TY - JOUR
T1 - A Stochastic Three-Way Unfolding Model for Asymmetric Binary Data
AU - Desarbo, Wayne S.
AU - Lehmann, Donald R.
AU - Holbrook, Morris B.
AU - Havlena, William J.
AU - Gupta, Sunil
PY - 1987/12
Y1 - 1987/12
N2 - This paper presents a new stochastic three-way un folding method designed to analyze asymmetric three- way, two-mode binary data. As in the metric three- way unfolding models presented by DeSarbo 1978 and by DeSarbo and Carroll 1980, 1981, 1985, this procedure estimates a joint space of row and column objects, as well as weights reflecting the third way of the array, such as individual differences. Unlike the traditional metric three-way unfolding model, this new methodology is based on stochastic assumptions using an underlying threshold model, generalizing the work of DeSarbo and Hoffman 1986 to three-way and asymmetric binary data. The literature concerning the spatial treatment of such binary data is reviewed. The nonlinear probit-like model is described, as well as the maximum likelihood algorithm used to estimate its parameter values. Results of a monte carlo study ap plying this new method to synthetic datasets are pre sented. The new method was also applied to real data from a study concerning word emotion associations in consumer behavior. Possibilities for future research and applications are discussed.
AB - This paper presents a new stochastic three-way un folding method designed to analyze asymmetric three- way, two-mode binary data. As in the metric three- way unfolding models presented by DeSarbo 1978 and by DeSarbo and Carroll 1980, 1981, 1985, this procedure estimates a joint space of row and column objects, as well as weights reflecting the third way of the array, such as individual differences. Unlike the traditional metric three-way unfolding model, this new methodology is based on stochastic assumptions using an underlying threshold model, generalizing the work of DeSarbo and Hoffman 1986 to three-way and asymmetric binary data. The literature concerning the spatial treatment of such binary data is reviewed. The nonlinear probit-like model is described, as well as the maximum likelihood algorithm used to estimate its parameter values. Results of a monte carlo study ap plying this new method to synthetic datasets are pre sented. The new method was also applied to real data from a study concerning word emotion associations in consumer behavior. Possibilities for future research and applications are discussed.
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U2 - 10.1177/014662168701100406
DO - 10.1177/014662168701100406
M3 - Article
AN - SCOPUS:84965799927
SN - 0146-6216
VL - 11
SP - 397
EP - 418
JO - Applied Psychological Measurement
JF - Applied Psychological Measurement
IS - 4
ER -