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A Computational Modeling Strategy for Levels

Published online by Cambridge University Press:  01 January 2022

Abstract

Rather than taking the ontological fundamentality of an ideal microphysics as a starting point, this article sketches an approach to the problem of levels that swaps assumptions about ontology for assumptions about inquiry. These assumptions can be implemented formally via computational modeling techniques that will be described below. It is argued that these models offer a way to save some of our prominent commonsense intuitions concerning levels. This strategy offers a way of exploring the individuation of higher level properties in a systematic and formally constrained manner.

Type
Computational Emergence and Its Applications
Copyright
Copyright © The Philosophy of Science Association

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