Results for 'supervised learning'

954 found
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  1.  91
    Human Semi-Supervised Learning.Bryan R. Gibson, Timothy T. Rogers & Xiaojin Zhu - 2013 - Topics in Cognitive Science 5 (1):132-172.
    Most empirical work in human categorization has studied learning in either fully supervised or fully unsupervised scenarios. Most real-world learning scenarios, however, are semi-supervised: Learners receive a great deal of unlabeled information from the world, coupled with occasional experiences in which items are directly labeled by a knowledgeable source. A large body of work in machine learning has investigated how learning can exploit both labeled and unlabeled data provided to a learner. Using equivalences between (...)
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  2. Supervised learning in recurrent networks.Kenji Doya - 1995 - In Michael A. Arbib (ed.), Handbook of Brain Theory and Neural Networks. MIT Press.
  3. Semi-supervised learning is observed in a speeded but not an unspeeded 2D categorization task.Timothy T. Rogers, Charles Kalish, Bryan R. Gibson, Joseph Harrison & Xiaojin Zhu - 2010 - In S. Ohlsson & R. Catrambone (eds.), Proceedings of the 32nd Annual Conference of the Cognitive Science Society. Cognitive Science Society.
  4.  79
    Online Supervised Learning with Distributed Features over Multiagent System.Xibin An, Bing He, Chen Hu & Bingqi Liu - 2020 - Complexity 2020:1-10.
    Most current online distributed machine learning algorithms have been studied in a data-parallel architecture among agents in networks. We study online distributed machine learning from a different perspective, where the features about the same samples are observed by multiple agents that wish to collaborate but do not exchange the raw data with each other. We propose a distributed feature online gradient descent algorithm and prove that local solution converges to the global minimizer with a sublinear rate O 2 (...)
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  5.  27
    Supervised Learning Approaches for Rating Customer Reviews.Kiran Sarvabhotla, Prasad Pingali & Vasudeva Varma - 2010 - Journal of Intelligent Systems 19 (1):79-94.
  6.  60
    A Semi-supervised Learning-Based Diagnostic Classification Method Using Artificial Neural Networks.Kang Xue & Laine P. Bradshaw - 2021 - Frontiers in Psychology 11.
    The purpose of cognitive diagnostic modeling is to classify students' latent attribute profiles using their responses to the diagnostic assessment. In recent years, each diagnostic classification model makes different assumptions about the relationship between a student's response pattern and attribute profile. The previous research studies showed that the inappropriate DCMs and inaccurate Q-matrix impact diagnostic classification accuracy. Artificial Neural Networks have been proposed as a promising approach to convert a pattern of item responses into a diagnostic classification in some research (...)
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  7.  43
    (1 other version)Cross-situational and supervised learning in the emergence of communication.Jose Fernando Fontanari & Angelo Cangelosi - 2011 - Interaction Studies 12 (1):119-133.
    Scenarios for the emergence or bootstrap of a lexicon involve the repeated interaction between at least two agents who must reach a consensus on how to name N objects using H words. Here we consider minimal models of two types of learning algorithms: cross-situational learning, in which the individuals determine the meaning of a word by looking for something in common across all observed uses of that word, and supervised operant conditioning learning, in which there is (...)
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  8.  70
    Can semi-supervised learning explain incorrect beliefs about categories?Charles W. Kalish, Timothy T. Rogers, Jonathan Lang & Xiaojin Zhu - 2011 - Cognition 120 (1):106-118.
    Three experiments with 88 college-aged participants explored how unlabeled experiences—learning episodes in which people encounter objects without information about their category membership—influence beliefs about category structure. Participants performed a simple one-dimensional categorization task in a brief supervised learning phase, then made a large number of unsupervised categorization decisions about new items. In all three experiments, the unsupervised experience altered participants’ implicit and explicit mental category boundaries, their explicit beliefs about the most representative members of each category, and (...)
