Results for 'iterated learning models'

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  1.  9
    Iterated Learning Models of Language Change: A Case Study of Sino‐Korean Accent.Chiyuki Ito & Naomi H. Feldman - 2022 - Cognitive Science 46 (4):e13115.
    Cognitive Science, Volume 46, Issue 4, April 2022.
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  2.  33
    The emergence of linguistic structure: An overview of the iterated learning model.Simon Kirby & James R. Hurford - 2002 - In A. Cangelosi & D. Parisi (eds.), Simulating the Evolution of Language. Springer Verlag. pp. 121--147.
  3.  67
    Language Evolution by Iterated Learning With Bayesian Agents.Thomas L. Griffiths & Michael L. Kalish - 2007 - Cognitive Science 31 (3):441-480.
    Languages are transmitted from person to person and generation to generation via a process of iterated learning: people learn a language from other people who once learned that language themselves. We analyze the consequences of iterated learning for learning algorithms based on the principles of Bayesian inference, assuming that learners compute a posterior distribution over languages by combining a prior (representing their inductive biases) with the evidence provided by linguistic data. We show that when learners (...)
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  4.  13
    Eco-evo-devo and iterated learning: towards an integrated approach in the light of niche construction.José Segovia-Martín & Sergio Balari - 2020 - Biology and Philosophy 35 (4):1-23.
    In this paper we argue that ecological evolutionary developmental biology accounts of cognitive modernity are compatible with cultural evolution theories of language built upon iterated learning models. Cultural evolution models show that the emergence of near universal properties of language do not require the preexistence of strong specific constraints. Instead, the development of general abilities, unrelated to informational specificity, like the copying of complex signals and sharing of communicative intentions is required for cultural evolution to yield (...)
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  5.  9
    The Effect of Iterative Learning Control on the Force Control of a Hydraulic Cushion.Ignacio Trojaola, Iker Elorza, Eloy Irigoyen, Aron Pujana-Arrese & Carlos Calleja - 2022 - Logic Journal of the IGPL 30 (2):214-226.
    An iterative learning control algorithm is presented for the force control circuit of a hydraulic cushion. A control scheme consisting of a PI controller, feed-forward and feedback-linearization is first derived. The uncertainties and nonlinearities of the proportional valve, the main system actuator, prevent the accurate tracking of the pressure reference signal. Therefore, an extra ILC FF signal is added to counteract the valve model uncertainties. The unknown valve dynamics are attenuated by adding a fourth-order low-pass filter to the iterative (...)
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  6. Thomas' theorem meets Bayes' rule: a model of the iterated learning of language.Vanessa Ferdinand & Willem Zuidema - 2009 - In N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society. pp. 1786--1791.
     
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  7.  13
    Design and Implementation of Novel LMI-Based Iterative Learning Robust Nonlinear Controller.Saleem Riaz, Hui Lin, Farkhanda Afzal & Ayesha Maqbool - 2021 - Complexity 2021:1-13.
    An iterative learning robust fault-tolerant control algorithm is proposed for a class of uncertain discrete systems with repeated action with nonlinear and actuator faults. First, by defining an actuator fault coefficient matrix, we convert the iterative learning control system into an equivalent unknown nonlinear repetitive process model. Then, based on the mixed Lyapunov function approach, we describe the stability of the nonlinear repetitive mechanism on time and trial indices and have appropriate conditions for the repeated control system’s stability (...)
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  8.  63
    A New Linear Motor Force Ripple Compensation Method Based on Inverse Model Iterative Learning and Robust Disturbance Observer.Xuewei Fu, Xiaofeng Yang & Zhenyu Chen - 2018 - Complexity 2018:1-19.
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  9.  44
    The Wisdom of Individuals: Exploring People's Knowledge About Everyday Events Using Iterated Learning.Stephan Lewandowsky, Thomas L. Griffiths & Michael L. Kalish - 2009 - Cognitive Science 33 (6):969-998.
