Results for 'Dimension-based statistical learning'

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  1.  43
    DimensionBased Statistical Learning Affects Both Speech Perception and Production.Matthew Lehet & Lori L. Holt - 2017 - Cognitive Science 41 (S4):885-912.
    Multiple acoustic dimensions signal speech categories. However, dimensions vary in their informativeness; some are more diagnostic of category membership than others. Speech categorization reflects these dimensional regularities such that diagnostic dimensions carry more “perceptual weight” and more effectively signal category membership to native listeners. Yet perceptual weights are malleable. When short-term experience deviates from long-term language norms, such as in a foreign accent, the perceptual weight of acoustic dimensions in signaling speech category membership rapidly adjusts. The present study investigated whether (...)
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  2.  17
    Nevertheless, it persists: Dimension-based statistical learning and normalization of speech impact different levels of perceptual processing.Matthew Lehet & Lori L. Holt - 2020 - Cognition 202:104328.
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  3.  6
    The Learning Signal in Perceptual Tuning of Speech: Bottom Up Versus Top‐Down Information.Xujin Zhang, Yunan Charles Wu & Lori L. Holt - 2021 - Cognitive Science 45 (3):e12947.
    Cognitive systems face a tension between stability and plasticity. The maintenance of long‐term representations that reflect the global regularities of the environment is often at odds with pressure to flexibly adjust to short‐term input regularities that may deviate from the norm. This tension is abundantly clear in speech communication when talkers with accents or dialects produce input that deviates from a listener's language community norms. Prior research demonstrates that when bottom‐up acoustic information or top‐down word knowledge is available to disambiguate (...)
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  4.  88
    Falsificationism and Statistical Learning Theory: Comparing the Popper and Vapnik-Chervonenkis Dimensions.David Corfield, Bernhard Schölkopf & Vladimir Vapnik - 2009 - Journal for General Philosophy of Science / Zeitschrift für Allgemeine Wissenschaftstheorie 40 (1):51-58.
    We compare Karl Popper’s ideas concerning the falsifiability of a theory with similar notions from the part of statistical learning theory known as VC-theory . Popper’s notion of the dimension of a theory is contrasted with the apparently very similar VC-dimension. Having located some divergences, we discuss how best to view Popper’s work from the perspective of statistical learning theory, either as a precursor or as aiming to capture a different learning activity.
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  5.  21
    Exploring and Exploiting Uncertainty: Statistical Learning Ability Affects How We Learn to Process Language Along Multiple Dimensions of Experience.Dagmar Divjak & Petar Milin - 2020 - Cognitive Science 44 (5):e12835.
    While the effects of pattern learning on language processing are well known, the way in which pattern learning shapes exploratory behavior has long gone unnoticed. We report on the way in which individual differences in statistical pattern learning affect performance in the domain of language along multiple dimensions. Analyzing data from healthy monolingual adults' performance on a serial reaction time task and a self‐paced reading task, we show how individual differences in statistical pattern learning (...)
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  6.  9
    Statistical learning across passive listening adjusts perceptual weights of speech input dimensions.Alana J. Hodson, Barbara G. Shinn-Cunningham & Lori L. Holt - 2023 - Cognition 238 (C):105473.
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  7.  16
    Understanding the Neural Bases of Implicit and Statistical Learning.Laura J. Batterink, Ken A. Paller & Paul J. Reber - 2019 - Topics in Cognitive Science 11 (3):482-503.
    This article provides a much‐needed review of the neural bases of implicit statistical learning. Batterink, Paller and Reber focus on the neural processes that underpin performance in experimental paradigms employed in implicit learning and statistical learning research. An important insight is that learning across all paradigms is supported by interactions between the declarative and nondeclarative memory systems of the brain. They conclude with a helpful discussion of future directions of research.
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  8.  25
    Statistical Learning Is Not Age‐Invariant During Childhood: Performance Improves With Age Across Modality.Amir Shufaniya & Inbal Arnon - 2018 - Cognitive Science 42 (8):3100-3115.
