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  1. Emergence of Mind From Brain: The Biological Roots of the Hermeneutic Circle.Roland Fischer - 1987 - Diogenes 35 (138):1-25.
    Brain functions are stochastic processes without intentionality whereas mind emerges from brain functions as a Hegelian “change from quantity”, that is, on the order of 1012 profusely interconnected neurons, “into a new quality”: the collective phenomenon of the brain's self-experience. This self-referential and self-observing quality we have in mind is capable of (recursively) observing its self-observations, i.e., interpreting change that is meaningful in relation to itself. The notion of self-interpretation embodies the idea of a “hermeneutic circle”, that is, (in interpretation (...)
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  • Putting together connectionism – again.Paul Smolensky - 1988 - Behavioral and Brain Sciences 11 (1):59-74.
    A set of hypotheses is formulated for a connectionist approach to cognitive modeling. These hypotheses are shown to be incompatible with the hypotheses underlying traditional cognitive models. The connectionist models considered are massively parallel numerical computational systems that are a kind of continuous dynamical system. The numerical variables in the system correspond semantically to fine-grained features below the level of the concepts consciously used to describe the task domain. The level of analysis is intermediate between those of symbolic cognitive models (...)
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  • Adaptation and attention.Steven W. Zucker - 1990 - Behavioral and Brain Sciences 13 (3):458-458.
  • Attention to detail?Malcolm P. Young, Ian R. Paterson & David I. Perrett - 1989 - Behavioral and Brain Sciences 12 (3):417-418.
  • The reality of the symbolic and subsymbolic systems.Andrew Woodfield & Adam Morton - 1988 - Behavioral and Brain Sciences 11 (1):58-58.
  • Complexity, guided search, and the data.Jeremy M. Wolfe - 1990 - Behavioral and Brain Sciences 13 (3):457-458.
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  • Where's the psychological reality?C. Philip Winder - 1989 - Behavioral and Brain Sciences 12 (3):417-417.
  • A brief history of connectionism and its psychological implications.S. F. Walker - 1990 - AI and Society 4 (1):17-38.
    Critics of the computational connectionism of the last decade suggest that it shares undesirable features with earlier empiricist or associationist approaches, and with behaviourist theories of learning. To assess the accuracy of this charge the works of earlier writers are examined for the presence of such features, and brief accounts of those found are given for Herbert Spencer, William James and the learning theorists Thorndike, Pavlov and Hull. The idea that cognition depends on associative connections among large networks of neurons (...)
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  • Is extension to perception of real-world objects and scenes possible?J. Wagemans, K. Verfaillie, P. De Graef & K. Lamberts - 1989 - Behavioral and Brain Sciences 12 (3):415-417.
  • Has the case been made against the ecumenical view of connectionism?Robert Van Gulick - 1988 - Behavioral and Brain Sciences 11 (1):57-58.
  • On brains and models.William R. Uttal - 1990 - Behavioral and Brain Sciences 13 (3):456-457.
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  • Aligning pictorial descriptions: An approach to object recognition.Shimon Ullman - 1989 - Cognition 32 (3):193-254.
  • Some important constraints on complexity.Leonard Uhr - 1990 - Behavioral and Brain Sciences 13 (3):455-456.
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  • Analyzing vision at the complexity level.John K. Tsotsos - 1990 - Behavioral and Brain Sciences 13 (3):423-445.
    The general problem of visual search can be shown to be computationally intractable in a formal, complexity-theoretic sense, yet visual search is extensively involved in everyday perception, and biological systems manage to perform it remarkably well. Complexity level analysis may resolve this contradiction. Visual search can be reshaped into tractability through approximations and by optimizing the resources devoted to visual processing. Architectural constraints can be derived using the minimum cost principle to rule out a large class of potential solutions. The (...)
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  • A little complexity analysis goes a long way.John K. Tsotsos - 1990 - Behavioral and Brain Sciences 13 (3):458-469.