    Determining the knowledge that guides human judgments is fundamental to understanding how people reason, make decisions, and form predictions. We use an experimental procedure called ‘‘iterated learning,’’ in which the responses that people give on one trial are used to generate the data they see on the next, to pinpoint the knowledge that informs people's predictions about everyday events (e.g., predicting the total box office gross of a movie from its current take). In particular, we use this method (...)
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  10.  2
    Joint Motion Control for Lower Limb Rehabilitation Based on Iterative Learning Control (ILC) Algorithm.Wei Guan, Lan Zhou & YouShen Cao - 2021 - Complexity 2021:1-9.
    At present, the motion control algorithms of lower limb exoskeleton robots have errors in tracking the desired trajectory of human hip and knee joints, which leads to poor follow-up performance of the human-machine system. Therefore, an iterative learning control algorithm is proposed to track the desired trajectory of human hip and knee joints. In this paper, the experimental platform of lower limb exoskeleton rehabilitation robot is built, and the control system software and hardware design and robot prototype function test (...)
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  11.  30
    Language learning, power laws, and sexual selection.Ted Briscoe - 2008 - Mind and Society 7 (1):65-76.
    I discuss the ubiquity of power law distributions in language organisation (and elsewhere), and argue against Miller’s (The mating mind: How sexual choice shaped the evolution of human nature, William Heinemann, London, 2000) argument that large vocabulary size is a consequence of sexual selection. Instead I argue that power law distributions are evidence that languages are best modelled as dynamical systems but raise some issues for models of iterated language learning.
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  12.  39
    A process model for information retrieval context learning and knowledge discovery.Harvey Hyman, Terry Sincich, Rick Will, Manish Agrawal, Balaji Padmanabhan & Warren Fridy - 2015 - Artificial Intelligence and Law 23 (2):103-132.
    In this paper we take a fresh look at the information retrieval problem of balancing recall with precision in electronic document extraction. We examine the IR constructs of uncertainty, context and relevance, proposing a new process model for context learning, and introducing a new IT artifact designed to support user driven learning by leveraging explicit knowledge to discover implicit knowledge within a corpus of documents. The IT artifact is a prototype designed to present a small set of extracted (...)
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  13.  18
    The Ouroboros Model Embraces Its Sensory-Motoric Foundations And Learns To Talk.Knud Thomsen - 2015 - Studies in Logic, Grammar and Rhetoric 41 (1):105-125.
    The Ouroboros Model proposes a brain inspired cognitive architecture including detailed suggestions for the main processing steps in an overall conceptualization of cognition as embodied and embedded computing. All memories are structured into schemata, which are firmly grounded in the body of an actor. A cyclic and iterative data-acquisition and -processing loop forms the backbone of all cognitive activity. Ever more sophisticated schemata are built up incrementally from the wide combination of neural activity, concurrent at the point in time when (...)
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  14.  22
    Individual Differences in Learning Abilities Impact Structure Addition: Better Learners Create More Structured Languages.Tamar Johnson, Noam Siegelman & Inbal Arnon - 2020 - Cognitive Science 44 (8):e12877.
    Over the last decade, iterated learning studies have provided compelling evidence for the claim that linguistic structure can emerge from non‐structured input, through the process of transmission. However, it is unclear whether individuals differ in their tendency to add structure, an issue with implications for understanding who are the agents of change. Here, we identify and test two contrasting predictions: The first sees learning as a pre‐requisite for structure addition, and predicts a positive correlation between learning (...)
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  15. Computational Modelling for Alcohol Use Disorder.Matteo Colombo - forthcoming - Erkenntnis:1-21.
    In this paper, I examine Reinforcement Learning modelling practice in psychiatry, in the context of alcohol use disorders. I argue that the epistemic roles RL currently plays in the development of psychiatric classification and search for explanations of clinically relevant phenomena are best appreciated in terms of Chang’s account of epistemic iteration, and by distinguishing mechanistic and aetiological modes of computational explanation.
