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  1. What we don't know about brains.Valerie Gray Hardcastle - 1999 - Studies in History and Philosophy of Science Part C: Studies in History and Philosophy of Biological and Biomedical Sciences 30 (1):69-89.
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  • Rapid parallel semantic processing of numbers without awareness.Filip Van Opstal, Floris P. de Lange & Stanislas Dehaene - 2011 - Cognition 120 (1):136-147.
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  • Connectionist models learn what?Timothy van Gelder - 1990 - Behavioral and Brain Sciences 13 (3):509-510.
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  • Computer Science and Philosophy: Did Plato Foresee Object-Oriented Programming?Wojciech Tylman - 2018 - Foundations of Science 23 (1):159-172.
    This paper contains a discussion of striking similarities between influential philosophical concepts of the past and the approaches currently employed in selected areas of computer science. In particular, works of the Pythagoreans, Plato, Abelard, Ash’arites, Malebranche and Berkeley are presented and contrasted with such computer science ideas as digital computers, object-oriented programming, the modelling of an object’s actions and causality in virtual environments, and 3D graphics rendering. The intention of this paper is to provoke the computer science community to go (...)
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  • Entre neurosciences & psychologie cognitive: Une frontière en question.Alain Tëte - 1994 - Revue de Synthèse 115 (3-4):485-502.
    L’apparition des modèles connexionnistes dans les années 1980 a transformé le problème de la frontière séparant les neurosciences de la psychologie cognitive. Alors que les modèles cognitivistes de traitement symbolique s’inspiraient directement de « l’architecture von Neumann » des ordinateurs et laissaient aux neurosciences le soin de décrire en termes physicalistes l’inscription matérielle du symbolique(« l’implémentation»), les modèles connexionnistes proposent des formalismes mathématiques qui rendent compte, en termes de systèmes dynamiques, de cette implémentation. À la frontière entre niveaux neuronaux et (...)
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  • The form of chaos in the noisy brain can manifest function.Ichiro Tsuda - 1996 - Behavioral and Brain Sciences 19 (2):309-309.
    I would like to emphasize the significance of chaotic dynamics at both local and macroscopic levels in the cortex. The basic notions dealt with in this commentary will be noise-induced order, chaotic “itinerancy” and dissipative structure. Wright & Laley's theory would be partially misleading, since emergent nonlinearity rather than the linearity at even a macroscopic level can actually subserve cortical functions.
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  • Connectionist computing and neural machinery: Examining the test of “timing”.John K. Tsotsos - 1986 - Behavioral and Brain Sciences 9 (1):106-107.
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  • Can Ai be Intelligent?Kazimierz Trzęsicki - 2016 - Studies in Logic, Grammar and Rhetoric 48 (1):103-131.
    The aim of this paper is an attempt to give an answer to the question what does it mean that a computational system is intelligent. We base on some theses that though debatable are commonly accepted. Intelligence is conceived as the ability of tractable solving of some problems that in general are not solvable by deterministic Turing Machine.
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  • The brain, the artificial neural network and the snake: why we see what we see.Carloalberto Treccani - forthcoming - AI and Society:1-9.
    For millions of years, biological creatures have dealt with the world without being able to see it; however, the change in the atmospheric condition during the Cambrian period and the subsequent increase of light, triggered the sudden evolution of vision and the consequent evolutionary benefits. Nevertheless, how from simple organisms to more complex animals have been able to generate meaning from the light who fell in their eyes and successfully engage the visual world remains unknown. As shown by many psychophysical (...)
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  • Learning is critical, not implementation versus algorithm.James T. Townsend - 1987 - Behavioral and Brain Sciences 10 (3):497-497.
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  • Knowledge-based artificial neural networks.Geoffrey G. Towell & Jude W. Shavlik - 1994 - Artificial Intelligence 70 (1-2):119-165.
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  • Connectionist models are also algorithmic.David S. Touretzky - 1987 - Behavioral and Brain Sciences 10 (3):496-497.
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  • Advances in neural network theory.Gérard Toulouse - 1990 - Behavioral and Brain Sciences 13 (3):509-509.
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  • Connectionist models: Too little too soon?William Timberlake - 1990 - Behavioral and Brain Sciences 13 (3):508-509.
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  • Chaos can be overplayed.René Thom - 1987 - Behavioral and Brain Sciences 10 (2):182-183.
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  • The rhythmic activity of the nervous system.Harry A. Teitelbaum - 1953 - Philosophy of Science 20 (1):42-58.
    While recent studies have shed some light on the significance of the electrical activity of the nervous system, there has been no adequate explanation for the wave formation or synchronization of this electrical activity. Adrian sums up the problem. “The origin of the 10-a-second rhythm is still uncertain, though the evidence points to some widespread organization, probably involving the central masses as well as the cortex. There are abundant nervous connexions for coordinating the beat, and when the rhythm is well (...)
