Nineteen experiments investigate the role of causal background knowledge in determining feature centrality in people's conceptual representations. The main hypothesis is based on a recent theory-based view which suggests that concepts, like theories, have features that are causally connected to each other. Ahn proposes the causal status hypothesis which states that features serving as causes for other features should be more essential than those serving as effects. The proposal describes three sets of studies designed to test and improve this causal status model which automatically determines weights of features based on their causal status. First, the causal status model is applied to account for numerous existing phenomena demonstrating the effect of background knowledge. These include the basic level shift as a function of expertise, differences between natural kinds and artifacts, developmental trends in the ways children treat natural kinds and artifacts, category variability on categorization, and the types of properties in category-based induction. Second, a computational model of the causal status hypothesis is implemented and tested by varying the factors which are predicted to affect feature weighing. These include causal strengths between causally related features, the number of features caused by a target feature, and the number of causal links branching out from a target feature. Thus, the model will provide a basis for predicting feature weighing in complex knowledge bases which have multiple interwoven causal links varying in strengths. Third, the model is tested to explain clinicians' diagnosis processes to investigate not only the model's generality in a sample complex knowledge base but also how extensive use of categories and knowledge on feature probabilities might interact with the causal status bias. The proposed experiments rely on two methods;(1) Tasks using artificial categories directly manipulate causal status of novel features and collect participants ratings on feature centrality for causal and non-causal features and (2) tasks using familiar categories measure participants' existing knowledge on causal status of features which will be subsequently correlated with their centrality ratings. The major theoretical contribution of the model is to rigorously define theory-based categorization which can be applied to real-life cases. In addition, an understanding of conceptual cores in terms of people's causal explanations will elucidate the structure and acquisition of knowledge in general.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
1R01MH057737-01A1
Application #
2696658
Study Section
Perception and Cognition Review Committee (PEC)
Project Start
1998-08-10
Project End
2001-07-31
Budget Start
1998-08-10
Budget End
1999-07-31
Support Year
1
Fiscal Year
1998
Total Cost
Indirect Cost
Name
Yale University
Department
Psychology
Type
Schools of Arts and Sciences
DUNS #
082359691
City
New Haven
State
CT
Country
United States
Zip Code
06520
Kim, Nancy S; Johnson, Samuel G B; Ahn, Woo-Kyoung et al. (2017) The effect of abstract versus concrete framing on judgments of biological and psychological bases of behavior. Cogn Res Princ Implic 2:17
Johnson, Samuel G B; Ahn, Woo-kyoung (2015) Causal Networks or Causal Islands? The Representation of Mechanisms and the Transitivity of Causal Judgment. Cogn Sci 39:1468-503
Lebowitz, Matthew S; Pyun, John J; Ahn, Woo-kyoung (2014) Biological explanations of generalized anxiety disorder: effects on beliefs about prognosis and responsibility. Psychiatr Serv 65:498-503
Lebowitz, Matthew S; Ahn, Woo-Kyoung; Nolen-Hoeksema, Susan (2013) Fixable or fate? Perceptions of the biology of depression. J Consult Clin Psychol 81:518-27
Marsh, Jessecae K; Ahn, Woo-Kyoung (2012) Memory for Patient Information as a Function of Experience in Mental Health. Appl Cogn Psychol 26:462-474
Taylor, Eric G; Ahn, Woo-Kyoung (2012) Causal imprinting in causal structure learning. Cogn Psychol 65:381-413
Lebowitz, Matthew S; Ahn, Woo-Kyoung (2012) Combining biomedical accounts of mental disorders with treatability information to reduce mental illness stigma. Psychiatr Serv 63:496-9
Luhmann, Christian C; Ahn, Woo-Kyoung (2011) Expectations and interpretations during causal learning. J Exp Psychol Learn Mem Cogn 37:568-87
Rottman, Benjamin M; Kim, Nancy S; Ahn, Woo-Kyoung et al. (2011) Can personality disorder experts recognize DSM-IV personality disorders from five-factor model descriptions of patient cases? J Clin Psychiatry 72:630-9
Rottman, Benjamin Margolin; Ahn, Woo-kyoung (2011) Effect of grouping of evidence types on learning about interactions between observed and unobserved causes. J Exp Psychol Learn Mem Cogn 37:1432-48

Showing the most recent 10 out of 30 publications