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  9.  10
    Semi-Supervised Learning of Cartesian Factors: A Top-Down Model of the Entorhinal Hippocampal Complex.András Lőrincz & András Sárkány - 2017 - Frontiers in Psychology 8.
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  10.  50
    Forward Models: Supervised Learning with a Distal Teacher.Michael I. Jordan & David E. Rumelhart - 1992 - Cognitive Science 16 (3):307-354.
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  11.  18
    An Empirical Evaluation of Supervised Learning Methods for Network Malware Identification Based on Feature Selection.C. Manzano, C. Meneses, P. Leger & H. Fukuda - 2022 - Complexity 2022:1-18.
    Malware is a sophisticated, malicious, and sometimes unidentifiable application on the network. The classifying network traffic method using machine learning shows to perform well in detecting malware. In the literature, it is reported that this good performance can depend on a reduced set of network features. This study presents an empirical evaluation of two statistical methods of reduction and selection of features in an Android network traffic dataset using six supervised algorithms: Naïve Bayes, support vector machine, multilayer perceptron (...)
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  12.  49
    A Modal Logic for Supervised Learning.Alexandru Baltag, Dazhu Li & Mina Young Pedersen - 2022 - Journal of Logic, Language and Information 31 (2):213-234.
    Formal learning theory formalizes the process of inferring a general result from examples, as in the case of inferring grammars from sentences when learning a language. In this work, we develop a general framework—the supervised learning game—to investigate the interaction between Teacher and Learner. In particular, our proposal highlights several interesting features of the agents: on the one hand, Learner may make mistakes in the learning process, and she may also ignore the potential relation between (...)
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  13.  17
    SensorSCAN: Self-supervised learning and deep clustering for fault diagnosis in chemical processes.Maksim Golyadkin, Vitaliy Pozdnyakov, Leonid Zhukov & Ilya Makarov - 2023 - Artificial Intelligence 324 (C):104012.
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  14.  45
    Supervised Learning for Suicidal Ideation Detection in Online User Content.Shaoxiong Ji, Celina Ping Yu, Sai-fu Fung, Shirui Pan & Guodong Long - 2018 - Complexity 2018:1-10.
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  15. Unified Inductive Logic: From Formal Learning to Statistical Inference to Supervised Learning.Hanti Lin - manuscript
    While the traditional conception of inductive logic is Carnapian, I develop a Peircean alternative and use it to unify formal learning theory, statistics, and a significant part of machine learning: supervised learning. Some crucial standards for evaluating non-deductive inferences have been assumed separately in those areas, but can actually be justified by a unifying principle.
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  16.  17
    A Semi-supervised Learning Method for Q-Matrix Specification Under the DINA and DINO Model With Independent Structure.Wenyi Wang, Lihong Song, Shuliang Ding, Teng Wang, Peng Gao & Jian Xiong - 2020 - Frontiers in Psychology 11.
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  17. Categorical Perception and the Evolution of Supervised Learning in Neural Nets.Stevan Harnad & SJ Hanson - unknown
    Some of the features of animal and human categorical perception (CP) for color, pitch and speech are exhibited by neural net simulations of CP with one-dimensional inputs: When a backprop net is trained to discriminate and then categorize a set of stimuli, the second task is accomplished by "warping" the similarity space (compressing within-category distances and expanding between-category distances). This natural side-effect also occurs in humans and animals. Such CP categories, consisting of named, bounded regions of similarity space, may be (...)
     
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  18.  38
    Drug Repositioning by Integrating Known Disease-Gene and Drug-Target Associations in a Semi-supervised Learning Model.Duc-Hau Le & Doanh Nguyen-Ngoc - 2018 - Acta Biotheoretica 66 (4):315-331.
    Computational drug repositioning has been proven as a promising and efficient strategy for discovering new uses from existing drugs. To achieve this goal, a number of computational methods have been proposed, which are based on different data sources of drugs and diseases. These methods approach the problem using either machine learning- or network-based models with an assumption that similar drugs can be used for similar diseases to identify new indications of drugs. Therefore, similarities between drugs and between diseases are (...)
