:利用正面和负面的分级相关性评估进行内容推荐

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摘要

Social media allow users to give their opinion about the available content by assigning a rating. Collaborative filtering approaches to predict recommendations based on these graded relevance assessments are hampered by the sparseness of the data. This sparseness problem can be overcome with graph-based models, but current methods are not able to deal with negative relevance assessments.rnWe propose a new graph-based model that exploits both positive and negative preference data. Hereto, we combine in a single content ranking the results from two graphs, one based on positive and the other based on negative preference information. The resulting ranking contains less false positives than a ranking based on positive information alone. Low ratings however appear to have a predictive value for relevant content. Discounting the negative information therefore does not only remove the irrelevant content from the top of the ranking, but also reduces the recall of relevant documents.
机译:社交媒体允许用户通过分配评级来表达他们对可用内容的看法。数据的稀疏性阻碍了基于这些分级相关性评估的协作过滤方法来预测推荐。这种稀疏性问题可以通过基于图的模型来克服,但是当前的方法无法处理消极的相关性评估。我们提出了一种新的基于图的模型,该模型同时利用了正面和负面偏好数据。到目前为止,我们在一个单一的内容组合中对两个图表的结果进行排名,一个基于肯定,另一个基于否定偏好信息。与仅基于肯定信息的排名相比,所得到的排名包含较少的误报。但是,低评分似乎对相关内容具有预测价值。因此,否定负面信息不仅会从排名的顶部删除不相关的内容,而且还会减少对相关文档的召回。

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