Human concepts are complex, varied, and serve myriad purposes. One way concepts are used is to categorize people or things and infer properties from category membership. Historically, this view of concepts has dominated the theoretical and empirical literature in cognitive psychology. But this view is too restrictive and another important way concepts are used is to make predictions from strengths of causes to magnitudes of effects on the basis of continuous functional relationships. The general purpose of the proposed research is to provide the foundations for a more formal, systematic, and integrative approach to function learning that parallels the existing progress in category learning. More specifically, we aim to achieve the following three specific goals. First, we plan to rigorously test rule versus associative based models of function learning in a restricted domain that includes only single input - single output functions. Our second line of research addresses the possibility that the rule-abstraction and exemplar-based processes that are observed by individuals in function learning indicate a general learning orientation that produces characteristic learning outcomes for a host of higher-order cognitive tasks. In our third major focus, we examine the interrelations between learning and decision-making by manipulating the type of payoffs provided as feedback during function learning. This last line of research is designed to test the basic learning mechanisms underlying almost all connectionist-learning approaches. ? ?

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
5R01MH068346-02
Application #
6910018
Study Section
Cognition and Perception Study Section (CP)
Program Officer
Kurtzman, Howard S
Project Start
2004-07-01
Project End
2007-06-30
Budget Start
2005-07-01
Budget End
2006-06-30
Support Year
2
Fiscal Year
2005
Total Cost
$203,618
Indirect Cost
Name
Indiana University Bloomington
Department
Psychology
Type
Schools of Arts and Sciences
DUNS #
006046700
City
Bloomington
State
IN
Country
United States
Zip Code
47401
Hotaling, Jared M; Cohen, Andrew L; Shiffrin, Richard M et al. (2015) The Dilution Effect and Information Integration in Perceptual Decision Making. PLoS One 10:e0138481
McDaniel, Mark A; Cahill, Michael J; Robbins, Mathew et al. (2014) Individual differences in learning and transfer: stable tendencies for learning exemplars versus abstracting rules. J Exp Psychol Gen 143:668-93
Bishara, Anthony J; Kruschke, John K; Stout, Julie C et al. (2010) Sequential Learning Models for the Wisconsin Card Sort Task: Assessing Processes in Substance Dependent Individuals. J Math Psychol 54:5-13
Jessup, Ryan K; Busemeyer, Jerome R; Brown, Joshua W (2010) Error effects in anterior cingulate cortex reverse when error likelihood is high. J Neurosci 30:3467-72
McDaniel, Mark A; Dimperio, Eric; Griego, Jacqueline A et al. (2009) Predicting transfer performance: a comparison of competing function learning models. J Exp Psychol Learn Mem Cogn 35:173-95
Pothos, Emmanuel M; Busemeyer, Jerome R (2009) A quantum probability explanation for violations of 'rational' decision theory. Proc Biol Sci 276:2171-8
Jessup, Ryan K; Bishara, Anthony J; Busemeyer, Jerome R (2008) Feedback produces divergence from prospect theory in descriptive choice. Psychol Sci 19:1015-22
Busemeyer, Jerome R; Jessup, Ryan K; Johnson, Joseph G et al. (2006) Building bridges between neural models and complex decision making behaviour. Neural Netw 19:1047-58
McDaniel, Mark A; Busemeyer, Jerome R (2005) The conceptual basis of function learning and extrapolation: comparison of rule-based and associative-based models. Psychon Bull Rev 12:24-42