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Improved Combination of Multiple Retrieval Systems Using a Dynamic Combinatorial Fusion Algorithm

机译:使用动态组合融合算法改进多个检索系统的组合

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A combination of multiple retrieval systems can outperform its individual component systems, but it remains a challenging problem to predict whether two systems can be beneficially combined and, if so, the optimal means by which they should be merged. The performance of combined systems is affected by many factors, including the performance of individual systems, the diversity between a pair of systems, and the method for combination. In this paper, we undertake the study of these issues using combinatorial fusion algorithm (CFA) utilizing the rank-score characteristic (RSC) function and the notion of a weighted cognitive diversity. Using the selected eight TREC datasets, we demonstrated that: (a) the combination of two retrieval systems performs better than each individual system only when the individual systems have relatively good performance and they are diverse, (b) a dynamic combination method, using rank vs. score combination based on cognitive diversity which does not display a tight correlation with other statistical diversity measures, can improve the performance of the combined system, even when performance of each individual system is not known or in the context of an unsupervised learning environment. Within the TREC datasets, the proposed dynamic approach offers a potential for substantial improvement with no significant risk. Our results provide a new paradigm of dynamic fusion to the study of the combination of multiple retrieval systems.
机译:多个检索系统的组合可以优于其各个组件系统,但是预测两个系统是否可以有利地组合并且如果是的话,则仍然是一个具有挑战性的问题,如果是的话,它们应该合并的最佳方法。组合系统的性能受到许多因素的影响,包括各个系统的性能,一对系统之间的多样性以及组合的方法。在本文中,我们利用秩 - 分数特征(RSC)函数和加权认知分集的概念来研究对这些问题的研究。使用所选的八个TREC数据集,我们展示了:(a)只有在各个系统具有相对良好的性能并且它们是多样的,(b)动态组合方法,使用等级时,两个检索系统的组合才能比每个单独的系统更好地执行。基于认知多样性的比分组合不显示与其他统计分集测量的紧密相关性,可以提高组合系统的性能,即使每个单独的系统的性能都不知道或在无监督的学习环境的上下文中。在TREC数据集中,所提出的动态方法提供了实质性改善的潜力,没有重大风险。我们的结果为多个检索系统组合的研究提供了一种新的动态融合范式。

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