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  • What is the algorithmic level?M. M. Taylor & R. A. Pigeau - 1987 - Behavioral and Brain Sciences 10 (3):495-496.
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  • Cybernetics and Theoretical Approaches in 20th Century Brain and Behavior Sciences.Tara H. Abraham - 2006 - Biological Theory 1 (4):418-422.
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  • Ethical problems in the use of algorithms in data management and in a free market economy.Rafał Szopa - 2023 - AI and Society 38 (6):2487-2498.
    The problem that I present in this paper concerns the issue of ethical evaluation of algorithms, especially those used in social media and which create profiles of users of these media and new technologies that have recently emerged and are intended to change the functioning of technologies used in data management. Systems such as Overton, SambaNova or Snorkel were created to help engineers create data management models, but they are based on different assumptions than the previous approach in machine learning (...)
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  • Particulars and principles of nervous activity.George Székely - 1980 - Behavioral and Brain Sciences 3 (4):562-562.
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  • Self-Reference, Self-Representation, and the Logic of Intentionality.Jochen Szangolies - 2023 - Erkenntnis 88 (6):2561-2590.
    Representationalist accounts of mental content face the threat of the homunculus fallacy. In collapsing the distinction between the conscious state and the conscious subject, self-representational accounts of consciousness possess the means to deal with this objection. We analyze a particular sort of self-representational theory, built on the work of John von Neumann on self-reproduction, using tools from mathematical logic. We provide an explicit theory of the emergence of referential beliefs by means of modal fixed points, grounded in intrinsic properties yielding (...)
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  • What does the cortex do?Mriganka Sur - 1986 - Behavioral and Brain Sciences 9 (1):105-105.
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  • Problems of extension, representation, and computational irreducibility.Patrick Suppes - 1990 - Behavioral and Brain Sciences 13 (3):507-508.
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  • Ontology, neural networks, and the social sciences.David Strohmaier - 2020 - Synthese 199 (1-2):4775-4794.
    The ontology of social objects and facts remains a field of continued controversy. This situation complicates the life of social scientists who seek to make predictive models of social phenomena. For the purposes of modelling a social phenomenon, we would like to avoid having to make any controversial ontological commitments. The overwhelming majority of models in the social sciences, including statistical models, are built upon ontological assumptions that can be questioned. Recently, however, artificial neural networks have made their way into (...)
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  • Agnostic Science. Towards a Philosophy of Data Analysis.D. C. Struppa - 2011 - Foundations of Science 16 (1):1-20.
    In this paper we will offer a few examples to illustrate the orientation of contemporary research in data analysis and we will investigate the corresponding role of mathematics. We argue that the modus operandi of data analysis is implicitly based on the belief that if we have collected enough and sufficiently diverse data, we will be able to answer most relevant questions concerning the phenomenon itself. This is a methodological paradigm strongly related, but not limited to, biology, and we label (...)
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  • A Training Strategy and Functionality Analysis of Digital Multi-Layer Neural Networks.R. Al-Alawi & T. J. Stonham - 1992 - Journal of Intelligent Systems 2 (1-4):53-94.
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  • The proper domain of neuroethology.Horst D. Steklis - 1984 - Behavioral and Brain Sciences 7 (3):401-402.
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  • Artificial virtuous agents: from theory to machine implementation.Jakob Stenseke - 2023 - AI and Society 38 (4):1301-1320.
    Virtue ethics has many times been suggested as a promising recipe for the construction of artificial moral agents due to its emphasis on moral character and learning. However, given the complex nature of the theory, hardly any work has de facto attempted to implement the core tenets of virtue ethics in moral machines. The main goal of this paper is to demonstrate how virtue ethics can be taken all the way from theory to machine implementation. To achieve this goal, we (...)
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  • Applying Marr to memory.Keith Stenning - 1987 - Behavioral and Brain Sciences 10 (3):494-495.
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  • Interactive instructional systems and models of human problem solving.Edward P. Stabler - 1987 - Behavioral and Brain Sciences 10 (3):493-494.
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  • On spatial symbols.William E. Smythe & Paul A. Kolers - 1979 - Behavioral and Brain Sciences 2 (4):568-569.
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  • Connectionism and implementation.Paul Smolensky - 1987 - Behavioral and Brain Sciences 10 (3):492-493.
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  • How Do We Believe?Steven A. Sloman - 2022 - Topics in Cognitive Science 14 (1):31-44.
    Topics in Cognitive Science, Volume 14, Issue 1, Page 31-44, January 2022.
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  • Physiology: Is there any other game in town?Christine A. Skarda & Walter J. Freeman - 1987 - Behavioral and Brain Sciences 10 (2):183-195.
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  • How brains make chaos in order to make sense of the world.Christine A. Skarda & Walter J. Freeman - 1987 - Behavioral and Brain Sciences 10 (2):161-173.