  • Search and the detection and integration of features.Anne Treisman - 1990 - Behavioral and Brain Sciences 13 (3):454-455.
  • On the proper treatment of thermostats.David S. Touretzky - 1988 - Behavioral and Brain Sciences 11 (1):55-56.
    A set of hypotheses is formulated for a connectionist approach to cognitive modeling. These hypotheses are shown to be incompatible with the hypotheses underlying traditional cognitive models. The connectionist models considered are massively parallel numerical computational systems that are a kind of continuous dynamical system. The numerical variables in the system correspond semantically to fine-grained features below the level of the concepts consciously used to describe the task domain. The level of analysis is intermediate between those of symbolic cognitive models (...)
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  • Is the tag necessary?Ron Sun & Emmanuel Schalit - 1989 - Behavioral and Brain Sciences 12 (3):415-415.
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  • The value of modeling visual attention.Gary W. Strong & Bruce A. Whitehead - 1989 - Behavioral and Brain Sciences 12 (3):419-433.
  • A solution to the tag-assignment problem for neural networks.Gary W. Strong & Bruce A. Whitehead - 1989 - Behavioral and Brain Sciences 12 (3):381-397.
    Purely parallel neural networks can model object recognition in brief displays – the same conditions under which illusory conjunctions have been demonstrated empirically. Correcting errors of illusory conjunction is the “tag-assignment” problem for a purely parallel processor: the problem of assigning a spatial tag to nonspatial features, feature combinations, and objects. This problem must be solved to model human object recognition over a longer time scale. Our model simulates both the parallel processes that may underlie illusory conjunctions and the serial (...)
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  • Algorithmic complexity analysis does not apply to behaving organisms.Gary W. Strong - 1990 - Behavioral and Brain Sciences 13 (3):453-454.
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  • From data to dynamics: The use of multiple levels of analysis.Gregory O. Stone - 1988 - Behavioral and Brain Sciences 11 (1):54-55.
  • From connectionism to eliminativism.Stephen P. Stich - 1988 - Behavioral and Brain Sciences 11 (1):53-54.
  • On the proper treatment of connectionism.Paul Smolensky - 1988 - Behavioral and Brain Sciences 11 (1):1-23.
    A set of hypotheses is formulated for a connectionist approach to cognitive modeling. These hypotheses are shown to be incompatible with the hypotheses underlying traditional cognitive models. The connectionist models considered are massively parallel numerical computational systems that are a kind of continuous dynamical system. The numerical variables in the system correspond semantically to fine-grained features below the level of the concepts consciously used to describe the task domain. The level of analysis is intermediate between those of symbolic cognitive models (...)
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  • Is it really that complex? After all, there are no green elephants.Ralph M. Siegel - 1990 - Behavioral and Brain Sciences 13 (3):453-453.
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  • How fully should connectionism be activated? Two sources of excitation and one of inhibition.Roger N. Shepard - 1988 - Behavioral and Brain Sciences 11 (1):52-52.
  • Structure and controlling subsymbolic processing.Walter Schneider - 1988 - Behavioral and Brain Sciences 11 (1):51-52.
  • An attentional hierarchy.Peter A. Sandon - 1989 - Behavioral and Brain Sciences 12 (3):414-415.
  • Making the connections.Jay G. Rueckl - 1988 - Behavioral and Brain Sciences 11 (1):50-51.
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  • Sanity surrounded by madness.Georges Rey - 1988 - Behavioral and Brain Sciences 11 (1):48-50.
  • A two-dimensional array of models of cognitive function.Gardner C. Quarton - 1988 - Behavioral and Brain Sciences 11 (1):48-48.
  • The role of location indexes in spatial perception: A sketch of the FINST spatial-index model.Zenon Pylyshyn - 1989 - Cognition 32 (1):65-97.
