Focused Crawler Based on Reinforcement Learning and Decaying Epsilon-Greedy Exploration Policy

Parisa Begum Kaleel, Shina Sheen
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Abstract

In order to serve a diversified user base with a range of purposes, general search engines offer search results for a wide variety of topics and material categories on the internet. While Focused Crawlers (FC) deliver more specialized and targeted results inside particular domains or verticals, general search engines give a wider coverage of the web. For a vertical search engine, the performance of a focused crawler is extremely important, and several ways of improvement are applied. We propose an intelligent, focused crawler which uses Reinforcement Learning (RL) to prioritize the hyperlinks for long-term profit. Our implementation differs from other RL based works by encouraging learning at an early stage using a decaying ϵ-greedy policy to select the next link and hence enables the crawler to use the experience gained to improve its performance with more relevant pages. With an increase in the infertility rate all over the world, searching for information regarding the issues and details about artificial reproduction treatments available is in need by many people. Hence, we have considered infertility domain as a case study and collected web pages from scratch. We compare the performance of crawling tasks following ϵ-greedy and decaying ϵ-greedy policies. Experimental results show that crawlers following a decaying ϵ-greedy policy demonstrate better performance
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基于强化学习和衰减Epsilon-Greedy探索策略的聚焦爬虫
为了满足多样化的用户群和不同的目的,一般的搜索引擎为互联网上各种各样的主题和材料类别提供搜索结果。当聚焦爬虫(FC)在特定领域或垂直领域提供更专业和有针对性的结果时,通用搜索引擎提供更广泛的网络覆盖。对于垂直搜索引擎来说,聚焦爬虫的性能是极其重要的,并应用了几种改进方法。我们提出了一个智能的、集中的爬虫,它使用强化学习(RL)来优先考虑长期利润的超链接。我们的实现与其他基于强化学习的工作不同,它鼓励在早期阶段使用衰减ϵ-greedy策略来选择下一个链接,从而使爬虫能够使用获得的经验来使用更多相关页面来提高其性能。随着全世界不孕率的增加,许多人都需要搜索有关人工生殖治疗的问题和细节的信息。因此,我们将不孕不育领域作为案例研究,并从零开始收集网页。我们比较了ϵ-greedy策略和衰减ϵ-greedy策略下爬行任务的性能。实验结果表明,采用衰减ϵ-greedy策略的爬虫具有较好的性能
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