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163Is the brain a quantum computer?Cognitive Science 30 (3): 593-603. 2006.We argue that computation via quantum mechanical processes is irrelevant to explaining how brains produce thought, contrary to the ongoing speculations of many theorists. First, quantum effects do not have the temporal properties required for neural information processing. Second, there are substantial physical obstacles to any organic instantiation of quantum computation. Third, there is no psychological evidence that such mental phenomena as consciousness and mathematical thinking require expl…Read more
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476How Neurons Mean: A Neurocomputational Theory of Representational ContentDissertation, Washington University in St. Louis. 2000.Questions concerning the nature of representation and what representations are about have been a staple of Western philosophy since Aristotle. Recently, these same questions have begun to concern neuroscientists, who have developed new techniques and theories for understanding how the locus of neurobiological representation, the brain, operates. My dissertation draws on philosophy and neuroscience to develop a novel theory of representational content
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250Attractive and in-discrete: A critique of two putative virtues of the dynamicist theory of mindMinds and Machines 11 (3): 417-426. 2001.I argue that dynamicism does not provide a convincing alternative to currently available cognitive theories. First, I show that the attractor dynamics of dynamicist models are inadequate for accounting for high-level cognition. Second, I argue that dynamicist arguments for the rejection of computation and representation are unsound in light of recent empirical findings. This new evidence provides a basis for questioning the importance of continuity to cognitive function, challenging a central co…Read more
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158Realistic neurons can compute the operations needed by quantum probability theory and other vector symbolic architecturesBehavioral and Brain Sciences 36 (3). 2013.Quantum probability (QP) theory can be seen as a type of vector symbolic architecture (VSA): mental states are vectors storing structured information and manipulated using algebraic operations. Furthermore, the operations needed by QP match those in other VSAs. This allows existing biologically realistic neural models to be adapted to provide a mechanistic explanation of the cognitive phenomena described in the target article by Pothos & Busemeyer (P&B)
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373Is the brain analog or digital?Cognitive Science Quarterly 1 (2): 147-170. 2000.It will always remain a remarkable phenomenon in the history of philosophy, that there was a time, when even mathematicians, who at the same time were philosophers, began to doubt, not of the accuracy of their geometrical propositions so far as they concerned space, but of their objective validity and the applicability of this concept itself, and of all its corollaries, to nature. They showed much concern whether a line in nature might not consist of physical points, and consequently that true s…Read more
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186Discreteness and relevance: A reply to Roman poznanski (review)Minds and Machines 12 (3): 437-438. 2002.
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151Concepts as Semantic Pointers: A Framework and Computational ModelCognitive Science 40 (5): 1128-1162. 2016.The reconciliation of theories of concepts based on prototypes, exemplars, and theory-like structures is a longstanding problem in cognitive science. In response to this problem, researchers have recently tended to adopt either hybrid theories that combine various kinds of representational structure, or eliminative theories that replace concepts with a more finely grained taxonomy of mental representations. In this paper, we describe an alternative approach involving a single class of mental rep…Read more
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259A Neural Model of Rule Generation in Inductive ReasoningTopics in Cognitive Science 3 (1): 140-153. 2011.Inductive reasoning is a fundamental and complex aspect of human intelligence. In particular, how do subjects, given a set of particular examples, generate general descriptions of the rules governing that set? We present a biologically plausible method for accomplishing this task and implement it in a spiking neuron model. We demonstrate the success of this model by applying it to the problem domain of Raven's Progressive Matrices, a widely used tool in the field of intelligence testing. The mod…Read more
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152There has been a long-standing debate between symbolicists and connectionists concerning the nature of representation used by human cognizers. In general, symbolicist commitments have allowed them to provide superior models of high-level cognitive function. In contrast, connectionist distributed representations are preferred for providing a description of low-level cognition. The development of Holographic Reduced Representations (HRRs) has opened the possibility of one representational medium u…Read more
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393How to build a brain: From function to implementationSynthese 153 (3): 373-388. 2006.To have a fully integrated understanding of neurobiological systems, we must address two fundamental questions: 1. What do brains do (what is their function)? and 2. How do brains do whatever it is that they do (how is that function implemented)? I begin by arguing that these questions are necessarily inter-related. Thus, addressing one without consideration of an answer to the other, as is often done, is a mistake. I then describe what I take to be the best available approach to addressing both…Read more
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467Symbolic reasoning in spiking neurons: A model of the cortex/basal ganglia/thalamus loopIn S. Ohlsson & R. Catrambone (eds.), Proceedings of the 32nd Annual Conference of the Cognitive Science Society, Cognitive Science Society. pp. 1100--1105. 2010.
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314The third contender: A critical examination of the dynamicist theory of cognitionPhilosophical Psychology 9 (4): 441-63. 1996.In a recent series of publications, dynamicist researchers have proposed a new conception of cognitive functioning. This conception is intended to replace the currently dominant theories of connectionism and symbolicism. The dynamicist approach to cognitive modeling employs concepts developed in the mathematical field of dynamical systems theory. They claim that cognitive models should be embedded, low-dimensional, complex, described by coupled differential equations, and non-representational. I…Read more
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116Learning context sensitive logical inference in a neurobiological simulationIn Simon D. Levy & Ross Gayler (eds.), Compositional Connectionism in Cognitive Science, Aaai Press. pp. 17--20. 2004.
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74Dynamics, control, and cognitionIn Philip Robbins & Murat Aydede (eds.), _The Cambridge Handbook of Situated Cognition_, Cambridge University Press. 2008.