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A Goal-Directed Bayesian Framework for Categorization

机译:目标导向的贝叶斯分类框架

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摘要

Categorization is a fundamental ability for efficient behavioral control. It allows organisms to remember the correct responses to categorical cues and not for every stimulus encountered (hence eluding computational cost or complexity), and to generalize appropriate responses to novel stimuli dependant on category assignment. Assuming the brain performs Bayesian inference, based on a generative model of the external world and future goals, we propose a computational model of categorization in which important properties emerge. These properties comprise the ability to infer latent causes of sensory experience, a hierarchical organization of latent causes, and an explicit inclusion of context and action representations. Crucially, these aspects derive from considering the environmental statistics that are relevant to achieve goals, and from the fundamental Bayesian principle that any generative model should be preferred over alternative models based on an accuracy-complexity trade-off. Our account is a step toward elucidating computational principles of categorization and its role within the Bayesian brain hypothesis.
机译:分类是有效行为控制的基本能力。它使生物体能够记住对类别线索的正确响应,而不是针对遇到的每种刺激(从而避免计算成本或复杂性)记住正确的响应,从而归纳对新刺激的适当响应,具体取决于类别分配。假设大脑根据外部世界和未来目标的生成模型执行贝叶斯推理,我们提出了其中重要属性出现的分类计算模型。这些属性包括推断感官体验的潜在原因的能力,潜在原因的层次组织以及上下文和动作表示的明确包含。至关重要的是,这些方面源于考虑与实现目标有关的环境统计数据,并且源于贝叶斯基本原理,即基于精确度-复杂度的权衡,任何生成模型都应优于替代模型。我们的解释是朝着阐明分类的计算原理及其在贝叶斯脑假说中的作用迈出了一步。

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