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  19.  11
    Reflex Fuzzy Min Max Neural Network for Semi-supervised Learning.A. V. Nandedkar & P.Κ Biswas - 2008 - Journal of Intelligent Systems 17 (1-3):5-18.
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  20. The no-free-lunch theorems of supervised learning.Tom F. Sterkenburg & Peter D. Grünwald - 2021 - Synthese 199 (3-4):9979-10015.
    The no-free-lunch theorems promote a skeptical conclusion that all possible machine learning algorithms equally lack justification. But how could this leave room for a learning theory, that shows that some algorithms are better than others? Drawing parallels to the philosophy of induction, we point out that the no-free-lunch results presuppose a conception of learning algorithms as purely data-driven. On this conception, every algorithm must have an inherent inductive bias, that wants justification. We argue that many standard (...) algorithms should rather be understood as model-dependent: in each application they also require for input a model, representing a bias. Generic algorithms themselves, they can be given a model-relative justification. (shrink)
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  21.  8
    Improving heuristic mini-max search by supervised learning.Michael Buro - 2002 - Artificial Intelligence 134 (1-2):85-99.
  22.  12
    A Guide for Research Supervisors.David Black & Centre for Research Into Human Communication And Learning - 1994
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  23.  54
    Delegation and supervision of healthcare assistants’ work in the daily management of uncertainty and the unexpected in clinical practice: invisible learning among newly qualified nurses.Helen T. Allan, Carin Magnusson, Karen Evans, Elaine Ball, Sue Westwood, Kathy Curtis, Khim Horton & Martin Johnson - 2016 - Nursing Inquiry 23 (4):377-385.
    The invisibility of nursing work has been discussed in the international literature but not in relation to learning clinical skills. Evans and Guile's (Practice‐based education: Perspectives and strategies, Rotterdam: Sense, 2012) theory of recontextualisation is used to explore the ways in which invisible or unplanned and unrecognised learning takes place as newly qualified nurses learn to delegate to and supervise the work of the healthcare assistant. In the British context, delegation and supervision are thought of as skills which (...)
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  24.  24
    Semi-supervised ensemble learning of data streams in the presence of concept drift.Zahra Ahmadi & Hamid Beigy - 2012 - In Emilio Corchado, Vaclav Snasel, Ajith Abraham, Michał Woźniak, Manuel Grana & Sung-Bae Cho (eds.), Hybrid Artificial Intelligent Systems. Springer. pp. 526--537.
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  25.  14
    Weakly-supervised sensor-based activity segmentation and recognition via learning from distributions.Hangwei Qian, Sinno Jialin Pan & Chunyan Miao - 2021 - Artificial Intelligence 292 (C):103429.
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  26.  10
    Semantic Supervised Training for General Artificial Cognitive Agents.Р. В Душкин - 2021 - Siberian Journal of Philosophy 19 (2):51-64.
    The article describes the author's approach to the construction of general-level artificial cognitive agents based on the so-called "semantic supervised learning", within which, in accordance with the hybrid paradigm of artificial intelligence, both machine learning methods and methods of the symbolic ap­ proach and knowledge-based systems are used ("good old-fashioned artificial intelligence"). А descrip­ tion of current proЬlems with understanding of the general meaning and context of situations in which narrow AI agents are found is presented. The (...)
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  27.  44
    Supervised machine learning for the detection of troll profiles in twitter social network: application to a real case of cyberbullying.Patxi Galán-GarcÍa, José Gaviria De La Puerta, Carlos Laorden Gómez, Igor Santos & Pablo García Bringas - 2016 - Logic Journal of the IGPL 24 (1).
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  28. Learning-focused supervision: developing professional expertise in standards-driven systems.Laura Lipton - 2024 - Bloomington, IN: Solution Tree Press. Edited by Bruce M. Wellman.
