Results for 'Learning systems'

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  1.  56
    Complementary Learning Systems.Randall C. O’Reilly, Rajan Bhattacharyya, Michael D. Howard & Nicholas Ketz - 2014 - Cognitive Science 38 (6):1229-1248.
    This paper reviews the fate of the central ideas behind the complementary learning systems (CLS) framework as originally articulated in McClelland, McNaughton, and O’Reilly (1995). This framework explains why the brain requires two differentially specialized learning and memory systems, and it nicely specifies their central properties (i.e., the hippocampus as a sparse, pattern-separated system for rapidly learning episodic memories, and the neocortex as a distributed, overlapping system for gradually integrating across episodes to extract latent semantic (...)
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  2. Effectiveness of the Alternative Learning System Informal Education Project and the Transfer of Life Skills among ALS Teachers: A Case Study.Manuel Caingcoy, Juliet Pacursa & Ma Isidora Adajar - 2021 - International Journal of Community Service and Engagement 2 (3):88-98.
    Alternative Learning System (ALS) has been adopted in Philippine basic education, yet there is no academic institution in the region prepares ALS teachers in teaching life skills. ALS teachers graduated from different programs of teacher education for formal education. In response, an extension project was conceptualized and implemented to enhance the teaching capacity and effectiveness of ALS teachers. Case study was conducted to evaluate the effectiveness of the project. It explored the transfer of life skills among ALS teachers. Data (...)
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  3. Characteristics of dissociable human learning systems.David R. Shanks & Mark F. St John - 1994 - Behavioral and Brain Sciences 17 (3):367-447.
    A number of ways of taxonomizing human learning have been proposed. We examine the evidence for one such proposal, namely, that there exist independent explicit and implicit learning systems. This combines two further distinctions, (1) between learning that takes place with versus without concurrent awareness, and (2) between learning that involves the encoding of instances (or fragments) versus the induction of abstract rules or hypotheses. Implicit learning is assumed to involve unconscious rule learning. (...)
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  4.  91
    Characteristics of dissociable human learning systems.David R. Shanks & Mark F. St John - 1994 - Behavioral and Brain Sciences 17 (3):367-395.
    A number of ways of taxonomizing human learning have been proposed. We examine the evidence for one such proposal, namely, that there exist independent explicit and implicit learning systems. This combines two further distinctions, between learning that takes place with versus without concurrent awareness, and between learning that involves the encoding of instances versus the induction of abstract rules or hypotheses. Implicit learning is assumed to involve unconscious rule learning. We examine the evidence (...)
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  5. Toward a dual-learning systems model of speech category learning.Bharath Chandrasekaran, Seth R. Koslov & W. T. Maddox - 2014 - Frontiers in Psychology 5:88645.
    More than two decades of work in vision posits the existence of dual-learning systems of category learning. The reflective system uses working memory to develop and test rules for classifying in an explicit fashion, while the reflexive system operates by implicitly associating perception with actions that lead to reinforcement. Dual-learning systems models hypothesize that in learning natural categories, learners initially use the reflective system and, with practice, transfer control to the reflexive system. The role (...)
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  6.  30
    Why there are complementary learning systems in the hippocampus and neocortex: Insights from the successes and failures of connectionist models of learning and memory.James L. McClelland, Bruce L. McNaughton & Randall C. O'Reilly - 1995 - Psychological Review 102 (3):419-457.
  7.  29
    Electronic Textbook, and E-Learning System in Teaching Process.Larissa Zaitseva & Jekaterina Bule - 2008 - Communication and Cognition: An Interdisciplinary Quarterly Journal 41 (1):159.
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  8.  35
    Diversity in sociotechnical machine learning systems.Maria De-Arteaga & Sina Fazelpour - 2022 - Big Data and Society 9 (1).
