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Pocket Web: Instant Web Browsing for Mobile Devices

机译:Pocket Web:移动设备的即时Web浏览

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摘要

The high network latencies and limited battery life of mobile phones can make mobile web browsing a frustrating experience. In prior work, we proposed trading memory capacity for lower web access latency and a more convenient data transfer schedule from an energy perspective by prefetching slowly-changing data (search queries and results) nightly, when the phone is charging. However, most web content is intrinsically much more dynamic and may be updated multiple times a day, thus eliminating the effectiveness of periodic updates. This paper addresses the challenge of prefetching dynamic web content in a timely fashion, giving the user an instant web browsing experience but without aggravating the battery lifetime issue. We start by analyzing the web access traces of 8,000 users, and observe that mobile web browsing exhibits a strong spatiotemporal signature, which is different for every user. We propose to use a machine learning approach based on stochastic gradient boosting techniques to efficiently model this signature on a per user basis. The machine learning model is capable of accurately predicting future web accesses and prefetching the content in a timely manner. Our experimental evaluation with 48,000 models trained on real user datasets shows that we can accurately prefetch 60% of the URLs for about 80-90% of the users within 2 minutes before the request. The system prototype we built not only provides more than 80% lower web access time for more than 80% of the users, but it also achieves the same or lower radio energy dissipation by more than 50% for the majority of mobile users.
机译:移动电话的高网络延迟和有限的电池寿命会使移动Web浏览变得令人沮丧。在先前的工作中,我们建议通过在夜间充电时每晚预取变化缓慢的数据(搜索查询和结果),以降低能源消耗的角度来降低Web访问延迟和更方便的数据传输计划,从而实现交易存储容量。但是,大多数Web内容本质上更具动态性,并且一天可能更新多次,因此消除了定期更新的有效性。本文解决了及时获取动态Web内容的挑战,为用户提供了即时的Web浏览体验,但又不增加电池寿命问题。我们首先分析8,000个用户的Web访问踪迹,然后观察到移动Web浏览表现出很强的时空特征,每个用户的时空特征都不同。我们建议使用基于随机梯度提升技术的机器学习方法,以在每个用户的基础上有效地对此签名进行建模。机器学习模型能够准确地预测未来的Web访问并及时预取内容。我们使用在真实用户数据集上训练的48,000个模型进行的实验评估表明,我们可以在请求前2分钟内为80-90%的用户准确地预提取60%的URL。我们构建的系统原型不仅为80%以上的用户提供了80%以上的Web访问时间缩短,而且还为大多数移动用户提供了50%以上的相同或更低的无线电能量消耗。

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