Results for 'neural modeling'

998 found
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  1.  51
    Neural modeling, functional brain imaging, and cognition.Barry Horwitz, M.-A. Tagamets & Anthony Randal McIntosh - 1999 - Trends in Cognitive Sciences 3 (3):91-98.
  2. Computational neural modeling and the philosophy of ethics: Reflections on the particularism-generalism debate.Marcello Guarini - 2011 - In M. Anderson S. Anderson (ed.), Machine Ethics. Cambridge Univ. Press.
  3.  46
    Synthetic Neural Modeling and Brain-Based Devices.Gerald M. Edelman - 2006 - Biological Theory 1 (1):8-9.
  4.  27
    Computational Neural Modeling and the Philosophy of Ethics Reflections on the Particularism-Generalism Debate.Mar Cello Guarim - 2011 - In M. Anderson S. Anderson (ed.), Machine Ethics. Cambridge Univ. Press.
  5.  8
    Standards for neural modeling.Jerome A. Feldman & David Zipser - 1982 - Behavioral and Brain Sciences 5 (4):642-642.
  6.  45
    Neural networks, AI, and the goals of modeling.Walter Veit & Heather Browning - 2023 - Behavioral and Brain Sciences 46:e411.
    Deep neural networks (DNNs) have found many useful applications in recent years. Of particular interest have been those instances where their successes imitate human cognition and many consider artificial intelligences to offer a lens for understanding human intelligence. Here, we criticize the underlying conflation between the predictive and explanatory power of DNNs by examining the goals of modeling.
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  7.  28
    Modeling the neural substrates of associative learning and memory: A computational approach.Mark A. Gluck & Richard F. Thompson - 1987 - Psychological Review 94 (2):176-191.
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  8.  71
    Integrative Modeling and the Role of Neural Constraints.Daniel A. Weiskopf - 2016 - Philosophy of Science 83 (5):647-685.
    Neuroscience constrains psychology, but stating these constraints with precision is not simple. Here I consider whether mechanistic analysis provides a useful way to integrate models of cognitive and neural structure. Recent evidence suggests that cognitive systems map onto overlapping, distributed networks of brain regions. These highly entangled networks often depart from stereotypical mechanistic behaviors. While this casts doubt on the prospects for classical mechanistic integration of psychology and neuroscience, I argue that it does not impugn a realistic interpretation of (...)
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  9.  45
    Multiscale Modeling of Gene–Behavior Associations in an Artificial Neural Network Model of Cognitive Development.Michael S. C. Thomas, Neil A. Forrester & Angelica Ronald - 2016 - Cognitive Science 40 (1):51-99.
    In the multidisciplinary field of developmental cognitive neuroscience, statistical associations between levels of description play an increasingly important role. One example of such associations is the observation of correlations between relatively common gene variants and individual differences in behavior. It is perhaps surprising that such associations can be detected despite the remoteness of these levels of description, and the fact that behavior is the outcome of an extended developmental process involving interaction of the whole organism with a variable environment. Given (...)
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  10.  38
    Modeling and Error Compensation of Robotic Articulated Arm Coordinate Measuring Machines Using BP Neural Network.Guanbin Gao, Hongwei Zhang, Hongjun San, Xing Wu & Wen Wang - 2017 - Complexity:1-8.
    Articulated arm coordinate measuring machine is a specific robotic structural instrument, which uses D-H method for the purpose of kinematic modeling and error compensation. However, it is difficult for the existing error compensation models to describe various factors, which affects the accuracy of AACMM. In this paper, a modeling and error compensation method for AACMM is proposed based on BP Neural Networks. According to the available measurements, the poses of the AACMM are used as the input, and (...)
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  11.  18
    Neurally constrained modeling of perceptual decision making.Braden A. Purcell, Richard P. Heitz, Jeremiah Y. Cohen, Jeffrey D. Schall, Gordon D. Logan & Thomas J. Palmeri - 2010 - Psychological Review 117 (4):1113-1143.
  12.  84
    Modeling the Significance of Motivation on Job Satisfaction and Performance Among the Academicians: The Use of Hybrid Structural Equation Modeling-Artificial Neural Network Analysis.Suguna Sinniah, Abdullah Al Mamun, Mohd Fairuz Md Salleh, Zafir Khan Mohamed Makhbul & Naeem Hayat - 2022 - Frontiers in Psychology 13.
