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User behavior analysis-based smart energy management for webpage ranking: Learning automata-based solution

机译:基于用户行为分析的智能能源管理,用于网页排名:基于学习自动机的解决方案

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摘要

Search engines are widely used for surfing the Internet. Different search engines vary with respect to their accuracy and time to fetch the information from the distributed/centralized database repository across the globe. However, it has been found in the literature that webpage ranking helps in saving the user's surfing time which in turn saves considerable energy consumption during computation and transmission across the network. Most of the earlier solutions reported in the literature uses the hyperlink structure of graph which consume a lot of energy during the computation. It may lead to the link leakage problem with the occurrence of spam pages more often. Nowadays, hyperlink structure alone is inadequate for predicting webpage importance keeping in view of the energy consumption of various smart devices. User browsing behavior depicts its real importance. It is essential to demote the spam pages to increase the search engine accuracy and speed. Hence, user behavior analysis along with demotion of spam pages can improve Search Engine Result Pages (SERP) which in turn saves the energy consumption. In the proposed approach, web page importance score is computed by analyzing user surfing behavior attributes, dwell time, and click count. After computing the webpage importance score, the ranks are revised by implementing it in Learning Automata (LA) environment. Learning automaton is the stochastic system which learns from the environment and responds either with a reward or a penalty. With every response from the environment, the probability of visiting the webpage is updated. Probability computation is done using Normal and Gamma distribution functions. In the proposal, we have considered only the dangling pages for experiments. Inactive webpages are punished and degraded from the system. We have validated proposed approach with Microsoft Learning to Rank dataset. It has been found in the experiments performed that 3403 dangling pages out of 12211 dangling pages have been degraded using the proposed scheme. The objective of the proposed scheme is achieved by saving web energy and computational cost. It takes 100 iterations to convergence which executed in 21.88 ms. However, the user behavior analysis helped in improving PageRank score of the webpages. (C) 2018 Elsevier Inc. All rights reserved.
机译:搜索引擎被广泛用于上网冲浪。不同的搜索引擎在准确性和时间上有所不同,它们从全球的分布式/集中式数据库存储库中获取信息的方式不同。然而,在文献中已经发现,网页排名有助于节省用户的冲浪时间,进而节省了在计算和跨网络传输期间的大量能量消耗。文献中报道的大多数较早的解决方案都使用图的超链接结构,该图在计算过程中会消耗大量能量。这可能导致链接泄漏问题,并且垃圾邮件页面的出现频率更高。如今,考虑到各种智能设备的能耗,仅靠超链接结构不足以预测网页的重要性。用户浏览行为描述了其真正的重要性。降级垃圾邮件页面以提高搜索引擎的准确性和速度至关重要。因此,用户行为分析以及垃圾邮件页面的降级可以改善搜索引擎结果页面(SERP),进而节省能耗。在提出的方法中,通过分析用户冲浪行为属性,停留时间和点击次数来计算网页重要性得分。在计算了网页重要性分数之后,通过在学习自动机(LA)环境中实施该排名来对排名进行修订。学习自动机是一种从环境中学习并以奖励或惩罚为响应的随机系统。有了来自环境的每一个响应,访问网页的可能性就会更新。概率计算是使用正态分布和伽玛分布函数完成的。在提案中,我们仅考虑了实验的悬挂页面。不活动的网页会受到惩罚并从系统中降级。我们已经使用Microsoft学习对数据集进行排名验证了提议的方法。在执行的实验中发现,使用所提出的方案已经降低了12211个悬挂页面中的3403个悬挂页面。通过节省网络能量和计算成本来实现所提出的方案的目的。它需要100次迭代才能收敛,并在21.88 ms内执行。但是,用户行为分析有助于提高网页的PageRank得分。 (C)2018 Elsevier Inc.保留所有权利。

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