    Humans are capable of extracting recurring patterns from their environment via statistical learning (SL), an ability thought to play an important role in language learning and learning more generally. While much work has examined statistical learning in infants and adults, less work has looked at the developmental trajectory of SL during childhood to see whether it is fully developed in infancy or improves with age, like many other cognitive abilities. A recent study showed modality‐ (...) differences in the effect of age during childhood: While visual SL improved with age, auditory SL did not. This finding was taken as evidence for modality‐based differences in SL. However, since that study used auditory linguistic stimuli (syllables), the differential effect of age may have been driven by stimulus type (linguistic vs. non‐linguistic) rather than modality. Here, we ask whether age will affect performance similarly in the two modalities when non‐linguistic auditory stimuli are used (familiar sounds instead of syllables). We conduct a large‐scale study of children's performance on visual and non‐linguistic auditory SL during childhood (ages 5–12 years). The results show a similar effect of age in both modalities: Unlike previous findings, both visual and non‐linguistic auditory SL improved with age. These findings highlight the stimuli‐sensitive nature of SL and suggest that modality‐based differences may be stimuli‐dependent, and that age‐invariance may be limited to linguistic stimuli. (shrink)
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  9.  26
    Statistical Learning of Unfamiliar Sounds as Trajectories Through a Perceptual Similarity Space.Felix Hao Wang, Elizabeth A. Hutton & Jason D. Zevin - 2019 - Cognitive Science 43 (8):e12740.
    In typical statistical learning studies, researchers define sequences in terms of the probability of the next item in the sequence given the current item (or items), and they show that high probability sequences are treated as more familiar than low probability sequences. Existing accounts of these phenomena all assume that participants represent statistical regularities more or less as they are defined by the experimenters—as sequential probabilities of symbols in a string. Here we offer an alternative, or possibly (...)
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  10. Neural Networks and Statistical Learning Methods (III)-The Application of Modified Hierarchy Genetic Algorithm Based on Adaptive Niches.Wei-Min Qi, Qiao-Ling Ji & Wei-You Cai - 2006 - In O. Stock & M. Schaerf (eds.), Lecture Notes in Computer Science. Springer Verlag. pp. 3930--842.
  11.  8
    Statistically Induced Chunking Recall: A Memory‐Based Approach to Statistical Learning.Erin S. Isbilen, Stewart M. McCauley, Evan Kidd & Morten H. Christiansen - 2020 - Cognitive Science 44 (7):e12848.
    The computations involved in statistical learning have long been debated. Here, we build on work suggesting that a basic memory process, chunking, may account for the processing of statistical regularities into larger units. Drawing on methods from the memory literature, we developed a novel paradigm to test statistical learning by leveraging a robust phenomenon observed in serial recall tasks: that short‐term memory is fundamentally shaped by long‐term distributional learning. In the statistically induced chunking recall (...)
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  12.  74
    Reliable Reasoning: Induction and Statistical Learning Theory.Gilbert Harman & Sanjeev Kulkarni - 2007 - Bradford.
    In _Reliable Reasoning_, Gilbert Harman and Sanjeev Kulkarni -- a philosopher and an engineer -- argue that philosophy and cognitive science can benefit from statistical learning theory, the theory that lies behind recent advances in machine learning. The philosophical problem of induction, for example, is in part about the reliability of inductive reasoning, where the reliability of a method is measured by its statistically expected percentage of errors -- a central topic in SLT. After discussing philosophical attempts (...)
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  13.  11
    Statistical Learning Model of the Sense of Agency.Shiro Yano, Yoshikatsu Hayashi, Yuki Murata, Hiroshi Imamizu, Takaki Maeda & Toshiyuki Kondo - 2020 - Frontiers in Psychology 11.
    A sense of agency (SoA) is the experience of subjective awareness regarding the control of one’s actions. Humans have a natural tendency to generate prediction models of the environment and adapt their models according to changes in the environment. The SoA is associated with the degree of the adaptation of the prediction models, e.g., insufficient adaptation causes low predictability and lowers the SoA over the environment. Thus, identifying the mechanisms behind the adaptation process of a prediction model related to the (...)
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  14.  43
    Statistical learning and prejudice.Guy Madison, Fredrik Ullén & John Dixon - 2012 - Behavioral and Brain Sciences 35 (6):440.
    Human behavior is guided by evolutionarily shaped brain mechanisms that make statistical predictions based on limited information. Such mechanisms are important for facilitating interpersonal relationships, avoiding dangers, and seizing opportunities in social interaction. We thus suggest that it is essential for analyses of prejudice and prejudice reduction to take the predictive accuracy and adaptivity of the studied prejudices into account.