    The competition in higher education has increased, while lecturers are involved in multiple assignments that include teaching, research and publication, consultancy, and community services. The demanding nature of academia leads to excessive work load and stress among academicians in higher education. Notably, offering the right motivational mix could lead to job satisfaction and performance. The current study aims to demonstrate the effects of extrinsic and intrinsic motivational factors influencing job satisfaction and job performance among academicians working in Malaysian private higher (...)
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  13.  22
    Modeling the N400 ERP component as transient semantic over-activation within a neural network model of word comprehension.Samuel J. Cheyette & David C. Plaut - 2017 - Cognition 162 (C):153-166.
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  14. Neurobiological Modeling and Analysis-An Electromechanical Neural Network Robotic Model of the Human Body and Brain: Sensory-Motor Control by Reverse Engineering Biological Somatic Sensors.Alan Rosen & David B. Rosen - 2006 - In O. Stock & M. Schaerf (eds.), Lecture Notes in Computer Science. Springer Verlag. pp. 4232--105.
  15.  15
    The neural representation of the gender of faces in the primate visual system: A computer modeling study.Thomas Minot, Hannah L. Dury, Akihiro Eguchi, Glyn W. Humphreys & Simon M. Stringer - 2017 - Psychological Review 124 (2):154-167.
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  16.  6
    Modeling Uncertainties in EEG Microstates: Analysis of Real and Imagined Motor Movements Using Probabilistic Clustering-Driven Training of Probabilistic Neural Networks.Dinov Martin & Leech Robert - 2017 - Frontiers in Human Neuroscience 11.
  17.  27
    Simultaneously modeling the cognitive and neural mechanisms involving different types of expertise in mental rotation.Provost Alexander, Turner Brandon, Van Vugt Marieke, Johnson Blake & Heathcote Andrew - 2015 - Frontiers in Human Neuroscience 9.
  18.  11
    Modeling task effects in human reading with neural network-based attention.Michael Hahn & Frank Keller - 2023 - Cognition 230 (C):105289.
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  19.  13
    Modeling of Throughput in Production Lines Using Response Surface Methodology and Artificial Neural Networks.Federico Nuñez-Piña, Joselito Medina-Marin, Juan Carlos Seck-Tuoh-Mora, Norberto Hernandez-Romero & Eva Selene Hernandez-Gress - 2018 - Complexity 2018:1-10.
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  20.  20
    “Neurally constrained modeling of perceptual decision making”: Correction.Braden A. Purcell, Richard P. Heitz, Jeremiah Y. Cohen, Jeffrey D. Schall, Gordon D. Logan & Thomas J. Palmeri - 2011 - Psychological Review 118 (1):96-96.
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  21.  29
    “Neurally Constrained Modeling of Perceptual Decision Making": Erratum.Braden A. Purcell, Richard P. Heitz, Jeremiah Y. Cohen, Jeffrey D. Schall, Gordon D. Logan & Thomas J. Palmeri - 2011 - Psychological Review 118 (1):134-134.
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  22. Discourseology of Linguistic Consciousness: Neural Network Modeling of Some Structural and Semantic Relationships.Vitalii Shymko - 2021 - Psycholinguistics 29 (1):193-207.
    Objective. Study of the validity and reliability of the discourse approach for the psycholinguistic understanding of the nature, structure, and features of the linguistic consciousness functioning. -/- Materials & Methods. This paper analyzes artificial neural network models built on the corpus of texts, which were obtained in the process of experimental research of the coronavirus quarantine concept as a new category of linguistic consciousness. The methodology of feedforward artificial neural networks (multilayer perceptron) was used in order to assess (...)
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  23. Neural network modeling.B. K. Chakrabarti & A. Basu - 2008 - In Rahul Banerjee & Bikas K. Chakrabarti (eds.), Models of brain and mind: physical, computational, and psychological approaches. Boston: Elsevier.
     
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  24. Neural network modeling.Daniel S. Levine - 2002 - In J. Wixted & H. Pashler (eds.), Stevens' Handbook of Experimental Psychology. Wiley.
     
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  25.  11
    Recurrent Fuzzy-Neural MIMO Channel Modeling.Abhijit Mitra & Kandarpa Kumar Sarma - 2012 - Journal of Intelligent Systems 21 (2):121-142.
