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A Graph-Based Push Service Platform

机译:基于图的推送服务平台

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摘要

Learning users' preference and making recommendations is critical in information-exploded environment. There are two typical modes for recommendation, known as pull and push, which respectively account for recommendation inside and outside the item market. While previously most recommender systems adopt only pull-mode, push-mode becomes popular in today's mobile environment. This paper presents a push recommendation platform successfully deployed for Huawei App Store, which has reached 0.3 billion registered users and 1.2 million Apps by 2016. Among the various modules in developing this push platform, we recognized the task of target user group discovery to be most essential in terms of CTR. We explored various algorithmic choices for mining target user group, and highlighted one based on recent advance in graph mining, the Partially Absorbing Random Walk [13], which leads to substantial improvement for our push recommendation, compared to the state-of-the-art including the popular PageRank. We also covered our practice in deploying our push platform in both single server and distributed cluster.
机译:在信息爆炸的环境中,了解用户的偏好并提出建议至关重要。有两种典型的推荐模式,称为拉动和推动,分别说明了商品市场内部和外部的推荐情况。以前,大多数推荐系统仅采用拉模式,而推模式在当今的移动环境中变得很流行。本文介绍了一个成功部署到华为应用商店的推送推荐平台,到2016年已达到3亿注册用户和120万应用程序。在开发此推送平台的各个模块中,我们认识到目标用户组发现的任务最多在点击率方面至关重要。我们探索了用于挖掘目标用户组的各种算法选择,并基于图挖掘的最新进展重点介绍了一种方法,即部分吸收随机游走[13],与最新状态相比,这大大提高了我们的推送建议。艺术,包括受欢迎的PageRank。我们还介绍了在单服务器和分布式集群中部署推送平台的实践。

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