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首页> 外文期刊>Neural Computing & Applications >In search of best alternatives: a TOPSIS driven MCDM procedure for neural network modeling
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In search of best alternatives: a TOPSIS driven MCDM procedure for neural network modeling

机译:寻找最佳替代品:用于神经网络建模的TOPSIS驱动的MCDM程序

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摘要

Multiple criteria decision making (MCDM) is an approach to rank the alternatives with respect to the different attributes. Several MCDM approaches were used to select the best alternatives of meta-heuristic modeling under the soft-computing domain where the true best alternative is not known. Alternatives are artificial neural network models, selection of which is difficult based on many conflicting performance measures. This paper addresses two new methods for MCDM, using the concept of Minkowski distance and based on technique for order preference by similarity to ideal solution philosophy. The performances of these two methods are compared with four other methods considering real-life data and simulated experiments. Keywords Multiple criteria decision making - Benefit criteria - Cost criteria - TOPSIS - Artificial neural network - Minkowski distance
机译:多标准决策(MCDM)是一种针对不同属性对备选方案进行排名的方法。在不知道真正最佳替代方案的软计算领域,使用了几种MCDM方法来选择元启发式建模的最佳替代方案。替代方法是人工神经网络模型,基于许多相互矛盾的性能度量,很难对其进行选择。本文介绍了两种新的MCDM方法,它们使用Minkowski距离的概念并基于与理想解决方案原理相似的顺序偏好技术。考虑到实际数据和模拟实验,将这两种方法的性能与其他四种方法进行了比较。关键词多准则决策-收益准则-成本准则-TOPSIS-人工神经网络-Minkowski距离

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