    . Fuzzy systems and artificial neural networks, as important components of soft-computation, can be applied together to model uncertainty. A composite block of the fuzzy system and the ANN shares a mutually beneficial association resulting in enhanced performance with smaller networks. It makes them suitable for application with time-varying multi-input multi-output channel modeling enabling such a system to track minute variations in propagation conditions. Here we propose a fuzzy neural system using a fuzzy time delay fully recurrent (...)
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  26.  58
    Trip generation modeling for a selected sector in Baghdad city using the artificial neural network.Mohammed Qadir Ismael & Safa Ali Lafta - 2022 - Journal of Intelligent Systems 31 (1):356-369.
    This study is planned with the aim of constructing models that can be used to forecast trip production in the Al-Karada region in Baghdad city incorporating the socioeconomic features, through the use of various statistical approaches to the modeling of trip generation, such as artificial neural network and multiple linear regression. The research region was split into 11 zones to accomplish the study aim. Forms were issued based on the needed sample size of 1,170. Only 1,050 forms with (...)
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  27. Distribution and frequency: Modeling the effects of speaking rate on category boundaries using a recurrent neural network.Mukhlis Abu-Bakar & Nick Chater - 1994 - In Ashwin Ram & Kurt Eiselt (eds.), Proceedings of the Sixteenth Annual Conference of the Cognitive Science Society. Erlbaum.
     
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  28.  20
    A New Approach to Modeling and Controlling a Pneumatic Muscle Actuator-Driven Setup Using Back Propagation Neural Networks.Jun Zhong, Xu Zhou & Minzhou Luo - 2018 - Complexity 2018:1-9.
    Pneumatic muscle actuators own excellent compliance and a high power-to-weight ratio and have been widely used in bionic robots and rehabilitated robots. However, the high nonlinear characteristics of PMAs due to inherent construction and pneumatic driving principle bring great challenges in applications acquired accurately modeling and controlling. To tackle the tricky problem, a single PMA mass setup is constructed, and a back propagation neural network is employed to identify the dynamics of the setup. An offline model is built (...)
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  29.  10
    3D Face Modeling Algorithm for Film and Television Animation Based on Lightweight Convolutional Neural Network.Cheng Di, Jing Peng, Yihua Di & Siwei Wu - 2021 - Complexity 2021:1-10.
    Through the analysis of facial feature extraction technology, this paper designs a lightweight convolutional neural network. The LW-CNN model adopts a separable convolution structure, which can propose more accurate features with fewer parameters and can extract 3D feature points of a human face. In order to enhance the accuracy of feature extraction, a face detection method based on the inverted triangle structure is used to detect the face frame of the images in the training set before the model extracts (...)
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  30.  19
    Lifting the screen on neural organization: Is computational functional modeling necessary?Damian Keil & Keith Davids - 2000 - Behavioral and Brain Sciences 23 (4):544-545.
    Arbib et al.'s comprehensive review of neural organization, over-relies on modernist concepts and restricts our understanding of brain and behavior. Reliance on terms like coding, transformation, and representation perpetuates a “black-box approach” to the study of the brain. Recognition is due to the authors for attempting to introduce postmodern concepts such as chaos and self-organization to the study of neural organization. However, confusion occurs in the implementation of “biologically rooted” schema theory in which schemas are viewed as computer (...)
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  31.  8
    Long-Time Predictive Modeling of Nonlinear Dynamical Systems Using Neural Networks.Shaowu Pan & Karthik Duraisamy - 2018 - Complexity 2018:1-26.
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  32.  44
    Brave new modeling: Cellular automata and artificial neural networks for mastering complexity in economics.Janette Aschenwald, Stefan Fink & Gottfried Tappeiner - 2001 - Complexity 7 (1):39-47.
  33.  6
    Introduction to neural and cognitive modeling.Sue Becker - 1993 - Artificial Intelligence 62 (1):113-116.
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  34. Theoretical neuroscience: computational and mathematical modeling of neural systems.Peter Dayan & L. Abbott - 2001 - Philosophical Psychology 15 (4):563-577.
  35.  9
    Discriminatively trained continuous Hindi speech recognition using integrated acoustic features and recurrent neural network language modeling.R. K. Aggarwal & A. Kumar - 2020 - Journal of Intelligent Systems 30 (1):165-179.
