Results for 'Hierarchical Bayesian modeling'

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  1.  56
    A Hierarchical Bayesian Modeling Approach to Searching and Stopping in Multi-Attribute Judgment.Don van Ravenzwaaij, Chris P. Moore, Michael D. Lee & Ben R. Newell - 2014 - Cognitive Science 38 (7):1384-1405.
    In most decision-making situations, there is a plethora of information potentially available to people. Deciding what information to gather and what to ignore is no small feat. How do decision makers determine in what sequence to collect information and when to stop? In two experiments, we administered a version of the German cities task developed by Gigerenzer and Goldstein (1996), in which participants had to decide which of two cities had the larger population. Decision makers were not provided with the (...)
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  2.  14
    Probabilistic Inference: Task Dependency and Individual Differences of Probability Weighting Revealed by Hierarchical Bayesian Modeling.Moritz Boos, Caroline Seer, Florian Lange & Bruno Kopp - 2016 - Frontiers in Psychology 7.
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  3.  20
    A Hierarchical Bayesian Model of Human Decision‐Making on an Optimal Stopping Problem.Michael D. Lee - 2006 - Cognitive Science 30 (3):1-26.
    We consider human performance on an optimal stopping problem where people are presented with a list of numbers independently chosen from a uniform distribution. People are told how many numbers are in the list, and how they were chosen. People are then shown the numbers one at a time, and are instructed to choose the maximum, subject to the constraint that they must choose a number at the time it is presented, and any choice below the maximum is incorrect. We (...)
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  4.  44
    A Survey of Model Evaluation Approaches With a Tutorial on Hierarchical Bayesian Methods.Richard M. Shiffrin, Michael D. Lee, Woojae Kim & Eric-Jan Wagenmakers - 2008 - Cognitive Science 32 (8):1248-1284.
    This article reviews current methods for evaluating models in the cognitive sciences, including theoretically based approaches, such as Bayes factors and minimum description length measures; simulation approaches, including model mimicry evaluations; and practical approaches, such as validation and generalization measures. This article argues that, although often useful in specific settings, most of these approaches are limited in their ability to give a general assessment of models. This article argues that hierarchical methods, generally, and hierarchical Bayesian methods, specifically, (...)
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  5.  55
    A Bayesian Model of Biases in Artificial Language Learning: The Case of a Word‐Order Universal.Jennifer Culbertson & Paul Smolensky - 2012 - Cognitive Science 36 (8):1468-1498.
    In this article, we develop a hierarchical Bayesian model of learning in a general type of artificial language‐learning experiment in which learners are exposed to a mixture of grammars representing the variation present in real learners’ input, particularly at times of language change. The modeling goal is to formalize and quantify hypothesized learning biases. The test case is an experiment (Culbertson, Smolensky, & Legendre, 2012) targeting the learning of word‐order patterns in the nominal domain. The model identifies (...)
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  6. Meeting in the Dark Room: Bayesian Rational Analysis and Hierarchical Predictive Coding,.Sascha Benjamin Fink & Carlos Zednik - 2017 - Philosophy and Predictive Processing.
    At least two distinct modeling frameworks contribute to the view that mind and brain are Bayesian: Bayesian Rational Analysis (BRA) and Hierarchical Predictive Coding (HPC). What is the relative contribution of each, and how exactly do they relate? In order to answer this question, we compare the way in which these two modeling frameworks address different levels of analysis within Marr’s tripartite conception of explanation in cognitive science. Whereas BRA answers questions at the computational level (...)
     
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  7.  25
    Origins of Hierarchical Logical Reasoning.Abhishek M. Dedhe, Hayley Clatterbuck, Steven T. Piantadosi & Jessica F. Cantlon - 2023 - Cognitive Science 47 (2):13250.
    Hierarchical cognitive mechanisms underlie sophisticated behaviors, including language, music, mathematics, tool-use, and theory of mind. The origins of hierarchical logical reasoning have long been, and continue to be, an important puzzle for cognitive science. Prior approaches to hierarchical logical reasoning have often failed to distinguish between observable hierarchical behavior and unobservable hierarchical cognitive mechanisms. Furthermore, past research has been largely methodologically restricted to passive recognition tasks as compared to active generation tasks that are stronger tests (...)
