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172We commend Sanbonmatsu et al. (2025) for centring metatheory and metamethod as remedies to “difficult research problems”. However, we wish to depart from their conceptualisation of what models are and what role they play in psychological theorising. Under computationalism, models are not a container for observations through being fit to neurobehavioural data and should not be held to the standard of providing us with numerical predictions. Computational cognitive models can only play their role …Read more
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157Multiple realizability (MR) is not necessarily unclear nor does it purely operate at the computational level. To understand potential relationships between MR and other constraints, such as metabolic, we formalise possible meanings of function in cognitive science. We build on these to formalise MR, thus resolving its apparent vagaries. Importantly, MR formalisms meaningfully guide and constrain theory building.
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10825Against the Uncritical Adoption of 'AI' Technologies in AcademiaDigital Culture and Education 16 (2). 2026.Artificial intelligence (AI) companies and their rhetoric infringe on academia in harmful ways, mirroring past uncritical acceptance of industry logics, such as those of tobacco and petroleum. In this position piece, we tease apart and explain why phrases like 'generative AI' impede scholarly discussion because by design these expressions are used to dazzle and sidestep scrutiny. Furthermore, we contend with the AI industry's logics to enable rejecting frames such as: that we must embrace the fu…Read more
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32Rational analysis, intractability, and the prospects of ‘as if’-explanationsSynthese 195 (2): 491-510. 2014.The plausibility of so-called ‘rational explanations’ in cognitive science is often contested on the grounds of computational intractability. Some have argued that intractability is a pseudoproblem, however, because cognizers do not actually perform the rational calculations posited by rational models; rather, they only behave as if they do. Whether or not the problem of intractability is dissolved by this gambit critically depends, inter alia, on the semantics of the ‘as if’ connective. First, …Read more
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1675The current AI hype cycle combined with Psychology's various crises make for a perfect storm. Psychology, on the one hand, has a history of weak theoretical foundations, a neglect for computational and formal skills, and a hyperempiricist privileging of experimental tasks and testing for effects. Artificial Intelligence, on the other hand, has a history of conflating artifacts for theories of cognition, or even minds themselves, and its engineering offspring likes to move fast and break things. …Read more
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1079The cognitive sciences, especially at the intersections with computer science, artificial intelligence, and neuroscience, propose 'reverse engineering' the mind or brain as a viable methodology. We show three important issues with this stance: 1) Reverse engineering proper is not a single method and follows a different path when uncovering an engineered substance versus a computer. 2) These two forms of reverse engineering are incompatible. We cannot safely reason from attempts to reverse engine…Read more
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866Reclaiming AI as a Theoretical Tool for Cognitive ScienceComputational Brain and Behavior 7. 2024.The idea that human cognition is, or can be understood as, a form of computation is a useful conceptual tool for cognitive science. It was a foundational assumption during the birth of cognitive science as a multidisciplinary field, with Artificial Intelligence (AI) as one of its contributing fields. One conception of AI in this context is as a provider of computational tools (frameworks, concepts, formalisms, models, proofs, simulations, etc.) that support theory building in cognitive science. …Read more
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82Editorial to the special issue on perspectives on human probabilistic inference and the 'Bayesian brain'Brain and Cognition 112 1-2. 2017.
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67Naturalism, tractability and the adaptive toolboxSynthese 198 (6): 5749-5784. 2019.Many compelling examples have recently been provided in which people can achieve impressive epistemic success, e.g. draw highly accurate inferences, by using simple heuristics and very little information. This is possible by taking advantage of the features of the environment. The examples suggest an easy and appealing naturalization of rationality: on the one hand, people clearly can apply simple heuristics, and on the other hand, they intuitively ought do so when this brings them high accuracy…Read more
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103Review of Gorayska & Mey (2004): Cognition and Technology: Co-existence, Convergence and Co-Evolution (review)Pragmatics and Cognition 13 (3): 647-655. 2005.
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80How Intractability Spans the Cognitive and Evolutionary Levels of ExplanationTopics in Cognitive Science 12 (4): 1382-1402. 2020.This paper focuses on the cognitive/computational and evolutionary levels. It describes three proposals to make cognition computationally tractable, namely: Resource Rationality, the Adaptive Toolbox and Massive Modularity. While each of these proposals appeals to evolutionary considerations to dissolve the intractability of cognition, Rich, Blokpoel, de Haan, and van Rooij argue that, in each case, the intractability challenge is not resolved, but just relocated to the level of evolution.
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41Cognition and Intractability: A Guide to Classical and Parameterized Complexity AnalysisCambridge University Press. 2019.Intractability is a growing concern across the cognitive sciences: while many models of cognition can describe and predict human behavior in the lab, it remains unclear how these models can scale to situations of real-world complexity. Cognition and Intractability is the first book to provide an accessible introduction to computational complexity analysis and its application to questions of intractability in cognitive science. Covering both classical and parameterized complexity analysis, it int…Read more
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1728Intractability and the use of heuristics in psychological explanationsSynthese 187 (2): 471-487. 2012.Many cognitive scientists, having discovered that some computational-level characterization f of a cognitive capacity φ is intractable, invoke heuristics as algorithmic-level explanations of how cognizers compute f. We argue that such explanations are actually dysfunctional, and rebut five possible objections. We then propose computational-level theory revision as a principled and workable alternative.
