A central concept in active inference is that the internal states of a physical system parametrise probability measures over states of the external world. These can be seen as an agent's beliefs, expressed as a Bayesian prior or posterior. Here we begin the development of a general theory that would tell us when it is appropriate to interpret states as representing beliefs in this way. We focus on the case in which a system can be interpreted as performing either Bayesian filtering or Bayesian inference. We provide formal definitions of what it means for such an interpretation to exist, using techniques from category theory.
翻译:积极推断的一个核心概念是,物理系统的内部状态对外部世界的状态的概率度量,可以视为代理人的信念,以贝耶斯人以前或后人的形式表达。在这里,我们开始发展一个一般性理论,告诉我们何时将国家解释为以这种方式代表信仰是适当的。我们侧重于一个系统可以被解释为执行贝耶斯过滤或贝耶斯人的推论的情况。我们利用类别理论的技术,对这种解释的存在的含义提供了正式的定义。