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  8.  19
    Computational Modeling of Cognition and Behavior.Simon Farrell & Stephan Lewandowsky - 2017 - Cambridge University Press.
    Computational modeling is now ubiquitous in psychology, and researchers who are not modelers may find it increasingly difficult to follow the theoretical developments in their field. This book presents an integrated framework for the development and application of models in psychology and related disciplines. Researchers and students are given the knowledge and tools to interpret models published in their area, as well as to develop, fit, and test their own models. Both the development of models and key features of (...)
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  9.  15
    The Role of Dorsal Premotor Cortex in Resolving Abstract Motor Rules: Converging Evidence From Transcranial Magnetic Stimulation and Cognitive Modeling.Patrick Rice & Andrea Stocco - 2019 - Topics in Cognitive Science 11 (1):240-260.
    The Role of Dorsal Premotor Cortex in Resolving Abstract Motor Rules provides alternative hypotheses about the cognitive functions affected by the application of repetitive transcranial magnetic stimulation. Their model simulated the effect of stimulation of the left dorsal premotor cortex right as participants provide a Models were used to demonstrate that the increased variability in observed response times can result from interference in replanning during the process of responding to the uninstructed stimulus.
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  10.  8
    The Impact of Ignoring a Crossed Factor in Cross-Classified Multilevel Modeling.Soyoung Kim, Yoonhwa Jeong & Sehee Hong - 2021 - Frontiers in Psychology 12.
    The present study investigated estimate biases in cross-classified random effect modeling and hierarchical linear modeling when ignoring a crossed factor in CCREM considering the impact of the feeder and the magnitude of coefficients. There were six simulation factors: the magnitude of coefficient, the correlation between the level 2 residuals, the number of groups, the average number of individuals sampled from each group, the intra-unit correlation coefficient, and the number of feeders. The targeted interests of the coefficients were (...)
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  11.  57
    Hierarchical Bayesian models of delusion.Daniel Williams - 2018 - Consciousness and Cognition 61:129-147.
  12. Bayesian modeling of human sequential decision-making on the multi-armed bandit problem.Daniel Acuna & Paul Schrater - 2008 - In B. C. Love, K. McRae & V. M. Sloutsky (eds.), Proceedings of the 30th Annual Conference of the Cognitive Science Society. Cognitive Science Society. pp. 100--200.
  13.  53
    Hierarchical Bayesian models as formal models of causal reasoning.York Hagmayer & Ralf Mayrhofer - 2013 - Argument and Computation 4 (1):36 - 45.
    (2013). Hierarchical Bayesian models as formal models of causal reasoning. Argument & Computation: Vol. 4, Formal Models of Reasoning in Cognitive Psychology, pp. 36-45. doi: 10.1080/19462166.2012.700321.
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  14.  6
    Hierarchical Bayesian narrative-making under variable uncertainty.Alex Jinich-Diamant & Leonardo Christov-Moore - 2023 - Behavioral and Brain Sciences 46:e97.
    While Conviction Narrative Theory correctly criticizes utility-based accounts of decision-making, it unfairly reduces probabilistic models to point estimates and treats affect and narrative as mechanistically opaque yet explanatorily sufficient modules. Hierarchically nested Bayesian accounts offer a mechanistically explicit and parsimonious alternative incorporating affect into a single biologically plausible precision-weighted mechanism that tunes decision-making toward narrative versus sensory dependence under varying uncertainty levels.
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  15.  58
    Hierarchical holographic modeling for conflict resolution.Y. Y. Haimes & A. Weiner - 1986 - Philosophy of Science 53 (2):200-222.
    A system as complex as man can be viewed from many sides, and the one or the other axis can be selected to form a theoretical image. Partial truths will emerge, and their mutual intermeshing will gradually raise truth to higher levels. … It has always proven prejudicial to attribute general validity to a partial truth. Yet, a partial truth could not have been reached without overstating its value. Thus the history of truth is intimately interconnected with the history of (...)
