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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >A Cooperative Coevolution Framework for Parallel Learning to Rank
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A Cooperative Coevolution Framework for Parallel Learning to Rank

机译:并行学习排名的合作式协同进化框架

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摘要

We propose CCRank, the first parallel framework for learning to rank based on evolutionary algorithms (EA), aiming to significantly improve learning efficiency while maintaining accuracy. CCRank is based on cooperative coevolution (CC), a divide-and-conquer framework that has demonstrated high promise in function optimization for problems with large search space and complex structures. Moreover, CC naturally allows parallelization of sub-solutions to the decomposed sub-problems, which can substantially boost learning efficiency. With CCRank, we investigate parallel CC in the context of learning to rank. We implement CCRank with three EA-based learning to rank algorithms for demonstration. Extensive experiments on benchmark datasets in comparison with the state-of-the-art algorithms show the performance gains of CCRank in efficiency and accuracy.
机译:我们提出CCRank,这是第一个基于进化算法(EA)进行排名的并行学习框架,旨在在保持准确性的同时显着提高学习效率。 CCRank基于协作协同进化(CC),它是一种分而治之的框架,在功能优化中针对较大的搜索空间和复杂结构的问题展示了很高的希望。而且,CC自然允许子解决方案与分解后的子问题并行化,从而可以大大提高学习效率。借助CCRank,我们可以在学习排名的背景下研究平行CC。我们通过三个基于EA的学习来实现CCRank,以对算法进行排序以进行演示。与最新算法相比,基准数据集上的大量实验表明CCRank在效率和准确性方面的性能提升。

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