部分可观察环境下学习模型的认知决策工作理论

Emma Graham
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引用次数: 0

摘要

为了在这个不可预测的、不断变化的世界中生存,认知生物学会了用他们所处理的有限的世界知识来做决定。认知决策模型反映了个体对世界的看法,在部分可观察的随机环境中进行了探索。认知模型使用部分可观察马尔可夫决策过程问题公式,这是神经系统模型的框架,被认为可在神经回路中实现[26][16]。为了在部分可观察的环境中构建与DeepMind的MuZero相当的规划模型,一个信念函数将观测值转换为一个信念状态向量,该向量将被离散化,从而用作基于MuZero的机器学习算法的观测值[29]。使用贝叶斯推理从前一个信念状态递归计算信念状态。贝叶斯规则被认为捕获了推理的神经和认知层面[26]。认知模型的计划、训练和行动方法的组成部分将遵循MuZero。然后,该模型可以在部分可观察的环境中以与MuZero平行的方式进行训练和操作。本文将讨论以这种形式构建的模型的认知见解和其他考虑因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Working Theory of a Learned Model in a Partially Observable Environment for Cognitive Decision-Making
To survive in our unpredictable, evolving world, cognitive beings learn to make decisions with the limited knowledge of the world they process. Reflective of an individual's view of the world, a cognitive decision-making model is explored in a partially observable, stochastic environment. The cognitive model uses the Partially Observable Markov Decision Process problem formulation, which is a framework for neurological models and considered implementable in neural circuitry [26] [16]. To structure a planning model comparable to that of DeepMind's MuZero in a partially observable environment, a belief function will translate the observations to a vector of belief states that will be discretized so as to be used as the observations of a MuZero-based machine learning algorithm [29]. The belief states are computed recursively from the previous belief state using Bayesian inference. Bayes rule is thought to capture the neurological and cognitive levels of reasoning [26]. Components of the planning, training, and action methods of the cognitive model will follow those of MuZero. The model could then be trained and act, in way parallel to that of MuZero, in a partially observable environment. Cognitive insights from a model structured in this form and additional considerations are discussed.
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