MULTIDIMENSIONAL SCALING;
CLUSTER ANALYSIS;
MAXIMUM LIKELIHOOD ESTIMATION;
CONSUMER PSYCHOLOGY;
D O I:
10.1007/BF02294590
中图分类号:
O1 [数学];
学科分类号:
0701 ;
070101 ;
摘要:
This paper develops a maximum likelihood based method for simultaneously performing multidimensional scaling and cluster analysis on two-way dominance or profile data. This MULTICLUS procedure utilizes mixtures of multivariate conditional normal distributions to estimate a joint space of stimulus coordinates and K vectors, one for each cluster or group, in a T-dimensional space. The conditional mixture, maximum likelihood method is introduced together with an E-M algorithm for parameter estimation. A Monte Carlo analysis is presented to investigate the performance of the algorithm as a number of data, parameter, and error factors are experimentally manipulated. Finally, a consumer psychology application is discussed involving consumer expertise/experience with microcomputers.
机构:
Rikkyo Univ, Sch Social Relat, Dept Ind Relat, Toshima Ku, Tokyo 1718501, JapanRikkyo Univ, Sch Social Relat, Dept Ind Relat, Toshima Ku, Tokyo 1718501, Japan