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  • Prolegomena filozofijskog utemeljenja dubokog učenja kao teorije (umjetne) inteligencije.Sandro Skansi & Marko Kardum - 2022 - Disputatio Philosophica 23 (1):89-99.
    U radu se ispituju filozofski temelji dubokog učenja. Ukazivanjem na početke dubokog učenja i umjetnog neurona kao formalnog modela ljudskog neurona moguće je tvrditi da je umjetna inteligencija razvijena i prije njezinog službenog imenovanja te da je bila snažno povezana s propozicionalnom logikom. Imajući na umu neke velike zastoje u razvoju neuronskih mreža, pokazujemo da se dubinsko učenje može tretirati kao teorija umjetne inteligencije te da potpada pod paradigmu umjetne inteligencije jer je za nju dovoljno samo učenje jer se inteligentno (...)
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  • Keep the scope of neuroethology broad.James A. Simmons - 1984 - Behavioral and Brain Sciences 7 (3):400-401.
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  • Symbolic/Subsymbolic Interface Protocol for Cognitive Modeling.Patrick Simen & Thad Polk - 2010 - Logic Journal of the IGPL 18 (5):705-761.
    Researchers studying complex cognition have grown increasingly interested in mapping symbolic cognitive architectures onto subsymbolic brain models. Such a mapping seems essential for understanding cognition under all but the most extreme viewpoints (namely, that cognition consists exclusively of digitally implemented rules; or instead, involves no rules whatsoever). Making this mapping reduces to specifying an interface between symbolic and subsymbolic descriptions of brain activity. To that end, we propose parameterization techniques for building cognitive models as programmable, structured, recurrent neural networks. Feedback (...)
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  • Metaphor versus reality in the understanding of imagery: the path from function to structure.Peter W. Sheehan - 1979 - Behavioral and Brain Sciences 2 (4):567-568.
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  • The image-like and the language-like.Benny Shanon - 1979 - Behavioral and Brain Sciences 2 (4):566-567.
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  • There is more to learning then meeth the eye.Noel E. Sharkey - 1990 - Behavioral and Brain Sciences 13 (3):506-507.
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  • Computation, San Diego Style.Oron Shagrir - 2010 - Philosophy of Science 77 (5):862-874.
    What does it mean to say that a physical system computes or, specifically, to say that the nervous system computes? One answer, endorsed here, is that computing is a sort of modeling. I trace this line of answer in the conceptual and philosophical work conducted over the last 3 decades by researchers associated with the University of California, San Diego. The linkage between their work and the modeling notion is no coincidence: the modeling notion aims to account for the computational (...)
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  • Brains as analog-model computers.Oron Shagrir - 2010 - Studies in History and Philosophy of Science Part A 41 (3):271-279.
    Computational neuroscientists not only employ computer models and simulations in studying brain functions. They also view the modeled nervous system itself as computing. What does it mean to say that the brain computes? And what is the utility of the ‘brain-as-computer’ assumption in studying brain functions? In previous work, I have argued that a structural conception of computation is not adequate to address these questions. Here I outline an alternative conception of computation, which I call the analog-model. The term ‘analog-model’ (...)
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  • The scope and limits of a mechanistic view of computational explanation.Maria Serban - 2015 - Synthese 192 (10):3371-3396.
    An increasing number of philosophers have promoted the idea that mechanism provides a fruitful framework for thinking about the explanatory contributions of computational approaches in cognitive neuroscience. For instance, Piccinini and Bahar :453–488, 2013) have recently argued that neural computation constitutes a sui generis category of physical computation which can play a genuine explanatory role in the context of investigating neural and cognitive processes. The core of their proposal is to conceive of computational explanations in cognitive neuroscience as a subspecies (...)
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  • Decision-making: from neuroscience to neuroeconomics—an overview.Daniel Serra - 2021 - Theory and Decision 91 (1):1-80.
    By the late 1990s, several converging trends in economics, psychology, and neuroscience had set the stage for the birth of a new scientific field known as “neuroeconomics”. Without the availability of an extensive variety of experimental designs for dealing with individual and social decision-making provided by experimental economics and psychology, many neuroeconomics studies could not have been developed. At the same time, without the significant progress made in neuroscience for grasping and understanding brain functioning, neuroeconomics would have never seen the (...)
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  • Do the Modern Neurosciences Call for a New Model of Organizational Cognition?Dan Alexander Seni - 2012 - Science & Education 21 (10):1485-1506.
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  • Toward understanding central pattern generators.Allen I. Selverston - 1980 - Behavioral and Brain Sciences 3 (4):565-571.
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  • Neuroethology—how exclusive a club?Allen I. Selverston - 1984 - Behavioral and Brain Sciences 7 (3):399-400.
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  • Are central pattern generators understandable?Allen I. Selverston - 1980 - Behavioral and Brain Sciences 3 (4):535-540.
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  • Computational neuroscience.Terrence J. Sejnowski - 1986 - Behavioral and Brain Sciences 9 (1):104-105.
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