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  16. Bridging learning theory and dynamic epistemic logic.Nina Gierasimczuk - 2009 - Synthese 169 (2):371-384.
    This paper discusses the possibility of modelling inductive inference (Gold 1967) in dynamic epistemic logic (see e.g. van Ditmarsch et al. 2007). The general purpose is to propose a semantic basis for designing a modal logic for learning in the limit. First, we analyze a variety of epistemological notions involved in identification in the limit and match it with traditional epistemic and doxastic logic approaches. Then, we provide a comparison of learning by erasing (Lange et al. 1996) and (...)
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  17.  5
    Can Mindfulness Help to Alleviate Loneliness? A Systematic Review and Meta-Analysis.Siew Li Teoh, Vengadesh Letchumanan & Learn-Han Lee - 2021 - Frontiers in Psychology 12.
    Objective: Mindfulness-based intervention has been proposed to alleviate loneliness and improve social connectedness. Several randomized controlled trials have been conducted to evaluate the effectiveness of MBI. This study aimed to critically evaluate and determine the effectiveness and safety of MBI in alleviating the feeling of loneliness.Methods: We searched Medline, Embase, PsycInfo, Cochrane CENTRAL, and AMED for publications from inception to May 2020. We included RCTs with human subjects who were enrolled in MBI with loneliness as an outcome. The quality of (...)
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  18.  16
    Modelling the heart: insights, failures and progress.Denis Noble - 2002 - Bioessays 24 (12):1155-1163.
    Mathematical models of the heart have developed over a period of about 40 years. Cell types in all regions of the heart have been modelled and they are now being incorporated into anatomically detailed models of the whole organ. This combination is leading to the creation of the first ‘virtual organ,’ which is being used in drug discovery and testing, and in simulating the action of devices, such as cardiac defibrillators. Simulation is a necessary tool of analysis in (...)
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  19.  6
    Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music Signal.Bo Sun - 2021 - Complexity 2021:1-10.
    Music classification is conducive to online music retrieval, but the current music classification model finds it difficult to accurately identify various types of music, which makes the classification effect of the current music classification model poor. In order to improve the accuracy of music classification, a music classification model based on multifeature fusion and machine learning algorithm is proposed. First, we obtain the music signal, and then extract various features from the classification of the music signal, and use machine (...)
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  20.  34
    Data-Driven Model-Free Adaptive Control of Particle Quality in Drug Development Phase of Spray Fluidized-Bed Granulation Process.Zhengsong Wang, Dakuo He, Xu Zhu, Jiahuan Luo, Yu Liang & Xu Wang - 2017 - Complexity:1-17.
    A novel data-driven model-free adaptive control approach is first proposed by combining the advantages of model-free adaptive control and data-driven optimal iterative learning control, and then its stability and convergence analysis is given to prove algorithm stability and asymptotical convergence of tracking error. Besides, the parameters of presented approach are adaptively adjusted with fuzzy logic to determine the occupied proportions of MFAC and DDOILC according to their different control performances in different control stages. Lastly, the proposed fuzzy DDMFAC approach (...)
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  21. Fast machine-learning online optimization of ultra-cold-atom experiments.P. B. Wigley, P. J. Everitt, A. van den Hengel, J. W. Bastian, M. A. Sooriyabandara, G. D. McDonald, K. S. Hardman, C. D. Quinlivan, P. Manju, C. C. N. Kuhn, I. R. Petersen, A. N. Luiten, J. J. Hope, N. P. Robins & M. R. Hush - 2016 - Sci. Rep 6:25890.