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  15.  13
    Beat processing in newborn infants cannot be explained by statistical learning based on transition probabilities.Gábor P. Háden, Fleur L. Bouwer, Henkjan Honing & István Winkler - 2024 - Cognition 243 (C):105670.
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  16.  27
    iMinerva: A Mathematical Model of Distributional Statistical Learning.Erik D. Thiessen & Philip I. Pavlik - 2013 - Cognitive Science 37 (2):310-343.
    Statistical learning refers to the ability to identify structure in the input based on its statistical properties. For many linguistic structures, the relevant statistical features are distributional: They are related to the frequency and variability of exemplars in the input. These distributional regularities have been suggested to play a role in many different aspects of language learning, including phonetic categories, using phonemic distinctions in word learning, and discovering non-adjacent relations. On the surface, these (...)
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  17.  40
    Effects of Visual Information on Adults' and Infants' Auditory Statistical Learning.Erik D. Thiessen - 2010 - Cognitive Science 34 (6):1093-1106.
    Infant and adult learners are able to identify word boundaries in fluent speech using statistical information. Similarly, learners are able to use statistical information to identify word–object associations. Successful language learning requires both feats. In this series of experiments, we presented adults and infants with audio–visual input from which it was possible to identify both word boundaries and word–object relations. Adult learners were able to identify both kinds of statistical relations from the same input. Moreover, their (...)
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  18.  24
    Aligning Developmental and Processing Accounts of Implicit and Statistical Learning.Michelle S. Peter & Caroline F. Rowland - 2019 - Topics in Cognitive Science 11 (3):555-572.
    In this article, Peter and Rowland explore the role of implicit statistical learning in syntactic development. It is often accepted that the processes observed in classic implicit learning or statistical learning experiments play an important role in the acquisition of natural language syntax. As Peter and Rowland point out, however, the results from neither research strand can be used to fully explain how children's syntax becomes adult‐like. They propose to address this shortcoming by using the (...)
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  19.  5
    Narrowing down dimensions of e-learning readiness in continuing vocational education — perspectives from the adult learner.Vanessa Stefanie Loock, Jens Fleischer, Anne Scheunemann, Linda Froese, Katharina Teich & Joachim Wirth - 2022 - Frontiers in Psychology 13.
    Although e-learning has become an important feature to promote learning experience, still little is known about the readiness of adult learners for e-learning in continuing vocational education. By exploring perceived challenges and benefits, it was our aim to identify dimensions that define e-learning readiness. Therefore, we conducted a study design with qualitative and quantitative components. It consisted of both, semi-structured interviews, as well as an online survey regarding biography, personality, learning behavior, and general attitudes toward (...)
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  20.  11
    Problem-Based Service Learning (PB-SL): Constructing a pedagogy of poverty based on Ignacio Ellacuría.Zaida Espinosa Zárate - 2022 - Educational Philosophy and Theory 54 (14):2446-2457.
    This text aims to rethink educational activity inspired by the thought of the philosopher Ignacio Ellacuría, in what we have synthesised as a pedagogy of poverty. This should be understood as a pedagogy that, in the neoliberal context of Western societies, takes poverty as its motor—its efficient cause—and as its essence or fundamental structure—its formal cause –, in the duality of dimensions of its genitive. It is concretised in what is presented as Problem-Based Service-Learning (PB-SL). Through specific pedagogical (...)
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  21.  10
    The Role of Stimulus‐Specific Perceptual Fluency in Statistical Learning.Andrew Perfors & Evan Kidd - 2022 - Cognitive Science 46 (2):e13100.
    Humans have the ability to learn surprisingly complicated statistical information in a variety of modalities and situations, often based on relatively little input. These statistical learning (SL) skills appear to underlie many kinds of learning, but despite their ubiquity, we still do not fully understand precisely what SL is and what individual differences on SL tasks reflect. Here, we present experimental work suggesting that at least some individual differences arise from stimulus-specific variation in perceptual fluency: (...)
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  22.  9
    The Role of Feedback in the Statistical Learning of Language‐Like Regularities.Felicity F. Frinsel, Fabio Trecca & Morten H. Christiansen - 2024 - Cognitive Science 48 (3):e13419.
    In language learning, learners engage with their environment, incorporating cues from different sources. However, in lab‐based experiments, using artificial languages, many of the cues and features that are part of real‐world language learning are stripped away. In three experiments, we investigated the role of positive, negative, and mixed feedback on the gradual learning of language‐like statistical regularities within an active guessing game paradigm. In Experiment 1, participants received deterministic feedback (100%), whereas probabilistic feedback (i.e., 75% (...)
