Results for 'network models'

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  1. Coherence and correspondence in the network dynamics of belief suites.Patrick Grim, Andrew Modell, Nicholas Breslin, Jasmine Mcnenny, Irina Mondescu, Kyle Finnegan, Robert Olsen, Chanyu An & Alexander Fedder - 2017 - Episteme 14 (2):233-253.
    Coherence and correspondence are classical contenders as theories of truth. In this paper we examine them instead as interacting factors in the dynamics of belief across epistemic networks. We construct an agent-based model of network contact in which agents are characterized not in terms of single beliefs but in terms of internal belief suites. Individuals update elements of their belief suites on input from other agents in order both to maximize internal belief coherence and to incorporate ‘trickled in’ elements (...)
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  2. Using Network Models in Person-Centered Care in Psychiatry: How Perspectivism Could Help To Draw Boundaries.Nina de Boer, Daniel Kostić, Marcos Ross, Leon de Bruin & Gerrit Glas - 2022 - Frontiers in Psychiatry, Section Psychopathology 13 (925187).
    In this paper, we explore the conceptual problems arising when using network analysis in person- centered care (PCC) in psychiatry. Personalized network models are potentially helpful tools for PCC, but we argue that using them in psychiatric practice raises boundary problems, i.e., problems in demarcating what should and should not be included in the model, which may limit their ability to provide clinically-relevant knowledge. Models can have explanatory and representational boundaries, among others. We argue that we (...)
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  3.  54
    Analysing Network Models to Make Discoveries about Biological Mechanisms.William Bechtel - 2019 - British Journal for the Philosophy of Science 70 (2):459-484.
    Systems biology provides alternatives to the strategies to developing mechanistic explanations traditionally pursued in cell and molecular biology and much discussed in accounts of mechanistic explanation. Rather than starting by identifying a mechanism for a given phenomenon and decomposing it, systems biologists often start by developing cell-wide networks of detected connections between proteins or genes and construe clusters of highly interactive components as potential mechanisms. Using inference strategies such as ‘guilt-by-association’, researchers advance hypotheses about functions performed of these mechanisms. I (...)
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  4.  20
    A network model for learned spatial representation in the posterior parietal cortex.Richard A. Anderson & David Zipser - 1990 - In J. McGaugh, Jerry Weinberger & G. Lynch (eds.), Brain Organization and Memory. Guilford Press. pp. 271--284.
  5.  33
    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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  6.  4
    Neural Network Model for Predicting Student Failure in the Academic Leveling Course of Escuela Politécnica Nacional.Iván Sandoval-Palis, David Naranjo, Raquel Gilar-Corbi & Teresa Pozo-Rico - 2020 - Frontiers in Psychology 11.
    The purpose of this study is to train an artificial neural network model for predicting student failure in the academic leveling course of the Escuela Politécnica Nacional of Ecuador, based on academic and socioeconomic information. For this, 1308 higher education students participated, 69.0% of whom failed the academic leveling course; besides, 93.7% of the students self-identified as mestizo, 83.9% came from the province of Pichincha, and 92.4% belonged to general population. As a first approximation, a neural network model (...)
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  7. The Explanatory Power of Network Models.Carl F. Craver - 2016 - Philosophy of Science 83 (5):698-709.
    Network analysis is increasingly used to discover and represent the organization of complex systems. Focusing on examples from neuroscience in particular, I argue that whether network models explain, how they explain, and how much they explain cannot be answered for network models generally but must be answered by specifying an explanandum, by addressing how the model is applied to the system, and by specifying which kinds of relations count as explanatory.
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  8.  32
    Social Network Model of Political Participation in Japan.Aie-rie Lee - 2016 - Japanese Journal of Political Science 17 (1):44-62.
    The objective of the study is to re-examine the Verba, Nie, and Kim 's path-breaking analysis of political participation and political equality, under the inclusion of a social network model in Japan. In particular, the present research investigates how and why we find the extremely low correlations between one's socio-economic resource level and political participation in Japan, the evidence unsatisfactorily explained by the VNK analysis. Building on the social network model and employing the first wave of the Asian (...)
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  9.  13
    Neural Network Models as Evidence for Different Types of Visual Representations.Stephen M. Kosslyn, Christopher F. Chabris & David P. Baker - 1995 - Cognitive Science 19 (4):575-579.