    This paper implements the continuous Hindi Automatic Speech Recognition (ASR) system using the proposed integrated features vector with Recurrent Neural Network (RNN) based Language Modeling (LM). The proposed system also implements the speaker adaptation using Maximum-Likelihood Linear Regression (MLLR) and Constrained Maximum likelihood Linear Regression (C-MLLR). This system is discriminatively trained by Maximum Mutual Information (MMI) and Minimum Phone Error (MPE) techniques with 256 Gaussian mixture per Hidden Markov Model(HMM) state. The training of the baseline system has been (...)
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  36. Commentary: Integrative Modeling and the Role of Neural Constraints. [REVIEW]Brice Bantegnie - 2017 - Frontiers in Psychology 8:1531.
  37.  77
    Identification of efficient COVID-19 diagnostic test through artificial neural networks approach − substantiated by modeling and simulation.Rabia Afrasiab, Asma Talib Qureshi, Fariha Imtiaz, Syed Fasih Ali Gardazi & Mustafa Kamal Pasha - 2021 - Journal of Intelligent Systems 30 (1):836-854.
    Soon after the first COVID-19 positive case was detected in Wuhan, China, the virus spread around the globe, and in no time, it was declared as a global pandemic by the WHO. Testing, which is the first step in identifying and diagnosing COVID-19, became the first need of the masses. Therefore, testing kits for COVID-19 were manufactured for efficiently detecting COVID-19. However, due to limited resources in the densely populated countries, testing capacity even after a year is still a limiting (...)
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  38.  35
    Three pertinent issues in the modeling of brain activity: Nonlinearities, time scales, and neural underpinnings.A. Daffertshofer, T. D. Frank, C. E. Peper & P. J. Beek - 2000 - Behavioral and Brain Sciences 23 (3):400-401.
    A critical discussion is provided of three central assumptions underlying Nunez's approach to modeling cortical activity. A plea is made for neurophysiologically realistic models involving nonlinearities, multiple time scales, and stochasticity.
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  39.  29
    Strategies for memory-based decision making: Modeling behavioral and neural signatures within a cognitive architecture.Hanna B. Fechner, Thorsten Pachur, Lael J. Schooler, Katja Mehlhorn, Ceren Battal, Kirsten G. Volz & Jelmer P. Borst - 2016 - Cognition 157 (C):77-99.
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  40. The Neural Substrates of Conscious Perception without Performance Confounds.Jorge Morales, Brian Odegaard & Brian Maniscalco - forthcoming - In Felipe De Brigard & Walter Sinnott-Armstrong (eds.), Anthology of Neuroscience and Philosophy.
    To find the neural substrates of consciousness, researchers compare subjects’ neural activity when they are aware of stimuli against neural activity when they are not aware. Ideally, to guarantee that the neural substrates of consciousness—and nothing but the neural substrates of consciousness—are isolated, the only difference between these two contrast conditions should be conscious awareness. Nevertheless, in practice, it is quite challenging to eliminate confounds and irrelevant differences between conscious and unconscious conditions. In particular, there (...)
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  41.  12
    Modeling Structure‐Building in the Brain With CCG Parsing and Large Language Models.Miloš Stanojević, Jonathan R. Brennan, Donald Dunagan, Mark Steedman & John T. Hale - 2023 - Cognitive Science 47 (7):e13312.
    To model behavioral and neural correlates of language comprehension in naturalistic environments, researchers have turned to broad‐coverage tools from natural‐language processing and machine learning. Where syntactic structure is explicitly modeled, prior work has relied predominantly on context‐free grammars (CFGs), yet such formalisms are not sufficiently expressive for human languages. Combinatory categorial grammars (CCGs) are sufficiently expressive directly compositional models of grammar with flexible constituency that affords incremental interpretation. In this work, we evaluate whether a more expressive CCG provides a (...)
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  42.  25
    Modeling the Structure and Dynamics of Semantic Processing.Armand S. Rotaru, Gabriella Vigliocco & Stefan L. Frank - 2018 - Cognitive Science 42 (8):2890-2917.
    The contents and structure of semantic memory have been the focus of much recent research, with major advances in the development of distributional models, which use word co‐occurrence information as a window into the semantics of language. In parallel, connectionist modeling has extended our knowledge of the processes engaged in semantic activation. However, these two lines of investigation have rarely been brought together. Here, we describe a processing model based on distributional semantics in which activation spreads throughout a semantic (...)