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  23. Mind changes and testability: How formal and statistical learning theory converge in the new Riddle of induction.Daniel Steel - manuscript
    This essay demonstrates a previously unnoticed connection between formal and statistical learning theory with regard to Nelson Goodman’s new riddle of induction. Discussions of Goodman’s riddle in formal learning theory explain how conjecturing “all green” before “all grue” can enhance efficient convergence to the truth, where efficiency is understood in terms of minimizing the maximum number of retractions or “mind changes.” Vapnik-Chervonenkis (VC) dimension is a central concept in statistical learning theory and is similar (...)
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  24. Cognitive Biases, Linguistic Universals, and Constraint‐Based Grammar Learning.Jennifer Culbertson, Paul Smolensky & Colin Wilson - 2013 - Topics in Cognitive Science 5 (3):392-424.
    According to classical arguments, language learning is both facilitated and constrained by cognitive biases. These biases are reflected in linguistic typology—the distribution of linguistic patterns across the world's languages—and can be probed with artificial grammar experiments on child and adult learners. Beginning with a widely successful approach to typology (Optimality Theory), and adapting techniques from computational approaches to statistical learning, we develop a Bayesian model of cognitive biases and show that it accounts for the detailed pattern of (...)
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  25.  16
    Piloting Virtual Reality Photo-Based Tours among Students of a Filipino Language Class: A Case of Emergency Remote Teaching in Japan.Roberto Bacani Figueroa Jr, Florinda Amparo Palma Gil & Hiroshi Taniguchi - 2022 - Avant: Trends in Interdisciplinary Studies 13 (2).
    The State of Emergency declaration in Japan due to the COVID-19 pandemic affected many aspects of society in the country, much like the rest of the world. One sector that felt its disruptive impact was education. As educational institutions raced to implement emergency remote teaching (ERT) to continue providing the learning needs of students, some have opened to innovative interventions. This paper describes a case of ERT where Filipino vocabulary was taught to a class of Japanese students taking Philippine (...)
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  26.  30
    Learning psychological research and statistical concepts using retrieval-based practice.Stephen Wee Hun Lim, Gavin Jun Peng Ng & Gabriel Qi Hao Wong - 2015 - Frontiers in Psychology 6.
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  27.  91
    Is frequentist testing vulnerable to the base-rate fallacy?Aris Spanos - 2010 - Philosophy of Science 77 (4):565-583.
    This article calls into question the charge that frequentist testing is susceptible to the base-rate fallacy. It is argued that the apparent similarity between examples like the Harvard Medical School test and frequentist testing is highly misleading. A closer scrutiny reveals that such examples have none of the basic features of a proper frequentist test, such as legitimate data, hypotheses, test statistics, and sampling distributions. Indeed, the relevant error probabilities are replaced with the false positive/negative rates that constitute deductive calculations (...)
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  28.  5
    Making the Psychological Dimension of Learning Visible: Using Technology-Based Assessment to Monitor Students’ Cognitive Development.Gyöngyvér Molnár & Benő Csapó - 2019 - Frontiers in Psychology 10.
    Technology-based assessment offers unique possibilities for collecting data about students’ cognitive development and using this data to provide students and teachers with feedback to improve learning. The aim of this study was to show how the psychological dimension of learning can be assessed in everyday educational practice through technology-based assessment in reading, mathematics and science. We analyzed three related aspects of the assessments: cognitive development, gender differences and vertical scaling. The sample for the study was (...)
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  29.  4
    Understanding, Investigating, and promoting deep learning in language education: A survey on chinese college students' deep learning in the online EFL teaching context.Ruihong Jiang - 2022 - Frontiers in Psychology 13.