    Marr (1982) may have been one of the rst vision researchers to insist that in modeling vision it is important to separate the location of visual features from their type. He argued that in early stages of visual processing there must be “place tokens” that enable subsequent stages of the visual system to treat locations independent of what specic feature type was at that location. Thus, in certain respects a collinear array of diverse features could still be perceived as a (...)
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  • Subsymbols aren't much good outside of a symbol-processing architecture.Alan Prince & Steven Pinker - 1988 - Behavioral and Brain Sciences 11 (1):46-47.
  • Damn the (behavioral) data, full steam ahead.William Prinzmetal & Richard Ivry - 1989 - Behavioral and Brain Sciences 12 (3):413-414.
  • Neural networks and computational theory: Solving the right problem.David C. Plaut - 1989 - Behavioral and Brain Sciences 12 (3):411-413.
  • How Do Artificial Neural Networks Classify Musical Triads? A Case Study in Eluding Bonini's Paradox.Arturo Perez, Helen L. Ma, Stephanie Zawaduk & Michael R. W. Dawson - 2023 - Cognitive Science 47 (1):e13233.
    How might artificial neural networks (ANNs) inform cognitive science? Often cognitive scientists use ANNs but do not examine their internal structures. In this paper, we use ANNs to explore how cognition might represent musical properties. We train ANNs to classify musical chords, and we interpret network structure to determine what representations ANNs discover and use. We find connection weights between input units and hidden units can be described using Fourier phase spaces, a representation studied in musical set theory. We find (...)
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  • Simultaneous processing of features may not be possible.D. M. Parker - 1989 - Behavioral and Brain Sciences 12 (3):411-411.
  • Connections among connections.R. J. Nelson - 1988 - Behavioral and Brain Sciences 11 (1):45-46.
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  • In defence of neurons.Chris Mortensen - 1988 - Behavioral and Brain Sciences 11 (1):44-45.
  • Support for an intermediate pictorial representation.Michael Mohnhaupt & Bernd Neumann - 1990 - Behavioral and Brain Sciences 13 (3):452-453.
  • Fundamental design limitations in tag assignment.Hermann J. Müller, Glyn W. Humphreys, Philip T. Quinlan & Nick Donnelly - 1989 - Behavioral and Brain Sciences 12 (3):410-411.
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  • Epistemological challenges for connectionism.John McCarthy - 1988 - Behavioral and Brain Sciences 11 (1):44-44.
  • The topography of high-order human object areas.Rafael Malach, Ifat Levy & Uri Hasson - 2002 - Trends in Cognitive Sciences 6 (4):176-184.
  • Symbols, subsymbols, neurons.William G. Lycan - 1988 - Behavioral and Brain Sciences 11 (1):43-44.
  • Probability theory as an alternative to complexity.David G. Lowe - 1990 - Behavioral and Brain Sciences 13 (3):451-452.
  • Connectionism in the golden age of cognitive science.Dan Lloyd - 1988 - Behavioral and Brain Sciences 11 (1):42-43.
  • Such stuff as dreams are made on? Elaborative encoding, the ancient art of memory, and the hippocampus.Sue Llewellyn - 2013 - Behavioral and Brain Sciences 36 (6):589-607.
    This article argues that rapid eye movement (REM) dreaming is elaborative encoding for episodic memories. Elaborative encoding in REM can, at least partially, be understood through ancient art of memory (AAOM) principles: visualization, bizarre association, organization, narration, embodiment, and location. These principles render recent memories more distinctive through novel and meaningful association with emotionally salient, remote memories. The AAOM optimizes memory performance, suggesting that its principles may predict aspects of how episodic memory is configured in the brain. Integration and segregation (...)
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  • Can this treatment raise the dead?Robert K. Lindsay - 1988 - Behavioral and Brain Sciences 11 (1):41-42.
  • Logic and the complexity of reasoning.Hector J. Levesque - 1988 - Journal of Philosophical Logic 17 (4):355 - 389.
  • A self-organizing perceptual system.James R. Levenick - 1989 - Behavioral and Brain Sciences 12 (3):409-410.