    Cook (1995) criticizes the work of Jacobs and Kosslyn (1994) on spatial relations, shape representations, and receptive fields in neural network models on the grounds that first‐order correlations between input and output unit activities can explain the results. We reply briefly to Cook's arguments here (and in Kosslyn, Chabris, Marsolek, Jacobs & Koenig, 1995) and discuss how new simulations can confirm the importance of receptive field size as a crucial variable in the encoding of categorical and coordinate spatial (...)
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  10.  31
    A Network Model of Observation and Imitation of Speech.Nira Mashal, Ana Solodkin, Anthony Steven Dick, E. Elinor Chen & Steven L. Small - 2012 - Frontiers in Psychology 3.
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  11.  22
    Neural Network Models of Conditionals.Hannes Leitgeb - 2012 - In Sven Ove Hansson & Vincent F. Hendricks (eds.), Introduction to Formal Philosophy. Cham: Springer. pp. 147-176.
    This chapter explains how artificial neural networks may be used as models for reasoning, conditionals, and conditional logic. It starts with the historical overlap between neural network research and logic, it discusses connectionism as a paradigm in cognitive science that opposes the traditional paradigm of symbolic computationalism, it mentions some recent accounts of how logic and neural networks may be combined, and it ends with a couple of open questions concerning the future of this area of research.
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  12.  24
    Localist network modelling in psychology: Ho-hum or hm-m-m?Craig Leth-Steensen - 2000 - Behavioral and Brain Sciences 23 (4):484-485.
    Localist networks represent information in a very simple and straightforward way. However, localist modelling of complex behaviours ultimately entails the use of intricate “hand-designed” connectionist structures. It is, in fact, mainly these two aspects of localist network models that I believe have turned many researchers off them (perhaps wrongly so).
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  13.  36
    The Network Model of Depression as a Basis for New Therapeutic Strategies for Treating Major Depressive Disorder in Parkinson’s Disease.Kevin D’Ostilio & Gaëtan Garraux - 2016 - Frontiers in Human Neuroscience 10.
  14.  65
    An Improved Artificial Neural Network Model for Effective Diabetes Prediction.Muhammad Mazhar Bukhari, Bader Fahad Alkhamees, Saddam Hussain, Abdu Gumaei, Adel Assiri & Syed Sajid Ullah - 2021 - Complexity 2021:1-10.
    Data analytics, machine intelligence, and other cognitive algorithms have been employed in predicting various types of diseases in health care. The revolution of artificial neural networks in the medical discipline emerged for data-driven applications, particularly in the healthcare domain. It ranges from diagnosis of various diseases, medical image processing, decision support system, and disease prediction. The intention of conducting the research is to ascertain the impact of parameters on diabetes data to predict whether a particular patient has a disease or (...)
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  15.  22
    A Dynamic Network Model to Explain the Development of Excellent Human Performance.Ruud J. R. Den Hartigh, Marijn W. G. Van Dijk, Henderien W. Steenbeek & Paul L. C. Van Geert - 2016 - Frontiers in Psychology 7.
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  16.  23
    A Modular Neural Network Model of Concept Acquisition.Philippe G. Schyns - 1991 - Cognitive Science 15 (4):461-508.
    Previous neural network models of concept learning were mainly implemented with supervised learning schemes. However, studies of human conceptual memory have shown that concepts may be learned without a teacher who provides the category name to associate with exemplars. A modular neural network architecture that realizes concept acquisition through two functionally distinct operations, categorizing and naming, is proposed as an alternative. An unsupervised algorithm realizes the categorizing module by constructing representations of categories compatible with prototype theory. The (...)
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  17.  3
    A Network Model of Expertise.Robin Nunn - 2008 - Bulletin of Science, Technology and Society 28 (5):414-427.
    In this article, the author proposes a dynamic, interdisciplinary, network conception of expertise that differs from conventional static, linear conceptions. Using a range of graphic images, the author propose specific visualizations of this network conception of expertise. First, he discusses attempts to pin expertise down in a definition. Then he considers the network of notions from which expertise emerges. The author briefly describes representative nodes in the network, such as experience and excellence. He concludes with the (...)
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  18.  16
    Network models of psychopathology and comorbidity: Philosophical and pragmatic considerations.S. Brian Hood & Benjamin J. Lovett - 2010 - Behavioral and Brain Sciences 33 (2-3):159-160.
    Cramer et al.'s account of comorbidity comes with a substantive philosophical view concerning the nature of psychological disorders. Although the network account is responsive to problems with extant approaches, it faces several practical and conceptual challenges of its own, especially in cases where the individual differences in network structures require the analysis of intra-individual time-series data.