    We apply an online optimization process based on machine learning to the production of Bose-Einstein condensates. BEC is typically created with an exponential evaporation ramp that is optimal for ergodic dynamics with two-body s-wave interactions and no other loss rates, but likely sub-optimal for real experiments. Through repeated machine-controlled scientific experimentation and observations our ’learner’ discovers an optimal evaporation ramp for BEC production. In contrast to previous work, our learner uses a Gaussian process to develop a statistical model of (...)
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  22.  57
    Can iterated learning explain the emergence of graphical symbols?Simon Garrod, Nicolas Fay, Shane Rogers, Bradley Walker & Nik Swoboda - 2010 - Interaction Studies 11 (1):33-50.
    This paper contrasts two influential theoretical accounts of language change and evolution – Iterated Learning and Social Coordination. The contrast is based on an experiment that compares drawings produced with Garrod et al’s ‘pictionary’ task with those produced in an Iterated Learning version of the same task. The main finding is that Iterated Learning does not lead to the systematic simplification and increased symbolicity of graphical signs produced in the standard interactive version of the (...)
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  23.  36
    Can iterated learning explain the emergence of graphical symbols?Simon Garrod, Nicolas Fay, Shane Rogers, Bradley Walker & Nik Swoboda - 2010 - Interaction Studies. Social Behaviour and Communication in Biological and Artificial Systemsinteraction Studies / Social Behaviour and Communication in Biological and Artificial Systemsinteraction Studies 11 (1):33-50.
    This paper contrasts two influential theoretical accounts of language change and evolution – Iterated Learning and Social Coordination. The contrast is based on an experiment that compares drawings produced with Garrod et al’s ‘pictionary’ task with those produced in an Iterated Learning version of the same task. The main finding is that Iterated Learning does not lead to the systematic simplification and increased symbolicity of graphical signs produced in the standard interactive version of the (...)
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  24.  33
    Iterated learning and the cultural ratchet.Aaron Beppu & Thomas L. Griffiths - 2009 - In N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society. pp. 2089--2094.
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  25.  18
    Remembering, Reflecting, Reframing: Examining Students’ Long-Term Perceptions of an Innovative Model for University Teaching.Giuseppe Ritella, Rosa Di Maso, Katherine McLay, Susanna Annese & Maria Beatrice Ligorio - 2020 - Frontiers in Psychology 11.
    This article presents a follow-up examination of 10 iterations of a blended course on educational psychology and e-learning carried out at the University of Bari. All iterations of the course considered in this study were designed using the Constructive and Collaborative Participation (CCP) model. Our main research questions are: What are the students’ long lasting memories of this course? How do the students use the skills and the competences acquired through the course across an extended period of time? In (...)
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  26.  62
    Bidirectional Optimization from Reasoning and Learning in Games.Michael Franke & Gerhard Jäger - 2012 - Journal of Logic, Language and Information 21 (1):117-139.
    We reopen the investigation into the formal and conceptual relationship between bidirectional optimality theory (Blutner in J Semant 15(2):115–162, 1998 , J Semant 17(3):189–216, 2000 ) and game theory. Unlike a likeminded previous endeavor by Dekker and van Rooij (J Semant 17:217–242, 2000 ), we consider signaling games not strategic games, and seek to ground bidirectional optimization once in a model of rational step-by-step reasoning and once in a model of reinforcement learning. We give sufficient conditions for equivalence of (...)
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  27.  36
    Iterative learning control for MIMO nonlinear systems with arbitrary relative degree and no states measurement.Farah Bouakrif - 2014 - Complexity 19 (1):37-45.
  28.  12
    Iterative Learning Tracking Control of Nonlinear Multiagent Systems with Input Saturation.Bingyou Liu, Zhengzheng Zhang, Lichao Wang, Xing Li & Xiongfeng Deng - 2021 - Complexity 2021:1-13.
    A tracking control algorithm of nonlinear multiple agents with undirected communication is studied for each multiagent system affected by external interference and input saturation. A control design scheme combining iterative learning and adaptive control is proposed to perform parameter adaptive time-varying adjustment and prove the effectiveness of the control protocol by designing Lyapunov functions. Simulation results show that the high-precision tracking control problem of the nonlinear multiagent system based on adaptive iterative learning control can be well realized even (...)