    There has been a surge of recent interest in sociocultural diversity in machine learning research. Currently, however, there is a gap between discussions of measures and benefits of diversity in machine learning, on the one hand, and the broader research on the underlying concepts of diversity and the precise mechanisms of its functional benefits, on the other. This gap is problematic because diversity is not a monolithic concept. Rather, different concepts of diversity are based on distinct rationales that (...)
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  9.  21
    Toward an Intelligent e-Learning System Using Document Classification Techniques.Yousef Abuzir - 2015 - Journal of Intelligent Systems 24 (4):533-547.
    The purpose of this study is to propose and develop an intelligent e-learning system based on advanced document management techniques at Al-Quds Open University. In this article, we focus on a case using e-mail contents as supplement educational materials at QOU. We describe how the interactive classification system based on concept hierarchy can simplify this task. This system provides the functions to index, classify, and retrieve a collection of e-mail messages based on user profiles. By automatically indexing e-mail messages (...)
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  10.  19
    Intelligent Ensemble Deep Learning System for Blood Glucose Prediction Using Genetic Algorithms.Dae-Yeon Kim, Dong-Sik Choi, Ah Reum Kang, Jiyoung Woo, Yechan Han, Sung Wan Chun & Jaeyun Kim - 2022 - Complexity 2022:1-10.
    Forecasting blood glucose values for patients can help prevent hypoglycemia and hyperglycemia events in advance. To this end, this study proposes an intelligent ensemble deep learning system to predict BG values in 15, 30, and 60 min prediction horizons based on historical BG values collected via continuous glucose monitoring devices as an endogenous factor and carbohydrate intake and insulin administration information as exogenous factors. Although there are numerous deep learning algorithms available, this study applied five algorithms, namely, recurrent (...)
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  11.  3
    A hybrid machine learning system to impute and classify a component-based robot.Nuño Basurto, Ángel Arroyo, Carlos Cambra & Álvaro Herrero - 2023 - Logic Journal of the IGPL 31 (2):338-351.
    In the field of cybernetic systems and more specifically in robotics, one of the fundamental objectives is the detection of anomalies in order to minimize loss of time. Following this idea, this paper proposes the implementation of a Hybrid Intelligent System in four steps to impute the missing values, by combining clustering and regression techniques, followed by balancing and classification tasks. This system applies regression models to each one of the clusters built on the instances of data set. Subsequently, (...)
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  12. An Unconventional Look at AI: Why Today’s Machine Learning Systems are not Intelligent.Nancy Salay - 2020 - In LINKs: The Art of Linking, an Annual Transdisciplinary Review, Special Edition 1, Unconventional Computing. pp. 62-67.
    Machine learning systems (MLS) that model low-level processes are the cornerstones of current AI systems. These ‘indirect’ learners are good at classifying kinds that are distinguished solely by their manifest physical properties. But the more a kind is a function of spatio-temporally extended properties — words, situation-types, social norms — the less likely an MLS will be able to track it. Systems that can interact with objects at the individual level, on the other hand, and that (...)
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  13.  86
    An Analytic Tableaux Model for Deductive Mastermind Empirically Tested with a Massively Used Online Learning System.Nina Gierasimczuk, Han L. J. van der Maas & Maartje E. J. Raijmakers - 2013 - Journal of Logic, Language and Information 22 (3):297-314.
    The paper is concerned with the psychological relevance of a logical model for deductive reasoning. We propose a new way to analyze logical reasoning in a deductive version of the Mastermind game implemented within a popular Dutch online educational learning system (Math Garden). Our main goal is to derive predictions about the difficulty of Deductive Mastermind tasks. By means of a logical analysis we derive the number of steps needed for solving these tasks (a proxy for working memory load). (...)
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  14.  55
    Should the use of adaptive machine learning systems in medicine be classified as research?Robert Sparrow, Joshua Hatherley, Justin Oakley & Chris Bain - forthcoming - American Journal of Bioethics.
