动态填充大备选项集的多准则选择算法优化

IF 1 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS IT-Information Technology Pub Date : 2021-05-18 DOI:10.17587/IT.27.235-241
S. Kolesnikova, S. A. Karavanova
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引用次数: 0

摘要

我们考虑了多准则选择问题中动态补充的大备选集的正确排序问题,该问题在解中使用先前获得的改进的层次分析方法,该方法基于局部优先级的加性卷积操作,而不是基于获得的配对比较矩阵的特征集(如经典方法)。但是在一组对上,每个标准的特征向量坐标的相对权重相互比较,然后根据每个对中的标准和备选项进行加性卷积的后续操作。在这个版本中,该算法确保在添加新的选择时保留先前实现的偏好,从而使得在处理大量动态变化的数据时进行优化成为可能,这大大扩展了流行算法的适用性。
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Optimization of Multi-Criterial Selection Algorithm with a Dynamically Filled Large Set of Alternatives
We consider the problem of the correct ranking of a dynamically replenished large set of alternatives in multicriteria choice problems that use in the solution the previously obtained modified method for analyzing hierarchies, based on the operation of additive convolution of local priorities not on the obtained set of characteristics of paired comparison matrices (as in the classical method), but on a set of pairs the relative weights of the coordinates of the eigenvectors being compared with each other for each criterion and the subsequent operation of additive convolution according to the criteria and alternatives in each pair. In this version, the algorithm ensures that previously achieved preferences are preserved when adding new alternatives and, thereby, makes it possible to optimize when processing large volumes of dynamically changing data, which significantly expands the applicability of the popular algorithm.
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来源期刊
IT-Information Technology
IT-Information Technology COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.80
自引率
0.00%
发文量
29
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