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Identification of efficient algorithms for web search through implementation of learning-to-rank algorithms

机译:通过实施按等级学习算法来识别有效的网络搜索算法

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Today, amount of information on the web such as number of publicly accessible web pages, hosts and web data is increasing rapidly and exhibiting an enormous growth at an exponential rate. Thus, information retrieval on web is becoming more difficult. Conventional methods of information retrieval are not very effective in ranking since they rank the results without automatically learning the model. Machine learning domain called learning-to-rank comes to the aid to rank the obtained results. Different state-of-the-art methodologies have been developed for learning-to-rank to date. This paper focuses on finding out the bestalgorithm for web search by implementation of different state-of-the-art algorithms for learning-to-rank. Our work in this paper marks the implementation of learning-to-rank algorithms and analyses effect of topmost performing algorithms on respective datasets. It presents an overall review on the approaches designed under learning-to-rank and their evaluation strategies.
机译:如今,网络上的信息量(例如可公开访问的网页,主机和网络数据的数量)正在迅速增长,并且呈指数级增长。因此,网络上的信息检索变得越来越困难。常规的信息检索方法在排名时不是很有效,因为它们在不自动学习模型的情况下对结果进行排名。机器学习领域称为“等级学习”,可以帮助对获得的结果进行排名。迄今为止,已经开发出了各种不同的最新方法来学习排名。本文着重于通过实现不同等级的学习排名算法来找到最佳的网络搜索算法。我们在本文中的工作标志着学习排名算法的实现,并分析了性能最高的算法对各个数据集的影响。它对等级学习设计的方法及其评估策略进行了全面回顾。

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