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Why Higher Working Memory Capacity May Help You Learn: Sampling, Search, and Degrees of Approximation

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Why Higher Working Memory Capacity May Help You Learn: Sampling, Search, and Degrees of Approximation. / Lloyd, K.; Sanborn, A.; Leslie, D. et al.
In: Cognitive Science, Vol. 43, No. 12, e12805, 31.12.2019.

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Lloyd K, Sanborn A, Leslie D, Lewandowsky S. Why Higher Working Memory Capacity May Help You Learn: Sampling, Search, and Degrees of Approximation. Cognitive Science. 2019 Dec 31;43(12):e12805. Epub 2019 Dec 15. doi: 10.1111/cogs.12805

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Lloyd, K. ; Sanborn, A. ; Leslie, D. et al. / Why Higher Working Memory Capacity May Help You Learn: Sampling, Search, and Degrees of Approximation. In: Cognitive Science. 2019 ; Vol. 43, No. 12.

Bibtex

@article{e28071bc7d224a13ab1c55f43d9e4e37,
title = "Why Higher Working Memory Capacity May Help You Learn: Sampling, Search, and Degrees of Approximation",
abstract = "Algorithms for approximate Bayesian inference, such as those based on sampling (i.e., Monte Carlo methods), provide a natural source of models of how people may deal with uncertainty with limited cognitive resources. Here, we consider the idea that individual differences in working memory capacity (WMC) may be usefully modeled in terms of the number of samples, or “particles,” available to perform inference. To test this idea, we focus on two recent experiments that report positive associations between WMC and two distinct aspects of categorization performance: the ability to learn novel categories, and the ability to switch between different categorization strategies (“knowledge restructuring”). In favor of the idea of modeling WMC as a number of particles, we show that a single model can reproduce both experimental results by varying the number of particles—increasing the number of particles leads to both faster category learning and improved strategy‐switching. Furthermore, when we fit the model to individual participants, we found a positive association between WMC and best‐fit number of particles for strategy switching. However, no association between WMC and best‐fit number of particles was found for category learning. These results are discussed in the context of the general challenge of disentangling the contributions of different potential sources of behavioral variability.",
keywords = "Working memory, Category learning, Knowledge partitioning, Strategy switching, Approximate Bayesian inference, Particle filtering",
author = "K. Lloyd and A. Sanborn and D. Leslie and S. Lewandowsky",
year = "2019",
month = dec,
day = "31",
doi = "10.1111/cogs.12805",
language = "English",
volume = "43",
journal = "Cognitive Science",
issn = "0364-0213",
publisher = "Wiley-Blackwell",
number = "12",

}

RIS

TY - JOUR

T1 - Why Higher Working Memory Capacity May Help You Learn: Sampling, Search, and Degrees of Approximation

AU - Lloyd, K.

AU - Sanborn, A.

AU - Leslie, D.

AU - Lewandowsky, S.

PY - 2019/12/31

Y1 - 2019/12/31

N2 - Algorithms for approximate Bayesian inference, such as those based on sampling (i.e., Monte Carlo methods), provide a natural source of models of how people may deal with uncertainty with limited cognitive resources. Here, we consider the idea that individual differences in working memory capacity (WMC) may be usefully modeled in terms of the number of samples, or “particles,” available to perform inference. To test this idea, we focus on two recent experiments that report positive associations between WMC and two distinct aspects of categorization performance: the ability to learn novel categories, and the ability to switch between different categorization strategies (“knowledge restructuring”). In favor of the idea of modeling WMC as a number of particles, we show that a single model can reproduce both experimental results by varying the number of particles—increasing the number of particles leads to both faster category learning and improved strategy‐switching. Furthermore, when we fit the model to individual participants, we found a positive association between WMC and best‐fit number of particles for strategy switching. However, no association between WMC and best‐fit number of particles was found for category learning. These results are discussed in the context of the general challenge of disentangling the contributions of different potential sources of behavioral variability.

AB - Algorithms for approximate Bayesian inference, such as those based on sampling (i.e., Monte Carlo methods), provide a natural source of models of how people may deal with uncertainty with limited cognitive resources. Here, we consider the idea that individual differences in working memory capacity (WMC) may be usefully modeled in terms of the number of samples, or “particles,” available to perform inference. To test this idea, we focus on two recent experiments that report positive associations between WMC and two distinct aspects of categorization performance: the ability to learn novel categories, and the ability to switch between different categorization strategies (“knowledge restructuring”). In favor of the idea of modeling WMC as a number of particles, we show that a single model can reproduce both experimental results by varying the number of particles—increasing the number of particles leads to both faster category learning and improved strategy‐switching. Furthermore, when we fit the model to individual participants, we found a positive association between WMC and best‐fit number of particles for strategy switching. However, no association between WMC and best‐fit number of particles was found for category learning. These results are discussed in the context of the general challenge of disentangling the contributions of different potential sources of behavioral variability.

KW - Working memory

KW - Category learning

KW - Knowledge partitioning

KW - Strategy switching

KW - Approximate Bayesian inference

KW - Particle filtering

U2 - 10.1111/cogs.12805

DO - 10.1111/cogs.12805

M3 - Journal article

VL - 43

JO - Cognitive Science

JF - Cognitive Science

SN - 0364-0213

IS - 12

M1 - e12805

ER -