Literature DB >> 27787682

When high working memory capacity is and is not beneficial for predicting nonlinear processes.

Helen Fischer1, Daniel V Holt2.   

Abstract

Predicting the development of dynamic processes is vital in many areas of life. Previous findings are inconclusive as to whether higher working memory capacity (WMC) is always associated with using more accurate prediction strategies, or whether higher WMC can also be associated with using overly complex strategies that do not improve accuracy. In this study, participants predicted a range of systematically varied nonlinear processes based on exponential functions where prediction accuracy could or could not be enhanced using well-calibrated rules. Results indicate that higher WMC participants seem to rely more on well-calibrated strategies, leading to more accurate predictions for processes with highly nonlinear trajectories in the prediction region. Predictions of lower WMC participants, in contrast, point toward an increased use of simple exemplar-based prediction strategies, which perform just as well as more complex strategies when the prediction region is approximately linear. These results imply that with respect to predicting dynamic processes, working memory capacity limits are not generally a strength or a weakness, but that this depends on the process to be predicted.

Entities:  

Keywords:  Function-learning; Nonlinear dynamic processes; Prediction; Rule-based versus exemplar-based; Working memory capacity

Mesh:

Year:  2017        PMID: 27787682     DOI: 10.3758/s13421-016-0665-0

Source DB:  PubMed          Journal:  Mem Cognit        ISSN: 0090-502X


  24 in total

1.  The problem of overfitting.

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2.  The conceptual basis of function learning and extrapolation: comparison of rule-based and associative-based models.

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Journal:  Psychon Bull Rev       Date:  2005-02

3.  From poor performance to success under stress: working memory, strategy selection, and mathematical problem solving under pressure.

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4.  Function learning: induction of continuous stimulus-response relations.

Authors:  K Koh; D E Meyer
Journal:  J Exp Psychol Learn Mem Cogn       Date:  1991-09       Impact factor: 3.051

5.  Cognitive niches: an ecological model of strategy selection.

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6.  Extrapolation: the sine qua non for abstraction in function learning.

Authors:  E L DeLosh; J R Busemeyer; M A McDaniel
Journal:  J Exp Psychol Learn Mem Cogn       Date:  1997-07       Impact factor: 3.051

7.  Population of linear experts: knowledge partitioning and function learning.

Authors:  Michael L Kalish; Stephan Lewandowsky; John K Kruschke
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8.  Working memory does not dissociate between different perceptual categorization tasks.

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9.  A Comparison of Laboratory and Clinical Working Memory Tests and Their Prediction of Fluid Intelligence.

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