TY - JOUR
T1 - Model-guided search for optimal natural-science-category training exemplars
T2 - A work in progress
AU - Nosofsky, Robert M.
AU - Sanders, Craig A.
AU - Zhu, Xiaojin
AU - McDaniel, Mark A.
N1 - Publisher Copyright:
© 2018, Psychonomic Society, Inc.
PY - 2019/2/15
Y1 - 2019/2/15
N2 - Under the guidance of a formal exemplar model of categorization, we conduct comparisons of natural-science classification learning across four conditions in which the nature of the training examples is manipulated. The specific domain of inquiry is rock classification in the geologic sciences; the goal is to use the model to search for optimal training examples for teaching the rock categories. On the positive side, the model makes a number of successful predictions: Most notably, compared with conditions involving focused training on small sets of training examples, generalization to novel transfer items is significantly enhanced in a condition in which learners experience a broad swath of training examples from each category. Nevertheless, systematic departures from the model predictions are also observed. Further analyses lead us to the hypothesis that the high-dimensional feature-space representation derived for the rock stimuli (to which the exemplar model makes reference) systematically underestimates within-category similarities. We suggest that this limitation is likely to arise in numerous situations in which investigators attempt to build detailed feature-space representations for naturalistic categories. A low-parameter extended version of the model that adjusts for this limitation provides dramatically improved accounts of performance across the four conditions. We outline future steps for enhancing the current feature-space representation and continuing our goal of using formal psychological models to guide the search for effective methods of teaching science categories.
AB - Under the guidance of a formal exemplar model of categorization, we conduct comparisons of natural-science classification learning across four conditions in which the nature of the training examples is manipulated. The specific domain of inquiry is rock classification in the geologic sciences; the goal is to use the model to search for optimal training examples for teaching the rock categories. On the positive side, the model makes a number of successful predictions: Most notably, compared with conditions involving focused training on small sets of training examples, generalization to novel transfer items is significantly enhanced in a condition in which learners experience a broad swath of training examples from each category. Nevertheless, systematic departures from the model predictions are also observed. Further analyses lead us to the hypothesis that the high-dimensional feature-space representation derived for the rock stimuli (to which the exemplar model makes reference) systematically underestimates within-category similarities. We suggest that this limitation is likely to arise in numerous situations in which investigators attempt to build detailed feature-space representations for naturalistic categories. A low-parameter extended version of the model that adjusts for this limitation provides dramatically improved accounts of performance across the four conditions. We outline future steps for enhancing the current feature-space representation and continuing our goal of using formal psychological models to guide the search for effective methods of teaching science categories.
KW - Models of category learning
KW - Perceptual categorization and identification
KW - Similarity
UR - https://www.scopus.com/pages/publications/85049613504
U2 - 10.3758/s13423-018-1508-8
DO - 10.3758/s13423-018-1508-8
M3 - Article
C2 - 29987765
AN - SCOPUS:85049613504
SN - 1069-9384
VL - 26
SP - 48
EP - 76
JO - Psychonomic Bulletin and Review
JF - Psychonomic Bulletin and Review
IS - 1
ER -