The Statistical Analysis of General Processing Tree Models with the EM Algorithm
- 1 March 1994
- journal article
- Published by Cambridge University Press (CUP) in Psychometrika
- Vol. 59 (1) , 21-47
- https://doi.org/10.1007/bf02294263
Abstract
Multinomial processing tree models assume that an observed behavior category can arise from one or more processing sequences represented as branches in a tree. These models form a subclass of parametric, multinomial models, and they provide a substantively motivated alternative to loglinear models. We consider the usual case where branch probabilities are products of nonnegative integer powers in the parameters, 0≤θs≤1, and their complements, 1 - θs. A version of the EM algorithm is constructed that has very strong properties. First, the E-step and the M-step are both analytic and computationally easy; therefore, a fast PC program can be constructed for obtaining MLEs for large numbers of parameters. Second, a closed form expression for the observed Fisher information matrix is obtained for the entire class. Third, it is proved that the algorithm necessarily converges to a local maximum, and this is a stronger result than for the exponential family as a whole. Fourth, we show how the algorithm can handle quite general hypothesis tests concerning restrictions on the model parameters. Fifth, we extend the algorithm to handle the Read and Cressie power divergence family of goodness-of-fit statistics. The paper includes an example to illustrate some of these results.Keywords
This publication has 26 references indexed in Scilit:
- A multinomial modeling analysis of the mnemonic benefits of bizarre imageryMemory & Cognition, 1992
- Experimental analysis of storage and retrieval processes involved in retroactive inhibition: The effect of presentation modeActa Psychologica, 1991
- Getting wise about minimum distance measuresJournal of Mathematical Psychology, 1991
- Statistical Inference for Multinomial Processing Tree ModelsPublished by Springer Nature ,1991
- Multinomial processing models of source monitoring.Psychological Review, 1990
- Goodness-of-Fit Statistics for Discrete Multivariate DataPublished by Springer Nature ,1988
- The statistical analysis of a model for storage and retrieval processes in human memoryBritish Journal of Mathematical and Statistical Psychology, 1986
- Recognition memory: A cue and information analysisMemory & Cognition, 1983
- Comparisons of models of associative recallMemory & Cognition, 1981
- THE ESTIMATION OF GENE FREQUENCIES IN A RANDOM‐MATING POPULATIONAnnals of Human Genetics, 1955