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  16.  9
    Cognitive Mechanisms Underlying Recursive Pattern Processing in Human Adults.Abhishek M. Dedhe, Steven T. Piantadosi & Jessica F. Cantlon - 2023 - Cognitive Science 47 (4):e13273.
    The capacity to generate recursive sequences is a marker of rich, algorithmic cognition, and perhaps unique to humans. Yet, the precise processes driving recursive sequence generation remain mysterious. We investigated three potential cognitive mechanisms underlying recursive pattern processing: hierarchical reasoning, ordinal reasoning, and associative chaining. We developed a Bayesian mixture model to quantify the extent to which these three cognitive mechanisms contribute to adult humans’ performance in a sequence generation task. We further tested whether recursive rule discovery depends (...)
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  17.  44
    Evolutionary psychology and Bayesian modeling.Laith Al-Shawaf & David Buss - 2011 - Behavioral and Brain Sciences 34 (4):188-189.
    The target article provides important theoretical contributions to psychology and Bayesian modeling. Despite the article's excellent points, we suggest that it succumbs to a few misconceptions about evolutionary psychology (EP). These include a mischaracterization of evolutionary psychology's approach to optimality; failure to appreciate the centrality of mechanism in EP; and an incorrect depiction of hypothesis testing. An accurate characterization of EP offers more promise for successful integration with Bayesian modeling.
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  18.  30
    The structure and dynamics of scientific theories: a hierarchical Bayesian perspective.Leah Henderson, Noah D. Goodman, Joshua B. Tenenbaum & James F. Woodward - 2010 - Philosophy of Science 77 (2):172-200.
    Hierarchical Bayesian models (HBMs) provide an account of Bayesian inference in a hierarchically structured hypothesis space. Scientific theories are plausibly regarded as organized into hierarchies in many cases, with higher levels sometimes called ‘para- digms’ and lower levels encoding more specific or concrete hypotheses. Therefore, HBMs provide a useful model for scientific theory change, showing how higher-level theory change may be driven by the impact of evidence on lower levels. HBMs capture features described in the Kuhnian tradition, (...)
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  19. The Structure and Dynamics of Scientific Theories: A Hierarchical Bayesian Perspective.Leah Henderson, Noah D. Goodman, Joshua B. Tenenbaum & James F. Woodward - 2010 - Philosophy of Science 77 (2):172-200.
    Hierarchical Bayesian models (HBMs) provide an account of Bayesian inference in a hierarchically structured hypothesis space. Scientific theories are plausibly regarded as organized into hierarchies in many cases, with higher levels sometimes called ‘paradigms’ and lower levels encoding more specific or concrete hypotheses. Therefore, HBMs provide a useful model for scientific theory change, showing how higher‐level theory change may be driven by the impact of evidence on lower levels. HBMs capture features described in the Kuhnian tradition, particularly (...)
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  20.  27
    Exemplars, Prototypes, Similarities, and Rules in Category Representation: An Example of Hierarchical Bayesian Analysis.Michael D. Lee & Wolf Vanpaemel - 2008 - Cognitive Science 32 (8):1403-1424.
    This article demonstrates the potential of using hierarchical Bayesian methods to relate models and data in the cognitive sciences. This is done using a worked example that considers an existing model of category representation, the Varying Abstraction Model (VAM), which attempts to infer the representations people use from their behavior in category learning tasks. The VAM allows for a wide variety of category representations to be inferred, but this article shows how a hierarchical Bayesian analysis can (...)
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  21.  20
    Livestream Experiments: The Role of COVID-19, Agency, Presence, and Social Context in Facilitating Social Connectedness.Kelsey E. Onderdijk, Dana Swarbrick, Bavo Van Kerrebroeck, Maximillian Mantei, Jonna K. Vuoskoski, Pieter-Jan Maes & Marc Leman - 2021 - Frontiers in Psychology 12:647929.