    A novel advantage of the use of machine learning (ML) systems in medicine is their potential to continue learning from new data after implementation in clinical practice. To date, considerations of the ethical questions raised by the design and use of adaptive machine learning systems in medicine have, for the most part, been confined to discussion of the so-called “update problem,” which concerns how regulators should approach systems whose performance and parameters continue to change (...)
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  15. Modular and hierarchical learning systems.Michael I. Jordan & Robert A. Jacobs - 1995 - In Michael A. Arbib (ed.), Handbook of Brain Theory and Neural Networks. MIT Press. pp. 579--582.
     
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  16.  26
    Examining Ethical Decision Making Behavior in E-Learning Systems.Richelle L. Oakley & Rahul Singh - 2016 - International Journal of Cyber Ethics in Education 4 (2):41-56.
    E-Learning has proliferated throughout the education sector in recent years. Unfortunately, an unintended and undesirable aspect of e-Learning is centered on unethical behavior exhibited by students engaged in technology-facilitated cheating. Interestingly, cheating in e-Learning systems occurs in the social context of the class. Using results from a qualitative field study, the authors investigate the socio-technical dimensions of ethical decision-making in e-Learning systems focusing on individual and situational factors. They developed propositions and provide an in-depth (...)
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  17. Developing e-learning system.Ileana Adina Uta - 2007 - Communication and Cognition. Monographies 40 (1-2):45-55.
     
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  18.  8
    Learning Performance in Adaptive Learning Systems: A Case Study of Web Programming Learning Recommendations.Hsiao-Chi Ling & Hsiu-Sen Chiang - 2022 - Frontiers in Psychology 13.
    Students often face challenges while learning computer programming because programming languages’ logic and visual presentations differ from human thought processes. If the course content does not closely match learners’ skill level, the learner cannot follow the learning process, resulting in frustration, low learning motivation, or abandonment. This research proposes a web programming learning recommendation system to provide students with personalized guidance and step-by-step learning planning. The system contains front-end and back-end web development instructions. It can (...)
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  19. Diachronic and synchronic variation in the performance of adaptive machine learning systems: the ethical challenges.Joshua Hatherley & Robert Sparrow - 2023 - Journal of the American Medical Informatics Association 30 (2):361-366.
    Objectives: Machine learning (ML) has the potential to facilitate “continual learning” in medicine, in which an ML system continues to evolve in response to exposure to new data over time, even after being deployed in a clinical setting. In this article, we provide a tutorial on the range of ethical issues raised by the use of such “adaptive” ML systems in medicine that have, thus far, been neglected in the literature. -/- Target audience: The target audiences for (...)
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  20.  7
    A Rasch Model and Rating System for Continuous Responses Collected in Large-Scale Learning Systems.Benjamin Deonovic, Maria Bolsinova, Timo Bechger & Gunter Maris - 2020 - Frontiers in Psychology 11:500039.
    An extension to a rating system for tracking the evolution of parameters over time using continuous variables is introduced. The proposed rating system assumes a distribution for the continuous responses, which is agnostic to the origin of the continuous scores and thus can be used for applications as varied as continuous scores obtained from language testing to scores derived from accuracy and response time from elementary arithmetic learning systems. Large-scale, high-stakes, online, anywhere anytime learning and testing inherently (...)
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  21.  80
    Dirty data labeled dirt cheap: epistemic injustice in machine learning systems.Gordon Hull - 2023 - Ethics and Information Technology 25 (3):1-14.
    Artificial intelligence (AI) and machine learning (ML) systems increasingly purport to deliver knowledge about people and the world. Unfortunately, they also seem to frequently present results that repeat or magnify biased treatment of racial and other vulnerable minorities. This paper proposes that at least some of the problems with AI’s treatment of minorities can be captured by the concept of epistemic injustice. To substantiate this claim, I argue that (1) pretrial detention and physiognomic AI systems commit testimonial (...)
