TY - JOUR
T1 - Incorporating prior biases innetwork models of conceptual rule learning
AU - Choi, Sangsup
AU - McDaniel, Mark A.
AU - Busemeyer, Jerome R.
PY - 1993/7
Y1 - 1993/7
N2 - A series of simulations is reported in which extant formal categorization models are applied to human rule-learning data (Salatas & Bourne, 1974). These data show that there are clear differences in the ease with which humans learn rules, with the conjunctive the easiest and the biconditional the hardest. The original ALCOVE model (an exemplar-based model), a configuralcue model, and two-layer backpropagation models did not fit the rule-learning data. ALCOVE successfully fit the data, however, when prior biases observed in human rule learning were implemented into weights of the network. Thus, current empirical learning models may not fare well in situations in which learners enter the concept-formation situation with preconceived biases regarding the kinds of concepts that are possible, but such biases might nevertheless be captured within these models. By incorporating preexperimental biases, ALCOVE may hold promise as a comprehensive category-learning model.
AB - A series of simulations is reported in which extant formal categorization models are applied to human rule-learning data (Salatas & Bourne, 1974). These data show that there are clear differences in the ease with which humans learn rules, with the conjunctive the easiest and the biconditional the hardest. The original ALCOVE model (an exemplar-based model), a configuralcue model, and two-layer backpropagation models did not fit the rule-learning data. ALCOVE successfully fit the data, however, when prior biases observed in human rule learning were implemented into weights of the network. Thus, current empirical learning models may not fare well in situations in which learners enter the concept-formation situation with preconceived biases regarding the kinds of concepts that are possible, but such biases might nevertheless be captured within these models. By incorporating preexperimental biases, ALCOVE may hold promise as a comprehensive category-learning model.
UR - https://www.scopus.com/pages/publications/0027176901
U2 - 10.3758/BF03197172
DO - 10.3758/BF03197172
M3 - Article
C2 - 8350732
AN - SCOPUS:0027176901
SN - 0090-502X
VL - 21
SP - 413
EP - 423
JO - Memory and Cognition
JF - Memory and Cognition
IS - 4
ER -