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DEEP NEURAL NETWORKS FOR NETWORK EMBEDDING

机译:用于网络嵌入的深层神经网络

摘要

Herein are techniques to use an artificial neural network to score the relevance of content items for a target and techniques to rank the content items based on their scores. In embodiments, a computer uses a plurality of expansion techniques to identify expanded targets for a content item. For each of the expanded targets, the computer provides inputs to an artificial neural network to generate a relevance score that indicates a relative suitability of the content item for that target. The computer ranks the expanded targets based on the relevance score generated for each of the expanded targets. Based on the ranking, the computer selects a subset of targets from the available expanded targets as the expanded targets for whom the content item is potentially most relevant. The computer stores an association between the content item and each target in the subset of expanded targets.
机译:这里是使用人工神经网络对目标的内容项的相关性进行评分的技术,以及基于其得分对内容项进行排名的技术。在实施例中,计算机使用多种扩展技术来识别内容项目的扩展目标。对于每个扩展目标,计算机都会向人工神经网络提供输入,以生成相关性分数,该分数表明内容项对该目标的相对适用性。计算机根据为每个扩展目标生成的相关性得分对扩展目标进行排名。基于排名,计算机从可用的扩展目标中选择目标的子集作为内容项目可能与之最相关的扩展目标。计算机将内容项与扩展目标子集中的每个目标之间存储关联。

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