    This study aims to develop and validate the four-dimension model hypothesis of deep learning to better understand deep learning in language education; investigate and promote deep learning by conducting a survey involving 533 college students in the online learning English as a foreign language teaching context in China. Concretely, this study initially synthesized theoretical insights from deep learning in the education domain and related theories in the second language acquisition and thus proposed the four- (...) model hypothesis of deep learning involving the motivation of deep learning, the engagement of deep learning, the strategy of deep learning, and the directional competence of deep learning. This study subsequently undertook a questionnaire survey utilizing a standardized instrument to confirm the model hypothesis and further investigate the current status and salient differences in students' deep learning in online EFL teaching. Exploratory factor analysis, confirmation factor analysis, and Pearson's correlation test validated a positively correlated four-dimension model of deep learning with high composite reliability and good convergent validity. Moreover, the descriptive and inferential statistics revealed that the level of students' deep learning marginally reached the median, with the lowest mean of directional competence and the highest mean of motivation; students manifested more instructional motives, neglect of deploying skilled-based cognitive strategies, and deficiency of language application skills, etc.; there existed some significant differences between deep learning and four sub-dimensions across the grade, English proficiency, EFL course, and vision groups. Eventually, this study proffered primary reasons and five appropriate strategies to scaffold and promote students' deep learning in online EFL teaching. Hopefully, this study will be a pioneering effort to clear away the theoretical muddle of deep learning construct in language education and be illuminating to further improve effectiveness in the online EFL teaching context. (shrink)
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  30.  34
    Understanding Deep Learning with Statistical Relevance.Tim Räz - 2022 - Philosophy of Science 89 (1):20-41.
    This paper argues that a notion of statistical explanation, based on Salmon’s statistical relevance model, can help us better understand deep neural networks. It is proved that homogeneous partitions, the core notion of Salmon’s model, are equivalent to minimal sufficient statistics, an important notion from statistical inference. This establishes a link to deep neural networks via the so-called Information Bottleneck method, an information-theoretic framework, according to which deep neural networks implicitly solve an optimization problem that generalizes (...)
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  31.  2
    Driver Attribute Filling for Genes in Interaction Network via Modularity Subspace-Based Concept Learning from Small Samples.Fei Xie, Jianing Xi & Qun Duan - 2020 - Complexity 2020:1-12.
    The aberrations of a gene can influence it and the functions of its neighbour genes in gene interaction network, leading to the development of carcinogenesis of normal cells. In consideration of gene interaction network as a complex network, previous studies have made efforts on the driver attribute filling of genes via network properties of nodes and network propagation of mutations. However, there are still obstacles from problems of small size of cancer samples and the existence of drivers without property of (...)
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  32.  34
    Rules versus Statistics in Biconditional Grammar Learning: A Simulation based on Shanks et al. (1997).Bert Timmermans - unknown
    A significant part of everyday learning occurs incidentally — a process typically described as implicit learning. A central issue in this and germane domains such as language acquisition is the extent to which performance depends on the acquisition and deployment of abstract rules. In an attempt to address this question, we show that the apparent use of such rules in a simple categorisation task of artificial grammar strings, as reported by Shanks, Johnstone, and Staggs (1997), can be simulated (...)
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  33.  3
    Research on Quantitative Model of Brand Recognition Based on Sentiment Analysis of Big Data.Lichun Zhou - 2022 - Frontiers in Psychology 13.
    This paper takes laptops as an example to carry out research on quantitative model of brand recognition based on sentiment analysis of big data. The basic idea is to use web crawler technology to obtain the most authentic and direct information of different laptop brands from first-line consumers from public spaces such as buyer reviews of major e-commerce platforms, including review time, text reviews, satisfaction ratings and relevant user information, etc., and then analyzes consumers’ sentimental tendencies and recognition status (...)
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  34.  12
    Large Language Models: A Historical and Sociocultural Perspective.Eugene Yu Ji - 2024 - Cognitive Science 48 (3):e13430.
    This letter explores the intricate historical and contemporary links between large language models (LLMs) and cognitive science through the lens of information theory, statistical language models, and socioanthropological linguistic theories. The emergence of LLMs highlights the enduring significance of information‐based and statistical learning theories in understanding human communication. These theories, initially proposed in the mid‐20th century, offered a visionary framework for integrating computational science, social sciences, and humanities, which nonetheless was not fully fulfilled at that time. (...)
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  35. Including inquiry-based learning into a chemistry class concerning the diversity dimensions "age" and "language".Sandra Puddu, Brigitte Koliander & Anja Lembens - 2012 - In Sylvija Markic, Ingo Eilks, David Di Fuccia & Bernd Ralle (eds.), Issues of heterogeneity and cultural diversity in science education and science education research: a collection of invited papers inspired by the 21st Symposium on Chemical and Science Education held at the University of Dortmund, May 17-19, 2012. Aachen: Shaker Verlag.