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  29.  12
    Different Strokes for Different Folks: The BodyMind Approach as a Learning Tool for Patients With Medically Unexplained Symptoms to Self-Manage.Helen Payne & Susan Brooks - 2018 - Frontiers in Psychology 9.
    Medically unexplained symptoms (MUS) are common and costly in both primary and secondary health care. It is gradually being acknowledged that there needs to be a variety of interventions for patients with medically unexplained symptoms to meet the needs of different groups of patients with such chronic long-term symptoms. The proposed intervention described herewith is called The BodyMind Approach (TBMA) and promotes learning for self-management through establishing a dynamic and continuous process of emotional self-regulation. The problem is the mismatch (...)
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  30.  15
    Collectivism and the Emergence of Linguistic Universals.Georg Theiner - 2006 - In Rocha Luis Mateus, Yaeger Larry S., Bedau Mark A., Floreanu Dario, Goldstone Robert L. & Vespignani Alessandro (eds.), Artificial Life X. Proceedings of the Tenth International Conference on the Simulation and Synthesis of Living Systems. MIT Press.
    My goal in this paper is to defend the plausibility of a particular version of collectivism – understood as the evolutionary claim that individual-level cognition is systematically biased in favor of aggregate-level regularities – in the domain of language. Chomsky's (1986) methodological promotion of I-language (speaker-internal knowledge) and the corresponding demotion of E-language (aggregate output of a population of speakers) has led mainstream cognitive science to view language essentially as a property of individual minds/brains whose evolution is best explained as (...)
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  31.  75
    Teasing out Artificial Intelligence in Medicine: An Ethical Critique of Artificial Intelligence and Machine Learning in Medicine.Mark Henderson Arnold - 2021 - Journal of Bioethical Inquiry 18 (1):121-139.
    The rapid adoption and implementation of artificial intelligence in medicine creates an ontologically distinct situation from prior care models. There are both potential advantages and disadvantages with such technology in advancing the interests of patients, with resultant ontological and epistemic concerns for physicians and patients relating to the instatiation of AI as a dependent, semi- or fully-autonomous agent in the encounter. The concept of libertarian paternalism potentially exercised by AI (and those who control it) has created challenges to conventional (...)
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  32. Iterated learning in populations of Bayesian agents.Kenny Smith - 2009 - In N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society. pp. 697--702.
     
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  33.  10
    An Enhanced Machine Learning Framework for Type 2 Diabetes Classification Using Imbalanced Data with Missing Values.Kumarmangal Roy, Muneer Ahmad, Kinza Waqar, Kirthanaah Priyaah, Jamel Nebhen, Sultan S. Alshamrani, Muhammad Ahsan Raza & Ihsan Ali - 2021 - Complexity 2021:1-21.
    Diabetes is one of the most common metabolic diseases that cause high blood sugar. Early diagnosis of such a condition is challenging due to its complex interdependence on various factors. There is a need to develop critical decision support systems to assist medical practitioners in the diagnosis process. This research proposes developing a predictive model that can achieve a high classification accuracy of type 2 diabetes. The study consisted of two fundamental parts. Firstly, the study investigated handling missing data adopting (...)
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  34.  18
    Iterative Learning and Fractional Order Control for Complex Systems.Farah Bouakrif, Ahmad Taher Azar, Christos K. Volos, Jesus M. Muñoz-Pacheco & Viet-Thanh Pham - 2013 - Complexity 2019 (1):1-3.
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  35.  4
    Iterative Learning Consensus Control for Nonlinear Partial Difference Multiagent Systems with Time Delay.Cun Wang, Xisheng Dai, Kene Li & Zupeng Zhou - 2021 - Complexity 2021:1-15.