    Musical life became disrupted in 2020 due to the COVID-19 pandemic. Many musicians and venues turned to online alternatives, such as livestreaming. In this study, three livestreamed concerts were organized to examine separate, yet interconnected concepts—agency, presence, and social context—to ascertain which components of livestreamed concerts facilitate social connectedness. Hierarchical Bayesian modeling was conducted on 83 complete responses to examine the effects of the manipulations on feelings of social connectedness with the artist and the audience. Results showed (...)
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  22.  13
    Learning to Learn Functions.Michael Y. Li, Fred Callaway, William D. Thompson, Ryan P. Adams & Thomas L. Griffiths - 2023 - Cognitive Science 47 (4):e13262.
    Humans can learn complex functional relationships between variables from small amounts of data. In doing so, they draw on prior expectations about the form of these relationships. In three experiments, we show that people learn to adjust these expectations through experience, learning about the likely forms of the functions they will encounter. Previous work has used Gaussian processes—a statistical framework that extends Bayesian nonparametric approaches to regression—to model human function learning. We build on this work, modeling the process (...)
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  23.  49
    Representing credal imprecision: from sets of measures to hierarchical Bayesian models.Daniel Lassiter - 2020 - Philosophical Studies 177 (6):1463-1485.
    The basic Bayesian model of credence states, where each individual’s belief state is represented by a single probability measure, has been criticized as psychologically implausible, unable to represent the intuitive distinction between precise and imprecise probabilities, and normatively unjustifiable due to a need to adopt arbitrary, unmotivated priors. These arguments are often used to motivate a model on which imprecise credal states are represented by sets of probability measures. I connect this debate with recent work in Bayesian cognitive (...)
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  24.  46
    Learning the Form of Causal Relationships Using Hierarchical Bayesian Models.Christopher G. Lucas & Thomas L. Griffiths - 2010 - Cognitive Science 34 (1):113-147.
  25.  46
    Maybe this old dinosaur isn’t extinct: What does Bayesian modeling add to associationism?Irina Baetu, Itxaso Barberia, Robin A. Murphy & A. G. Baker - 2011 - Behavioral and Brain Sciences 34 (4):190-191.
    We agree with Jones & Love (J&L) that much of Bayesian modeling has taken a fundamentalist approach to cognition; but we do not believe in the potential of Bayesianism to provide insights into psychological processes. We discuss the advantages of associative explanations over Bayesian approaches to causal induction, and argue that Bayesian models have added little to our understanding of human causal reasoning.
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  26.  6
    Modeling Sensory Preference in Speech Motor Planning: A Bayesian Modeling Framework.Jean-François Patri, Julien Diard & Pascal Perrier - 2019 - Frontiers in Psychology 10.
    Experimental studies of speech production involving compensations for auditory and somatosensory perturbations and adaptation after training suggest that both types of sensory information are considered to plan and monitor speech production. Interestingly, individual sensory preferences have been observed in this context: subjects who compensate less for somatosensory perturbations compensate more for auditory perturbations, and \textit{vice versa}. We propose to integrate this sensory preference phenomenon in a model of speech motor planning using a probabilistic model in which speech units are characterized (...)
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  27.  34
    From partners to populations: A hierarchical Bayesian account of coordination and convention.Robert D. Hawkins, Michael Franke, Michael C. Frank, Adele E. Goldberg, Kenny Smith, Thomas L. Griffiths & Noah D. Goodman - 2023 - Psychological Review 130 (4):977-1016.
  28.  17
    What exactly is learned in visual statistical learning? Insights from Bayesian modeling.Noam Siegelman, Louisa Bogaerts, Blair C. Armstrong & Ram Frost - 2019 - Cognition 192 (C):104002.
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  29.  23
    Number-knower levels in young children: Insights from Bayesian modeling.Michael D. Lee & Barbara W. Sarnecka - 2011 - Cognition 120 (3):391-402.
  30.  7
    An efficient and versatile approach to trust and reputation using hierarchical Bayesian modelling.W. T. Luke Teacy, Michael Luck, Alex Rogers & Nicholas R. Jennings - 2012 - Artificial Intelligence 193 (C):149-185.