     
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  36. 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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  37.  44
    Tracking Multiple Statistics: Simultaneous Learning of Object Names and Categories in English and Mandarin Speakers.Chi-Hsin Chen, Lisa Gershkoff-Stowe, Chih-Yi Wu, Hintat Cheung & Chen Yu - 2017 - Cognitive Science 41 (6):1485-1509.
    Two experiments were conducted to examine adult learners' ability to extract multiple statistics in simultaneously presented visual and auditory input. Experiment 1 used a cross‐situational learning paradigm to test whether English speakers were able to use co‐occurrences to learn word‐to‐object mappings and concurrently form object categories based on the commonalities across training stimuli. Experiment 2 replicated the first experiment and further examined whether speakers of Mandarin, a language in which final syllables of object names are more predictive of (...)
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  38. Clinical intuition versus statistics: Different modes of tacit knowledge in clinical epidemiology and evidence-based medicine.Hillel D. Braude - 2009 - Theoretical Medicine and Bioethics 30 (3):181-198.
    Despite its phenomenal success since its inception in the early nineteen-nineties, the evidence-based medicine movement has not succeeded in shaking off an epistemological critique derived from the experiential or tacit dimensions of clinical reasoning about particular individuals. This critique claims that the evidence-based medicine model does not take account of tacit knowing as developed by the philosopher Michael Polanyi. However, the epistemology of evidence-based medicine is premised on the elimination of the tacit dimension from clinical judgment. (...)
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  39.  71
    Understanding climate change with statistical downscaling and machine learning.Julie Jebeile, Vincent Lam & Tim Räz - 2020 - Synthese (1-2):1-21.
    Machine learning methods have recently created high expectations in the climate modelling context in view of addressing climate change, but they are often considered as non-physics-based ‘black boxes’ that may not provide any understanding. However, in many ways, understanding seems indispensable to appropriately evaluate climate models and to build confidence in climate projections. Relying on two case studies, we compare how machine learning and standard statistical techniques affect our ability to understand the climate system. For that (...)
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  40.  50
    Rational statistical inference: A critical component for word learning.Fei Xu & Joshua B. Tenenbaum - 2001 - Behavioral and Brain Sciences 24 (6):1123-1124.
    In order to account for how children can generalize words beyond a very limited set of labeled examples, Bloom's proposal of word learning requires two extensions: a better understanding of the “general learning and memory abilities” involved, and a principled framework for integrating multiple conflicting constraints on word meaning. We propose a framework based on Bayesian statistical inference that meets both of those needs.
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  41.  42
    Rules vs. statistics in implicit learning of biconditional grammars.Axel Cleeremans - unknown
    A significant part of everyday learning occurs incidentally — a process typically described as implicit learning. A central issue in this domain and others, such as language acquisition, is the extent to which performance depends on the acquisition and deployment of abstract rules. Shanks and colleagues [22], [11] have suggested (1) that discrimination between grammatical and ungrammatical instances of a biconditional grammar requires the acquisition and use of abstract rules, and (2) that training conditions — in particular whether (...)
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  42. Sequential Expectations: The Role of Prediction‐Based Learning in Language.Jennifer B. Misyak, Morten H. Christiansen & J. Bruce Tomblin - 2010 - Topics in Cognitive Science 2 (1):138-153.
    Prediction‐based processes appear to play an important role in language. Few studies, however, have sought to test the relationship within individuals between prediction learning and natural language processing. This paper builds upon existing statistical learning work using a novel paradigm for studying the on‐line learning of predictive dependencies. Within this paradigm, a new “prediction task” is introduced that provides a sensitive index of individual differences for developing probabilistic sequential expectations. Across three interrelated experiments, the prediction (...)
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  43.  14
    No-Reference Stereoscopic Image Quality Assessment Based on Binocular Statistical Features and Machine Learning.Peng Xu, Man Guo, Lei Chen, Weifeng Hu, Qingshan Chen & Yujun Li - 2021 - Complexity 2021:1-14.
