Incorporating (variational) free energy models into mechanisms: the case of predictive processing under the free energy principle

被引:0
作者
Piekarski, Michal [1 ]
机构
[1] Cardinal Stefan Wyszynski Univ Warsaw, Inst Philosophy, Wojcickiego 1-3 St, PL-01938 Warsaw, Poland
关键词
Predictive processing; Mechanisms; Explanation; Constraints; Free energy principle; Variational free energy; HETERARCHICAL NETWORKS; CONSTRAINTS; THINKING; BRAIN;
D O I
10.1007/s11229-023-04292-2
中图分类号
N09 [自然科学史]; B [哲学、宗教];
学科分类号
01 ; 0101 ; 010108 ; 060207 ; 060305 ; 0712 ;
摘要
The issue of the relationship between predictive processing (PP) and the free energy principle (FEP) remains a subject of debate and controversy within the research community. Many researchers have expressed doubts regarding the actual integration of PP with the FEP, questioning whether the FEP can truly contribute significantly to the mechanistic understanding of PP or even undermine such integration altogether. In this paper, I present an alternative perspective. I argue that, from the viewpoint of the constraint-based mechanisms approach, the FEP imposes an important constraint, namely variational free energy, on the mechanistic architecture proposed by PP. According to the constraint-based mechanisms approach, high-level cognitive mechanisms are integral parts of extensive heterarchical networks that govern the physiology and behavior of agents. Consequently, mechanistic explanations of cognitive phenomena should incorporate constraints and flows of free energy as relevant components, given that the implemented constraints operate as long as free energy is available. Within this framework, I contend that the FEP provides a relevant constraint for explaining at least some biological cognitive mechanisms described in terms of Bayesian generative models that minimize prediction errors.
引用
收藏
页数:33
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