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  31.  15
    Cultural Differences in Strength of Conformity Explained Through Pathogen Stress: A Statistical Test Using Hierarchical Bayesian Estimation.Yutaka Horita & Masanori Takezawa - 2018 - Frontiers in Psychology 9.
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  32.  70
    Modeling creative abduction Bayesian style.Christian J. Feldbacher-Escamilla & Alexander Gebharter - 2019 - European Journal for Philosophy of Science 9 (1):1-15.
    Schurz (Synthese 164:201–234, 2008) proposed a justification of creative abduction on the basis of the Reichenbachian principle of the common cause. In this paper we take up the idea of combining creative abduction with causal principles and model instances of successful creative abduction within a Bayes net framework. We identify necessary conditions for such inferences and investigate their unificatory power. We also sketch several interesting applications of modeling creative abduction Bayesian style. In particular, we discuss use-novel predictions, confirmation, (...)
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  33. Quitting certainties: a Bayesian framework modeling degrees of belief.Michael G. Titelbaum - 2013 - Oxford: Oxford University Press.
    Michael G. Titelbaum presents a new Bayesian framework for modeling rational degrees of belief—the first of its kind to represent rational requirements on agents who undergo certainty loss.
  34.  12
    The Hierarchical Evolution in Human Vision Modeling.Dana H. Ballard & Ruohan Zhang - 2021 - Topics in Cognitive Science 13 (2):309-328.
    Ballard and Zhang offer a fascinating review of how computational models of human vision have evolved since David Marr proposed his Tri‐Level Hypothesis, with a focus on the refinement of algorithm descriptions over time.
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  35.  80
    Modeling the forensic two-trace problem with Bayesian networks.Simone Gittelson, Alex Biedermann, Silvia Bozza & Franco Taroni - 2013 - Artificial Intelligence and Law 21 (2):221-252.
    The forensic two-trace problem is a perplexing inference problem introduced by Evett (J Forensic Sci Soc 27:375–381, 1987). Different possible ways of wording the competing pair of propositions (i.e., one proposition advanced by the prosecution and one proposition advanced by the defence) led to different quantifications of the value of the evidence (Meester and Sjerps in Biometrics 59:727–732, 2003). Here, we re-examine this scenario with the aim of clarifying the interrelationships that exist between the different solutions, and in this way, (...)
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  36.  7
    Modeling a dynamic environment using a Bayesian multiple hypothesis approach.Ingemar J. Cox & John J. Leonard - 1994 - Artificial Intelligence 66 (2):311-344.
  37.  11
    A Bayesian approach to dynamical modeling of eye-movement control in reading of normal, mirrored, and scrambled texts.Maximilian M. Rabe, Johan Chandra, André Krügel, Stefan A. Seelig, Shravan Vasishth & Ralf Engbert - 2021 - Psychological Review 128 (5):803-823.
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  38.  11
    Bayesian hierarchical grouping: Perceptual grouping as mixture estimation.Vicky Froyen, Jacob Feldman & Manish Singh - 2015 - Psychological Review 122 (4):575-597.
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  39.  20
    A Bayesian hierarchical diffusion model decomposition of performance in Approach–Avoidance Tasks.Angelos-Miltiadis Krypotos, Tom Beckers, Merel Kindt & Eric-Jan Wagenmakers - 2015 - Cognition and Emotion 29 (8):1424-1444.
    Common methods for analysing response time (RT) tasks, frequently used across different disciplines of psychology, suffer from a number of limitations such as the failure to directly measure the underlying latent processes of interest and the inability to take into account the uncertainty associated with each individual's point estimate of performance. Here, we discuss a Bayesian hierarchical diffusion model and apply it to RT data. This model allows researchers to decompose performance into meaningful psychological processes and to account (...)
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  40.  20
    The Generalized Quantum Episodic Memory Model.Jennifer S. Trueblood & Pernille Hemmer - 2017 - Cognitive Science:2089-2125.
    Recent evidence suggests that experienced events are often mapped to too many episodic states, including those that are logically or experimentally incompatible with one another. For example, episodic over-distribution patterns show that the probability of accepting an item under different mutually exclusive conditions violates the disjunction rule. A related example, called subadditivity, occurs when the probability of accepting an item under mutually exclusive and exhaustive instruction conditions sums to a number >1. Both the over-distribution effect and subadditivity have been widely (...)
