Department of Marketing, Florida State University, Florida 32306–1110, USA.
Br J Math Stat Psychol. 2012 Feb;65(1):145-62. doi: 10.1111/j.2044-8317.2011.02021.x. Epub 2011 Jun 28.
There are a number of important problems in quantitative psychology that require the identification of a permutation of the n rows and columns of an n × n proximity matrix. These problems encompass applications such as unidimensional scaling, paired-comparison ranking, and anti-Robinson forms. The importance of simultaneously incorporating multiple objective criteria in matrix permutation applications is well recognized in the literature; however, to date, there has been a reliance on weighted-sum approaches that transform the multiobjective problem into a single-objective optimization problem. Although exact solutions to these single-objective problems produce supported Pareto efficient solutions to the multiobjective problem, many interesting unsupported Pareto efficient solutions may be missed. We illustrate the limitation of the weighted-sum approach with an example from the psychological literature and devise an effective heuristic algorithm for estimating both the supported and unsupported solutions of the Pareto efficient set.
在定量心理学中有许多重要的问题需要确定 n 行 n 列邻接矩阵的置换。这些问题涵盖了多维标度、配对比较排序和反罗宾逊形式等应用。文献中已经充分认识到在矩阵置换应用中同时包含多个目标标准的重要性;然而,迄今为止,人们一直依赖于加权和方法,将多目标问题转化为单目标优化问题。虽然这些单目标问题的精确解会产生多目标问题的支持帕累托有效解,但可能会错过许多有趣的不支持的帕累托有效解。我们用心理学文献中的一个例子来说明加权和方法的局限性,并设计了一种有效的启发式算法来估计帕累托有效解集的支持和不支持的解。