    This paper considers the consensus control problem of nonlinear spatial-temporal hyperbolic partial difference multiagent systems and parabolic partial difference multiagent systems with time delay. Based on the system’s own fixed topology and the method of generating the desired trajectory by introducing virtual leader, using the consensus tracking error between the agent and the virtual leader agent and neighbor agents in the last iteration, an iterative learning algorithm is proposed. The sufficient condition for the system consensus error to converge along (...)
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  36.  17
    Iterative Learning Control for Linear Discrete-Time Systems with Randomly Variable Input Trail Length.Yun-Shan Wei & Qing-Yuan Xu - 2018 - Complexity 2018:1-6.
    For linear discrete-time systems with randomly variable input trail length, a proportional- type iterative learning control law is proposed. To tackle the randomly variable input trail length, a modified control input at the desirable trail length is introduced in the proposed ILC law. Under the assumption that the initial state fluctuates around the desired initial state with zero mean, the designed ILC scheme can drive the ILC tracking errors to zero at the desirable trail length in expectation sense. The (...)
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  37.  5
    Robust Iterative Learning Control for 2-D Singular Fornasini–Marchesini Systems with Iteration-Varying Boundary States.Deming Xu & Kai Wan - 2021 - Complexity 2021:1-16.
    This study first investigates robust iterative learning control issue for a class of two-dimensional linear discrete singular Fornasini–Marchesini systems under iteration-varying boundary states. Initially, using the singular value decomposition theory, an equivalent dynamical decomposition form of 2-D LDSFM is derived. A simple P-type ILC law is proposed such that the ILC tracking error can be driven into a residual range, the bound of which is relevant to the bound parameters of boundary states. Specially, while the boundary states of 2-D (...)
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  38.  17
    Monotone Quantifiers Emerge via Iterated Learning.Fausto Carcassi, Shane Steinert-Threlkeld & Jakub Szymanik - 2021 - Cognitive Science 45 (8):e13027.
    Natural languages exhibit manysemantic universals, that is, properties of meaning shared across all languages. In this paper, we develop an explanation of one very prominent semantic universal, the monotonicity universal. While the existing work has shown that quantifiers satisfying the monotonicity universal are easier to learn, we provide a more complete explanation by considering the emergence of quantifiers from the perspective of cultural evolution. In particular, we show that quantifiers satisfy the monotonicity universal evolve reliably in an iterated (...) paradigm with neural networks as agents. (shrink)
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  39.  10
    Computational Qualitative Economics – Using Computational Intelligence for Andvanced Learning of Economics in Knowledge Society.Ladislav Andrasik - 2015 - Creative and Knowledge Society 5 (2):1-15.
    In economics there are several complex learning themes and tasks connected with them difficult for deeper understanding of the learning subject. These are the reasons originating serious learning problems for students in the form of Virtual Environment because deeper understanding requires high level mathematical skills. Actually the most important feature for discerning this part of economics is the set of qualitative shapes emerging in discrete dynamic systems when they are undergoing iterations and/or experimentation with parameters and initial (...)
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  40.  6
    Using the Ship-Gram Model for Japanese Keyword Extraction Based on News Reports.Miao Teng - 2021 - Complexity 2021:1-9.
    In this paper, we conduct an in-depth study of Japanese keyword extraction from news reports, train external computer document word sets from text preprocessing into word vectors using the Ship-gram model in the deep learning tool Word2Vec, and calculate the cosine distance between word vectors. In this paper, the sliding window in TextRank is designed to connect internal document information to improve the in-text semantic coherence. The main idea is to use not only the statistical and structural features of (...)
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  41.  10
    Iterated learning reveals stereotypes of facial trustworthiness that propagate in the absence of evidence.Stefan Uddenberg, Bill D. Thompson, Madalina Vlasceanu, Thomas L. Griffiths & Alexander Todorov - 2023 - Cognition 237 (C):105452.
