利用分类算法排序简化算法选择

S. Abdulrahman, P. Brazdil, W. Zainon, Alhassan Adamu
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引用次数: 5

摘要

平均排序法(AR)是一种最简单有效的算法选择方法。该方法使用元数据,即给定一组算法在给定一组数据集上的测试结果,并计算每个算法的平均排名。这些排名用于构建平均排名。在本文中,我们研究了如何通过去除非竞争性和冗余算法来降低排名的问题,从而减少用户需要在新数据集上进行的测试次数,以识别最合适的算法。提出的方法包括两个阶段。在第一个中,目标是为过去使用的每个数据集识别最具竞争力的算法。这是通过统计检验来完成的。第二阶段涉及覆盖方法,其目的是通过消除冗余变体来减少算法。所提出的方法在许多方面与先前的一个建议不同。重要的一点是,它同时考虑了准确性和时间。将该方法与基线策略进行了比较,基线策略由执行排名中的所有算法组成。实验结果表明,该方法的性能明显优于基线方法。
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Simplifying the Algorithm Selection Using Reduction of Rankings of Classification Algorithms
The average ranking method (AR) is one of the simplest and effective algorithms selection methods. This method uses metadata in the form of test results of a given set of algorithms on a given set of datasets and calculates an average rank for each algorithm. The ranks are used to construct the average ranking. In this paper we investigate the problem of how the rankings can be reduced by removing non-competitive and redundant algorithms, thereby reducing the number of tests a user needs to conduct on a new dataset to identify the most suitable algorithm. The method proposed involves two phases. In the first one, the aim is to identify the most competitive algorithms for each dataset used in the past. This is done with the recourse to a statistical test. The second phase involves a covering method whose aim is to reduce the algorithms by eliminating redundant variants. The proposed method differs from one earlier proposal in various aspects. One important one is that it takes both accuracy and time into consideration. The proposed method was compared to the baseline strategy which consists of executing all algorithms from the ranking. It is shown that the proposed method leads to much better performance than the baseline.
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