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Model averaging optimal inference and habit formation

机译:模型平均最佳推理和习惯养成

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摘要

Postulating that the brain performs approximate Bayesian inference generates principled and empirically testable models of neuronal function—the subject of much current interest in neuroscience and related disciplines. Current formulations address inference and learning under some assumed and particular model. In reality, organisms are often faced with an additional challenge—that of determining which model or models of their environment are the best for guiding behavior. Bayesian model averaging—which says that an agent should weight the predictions of different models according to their evidence—provides a principled way to solve this problem. Importantly, because model evidence is determined by both the accuracy and complexity of the model, optimal inference requires that these be traded off against one another. This means an agent's behavior should show an equivalent balance. We hypothesize that Bayesian model averaging plays an important role in cognition, given that it is both optimal and realizable within a plausible neuronal architecture. We outline model averaging and how it might be implemented, and then explore a number of implications for brain and behavior. In particular, we propose that model averaging can explain a number of apparently suboptimal phenomena within the framework of approximate (bounded) Bayesian inference, focusing particularly upon the relationship between goal-directed and habitual behavior.
机译:假设大脑进行了近似的贝叶斯推理,就可以生成神经元功能的原理性和经验可检验的模型,神经元功能是当前在神经科学和相关学科中非常感兴趣的主题。当前的表述方法是在某些假定的特定模型下解决推理和学习问题的。在现实中,生物通常面临着另一项挑战-确定其环境的哪种模型最适合指导行为。贝叶斯模型平均(表示代理应根据其证据对不同模型的预测加权)提供了解决此问题的原则方法。重要的是,由于模型证据是由模型的准确性和复杂性共同决定的,因此最佳推论要求将它们相互权衡。这意味着代理人的行为应显示出同等的平衡。我们假设贝叶斯模型平均在认知中起着重要作用,因为它在合理的神经元体系结构中既是最佳的又是可实现的。我们概述了模型平均及其实现方式,然后探讨了对大脑和行为的许多含义。特别地,我们提出模型平均可以在近似(有界)贝叶斯推理的框架内解释许多明显次优的现象,尤其关注目标导向行为和习惯行为之间的关系。

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