Learning to rank based on modified genetic algorithm

S. Semenikhin, L. Denisova
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引用次数: 1

Abstract

With the growing amount of documents in the search index of information retrieval systems, the problem of ranking documents becomes crucial. The modern state of the problem leads to the point where machine learning becomes the most efficient way to optimize the ranking function. In this article investigated ranking function in information retrieval systems (IRS) and learning to rank problem. During the learning to rank process, IRS is defining the weight coefficients for simple rankers. The conducted researches are showing the approach for learning to rank problem LTR-MGA utilizing the hybrid method based on modified genetic algorithm and the Nelder-Mead method. This approach can be used to optimize a graded-metrics of ranking, such as NDCG. The efficiency of proposed method was proved, based on researches performed on LETOR data sets. The value of ranking quality measures was significantly increased after learning to rank process. Also the usage of modified genetic algorithms leads to reduction of time required for learning to rank comparing to traditional genetic algorithm.
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基于改进的遗传算法学习排序
随着信息检索系统检索索引中文献数量的不断增加,文献排序问题变得至关重要。问题的现代状态导致机器学习成为优化排名函数的最有效方法。本文研究了信息检索系统中的排序函数和排序学习问题。在学习排序过程中,IRS定义简单排序器的权重系数。本研究提出了一种基于改进遗传算法和Nelder-Mead方法的混合方法来学习LTR-MGA排序问题的方法。这种方法可用于优化等级-排名指标,如NDCG。通过对LETOR数据集的研究,验证了该方法的有效性。学习排序过程后,排序质量指标的价值显著提高。此外,与传统遗传算法相比,改进遗传算法的使用减少了学习排名所需的时间。
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