动态搜索广告的极值回归

Yashoteja Prabhu, Aditya Kusupati, Nilesh Gupta, M. Varma
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引用次数: 23

摘要

本文介绍了一种新的学习范式,称为极限回归(XR),其目标是准确预测大量标签与数据点的数值相关性程度。XR可以为包括动态搜索广告(DSA)在内的许多大型排名和推荐应用程序提供优雅的解决方案。与最近流行的极端分类器相比,XR可以学习更准确的模型,极端分类器错误地假设严格的二值标签相关性。将所有标签的误差求和的传统回归度量不适合用于XR问题,因为它们可能会给标签排序质量提供非常宽松的界限。此外,现有的回归算法不能有效地扩展到数百万个标签。本文通过以下方法解决了这些局限性:(1)新的XR评价指标只对k个最大的回归误差求和;(2)一种名为XReg的新算法,该算法将XR任务分解为更小的回归问题的层次结构,从而实现高效的训练和预测。本文还介绍了一种新的XReg标签预测算法,用于DSA和其他推荐任务。在基准数据集上的实验表明,XReg在新的XR误差指标上比最先进的极端分类器、大规模回归器和排名器的性能降低了50%,在极端分类中使用的倾向得分精度指标和DSA中使用的点击率指标上分别提高了2%和2.4%。在必应的DSA上部署XReg使收入增加了58%,查询覆盖率增加了27%。XReg的源代码可以从http://manikvarma.org/code/Xreg/download.html下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extreme Regression for Dynamic Search Advertising
This paper introduces a new learning paradigm called eXtreme Regression (XR) whose objective is to accurately predict the numerical degrees of relevance of an extremely large number of labels to a data point. XR can provide elegant solutions to many large-scale ranking and recommendation applications including Dynamic Search Advertising (DSA). XR can learn more accurate models than the recently popular extreme classifiers which incorrectly assume strictly binary-valued label relevances. Traditional regression metrics which sum the errors over all the labels are unsuitable for XR problems since they could give extremely loose bounds for the label ranking quality. Also, the existing regression algorithms won't efficiently scale to millions of labels. This paper addresses these limitations through: (1) new evaluation metrics for XR which sum only the k largest regression errors; (2) a new algorithm called XReg which decomposes XR task into a hierarchy of much smaller regression problems thus leading to highly efficient training and prediction. This paper also introduces a (3) new labelwise prediction algorithm in XReg useful for DSA and other recommendation tasks. Experiments on benchmark datasets demonstrated that XReg can outperform the state-of-the-art extreme classifiers as well as large-scale regressors and rankers by up to 50% reduction in the new XR error metric, and up to 2% and 2.4% improvements in terms of the propensity-scored precision metric used in extreme classification and the click-through rate metric used in DSA respectively. Deployment of XReg on DSA in Bing resulted in a relative gain of 58% in revenue and 27% in query coverage. XReg's source code can be downloaded from http://manikvarma.org/code/Xreg/download.html.
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