将元学习模型与认知过程模型相结合。

IF 16.6 1区 心理学 Q1 BEHAVIORAL SCIENCES Behavioral and Brain Sciences Pub Date : 2024-09-23 DOI:10.1017/S0140525X24000165
Adam N Sanborn, Haijiang Yan, Christian Tsvetkov
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引用次数: 0

摘要

元学习的认知模型能对呈现给参与者的实际刺激做出最佳预测,但通过约束神经网络来研究判断偏差将非常臃肿。我们建议将它们与认知过程模型结合起来,后者更直观,更能解释偏差。理性过程模型可以从元学习模型产生的后验分布中依次采样,这似乎是一个天然的契合点。
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Combining meta-learned models with process models of cognition.

Meta-learned models of cognition make optimal predictions for the actual stimuli presented to participants, but investigating judgment biases by constraining neural networks will be unwieldy. We suggest combining them with cognitive process models, which are more intuitive and explain biases. Rational process models, those that can sequentially sample from the posterior distributions produced by meta-learned models, seem a natural fit.

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来源期刊
Behavioral and Brain Sciences
Behavioral and Brain Sciences 医学-行为科学
CiteScore
1.40
自引率
1.70%
发文量
353
期刊介绍: Behavioral and Brain Sciences (BBS) is a highly respected journal that employs an innovative approach called Open Peer Commentary. This format allows for the publication of noteworthy and contentious research from various fields including psychology, neuroscience, behavioral biology, and cognitive science. Each article is accompanied by 20-40 commentaries from experts across these disciplines, as well as a response from the author themselves. This unique setup creates a captivating forum for the exchange of ideas, critical analysis, and the integration of research within the behavioral and brain sciences, spanning topics from molecular neurobiology and artificial intelligence to the philosophy of the mind.
期刊最新文献
Bayes beyond the predictive distribution. Challenges of meta-learning and rational analysis in large worlds. Combining meta-learned models with process models of cognition. Integrative learning in the lens of meta-learned models of cognition: Impacts on animal and human learning outcomes. Is human compositionality meta-learned?
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