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  22. Modeling self adaptive e-learning systems.Boyan Bontchev & Dessislava Vassileva - 2007 - Communication and Cognition. Monographies 40 (3-4):255-262.
     
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  23. Epistemic virtues of harnessing rigorous machine learning systems in ethically sensitive domains.Thomas F. Burns - 2023 - Journal of Medical Ethics 49 (8):547-548.
    Some physicians, in their care of patients at risk of misusing opioids, use machine learning (ML)-based prediction drug monitoring programmes (PDMPs) to guide their decision making in the prescription of opioids. This can cause a conflict: a PDMP Score can indicate a patient is at a high risk of opioid abuse while a patient expressly reports oppositely. The prescriber is then left to balance the credibility and trust of the patient with the PDMP Score. Pozzi1 argues that a prescriber (...)
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  24.  16
    Dissociation of category-learning systems via brain potentials.Robert G. Morrison, Paul J. Reber, Krishna L. Bharani & Ken A. Paller - 2015 - Frontiers in Human Neuroscience 9.
  25.  4
    Selfcontrolled Interactive Learning Systems: an Application of Communications Theory.I. Lazar & D. R. Steg - 1987 - Bulletin of Science, Technology and Society 7 (1-2):300-305.
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  26.  67
    The concept of a universal learning system as a basis for creating a general mathematical theory of learning.Yury P. Shimansky - 2004 - Minds and Machines 14 (4):453-484.
    The number of studies related to natural and artificial mechanisms of learning rapidly increases. However, there is no general theory of learning that could provide a unifying basis for exploring different directions in this growing field. For a long time the development of such a theory has been hindered by nativists' belief that the development of a biological organism during ontogeny should be viewed as parameterization of an innate, encoded in the genome structure by an innate algorithm, and (...)
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  27. Machine Learning and Irresponsible Inference: Morally Assessing the Training Data for Image Recognition Systems.Owen C. King - 2019 - In Matteo Vincenzo D'Alfonso & Don Berkich (eds.), On the Cognitive, Ethical, and Scientific Dimensions of Artificial Intelligence. Springer Verlag. pp. 265-282.
    Just as humans can draw conclusions responsibly or irresponsibly, so too can computers. Machine learning systems that have been trained on data sets that include irresponsible judgments are likely to yield irresponsible predictions as outputs. In this paper I focus on a particular kind of inference a computer system might make: identification of the intentions with which a person acted on the basis of photographic evidence. Such inferences are liable to be morally objectionable, because of a way in (...)
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  28.  18
    Politics of data reuse in machine learning systems: Theorizing reuse entanglements.Louise Amoore, Mikkel Flyverbom, Kristian Bondo Hansen & Nanna Bonde Thylstrup - 2022 - Big Data and Society 9 (2).
    Policy discussions and corporate strategies on machine learning are increasingly championing data reuse as a key element in digital transformations. These aspirations are often coupled with a focus on responsibility, ethics and transparency, as well as emergent forms of regulation that seek to set demands for corporate conduct and the protection of civic rights. And the Protective measures include methods of traceability and assessments of ‘good’ and ‘bad’ datasets and algorithms that are considered to be traceable, stable and contained. (...)
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  29. Hippocampal and neocortical contributions to memory: Advances in the complementary learning systems framework.Randall C. O'Reilly & Kenneth A. Norman - 2002 - Trends in Cognitive Sciences 6 (12):505-510.
  30.  2
    Establish a Digital Real-Time Learning System With Push Notifications.Hsin-Te Wu - 2022 - Frontiers in Psychology 13.
    This study proposes a push notification system that combines digital real-time learning, roll-call, and feedback collection functions. With the gradually flourishing online real-time learning systems, this research further builds roll-call and feedback functions for students to enhance concentration and provide opinions. Additionally, the lecturers can do a roll call irregularly and randomly through the push notification function, avoiding students logging in but away from the keyboard. Lecturers can also send questions to a specific student or invite all (...)