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170Self-Organization Takes Time TooTopics in Cognitive Science 4 (1): 63-71. 2012.Four articles in this issue of topiCS (volume 4, issue 1) argue against a computational approach in cognitive science in favor of a dynamical approach. I concur that the computational approach faces some considerable explanatory challenges. Yet the dynamicists’ proposal that cognition is self-organized seems to only go so far in addressing these challenges. Take, for instance, the hypothesis that cognitive behavior emerges when brain and body (re-)configure to satisfy task and environmental cons…Read more
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82The Tractable Cognition ThesisCognitive Science 32 (6): 939-984. 2008.The recognition that human minds/brains are finite systems with limited resources for computation has led some researchers to advance the Tractable Cognition thesis: Human cognitive capacities are constrained by computational tractability. This thesis, if true, serves cognitive psychology by constraining the space of computational‐level theories of cognition. To utilize this constraint, a precise and workable definition of “computational tractability” is needed. Following computer science tradit…Read more
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753The Incoherence of Heuristically Explaining CoherenceIn Ron Sun & Naomi Miyake (eds.), Proceedings of the 28th Annual Conference of the Cognitive Science Society, Cpc Press. pp. 2622. 2006.Advancement in cognitive science depends, in part, on doing some occasional ‘theoretical housekeeping’. We highlight some conceptual confusions lurking in an important attempt at explaining the human capacity for rational or coherent thought: Thagard & Verbeurgt’s computational-level model of humans’ capacity for making reasonable and truth-conducive abductive inferences (1998; Thagard, 2000). Thagard & Verbeurgt’s model assumes that humans make such inferences by computing a coherence function …Read more
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2163Rational analysis, intractability, and the prospects of ‘as if’-explanationsSynthese 195 (2): 491-510. 2018.Despite their success in describing and predicting cognitive behavior, the plausibility of so-called ‘rational explanations’ is often contested on the grounds of computational intractability. Several cognitive scientists have argued that such intractability is an orthogonal pseudoproblem, however, since rational explanations account for the ‘why’ of cognition but are agnostic about the ‘how’. Their central premise is that humans do not actually perform the rational calculations posited by their …Read more
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188What do mirror neurons mirror?Philosophical Psychology 24 (5). 2011.Single cell recordings in monkeys provide strong evidence for an important role of the motor system in action understanding. This evidence is backed up by data from studies of the (human) mirror neuron system using neuroimaging or TMS techniques, and behavioral experiments. Although the data acquired from single cell recordings are generally considered to be robust, several debates have shown that the interpretation of these data is far from straightforward. We will show that research based on s…Read more
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136Goals are not implied by actions, but inferred from actions and contextsBehavioral and Brain Sciences 31 (1): 38-39. 2008.People cannot understand intentions behind observed actions by direct simulation, because goal inference is highly context dependent. Context dependency is a major source of computational intractability in traditional information-processing models. An embodied embedded view of cognition may be able to overcome this problem, but then the problem needs recognition and explication within the context of the new, layered cognitive architecture
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8How action understanding can be rational, Bayesian and tractableIn S. Ohlsson & R. Catrambone (eds.), Proceedings of the 32nd Annual Conference of the Cognitive Science Society, Cognitive Science Society. 2010.
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23Similarity as tractable transformationIn N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society. 2009.
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158Bayesian Intractability Is Not an Ailment That Approximation Can CureCognitive Science 35 (5): 779-784. 2011.Bayesian models are often criticized for postulating computations that are computationally intractable (e.g., NP-hard) and therefore implausibly performed by our resource-bounded minds/brains. Our letter is motivated by the observation that Bayesian modelers have been claiming that they can counter this charge of “intractability” by proposing that Bayesian computations can be tractably approximated. We would like to make the cognitive science community aware of the problematic nature of such cla…Read more
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27Identifying sources of intractability in cognitive models: An illustration using analogical structure mappingIn B. C. Love, K. McRae & V. M. Sloutsky (eds.), Proceedings of the 30th Annual Conference of the Cognitive Science Society., Cognitive Science Society. 2008.
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115Higher-level processes in the formation and application of associations during action understandingBehavioral and Brain Sciences 37 (2): 202-203. 2014.
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131A non-representational approach to imagined actionCognitive Science 26 (3): 345-375. 2002.This study addresses the dynamical nature of a “representation‐hungry” cognitive task involving an imagined action. In our experiment, participants were handed rods that systematically increased or decreased in length on subsequent trials. Participants were asked to judge whether or not they thought they could reach for a distant object with the hand‐held rod. The results are in agreement with a dynamical model, extended from Tuller, Case, Ding, and Kelso (1994). The dynamical effects observed i…Read more
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120One wrong does not justify another: Accepting dual processes by fallacy of false alternativesBehavioral and Brain Sciences 30 (3): 269-270. 2007.Barbey & Sloman (B&S) advocate a dual-process (two-system) approach by comparing it with an alternative perspective (ecological rationality), claiming that the latter is unwarranted. Rejecting this alternative approach cannot serve as sufficient evidence for the viability of the former
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83Parameterized Complexity of Theory of Mind Reasoning in Dynamic Epistemic LogicJournal of Logic, Language and Information 27 (3): 255-294. 2018.Theory of mind refers to the human capacity for reasoning about others’ mental states based on observations of their actions and unfolding events. This type of reasoning is notorious in the cognitive science literature for its presumed computational intractability. A possible reason could be that it may involve higher-order thinking. To investigate this we formalize theory of mind reasoning as updating of beliefs about beliefs using dynamic epistemic logic, as this formalism allows to parameteri…Read more