
doi: 10.2333/bhmk.5.75
Dr. Hayashi developed one of methods for multidimensional scaling problem, named MDA. This method is a very useful one, but its computation is very difficult. In the present paper, the author shows a modification of its computation with some numerical examples in one dimensional case.
multidimensional scaling, <I>e<SUB>ij</SUB></I>-type quantification, KL-type quantification, MDA-OR, minimum dimension analysis, quantification, alternating variable method, clustering
multidimensional scaling, <I>e<SUB>ij</SUB></I>-type quantification, KL-type quantification, MDA-OR, minimum dimension analysis, quantification, alternating variable method, clustering
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