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An ecological perspective to cognitive limits: Modeling environment-mind interactions with ACT-R

Published online by Cambridge University Press:  01 January 2023

Wolfgang Gaissmaier*
Affiliation:
Center for Adaptive Behavior and Cognition, Max Planck Institute for Human Development, Berlin
Lael J. Schooler
Affiliation:
Center for Adaptive Behavior and Cognition, Max Planck Institute for Human Development, Berlin
Rui Mata
Affiliation:
Department of Psychology, University of Michigan
*
* Correspondence concerning this article should be addressed to Wolfgang Gaissmaier, Center for Adaptive Behavior and Cognition, Max Planck Institute for Human Development, Lentzeallee 94, 14195 Berlin, Germany. Email: gaissmaier@mpib-berlin.mpg.de.
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Abstract

Contrary to the common belief that more information is always better, Gigerenzer et al. (1999) showed that simple decision strategies which rely on little information can be quite successful. The success of simple strategies depends both on bets about the structure of the environment and on the core capacities of the human mind, such as recognition memory (Gigerenzer, 2004). However, the interplay between the environment and the mind’s core capacities has rarely been precisely modeled. We illustrate how these environment-mind interactions could be formally modeled within the cognitive architecture ACT-R (J. R. Anderson et al., 2004). ACT-R is an integrated theory of mind that is tuned to the statistical structure of the environment, and it can account for a variety of phenomena such as learning, problem solving, and decision making. Here, we focus on studying decision strategies and show how the success of theses strategies in particular environments depends on characteristics of core cognitive capacities, such as recognition and short term memory.

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Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
The authors license this article under the terms of the Creative Commons Attribution 3.0 License.
Copyright
Copyright © The Authors [2008] This is an Open Access article, distributed under the terms of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Figure 0

Figure 1: Performance of the recognition and fluency heuristics vary with decay rate. (Reprinted with permission from Schooler & Hertwig, 2005.)

Figure 1

Figure 2: A chunk’s activation determines its retrieval time. (Reprinted with permission from Schooler & Hertwig, 2005.)

Figure 2

Figure 3: Model predictions of (A) the decay and (B) the noise variant. The models were fitted to data on 4 blocks of 32 trials each, and then predictions were made for behavior after a shift in the environment (indicated by the vertical line). (Reprinted with permission from Gaissmaier, Schooler, & Rieskamp, 2006.)

Figure 3

Figure 4: Maximizing on all trials, Experiment 1, late shift condition. Low and high digit spans were averaged separately across trials within a moving window of 32 trials. To prevent an overlap between trials before and after the shift in this window, I started averaging again after the shift, which is indicated by the two vertical lines at trials 240 and 272. That is, the last depicted data point before the shift consists of the last 32 trials before the shift, and the first depicted data point after the shift consists of the first 32 trials after the shift. (Reprinted with permission from Gaissmaier, Schooler, & Rieskamp, 2006.)