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  31.  29
    Modeling hippocampal and neocortical contributions to recognition memory: A complementary-learning-systems approach.Kenneth A. Norman & Randall C. O'Reilly - 2003 - Psychological Review 110 (4):611-646.
  32.  32
    The Proust effect and the evolution of a dual learning system.Helena Matute & Miguel A. Vadillo - 2009 - Behavioral and Brain Sciences 32 (2):215-216.
    Proust's madeleine illustrates the automatic nature of associative learning. Although we agree with Mitchell et al. that no compelling scientific proof for this effect has yet been reported in humans, evolutionary constraints suggest that it should not be discarded: There is no reason by which natural selection should favor individuals who lose a fast and automatic survival tool.
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  33.  3
    [deleted]Machine Learning and Irresponsible Inference: Morally Assessing the Training Data for Image Recognition Systems.Owen C. King - 2019 - In Matteo Vincenzo D'Alfonso & Don Berkich (eds.), On the Cognitive, Ethical, and Scientific Dimensions of Artificial Intelligence. Springer Verlag. pp. 265-282.
    Just as humans can draw conclusions responsibly or irresponsibly, so too can computers. Machine learning systems that have been trained on data sets that include irresponsible judgments are likely to yield irresponsible predictions as outputs. In this paper I focus on a particular kind of inference a computer system might make: identification of the intentions with which a person acted on the basis of photographic evidence. Such inferences are liable to be morally objectionable, because of a way in (...)
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  34. A Comparison Analysis of Mobile Learning Systems.Evgeniya Georgieva - 2007 - Communication and Cognition: An Interdisciplinary Quarterly Journal 40 (3):193.
     
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  35.  11
    A Model of the Visual Attack Learning System in Octopus Vulgaris.C. Myers - 1992 - Journal of Intelligent Systems 2 (1-4):225-260.
  36.  14
    Faulty rationale for the two factors that dissociate learning systems.Hiroshi Nagata - 1994 - Behavioral and Brain Sciences 17 (3):412-413.
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  37. Why do we have a special learning system in the hippocampus?,(Abstract 580).J. L. McClelland, B. L. McNaughton & R. C. O’Reilly - 1993 - Bulletin of the Psychonomic Society 31:404.
  38.  24
    Semiotic Trees and Classifications for Inductive Learning Systems.Ana Marostica - 1998 - Semiotics:114-127.
  39.  29
    Optimal sequencing during category learning: Testing a dual-learning systems perspective.Sharon M. Noh, Veronica X. Yan, Robert A. Bjork & W. Todd Maddox - 2016 - Cognition 155 (C):23-29.
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  40.  46
    Languages of thought need to be distinguished from learning mechanisms, and nothing yet rules out multiple distinctively human learning systems.Michael Tetzlaff & Peter Carruthers - 2008 - Behavioral and Brain Sciences 31 (2):148-149.
    We distinguish the question whether only human minds are equipped with a language of thought (LoT) from the question whether human minds employ a single uniquely human learning mechanism. Thus separated, our answer to both questions is negative. Even very simple minds employ a LoT. And the comparative data reviewed by Penn et al. actually suggest that there are many distinctively human learning mechanisms.
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  41.  13
    Modeling effects of intrinsic and extrinsic rewards on the competition between striatal learning systems.Joschka Boedecker, Thomas Lampe & Martin Riedmiller - 2013 - Frontiers in Psychology 4.
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  42.  35
    Learning health systems, clinical equipoise and the ethics of response adaptive randomisation.Alex John London - 2018 - Journal of Medical Ethics 44 (6):409-415.
    To give substance to the rhetoric of ‘learning health systems’, a variety of novel trial designs are being explored to more seamlessly integrate research with medical practice, reduce study duration and reduce the number of participants allocated to ineffective interventions. Many of these designs rely on response adaptive randomisation. However, critics charge that RAR is unethical on the grounds that it violates the principle of equipoise. In this paper, I reconstruct critiques of RAR as holding that it is (...)