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  42.  10
    Selecting the Best Routing Traffic for Packets in LAN via Machine Learning to Achieve the Best Strategy.Bo Zhang & Rongji Liao - 2021 - Complexity 2021:1-10.
    The application of machine learning touches all activities of human behavior such as computer network and routing packets in LAN. In the field of our research here, emphasis was placed on extracting weights that would affect the speed of the network's response and finding the best path, such as the number of nodes in the path and the congestion on each path, in addition to the cache used for each node. Therefore, the use of these elements in building the (...)
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  43. Understanding from Machine Learning Models.Emily Sullivan - 2022 - British Journal for the Philosophy of Science 73 (1):109-133.
    Simple idealized models seem to provide more understanding than opaque, complex, and hyper-realistic models. However, an increasing number of scientists are going in the opposite direction by utilizing opaque machine learning models to make predictions and draw inferences, suggesting that scientists are opting for models that have less potential for understanding. Are scientists trading understanding for some other epistemic or pragmatic good when they choose a machine learning model? Or are the assumptions behind why (...)
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  44.  12
    An Iterative Learning Scheme-Based Fault Estimator Design for Nonlinear Systems with Randomly Occurring Parameter Uncertainties.He Jun, Wei Shanbi & Chai Yi - 2018 - Complexity 2018:1-12.
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  45. Bayesian Learning Models of Pain: A Call to Action.Abby Tabor & Christopher Burr - 2019 - Current Opinion in Behavioral Sciences 26:54-61.
    Learning is fundamentally about action, enabling the successful navigation of a changing and uncertain environment. The experience of pain is central to this process, indicating the need for a change in action so as to mitigate potential threat to bodily integrity. This review considers the application of Bayesian models of learning in pain that inherently accommodate uncertainty and action, which, we shall propose are essential in understanding learning in both acute and persistent cases of pain.
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  46.  28
    Eliminating unpredictable variation through iterated learning.Kenny Smith & Elizabeth Wonnacott - 2010 - Cognition 116 (3):444-449.
  47.  3
    Analysis of psychological characteristics and emotional expression based on deep learning in higher vocational music education.Xin Liu - 2022 - Frontiers in Psychology 13.
    Sentiment analysis is one of the important tasks of online opinion analysis and an important means to guide the direction of online opinion and maintain social stability. Due to the multiple characteristics of linguistic expressions, ambiguity, multiple meanings of words, and the increasing speed of new words, it is a great challenge for the task of text sentiment analysis. Commonly used machine learning methods suffer from inadequate text feature extraction, and the emergence of deep learning has brought a (...)
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  48.  26
    Natural Language Grammar Induction using a Constituent-Context Model.Dan Klein & Christopher D. Manning - unknown
    This paper presents a novel approach to the unsupervised learning of syntactic analyses of natural language text. Most previous work has focused on maximizing likelihood according to generative PCFG models. In contrast, we employ a simpler probabilistic model over trees based directly on constituent identity and linear context, and use an EM-like iterative procedure to induce structure. This method produces much higher quality analyses, giving the best published results on the ATIS dataset.
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  49. Implicit learning models.Axel Cleeremans - 2003 - In L. Nadel (ed.), Encyclopedia of Cognitive Science. Nature Publishing Group.
  50. Comparison of Decision Learning Models Using the Generalization Criterion Method.Woo-Young Ahn, Jerome R. Busemeyer, Eric-Jan Wagenmakers & Julie C. Stout - 2008 - Cognitive Science 32 (8):1376-1402.
    It is a hallmark of a good model to make accurate a priori predictions to new conditions (Busemeyer & Wang, 2000). This study compared 8 decision learning models with respect to their generalizability. Participants performed 2 tasks (the Iowa Gambling Task and the Soochow Gambling Task), and each model made a priori predictions by estimating the parameters for each participant from 1 task and using those same parameters to predict on the other task. Three methods were used to (...)
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