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Learning to rank: new approach with the layered multi-population genetic programming on click-through features

机译:学习排名:通过点击功能进行分层多种群遗传编程的新方法

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摘要

Users' click-through data is a valuable source of information about the performance of Web search engines, but it is included in few datasets for learning to rank. In this paper, inspired by the click-through data model, a novel approach is proposed for extracting the implicit user feedback from evidence embedded in benchmarking datasets. This process outputs a set of new features, named click-through features. Generated click-through features are used in a layered multi-population genetic programming framework to find the best possible ranking functions. The layered multi-population genetic programming framework is fast and provides more extensive search capability compared to the traditional genetic programming approaches. The performance of the proposed ranking generation framework is investigated both in the presence and in the absence of explicit click-through data in the utilized benchmark datasets. The experimental results show that click-through features can be efficiently extracted in both cases but that more effective ranking functions result when click-through features are generated from benchmark datasets with explicit click-through data. In either case, the most noticeable ranking improvements are achieved at the tops of the provided ranked lists of results, which are highly targeted by the Web users.
机译:用户的点击数据是有关Web搜索引擎性能的有价值的信息来源,但它包含在少数用于学习排名的数据集中。在本文中,受点击数据模型的启发,提出了一种新方法,用于从嵌入基准数据集中的证据中提取隐式用户反馈。此过程输出一组新功能,称为点击功能。生成的点击特征在分层的多种群遗传编程框架中使用,以查找可能的最佳排名函数。与传统的遗传编程方法相比,分层的多种群遗传编程框架快速且提供了更广泛的搜索功能。在所使用的基准数据集中是否存在明确的点击数据的情况下,都对所提出的排名生成框架的性能进行了研究。实验结果表明,在两种情况下都可以有效地提取点击特征,但是,当使用具有明确点击数据的基准数据集生成点击特征时,可以产生更有效的排名功能。在这两种情况下,最显着的排名改进都在提供的结果排名列表的顶部实现,Web用户高度重视这些列表。

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