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  19.  5
    A Modular Neural Network Model of Concept Acquisition.Philippe G. Schyns - 1991 - Cognitive Science 15 (4):461-508.
    Previous neural network models of concept learning were mainly implemented with supervised learning schemes. However, studies of human conceptual memory have shown that concepts may be learned without a teacher who provides the category name to associate with exemplars. A modular neural network architecture that realizes concept acquisition through two functionally distinct operations, categorizing and naming, is proposed as an alternative. An unsupervised algorithm realizes the categorizing module by constructing representations of categories compatible with prototype theory. The (...)
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  20.  8
    Network models can help focus research on the role of culture and context in psychopathology, but don't discount latent variable models.Nuwan Jayawickreme, Andrew Rasmussen, Alison Karasz, Jay Verkuilen & Eranda Jayawickreme - 2019 - Behavioral and Brain Sciences 42.
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  21.  23
    A Network Model of Goals Boosts Convergent Creativity Performance.Franki Y. H. Kung & Abigail A. Scholer - 2018 - Frontiers in Psychology 9.
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  22.  7
    Bayesian network modelling through qualitative patterns.Peter J. F. Lucas - 2005 - Artificial Intelligence 163 (2):233-263.
  23.  13
    Neural network modelling of cognitive disinhibition and neurotransmitter dysfunction in obsessive–compulsive disorder.Jacques Ludik & Danj Stein - 1998 - In Dan J. Stein & J. Ludick (eds.), Neural Networks and Psychopathology. Cambridge University Press.
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  24.  95
    The spirit in the network: Models for spirituality in a technological culture.Mark Coeckelbergh - 2010 - Zygon 45 (4):957-978.
    Can a technological culture accommodate spiritual experience and spiritual thinking? If so, what kind of spirituality? I explore the relation between technology and spirituality by constructing and discussing several models for spirituality in a technological culture. I show that although gnostic and animistic interpretations and responses to technology are popular challenges to secularization and disenchantment claims, both the Christian tradition and contemporary posthumanist theory provide interesting alternatives to guide our spiritual experiences and thinking in a technological culture. I analyze (...)
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  25. Neural Network Models for Chaotic-Fuzzy Information Processing.Harold Szu, Joe Garcia, Lotfi Zadeh, Charles C. Hsu & Joseph DeWitte - 1994 - In Karl H. Pribram (ed.), Origins: Brain and Self-Organization. Lawrence Erlbaum.
  26.  17
    An Autocatalytic Network Model of Conceptual Change.Liane Gabora, Nicole M. Beckage & Mike Steel - 2022 - Topics in Cognitive Science 14 (1):163-188.
    Topics in Cognitive Science, Volume 14, Issue 1, Page 163-188, January 2022.
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  27. Epilepsy: network models of generation.Fernando H. Lopes da Silva & Jan Pieter Pijn - 1995 - In Michael A. Arbib (ed.), Handbook of Brain Theory and Neural Networks. MIT Press.
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  28.  26
    A neural network model of the structure and dynamics of human personality.Stephen J. Read, Brian M. Monroe, Aaron L. Brownstein, Yu Yang, Gurveen Chopra & Lynn C. Miller - 2010 - Psychological Review 117 (1):61-92.
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  29.  30
    Application of BP Neural Network Model in Risk Evaluation of Railway Construction.Yang Changwei, Li Zonghao, Guo Xueyan, Yu Wenying, Jin Jing & Zhu Liang - 2019 - Complexity 2019:1-12.
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  30.  8
    A Knowledge Query Network Model Based on Rasch Model Embedding for Personalized Online Learning.Yan Cheng, Gang Wu, Haifeng Zou, Pin Luo & Zhuang Cai - 2022 - Frontiers in Psychology 13.
    The vigorous development of online education has produced massive amounts of education data. How to mine and analyze education big data has become an urgent problem in the field of education and big data knowledge engineering. As for the dynamic learning data, knowledge tracing aims to track learners’ knowledge status over time by analyzing the learners’ exercise data, so as to predict their performance in the next time step. Deep learning knowledge tracking performs well, but they mainly model the knowledge (...)
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  31.  15
    A Random Resistor Network Model of Space-Time.Jerome Cantor - 2011 - Apeiron: Studies in Infinite Nature 18 (1):1.
  32.  17
    EARSHOT: A Minimal Neural Network Model of Incremental Human Speech Recognition.James S. Magnuson, Heejo You, Sahil Luthra, Monica Li, Hosung Nam, Monty Escabí, Kevin Brown, Paul D. Allopenna, Rachel M. Theodore, Nicholas Monto & Jay G. Rueckl - 2020 - Cognitive Science 44 (4):e12823.