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  43. Learning Computer Networks Using Intelligent Tutoring System.Mones M. Al-Hanjori, Mohammed Z. Shaath & Samy S. Abu Naser - 2017 - International Journal of Advanced Research and Development 2 (1).
    Intelligent Tutoring Systems (ITS) has a wide influence on the exchange rate, education, health, training, and educational programs. In this paper we describe an intelligent tutoring system that helps student study computer networks. The current ITS provides intelligent presentation of educational content appropriate for students, such as the degree of knowledge, the desired level of detail, assessment, student level, and familiarity with the subject. Our Intelligent tutoring system was developed using ITSB authoring tool for building ITS. A preliminary evaluation (...)
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  44.  4
    A new basis for state-space learning systems and a successful implementation.Larry Rendell - 1983 - Artificial Intelligence 20 (4):369-392.
  45. Distributed learning: Educating and assessing extended cognitive systems.Richard Heersmink & Simon Knight - 2018 - Philosophical Psychology 31 (6):969-990.
    Extended and distributed cognition theories argue that human cognitive systems sometimes include non-biological objects. On these views, the physical supervenience base of cognitive systems is thus not the biological brain or even the embodied organism, but an organism-plus-artifacts. In this paper, we provide a novel account of the implications of these views for learning, education, and assessment. We start by conceptualising how we learn to assemble extended cognitive systems by internalising cultural norms and practices. Having a (...)
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  46.  18
    Learning to read as the formation of a dynamic system: evidence for dynamic stability in phonological recoding.Claire M. Fletcher-Flinn - 2014 - Frontiers in Psychology 5:82583.
    Two aspects of dynamic systems approaches that are pertinent to developmental models of reading are the emergence of a system with self-organizing characteristics, and its evolution over time to a stable state that is not easily modified or perturbed. The effects of dynamic stability may be seen in the differences obtained in the processing of print by beginner readers taught by different approaches to reading (phonics and text-centered), and more long-term effects on adults, consistent with these differences. However, there (...)
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  47.  42
    Challenges in the Design of Legal Ethics Learning Systems: An Educational Perspective.Michael Robertson - 2005 - Legal Ethics 8 (2):222-239.
    “[T]he current state of professional ethics instruction leaves much to be desired. In most law schools, it is relegated to a single required course that ranks low on the academic pecking order. Many of these courses, which focus primarily (and uncritically) on bar disciplinary rules, constitute the functional equivalent of ‘legal ethics without the ethics', and leave future practitioners without the foundations for reflective judgment. Although ethical issues arise in every subject, that would not be apparent from the core curriculum (...)
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  48. ch. Ten Couples, doubles, and absence: some thoughts on the psychoanalytical process considered as a learning system.James S. Rose - 2011 - In James Rose (ed.), Mapping psychic reality: triangulation, communication and insight. London: Karnac.
     
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  49.  9
    Paired-Associate and Feedback-Based Weather Prediction Tasks Support Multiple Category Learning Systems.Kaiyun Li, Qiufang Fu, Xunwei Sun, Xiaoyan Zhou & Xiaolan Fu - 2016 - Frontiers in Psychology 7.
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  50.  56
    Beyond Separate Emergence: A Systems View of Team Learning Climate.Jean-François Harvey, Pierre-Marc Leblanc & Matthew A. Cronin - 2019 - Frontiers in Psychology 10.
    In this paper, we consider how the four key team emergent states for team learning identified by Bell, Kozlowski and Blawath (2012), namely psychological safety, goal orientation, cohesion, and efficacy, operate as a system that produces the team’s learning climate (TLC). Using the language of systems dynamics, we conceptualize TLC as a stock that rises and falls as a joint function of the psychological safety, goal orientation, cohesion, and efficacy that exists in the team. The systems (...)
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