面向移动查询自动完成:一种高效的移动应用感知方法

Aston Zhang, Amit Goyal, R. Baeza-Yates, Yi Chang, Jiawei Han, Carl A. Gunter, Hongbo Deng
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引用次数: 13

摘要

我们研究了新的移动查询自动完成(QAC)问题,以利用移动设备的排他性信号,例如与移动应用程序(app)相关的信号。我们提出了AppAware,这是一个新颖的QAC模型,使用已安装的应用程序和最近打开的应用程序信号来建议在移动设备上匹配输入前缀的查询。为了克服噪声和海量信号的挑战,AppAware以线性收敛速度优化了复合目标,降低了处理成本。我们在移动查询和应用程序的大型商业数据集上进行实验。安装的应用程序和最近打开的应用程序信号一致并显著提高了移动设备上各种基线QAC模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Mobile Query Auto-Completion: An Efficient Mobile Application-Aware Approach
We study the new mobile query auto-completion (QAC) problem to exploit mobile devices' exclusive signals, such as those related to mobile applications (apps). We propose AppAware, a novel QAC model using installed app and recently opened app signals to suggest queries for matching input prefixes on mobile devices. To overcome the challenge of noisy and voluminous signals, AppAware optimizes composite objectives with a lighter processing cost at a linear rate of convergence. We conduct experiments on a large commercial data set of mobile queries and apps. Installed app and recently opened app signals consistently and significantly boost the accuracy of various baseline QAC models on mobile devices.
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