    Despite the lack of invariance problem (the many‐to‐many mapping between acoustics and percepts), human listeners experience phonetic constancy and typically perceive what a speaker intends. Most models of human speech recognition (HSR) have side‐stepped this problem, working with abstract, idealized inputs and deferring the challenge of working with real speech. In contrast, carefully engineered deep learning networks allow robust, real‐world automatic speech recognition (ASR). However, the complexities of deep learning architectures and training regimens make it difficult to use them (...)
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  33.  13
    A layered network model of associative learning: Learning to learn and configuration.E. James Kehoe - 1988 - Psychological Review 95 (4):411-433.
  34.  31
    SUSTAIN: A Network Model of Category Learning.Bradley C. Love, Douglas L. Medin & Todd M. Gureckis - 2004 - Psychological Review 111 (2):309-332.
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  35.  9
    A Deep Neural Network Model for the Detection and Classification of Emotions from Textual Content.Muhammad Zubair Asghar, Adidah Lajis, Muhammad Mansoor Alam, Mohd Khairil Rahmat, Haidawati Mohamad Nasir, Hussain Ahmad, Mabrook S. Al-Rakhami, Atif Al-Amri & Fahad R. Albogamy - 2022 - Complexity 2022:1-12.
    Emotion-based sentimental analysis has recently received a lot of interest, with an emphasis on automated identification of user behavior, such as emotional expressions, based on online social media texts. However, the majority of the prior attempts are based on traditional procedures that are insufficient to provide promising outcomes. In this study, we categorize emotional sentiments by recognizing them in the text. For that purpose, we present a deep learning model, bidirectional long-term short-term memory, for emotion recognition that takes into account (...)
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  36.  31
    Collective Deception: Toward a Network Model of Epistemic Responsibility.Cayla Clinkenbeard - 2023 - Synthese 202 (3):1-19.
    What kind of collective is responsible for the deception that follows disinformation campaigns? Jennifer Lackey argues in The Epistemology of Groups that a group agent is responsible for such deception. She analyzes this deception as a group lie, which involves a group misrepresenting its own beliefs through a jointly accepted assertion or a spokesperson. Against this view, I argue that the group responsible for disinformation campaigns is a diffuse network. This deception involves misrepresenting scientific knowledge, not a group belief. (...)
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  37.  15
    Set-theoretic and network models reconsidered: A comment on Hollan's "Features and semantic memory.".Lance J. Rips, Edward E. Smith & Edward J. Shoben - 1975 - Psychological Review 82 (2):156-157.
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  38.  32
    A causal Bayesian network model of disease progression mechanisms in chronic myeloid leukemia.Daniel Koch, Robert Eisinger & Alexander Gebharter - 2017 - Journal of Theoretical Biology 433:94-105.
    Chronic myeloid leukemia (CML) is a cancer of the hematopoietic system initiated by a single genetic mutation which results in the oncogenic fusion protein Bcr-Abl. Untreated, patients pass through different phases of the disease beginning with the rather asymptomatic chronic phase and ultimately culminating into blast crisis, an acute leukemia resembling phase with a very high mortality. Although many processes underlying the chronic phase are well understood, the exact mechanisms of disease progression to blast crisis are not yet revealed. In (...)
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  39.  16
    A neural network model of lexical organization.Michael D. Fortescue (ed.) - 2009 - London: Continuum Intl Pub Group.
    The subject matter of this book is the mental lexicon, that is, the way in which the form and meaning of words is stored by speakers of specific languages. This book attempts to narrow the gap between the results of experimental neurology and the concerns of theoretical linguistics in the area of lexical semantics. The prime goal as regards linguistic theory is to show how matters of lexical organization can be analysed and discussed within a neurologically informed framework that is (...)
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  40.  37
    A neural network model of retrieval-induced forgetting.Kenneth A. Norman, Ehren L. Newman & Greg Detre - 2007 - Psychological Review 114 (4):887-953.
  41.  10
    A Dual Simple Recurrent Network Model for Chunking and Abstract Processes in Sequence Learning.Lituan Wang, Yangqin Feng, Qiufang Fu, Jianyong Wang, Xunwei Sun, Xiaolan Fu, Lei Zhang & Zhang Yi - 2021 - Frontiers in Psychology 12.