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  43.  13
    Mechanisms of developmental regression in autism and the broader phenotype: A neural network modeling approach.Michael S. C. Thomas, Victoria C. P. Knowland & Annette Karmiloff-Smith - 2011 - Psychological Review 118 (4):637-654.
  44.  94
    Précis of neural organization: Structure, function, and dynamics.Michael A. Arbib & Péter Érdi - 2000 - Behavioral and Brain Sciences 23 (4):513-533.
    Neural organization: Structure, function, and dynamics shows how theory and experiment can supplement each other in an integrated, evolving account of the brain's structure, function, and dynamics. (1) Structure: Studies of brain function and dynamics build on and contribute to an understanding of many brain regions, the neural circuits that constitute them, and their spatial relations. We emphasize Szentágothai's modular architectonics principle, but also stress the importance of the microcomplexes of cerebellar circuitry and the lamellae of hippocampus. (2) (...)
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  45. A Neural Model of Rule Generation in Inductive Reasoning.Daniel Rasmussen & Chris Eliasmith - 2011 - Topics in Cognitive Science 3 (1):140-153.
    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 model is able (...)
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  46.  12
    Different Neural Information Flows Affected by Activity Patterns for Action and Verb Generation.Zijian Wang, Zuo Zhang & Yaoru Sun - 2022 - Frontiers in Psychology 13.
    Shared brain regions have been found for processing action and language, including the left inferior frontal gyrus, the premotor cortex, and the inferior parietal lobule. However, in the context of action and language generation that shares the same action semantics, it is unclear whether the activity patterns within the overlapping brain regions would be the same. The changes in effective connectivity affected by these activity patterns are also unclear. In this fMRI study, participants were asked to perform hand action and (...)
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  47.  46
    Neural Findings and Economic Models: Why Brains Have Limited Relevance for Economics.Roberto Fumagalli - 2014 - Philosophy of the Social Sciences 44 (5):606-629.
    Proponents of neuroeconomics often argue that better knowledge of the human neural architecture enables economists to improve standard models of choice. In their view, these improvements provide compelling reasons to use neural findings in constructing and evaluating economic models. In a recent article, I criticized this view by pointing to the trade-offs between the modeling desiderata valued by neuroeconomists and other economists, respectively. The present article complements my earlier critique by focusing on three modeling desiderata that (...)
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  48.  34
    Deep problems with neural network models of human vision.Jeffrey S. Bowers, Gaurav Malhotra, Marin Dujmović, Milton Llera Montero, Christian Tsvetkov, Valerio Biscione, Guillermo Puebla, Federico Adolfi, John E. Hummel, Rachel F. Heaton, Benjamin D. Evans, Jeffrey Mitchell & Ryan Blything - 2023 - Behavioral and Brain Sciences 46:e385.
    Deep neural networks (DNNs) have had extraordinary successes in classifying photographic images of objects and are often described as the best models of biological vision. This conclusion is largely based on three sets of findings: (1) DNNs are more accurate than any other model in classifying images taken from various datasets, (2) DNNs do the best job in predicting the pattern of human errors in classifying objects taken from various behavioral datasets, and (3) DNNs do the best job in (...)
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  49.  23
    Levels of modeling of mechanisms of visually guided behavior.Michael A. Arbib - 1987 - Behavioral and Brain Sciences 10 (3):407-436.
    Intermediate constructs are required as bridges between complex behaviors and realistic models of neural circuitry. For cognitive scientists in general, schemas are the appropriate functional units; brain theorists can work with neural layers as units intermediate between structures subserving schemas and small neural circuits.After an account of different levels of analysis, we describe visuomotor coordination in terms of perceptual schemas and motor schemas. The interest of schemas to cognitive science in general is illustrated with the example of (...)
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  50.  4
    Heuristic modeling of reflection in reflexive games.Г. М Маркова & С. И Барцев - 2023 - Philosophical Problems of IT and Cyberspace (PhilIT&C) 2:61-79.
    The functioning of a subject in a changing environment is most effective from the point of view of survival if the subject can form, maintain and use internal representations of the external world for decision-making. These representations are also called reflection in a broad sense. Using it, one can win in reflexive games since an internal representation of the enemy allows predicting their future moves. The goal is to assess the reflexive potential of heuristic model objects – artificial neural (...)
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