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感知与决策的预测处理模型导论

An Introduction to Predictive Processing Models of Perception and Decision-Making.

作者信息

Sprevak Mark, Smith Ryan

机构信息

School of Philosophy, Psychology and Language Sciences, University of Edinburgh.

Laureate Institute for Brain Research, Tulsa, Oklahoma.

出版信息

Top Cogn Sci. 2023 Oct 29. doi: 10.1111/tops.12704.

Abstract

The predictive processing framework includes a broad set of ideas, which might be articulated and developed in a variety of ways, concerning how the brain may leverage predictive models when implementing perception, cognition, decision-making, and motor control. This article provides an up-to-date introduction to the two most influential theories within this framework: predictive coding and active inference. The first half of the paper (Sections 2-5) reviews the evolution of predictive coding, from early ideas about efficient coding in the visual system to a more general model encompassing perception, cognition, and motor control. The theory is characterized in terms of the claims it makes at Marr's computational, algorithmic, and implementation levels of description, and the conceptual and mathematical connections between predictive coding, Bayesian inference, and variational free energy (a quantity jointly evaluating model accuracy and complexity) are explored. The second half of the paper (Sections 6-8) turns to recent theories of active inference. Like predictive coding, active inference models assume that perceptual and learning processes minimize variational free energy as a means of approximating Bayesian inference in a biologically plausible manner. However, these models focus primarily on planning and decision-making processes that predictive coding models were not developed to address. Under active inference, an agent evaluates potential plans (action sequences) based on their expected free energy (a quantity that combines anticipated reward and information gain). The agent is assumed to represent the world as a partially observable Markov decision process with discrete time and discrete states. Current research applications of active inference models are described, including a range of simulation work, as well as studies fitting models to empirical data. The paper concludes by considering future research directions that will be important for further development of both models.

摘要

预测处理框架包含一系列广泛的观点,这些观点可能会以各种方式进行阐述和发展,涉及大脑在实施感知、认知、决策和运动控制时如何利用预测模型。本文对该框架内两个最具影响力的理论进行了最新介绍:预测编码和主动推理。本文的前半部分(第2 - 5节)回顾了预测编码的演变,从视觉系统中关于高效编码的早期观点到一个更通用的模型,该模型涵盖了感知、认知和运动控制。该理论从其在马尔计算、算法和实现描述层面所提出的主张方面进行了刻画,并探讨了预测编码、贝叶斯推理和变分自由能(一个联合评估模型准确性和复杂性的量)之间的概念和数学联系。本文的后半部分(第6 - 8节)转向了主动推理的最新理论。与预测编码一样,主动推理模型假设感知和学习过程将变分自由能最小化,以此作为以生物学上合理的方式近似贝叶斯推理的一种手段。然而,这些模型主要关注预测编码模型未曾涉及的规划和决策过程。在主动推理下,一个智能体基于其预期自由能(一个结合了预期奖励和信息增益的量)来评估潜在计划(动作序列)。该智能体被假定将世界表示为一个具有离散时间和离散状态的部分可观测马尔可夫决策过程。文中描述了主动推理模型当前的研究应用,包括一系列模拟工作,以及将模型拟合到实证数据的研究。本文最后考虑了对这两种模型的进一步发展都很重要的未来研究方向。

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