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A Metric to Discriminate the Selection of Algorithms for the General ATSP Problem

机译:指标,以区分一般ATSP问题的算法选择

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In this paper we propose: (1) the use of discriminant analysis as a means for predictive learning (data-mining techniques) aiming at selecting metaheuristic algorithms and (2) the use of a metric for improving the selection of the algorithms that best solve a given instance of the Asymmetric Traveling Salesman Problem (ATSP). The only metric that had existed so far to determine the best algorithm for solving an ATSP instance is based on the number of cities; nevertheless, it is not sufficiently adequate for discriminating the best algorithm for solving an ATSP instance, thus the necessity for devising a new metric through the use of data-mining techniques.
机译:在本文中,我们提出:(1)使用判别分析作为预测学习(数据挖掘技术)的手段,其旨在选择成群质算法和(2)使用度量来改善最佳解决的算法的选择给定的非对称旅行推销员问题(ATSP)。迄今为止迄今为止唯一确定用于解决ATSP实例的最佳算法的唯一指标基于城市的数量;然而,为了识别用于解决ATSP实例的最佳算法,不充分充分充分,因此需要通过使用数据挖掘技术来设计新度量的必要性。

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