    This guide offers practical templates and tools for supervisors hoping to refine the problem-solving, decision-making, and instruction of teachers under their supervision.
     
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  29. Supervised, Unsupervised and Reinforcement Learning-Face Recognition Using Null Space-Based Local Discriminant Embedding.Yanmin Niu & Xuchu Wang - 2006 - In O. Stock & M. Schaerf (eds.), Lecture Notes In Computer Science. Springer Verlag. pp. 4114--245.
     
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  30. Ethical learning from an educational ethnography : the application of an ethical framework in doctoral supervision.Alison Fox & Rafael Mitchell - 2019 - In Hugh Busher & Alison Fox (eds.), Implementing ethics in educational ethnography: regulation and practice. New York, NY: Routledge.
     
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  31.  11
    Supervised Classification of Operator Functional State Based on Physiological Data: Application to Drones Swarm Piloting.Alexandre Kostenko, Philippe Rauffet & Gilles Coppin - 2022 - Frontiers in Psychology 12.
    To improve the safety and the performance of operators involved in risky and demanding missions, human-machine cooperation should be dynamically adapted, in terms of dialogue or function allocation. To support this reconfigurable cooperation, a crucial point is to assess online the operator’s ability to keep performing the mission. The article explores the concept of Operator Functional State, then it proposes to operationalize this concept on the specific activity of drone swarm monitoring, carried out by 22 participants on simulator SUSIE. With (...)
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  32.  17
    Academic Supervision in Higher Education: The Case of Government Colleges in Bangladesh.Md Masud Rana - forthcoming - Philosophy and Progress:97-128.
    Academic supervision is considered an important mechanism to improve the performance of an educational institution. This article aims to investigate the situation of academic supervision in Bangladeshi Government Colleges (GCs).The article, in particular, explores the impacts of academic supervision on Bangladeshi students and teachers in developing their competencies and confidence in postsecondary educational settings. The study was conducted employing thequalitative research method and collecting data from in-depth interviews, secondary published literature, such as books, journal articles etc. The study finds that (...)
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  33.  30
    Sources of Understanding in Supervised Machine Learning Models.Paulo Pirozelli - 2022 - Philosophy and Technology 35 (2):1-19.
    In the last decades, supervised machine learning has seen the widespread growth of highly complex, non-interpretable models, of which deep neural networks are the most typical representative. Due to their complexity, these models have showed an outstanding performance in a series of tasks, as in image recognition and machine translation. Recently, though, there has been an important discussion over whether those non-interpretable models are able to provide any sort of understanding whatsoever. For some scholars, only interpretable models can (...)
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  34.  85
    Self-supervision, normativity and the free energy principle.Jakob Hohwy - 2020 - Synthese 199 (1-2):29-53.
    The free energy principle says that any self-organising system that is at nonequilibrium steady-state with its environment must minimize its free energy. It is proposed as a grand unifying principle for cognitive science and biology. The principle can appear cryptic, esoteric, too ambitious, and unfalsifiable—suggesting it would be best to suspend any belief in the principle, and instead focus on individual, more concrete and falsifiable ‘process theories’ for particular biological processes and phenomena like perception, decision and action. Here, I explain (...)
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  35.  27
    Application of Supervised Machine Learning for Behavioral Biomarkers of Autism Spectrum Disorder Based on Electrodermal Activity and Virtual Reality.Mariano Alcañiz Raya, Irene Alice Chicchi Giglioli, Javier Marín-Morales, Juan L. Higuera-Trujillo, Elena Olmos, Maria E. Minissi, Gonzalo Teruel Garcia, Marian Sirera & Luis Abad - 2020 - Frontiers in Human Neuroscience 14.
  36.  11
    Courageous Conversations: The Teaching and Learning of Pastoral Supervision.William R. DeLong (ed.) - 2009 - Upa.