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  41.  10
    Bayesian Hierarchical Compositional Models for Analysing Longitudinal Abundance Data from Microbiome Studies.I. Creus Martí, A. Moya & F. J. Santonja - 2022 - Complexity 2022:1-16.
    Gut microbiome plays a significant role in defining the health status of subjects, and recent studies highlight the importance of using time series strategies to analyse microbiome dynamics. In this paper, we develop a Bayesian model for microbiota longitudinal data, based on Dirichlet distribution with time-varying parameters, that take into account the compositional paradigm and consider principal balances. The proposed model can be effective for predicting the future dynamics of a microbial community in the short term and for analysing (...)
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  42.  93
    Rational Irrationality: Modeling Climate Change Belief Polarization Using Bayesian Networks.John Cook & Stephan Lewandowsky - 2016 - Topics in Cognitive Science 8 (1):160-179.
    Belief polarization is said to occur when two people respond to the same evidence by updating their beliefs in opposite directions. This response is considered to be “irrational” because it involves contrary updating, a form of belief updating that appears to violate normatively optimal responding, as for example dictated by Bayes' theorem. In light of much evidence that people are capable of normatively optimal behavior, belief polarization presents a puzzling exception. We show that Bayesian networks, or Bayes nets, can (...)
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  43.  23
    Hierarchical beam search for solving most relevant explanation in Bayesian networks.Xiaoyuan Zhu & Changhe Yuan - 2017 - Journal of Applied Logic 22 (C):3-13.
  44. A Bayesian framework for modeling intuitive dynamics.Adam N. Sanborn, Vikash Mansinghka & Thomas L. Griffiths - 2009 - In N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society.
     
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  45.  25
    Modeling Chickenpox Dynamics with a Discrete Time Bayesian Stochastic Compartmental Model.A. Corberán-Vallet, F. J. Santonja, M. Jornet-Sanz & R. -J. Villanueva - 2018 - Complexity 2018:1-9.
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  46.  6
    Hierarchical modeling of graphs using modular decomposition.Miguel Méndez, Carenne Ludeña & Nicolás Bolívar - 2018 - Frontiers in Human Neuroscience 12.
  47. Bayesian Covariance Structure Modeling of Responses and Process Data.Konrad Klotzke & Jean-Paul Fox - 2019 - Frontiers in Psychology 10.
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  48.  6
    A Bayesian Approach to the Analysis of Local Average Treatment Effect for Missing and Non-normal Data in Causal Modeling: A Tutorial With the ALMOND Package in R.Dingjing Shi, Xin Tong & M. Joseph Meyer - 2020 - Frontiers in Psychology 11.
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  49. Bayesian Fundamentalism or Enlightenment? On the explanatory status and theoretical contributions of Bayesian models of cognition.Matt Jones & Bradley C. Love - 2011 - Behavioral and Brain Sciences 34 (4):169-188.
    The prominence of Bayesian modeling of cognition has increased recently largely because of mathematical advances in specifying and deriving predictions from complex probabilistic models. Much of this research aims to demonstrate that cognitive behavior can be explained from rational principles alone, without recourse to psychological or neurological processes and representations. We note commonalities between this rational approach and other movements in psychology – namely, Behaviorism and evolutionary psychology – that set aside mechanistic explanations or make use of optimality (...)
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  50.  16
    Structural Equation Modeling of Vocabulary Size and Depth Using Conventional and Bayesian Methods.Rie Koizumi & Yo In’Nami - 2020 - Frontiers in Psychology 11.
    In classifications of vocabulary knowledge, vocabulary size and depth have often been separately conceptualized (Schmitt, 2014). Although size and depth are known to be substantially correlated, it is not clear whether they are a single construct or two separate components of vocabulary knowledge (Yanagisawa & Webb, 2020). This issue has not been addressed extensively in the literature and can be better examined using structural equation modeling (SEM), with measurement error modeled separately from the construct of interest. The current study (...)
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