Correlated symptoms and simulated medical classification.

Category learning theories can be separated into those that expect judgments to be sensitive to configural information and those that expect judgments to be based on a weighted, additive summation of information. Predictions of these two classes of models were investigated in a simulated medical diagnosis task. Subjects learned about a fictitious disease or about two diseases from hypothetical case studies in which some symptoms were correlated with each other and others were independent. Following this initial training, subjects were presented either with pairs of new cases and asked to judge which was more likely to have the disease or with a single case and asked which disease was present. Across four experiments, subjects proved to be sensitive to configural information. When choosing between pairs of new cases, subjects tended to choose the case that preserved the correlation over the case that broke the correlation, even when the case with correlated symptoms contained fewer typical symptoms. When judging which disease was present in a single case, subjects' diagnoses were determined primarily by the correlated symptoms. Implications of these findings to process models of categorization are discussed.

[1]  George S. Sebestyen,et al.  Decision-making processes in pattern recognition , 1962 .

[2]  L. J. Chapman,et al.  Genesis of popular but erroneous psychodiagnostic observations. , 1967, Journal of abnormal psychology.

[3]  M. Posner,et al.  On the genesis of abstract ideas. , 1968, Journal of experimental psychology.

[4]  L. J. Chapman,et al.  Illusory correlation as an obstacle to the use of valid psychodiagnostic signs. , 1969, Journal of abnormal psychology.

[5]  H. J. Einhorn The use of nonlinear, noncompensatory models in decision making. , 1970, Psychological bulletin.

[6]  Stephen K. Reed,et al.  Pattern recognition and categorization , 1972 .

[7]  G. Bower,et al.  Storage and later recognition of exemplars of concepts , 1973 .

[8]  Stephen K. Reed,et al.  Psychological processes in pattern recognition , 1973 .

[9]  R. Dawes,et al.  Linear models in decision making. , 1974 .

[10]  P. G. Neumann An attribute frequency model for the abstraction of prototypes , 1974, Memory & cognition.

[11]  E. Rosch,et al.  Family resemblances: Studies in the internal structure of categories , 1975, Cognitive Psychology.

[12]  D. Medin A theory of context in discrimination learning , 1975 .

[13]  F. Hayes-Roth,et al.  Concept learning and the recognition and classification of exemplars , 1977 .

[14]  P. G. Neumann Visual prototype formation with discontinuous representation of dimensions of variability , 1977, Memory & cognition.

[15]  Douglas L. Medin,et al.  Context theory of classification learning. , 1978 .

[16]  Amos Tversky,et al.  Studies of similarity , 1978 .

[17]  E. Smith,et al.  Psychiatric diagnosis as prototype categorization. , 1980, Journal of abnormal psychology.

[18]  Edward E. Smith,et al.  Strategies and classification learning , 1981 .

[19]  D. Medin,et al.  Linear separability in classification learning. , 1981 .

[20]  E. Rosch,et al.  Categorization of Natural Objects , 1981 .