    Learning a deep structure representation for complex information networks is a vital research area, and assessing the quality of stereoscopic images or videos is challenging due to complex 3D quality factors. In this paper, we explore how to extract effective features to enhance the prediction accuracy of perceptual quality assessment. Inspired by the structure representation of the human visual system and the machine learning technique, we propose a no-reference quality assessment scheme for stereoscopic images. More specifically, the (...) features of the gradient magnitude and Laplacian of Gaussian responses are extracted to form binocular quality-predictive features. After feature extraction, these features of distorted stereoscopic image and its human perceptual score are used to construct a statistical regression model with the machine learning technique. Experimental results on the benchmark databases show that the proposed model generates image quality prediction well correlated with the human visual perception and delivers highly competitive performance with the typical and representative methods. The proposed scheme can be further applied to the real-world applications on video broadcasting and 3D multimedia industry. (shrink)
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  44.  18
    The Growth of Children's Semantic and Phonological Networks: Insight From 10 Languages.Abdellah Fourtassi, Yuan Bian & Michael C. Frank - 2020 - Cognitive Science 44 (7):e12847.
    Children tend to produce words earlier when they are connected to a variety of other words along the phonological and semantic dimensions. Though these semantic and phonological connectivity effects have been extensively documented, little is known about their underlying developmental mechanism. One possibility is that learning is driven by lexical network growth where highly connected words in the child's early lexicon enable learning of similar words. Another possibility is that learning is driven by highly connected words in (...)
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  45.  7
    Multiblock data fusion in statistics and machine learning.Age K. Smilde - 2022 - Chichester, West Sussex, UK: Wiley. Edited by Tormod Næs & Kristian H. Liland.
    Combining information from two or possibly several blocks of data is gaining increased attention and importance in several areas of science and industry. Typical examples can be found in chemistry, spectroscopy, metabolomics, genomics, systems biology and sensory science. Many methods and procedures have been proposed and used in practice. The area goes under different names: data integration, data fusion, multiblock analyses, multiset analyses and a few more. This book is an attempt to give an up-to-date treatment of the most used (...)
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  46.  95
    A comparison of problem-based learning and conventional teaching in nursing ethics education.Chiou-Fen Lin, Meei-Shiow Lu, Chun-Chih Chung & Che-Ming Yang - 2010 - Nursing Ethics 17 (3):373-382.
    The aim of this study was to compare the learning effectiveness of peer tutored problem-based learning and conventional teaching of nursing ethics in Taiwan. The study adopted an experimental design. The peer tutored problem-based learning method was applied to an experimental group and the conventional teaching method to a control group. The study sample consisted of 142 senior nursing students who were randomly assigned to the two groups. All the students were tested for their nursing (...)
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  47.  9
    Learning in nature: An amplified human rights-based framework.Elena Tuparevska - 2023 - Educational Philosophy and Theory 55 (10):1159-1169.
    Human beings are spending less time in nature than previous generations. Without opportunities to interact with nature, we are unable to forge deeper connections with the natural world, leading to indifference and unwillingness to protect it. At the same time, climate change has led to biodiversity loss and new threats such as pandemics, making the issue of the disconnection between humans and nature even more pertinent. This article proposes a modified human rights-based framework to education that incorporates nature as (...)
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  48.  33
    Model-based learning problem taxonomies.Richard M. Golden - 1997 - Behavioral and Brain Sciences 20 (1):73-74.
    A fundamental problem with the Clark & Thornton definition of a type-1 problem (requirement 2) is identified. An alternative classical statistical formulation is proposed where a type-1 (learnable) problem corresponds to the case where the learning machine is capable of representing its statistical environment.
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  49.  39
    Rules vs. Statistics in Implicit Learning of Biconditional Grammars.Bert Timmermans - unknown
    A significant part of everyday learning occurs incidentally — a process typically described as implicit learning. A central issue in this domain and others, such as language acquisition, is the extent to which performance depends on the acquisition and deployment of abstract rules. Shanks and colleagues [22], [11] have suggested (1) that discrimination between grammatical and ungrammatical instances of a biconditional grammar requires the acquisition and use of abstract rules, and (2) that training conditions — in particular whether (...)
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  50.  13
    Being bird and sensory learning activities: Multimodal and arts-based pedagogies in the ‘Anthropocene’.Sally Windsor & Dawn Sanders - 2023 - Educational Philosophy and Theory 55 (11):1220-1236.
    There is little room left for doubt or even debate at the severity of the ecological, indeed planetary crises that we find ourselves in during this period coined the Anthropocene. As educators working in the face of these crises, we have asked ourselves the question ‘how do we carry on?’ We reflect on a set of sensory, multimodal, meditative and arts-based pedagogical activities that bridge the geographical, biological, sociological and environmental dimensions of learning using the concepts from Hannah (...)
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