Multileave Gradient Descent for Fast Online Learning to Rank

Anne Schuth, Harrie Oosterhuis, Shimon Whiteson, M. de Rijke
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引用次数: 88

Abstract

Modern search systems are based on dozens or even hundreds of ranking features. The dueling bandit gradient descent (DBGD) algorithm has been shown to effectively learn combinations of these features solely from user interactions. DBGD explores the search space by comparing a possibly improved ranker to the current production ranker. To this end, it uses interleaved comparison methods, which can infer with high sensitivity a preference between two rankings based only on interaction data. A limiting factor is that it can compare only to a single exploratory ranker. We propose an online learning to rank algorithm called multileave gradient descent (MGD) that extends DBGD to learn from so-called multileaved comparison methods that can compare a set of rankings instead of merely a pair. We show experimentally that MGD allows for better selection of candidates than DBGD without the need for more comparisons involving users. An important implication of our results is that orders of magnitude less user interaction data is required to find good rankers when multileaved comparisons are used within online learning to rank. Hence, fewer users need to be exposed to possibly inferior rankers and our method allows search engines to adapt more quickly to changes in user preferences.
多叶梯度下降快速在线学习排名
现代搜索系统基于数十个甚至数百个排名功能。决斗强盗梯度下降(DBGD)算法已被证明可以仅从用户交互中有效地学习这些特征的组合。DBGD通过将可能改进的排名与当前生产排名进行比较来探索搜索空间。为此,它使用交错比较方法,仅根据交互数据就可以高灵敏度地推断出两个排名之间的偏好。一个限制因素是它只能与单个探索性排名器进行比较。我们提出了一种称为多叶梯度下降(MGD)的在线学习排名算法,它扩展了DBGD,从所谓的多叶比较方法中学习,这种方法可以比较一组排名,而不仅仅是一对排名。我们通过实验证明,MGD允许比DBGD更好地选择候选对象,而不需要涉及用户的更多比较。我们的结果的一个重要含义是,当在线学习中使用多叶比较进行排名时,需要更少的用户交互数据来找到好的排名器。因此,更少的用户需要暴露于可能较差的排名,我们的方法允许搜索引擎更快地适应用户偏好的变化。
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