    This book discusses the complexities of pastoral supervision. Topics addressed are pragmatic aspects of supervision, for pastors in local congregations who supervise seminary interns to well-developed theoretical aspects of supervisory education utilized in clinical pastoral education. Readers will benefit from theoretical viewpoints and practical hands-on application to their ministry.
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  37.  13
    AI and mental health: evaluating supervised machine learning models trained on diagnostic classifications.Anna van Oosterzee - forthcoming - AI and Society:1-10.
    Machine learning (ML) has emerged as a promising tool in psychiatry, revolutionising diagnostic processes and patient outcomes. In this paper, I argue that while ML studies show promising initial results, their application in mimicking clinician-based judgements presents inherent limitations (Shatte et al. in Psychol Med 49:1426–1448. https://doi.org/10.1017/S0033291719000151, 2019). Most models still rely on DSM (the Diagnostic and Statistical Manual of Mental Disorders) categories, known for their heterogeneity and low predictive value. DSM's descriptive nature limits the validity of psychiatric diagnoses, (...)
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  38.  47
    Impact of abusive supervision on deviant work behavior: The role of Islamic work ethic.Basharat Javed, Tasneem Fatima, Raja Mehtab Yasin, Sadia Jahanzeb & Muhammad Y. A. Rawwas - 2018 - Business Ethics: A European Review 28 (2):221-233.
    In this article, we examined the relationship between abusive supervision and deviant workplace behavior and the moderating role of an Islamic Work Ethic. Three hundred and thirty‐six employees in different organizations (specializing in software development, medicine, law enforcement, telecommunication, pharmaceutics, and banking) across Pakistan completed our questionnaire. The results revealed that abusive supervision was positively related to deviant workplace behavior. Moreover, the moderation of an Islamic Work Ethic on the relationship between abusive supervision and deviant work behavior was confirmed. The (...)
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  39.  16
    An Efficient Weakly Supervised Approach for Texture Segmentation via Graph Cuts.Arnav V. Bhavsar - 2013 - Journal of Intelligent Systems 22 (3):253-267.
    We propose an approach for texture segmentation based on weak supervised learning. The weak supervision implies that the user marks only a single small patch for each class in the input image. These patches are used for training. We employ the method of graph cuts for the segmentation task. Our work demonstrates that even under such weak training, texture segmentation can be achieved efficiently and with good accuracy via graph cuts. Moreover, our approach uses a simpler feature representation (...)
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  40.  43
    Teacher and learner: Supervised and unsupervised learning in communities.Michael G. Shafto & Colleen M. Seifert - 2015 - Behavioral and Brain Sciences 38.
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  41. Unsupervised learning and grammar induction.Alex Clark & Shalom Lappin - unknown
    In this chapter we consider unsupervised learning from two perspectives. First, we briefly look at its advantages and disadvantages as an engineering technique applied to large corpora in natural language processing. While supervised learning generally achieves greater accuracy with less data, unsupervised learning offers significant savings in the intensive labour required for annotating text. Second, we discuss the possible relevance of unsupervised learning to debates on the cognitive basis of human language acquisition. In this context (...)
     
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  42.  89
    Machine Learning, Functions and Goals.Patrick Butlin - 2022 - Croatian Journal of Philosophy 22 (66):351-370.
    Machine learning researchers distinguish between reinforcement learning and supervised learning and refer to reinforcement learning systems as “agents”. This paper vindicates the claim that systems trained by reinforcement learning are agents while those trained by supervised learning are not. Systems of both kinds satisfy Dretske’s criteria for agency, because they both learn to produce outputs selectively in response to inputs. However, reinforcement learning is sensitive to the instrumental value of outputs, giving (...)
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  43.  19
    Clinical group supervision for integrating ethical reasoning.Karin Blomberg & Birgitta Bisholt - 2016 - Nursing Ethics 23 (7):761-769.
    Background: Clinical group supervision has existed for over 20 years in nursing. However, there is a lack of studies about the role of supervision in nursing students’ education and especially the focus on ethical reasoning. Aim: The aim of this study was to explore and describe nursing students’ ethical reasoning and their supervisors’ experiences related to participation in clinical group supervision. Research design: The study is a qualitative interview study with interpretative description as an analysis approach. Participants and research context: (...)