    Although many studies have provided evidence that abstract knowledge can be acquired in artificial grammar learning, it remains unclear how abstract knowledge can be attained in sequence learning. To address this issue, we proposed a dual simple recurrent network model that includes a surface SRN encoding and predicting the surface properties of stimuli and an abstract SRN encoding and predicting the abstract properties of stimuli. The results of Simulations 1 and 2 showed that the DSRN model can account for (...)
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  42.  9
    A neural network model of the effect of prior experience with regularities on subsequent category learning.Casey L. Roark, David C. Plaut & Lori L. Holt - 2022 - Cognition 222 (C):104997.
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  43.  28
    A Neural Network Model for Attribute‐Based Decision Processes.Marius Usher & Dan Zakay - 1993 - Cognitive Science 17 (3):349-396.
    We propose a neural model of multiattribute-decision processes, based on an attractor neural network with dynamic thresholds. The model may be viewed as a generalization of the elimination by aspects model, whereby simultaneous selection of several aspects is allowed. Depending on the amount of synaptic inhibition, various kinds of scanning strategies may be performed, leading in some cases to vacillations among the alternatives. The model predicts that decisions of a longer time duration exhibit a lower violation of the simple (...)
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  44.  31
    Opposition logic and neural network models in artificial grammar learning.J. Vokey - 2004 - Consciousness and Cognition 13 (3):565-578.
    Following neural network simulations of the two experiments of Higham, Vokey, and Pritchard , Tunney and Shanks argued that the opposition logic advocated by Higham et al. was incapable of distinguishing between single and multiple influences on performance of artificial grammar learning and more generally. We show that their simulations do not support their conclusions. We also provide different neural network simulations that do simulate the essential results of Higham et al.
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  45.  7
    The Complex Neural Network Model for Mass Appraisal and Scenario Forecasting of the Urban Real Estate Market Value That Adapts Itself to Space and Time.Leonid N. Yasnitsky, Vitaly L. Yasnitsky & Aleksander O. Alekseev - 2021 - Complexity 2021:1-17.
    In the modern scientific literature, there are many reports about the successful application of neural network technologies for solving complex applied problems, in particular, for modeling the urban real estate market. There are neural network models that can perform mass assessment of real estate objects taking into account their construction and operational characteristics. However, these models are static because they do not take into account the changing economic situation over time. Therefore, they quickly become outdated and (...)
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  46.  19
    A continuous random network model with three-fold coordination.G. N. Greaves & E. A. Davis - 1974 - Philosophical Magazine 29 (5):1201-1206.
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  47.  28
    A proliferation control network model: The simulation of two-dimensional epithelial homeostasis.Didier Morel, Raphaël Marcelpoil & Gérard Brugal - 2001 - Acta Biotheoretica 49 (4):219-234.
    Despite the recent progress in the description of the molecular mechanisms of proliferation and differentiation controls in vitro, the regulation of the homeostasis of normal stratified epithelia remains unclear in vivo. Computer simulation represents a powerful tool to investigate the complex field of cell proliferation regulation networks. It provides huge computation capabilities to test, in a dynamic in silico context, hypotheses about the many pathways and feedback loops involved in cell growth and proliferation controls.Our approach combines a model of cell (...)
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  48.  33
    Neural Network Models for Chaotic-Fuzzy Information Processing Harold Szu, Joe Garcia, G. Rogers, Lotfi Zadeh*/NSWC, Silver Spring MD 20903 Charles C. Hsu, Joseph DeWitte, Jr., Gyu Moon*, Desa Gobovic, Mona Zaghloul EE&CS GWU, Wash. DC 20052* Dept. of Electronics, Hallym Univ., Choonchun, Korea. [REVIEW]Charles C. Hsu - 1994 - In Karl H. Pribram (ed.), Origins: Brain and Self-Organization. Lawrence Erlbaum. pp. 435.
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  49. How and when are topological explanations complete mechanistic explanations? The case of multilayer network models.Beate Krickel, Leon de Bruin & Linda Douw - 2023 - Synthese 202 (1):1-21.
    The relationship between topological explanation and mechanistic explanation is unclear. Most philosophers agree that at least some topological explanations are mechanistic explanations. The crucial question is how to make sense of this claim. Zednik (Philos Psychol 32(1):23–51, 2019) argues that topological explanations are mechanistic if they (i) describe mechanism sketches that (ii) pick out organizational properties of mechanisms. While we agree with Zednik’s conclusion, we critically discuss Zednik’s account and show that it fails as a general account of how and (...)
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  50. A single layer network model of sentential recursive patterns.Lei Ding, Simon Dennis & Dennis N. Mehay - 2009 - In N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society. pp. 461--466.
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