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Learning relevance from click data via neural network based similarity models

机译:通过基于神经网络的类似性模型从单击数据学习相关性

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We introduce a new neural network based similarity model for learning document relevance under a query. The main idea is to use the binomial distribution to model the proportion of people who clicked document d under query q among the users who viewed d under q. Our model is a generalization of existing neural network based latent semantic models in that both its objective function and its parametrization of the user click probability generalizes the existing ones. Compared with the existing models, our new objective function distinguishes the clicked (query, document)-pairs with different relevance information, and our new parametrization of the user click probability considers both the semantic similarity and the term or lexical match information as the reasons for click(s). We tested our model on the media search logs of a commercial search engine and obtained superior performance under several metrics for relevance ranking.
机译:我们介绍了一种新的基于神经网络的类似性模型,用于在查询下学习文档相关性。主要思想是利用二项式分布来模拟在Q下观看D DAT的用户在查询Q下点击文档D的比例。我们的模型是基于神经网络的基于神经网络的潜在语义模型的概括,因为它的客观函数及其单击概率的参数化概括了现有的函数。与现有模型相比,我们的新客观函数将带有不同相关信息的点击(查询,文档)-PAIRS区分,以及我们的新参数化的用户点击概率认为是语义相似性和术语或词汇匹配信息作为原因点击我们在商业搜索引擎的媒体搜索日志上测试了我们的模型,并在几个度量标准下获得了卓越的性能,以进行相关性排名。

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