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  44. Learning Diphone-Based Segmentation.Robert Daland & Janet B. Pierrehumbert - 2011 - Cognitive Science 35 (1):119-155.
    This paper reconsiders the diphone-based word segmentation model of Cairns, Shillcock, Chater, and Levy (1997) and Hockema (2006), previously thought to be unlearnable. A statistically principled learning model is developed using Bayes’ theorem and reasonable assumptions about infants’ implicit knowledge. The ability to recover phrase-medial word boundaries is tested using phonetic corpora derived from spontaneous interactions with children and adults. The (unsupervised and semi-supervised) learning models are shown to exhibit several crucial properties. First, only a small amount (...)
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  45.  7
    Segmenting Brazilian legislative text using weak supervision and active learning.Felipe A. Siqueira, Diany Pressato, Fabíola S. F. Pereira, Nádia F. F. da Silva, Ellen Souza, Márcio S. Dias & André C. P. L. F. de Carvalho - forthcoming - Artificial Intelligence and Law.
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  46. The evolution of learning: An experiment in genetic connectionism.David Chalmers - 1992 - In Connectionist Models: Proceedings of the 1990 Summer School Workshop. Morgan Kaufmann.
    This paper explores how an evolutionary process can produce systems that learn. A general framework for the evolution of learning is outlined, and is applied to the task of evolving mechanisms suitable for supervised learning in single-layer neural networks. Dynamic properties of a network’s information-processing capacity are encoded genetically, and these properties are subjected to selective pressure based on their success in producing adaptive behavior in diverse environments. As a result of selection and genetic recombination, various successful (...)
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  47.  30
    Can machine learning make naturalism about health truly naturalistic? A reflection on a data-driven concept of health.Ariel Guersenzvaig - 2023 - Ethics and Information Technology 26 (1):1-12.
    Through hypothetical scenarios, this paper analyses whether machine learning (ML) could resolve one of the main shortcomings present in Christopher Boorse’s Biostatistical Theory of health (BST). In doing so, it foregrounds the boundaries and challenges of employing ML in formulating a naturalist (i.e., prima facie value-free) definition of health. The paper argues that a sweeping dataist approach cannot fully make the BST truly naturalistic, as prior theories and values persist. It also points out that supervised learning introduces (...)
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  48.  90
    Editors' Introduction: Why Formal Learning Theory Matters for Cognitive Science.Sean Fulop & Nick Chater - 2013 - Topics in Cognitive Science 5 (1):3-12.
    This article reviews a number of different areas in the foundations of formal learning theory. After outlining the general framework for formal models of learning, the Bayesian approach to learning is summarized. This leads to a discussion of Solomonoff's Universal Prior Distribution for Bayesian learning. Gold's model of identification in the limit is also outlined. We next discuss a number of aspects of learning theory raised in contributed papers, related to both computational and representational complexity. (...)
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  49.  20
    Using group approaches to underpin reflection, supervision and learning.Bernie Carter & Elizabeth Walker - 2008 - In Chris Bulman & Sue Schutz (eds.), Reflective Practice in Nursing. Wiley-Blackwell. pp. 137.
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  50.  38
    Research Integrity Supervision Practices and Institutional Support: A Qualitative Study.Daniel Pizzolato & Kris Dierickx - 2023 - Journal of Academic Ethics 21 (3):427-448.
    Scientific malpractice is not just due to researchers having bad intentions, but also due to a lack of education concerning research integrity practices. Besides the importance of institutionalised trainings on research integrity, research supervisors play an important role in translating what doctoral students learn during research integrity formal sessions. Supervision practices and role modelling influence directly and indirectly supervisees’ attitudes and behaviour toward responsible research. Research supervisors can not be left alone in this effort. Research institutions are responsible for supporting (...)
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