Causal Explanations in Neuroscience: From Mechanistic Abstractions to
Concrete Dynamics
Abstract
Throughout the last two decades, complex systems methodologies have
gained an increasing importance in both neuroscience and the cognitive
sciences. Researchers in these fields are increasingly interested in
characterizing patterns of interactions between neurophysiological and
bodily processes occurring simultaneously at different spatiotemporal
scales, and how these interactions constitute psychological and
behavioral phenomena in humans. In the contemporary philosophy of mind,
there exist two general approaches to answering this fundamental
question: First, mechanistic frameworks, which conceptualize cognitive
systems as mechanisms, composed of functionally-individuated components
whose functions are narrowly defined by their ranges of possible inputs
and outputs in relation to other component states. Second, dynamicist
frameworks, which conceptualize cognitive systems as assemblies of
smaller-scale processes continuously shaping each others’ dynamics
through interactions extended in time – a process which is, in turn,
constrained by the dynamics of the larger-scale system they constitute.
In this paper, I argue that dynamicist frameworks provide a superior
philosophical toolkit for neuroscientists interested in conceptual
questions about causal explanations in neural systems. I do so by
showcasing an example in which the causal contribution of a neural
system (a neuronal population) to a behavior is better explained within
a dynamicist, rather than a mechanist framework of causal explanation. I
then argue that general characteristics of such dynamicist causal
explanations are applicable to other neural and cognitive systems as
well, pointing out various shortcomings of mechanistic approaches in
this area.