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1Not every model in cognitive science is (or should be) mechanisticBehavioral and Brain Sciences. forthcoming.Commentary on "Metabolic considerations for cognitive modeling": Haueis and Colaço (H and C) label all models as cognitive. However, just because cognitive science is so-called, doesn't mean that all models are. When type differences are ignored, an argument runs the risk of prescribing a monist modeling strategy. In their case: mechanistic. Such a prescription is empirically inadequate and overly restrictive as modeling in CS relies on many modeling types.
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8Computationalism, implementation, and the literal interpretation of computational models in neuroscience: Distinctions with a differencePhilosophy and the Mind Sciences 7 (1). 2026.In The Brain Abstracted, Chirimuuta argues against the “literal interpretation” of computational models. The literal interpretation understands computational models as providing literally true descriptions of neural processes. According to Chirimuuta, the literal interpretation involves endorsing the computationalism thesis and adopting a theory of computational implementation. The connection between these views, Chirimuuta argues, is what forces the computationalist to reckon with two significa…Read more
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470From Frege to ChatGPT: Compositionality in Language, Cognition, and Deep Neural NetworksIn de Brigard Felipe & Sinnott-Armstrong Walter (eds.), Neuroscience and Philosophy. Vol. 2, Mit Press. forthcoming.
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414Computationalism, implementation, and the literal interpretation of computational models in neuroscience: distinctions with a differencePhilosophy and the Mind Sciences. forthcoming.In The Brain Abstracted, Chirimuuta argues against the “literal interpretation” of computational models. The literal interpretation understands computational models as providing true descriptions of neural processes. According to Chirimuuta, the literal interpretation involves endorsing the computationalism thesis and adopting a theory of computational implementation. The connection between these views, Chirimuuta argues, is what forces the computationalist to reckon with two significant metaphy…Read more
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1160How to be a realist about computational neuroscienceSynthese 205 (3): 1-27. 2025.Recently, a version of realism has been offered to address the simplification strategies used in computational neuroscience. According to this view, computational models provide us with knowledge about the brain, but they should not be taken literally in _any_ sense, even rejecting the idea that the brain performs computations (computationalism). I acknowledge the need for considerations regarding simplification strategies in neuroscience and how they contribute to our interpretations of computa…Read more
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467We've been here before: AI promised human-like machines – in 1958The Conversation. 2024.A roomsize computer equipped with a new type of circuitry, the Perceptron, was introduced to the world in 1958 in a brief news story buried deep in The New York Times. The story cited the U.S. Navy as saying that the Perceptron would lead to machines that “will be able to walk, talk, see, write, reproduce itself and be conscious of its existence.” More than six decades later, similar claims are being made about current artificial intelligence. So, what’s changed in the intervening years? In some…Read more
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230Two senses of medium independenceMind and Language 40 (4): 437-447. 2025.The term “medium independence” has different meanings. One sense maps onto “abstract-as-abstracta” descriptions while the other maps onto “abstract-as-omission” descriptions. Both senses have been deployed when it comes to understanding the nature of physical computation. However, because medium independence is a polysemic term, the sense being used should be clearly stated. If the sense is not clearly stated, then those who wish to engage in debates regarding medium independence and physical co…Read more
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528It takes two to make a view go right (review)The Brains Blog. 2024.The Physical Signature of Computation is the most “robust” mapping view that’s ever hit the market. It is impressive in its detail and the careful attention paid to its characterization of both the physical system and the formal computational description—a true service to the philosophical literature. The book promises a “unified account of artifact and biological computation,” but here’s where things take a turn: after handling artifacts, the Robust Mapping Account fades from view and the Mecha…Read more
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1172Implementation and Interpretation: A Unified Account of Physical ComputationDissertation, University of California, Davis. 2023.
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2282Markov blankets: Realism and our ontological commitmentsBehavioral and Brain Sciences 45. 2022.The authors argue that their target is orthogonal to the realism and instrumentalist debate. I argue that it is born directly from it. While the distinction is helpful in illuminating how some ontological commitments demand a theory of implementation, it's less clear whether different views cleanly map onto the epistemic and metaphysical uses defined in the paper.
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1507Realism and instrumentalism in Bayesian cognitive scienceIn Tony Cheng, Ryoji Sato & Jakob Hohwy (eds.), Expected Experiences: The Predictive Mind in an Uncertain World, Routledge. 2023.There are two distinct approaches to Bayesian modelling in cognitive science. Black-box approaches use Bayesian theory to model the relationship between the inputs and outputs of a cognitive system without reference to the mediating causal processes; while mechanistic approaches make claims about the neural mechanisms which generate the outputs from the inputs. This paper concerns the relationship between these two approaches. We argue that the dominant trend in the philosophical literature, whi…Read more
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New York UniversityBersoff Faculty Fellow
APA Central Division
New York City, New York, United States of America