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The effects of fitness functions on genetic programming-based ranking discovery for Web search

机译:适应度函数对基于遗传编程的Web搜索排名发现的影响

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摘要

Genetic-based evolutionary learning algorithms, such as genetic algorithms (GAs) and genetic programming (GP), have been applied to information retrieval (IR) since the 1980s. Recently, GP has been applied to a new IR task - discovery of ranking functions for Web search - and has achieved very promising results. However, in our prior research, only one fitness function has been used for GP-based learning. It is unclear how other fitness functions may affect ranking function discovery for Web search, especially since it is well known that choosing a proper fitness function is very important for the effectiveness and efficiency of evolutionary algorithms. In this article, we report our experience in contrasting different fitness function designs on GP-based learning using a very large Web corpus. Our results indicate that the design of fitness functions is instrumental in performance improvement. We also give recommendations on the design of fitness functions for genetic-based information retrieval experiments.
机译:自1980年代以来,基于遗传的进化学习算法,例如遗传算法(GA)和遗传编程(GP),已应用于信息检索(IR)。最近,GP已应用于一项新的IR任务-发现Web搜索的排名功能-并取得了非常可喜的结果。但是,在我们先前的研究中,只有一种适应度函数用于基于GP的学习。尚不清楚其他适应度函数如何影响Web搜索的排名函数发现,尤其是因为众所周知,选择合适的适应度函数对于进化算法的有效性和效率非常重要。在本文中,我们报告了我们在使用超大型Web语料库的基于GP的学习中对比不同适应度功能设计的经验。我们的结果表明,适应度函数的设计在性能改善中起着重要作用。我们还为基于遗传的信息检索实验的适应度函数设计提供了建议。

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