Results for 'Learning features'

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  1. Causal feature learning for utility-maximizing agents.David Kinney & David Watson - 2020 - In David Kinney & David Watson (eds.), International Conference on Probabilistic Graphical Models. pp. 257–268.
    Discovering high-level causal relations from low-level data is an important and challenging problem that comes up frequently in the natural and social sciences. In a series of papers, Chalupka etal. (2015, 2016a, 2016b, 2017) develop a procedure forcausal feature learning (CFL) in an effortto automate this task. We argue that CFL does not recommend coarsening in cases where pragmatic considerations rule in favor of it, and recommends coarsening in cases where pragmatic considerations rule against it. We propose a new (...)
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  2.  29
    Distinctive features, categorical perception, and probability learning: Some applications of a neural model.James A. Anderson, Jack W. Silverstein, Stephen A. Ritz & Randall S. Jones - 1977 - Psychological Review 84 (5):413-451.
  3.  38
    Interrogating Feature Learning Models to Discover Insights Into the Development of Human Expertise in a Real‐Time, Dynamic Decision‐Making Task.Catherine Sibert, Wayne D. Gray & John K. Lindstedt - 2017 - Topics in Cognitive Science 9 (2):374-394.
    Tetris provides a difficult, dynamic task environment within which some people are novices and others, after years of work and practice, become extreme experts. Here we study two core skills; namely, choosing the goal or objective function that will maximize performance and a feature-based analysis of the current game board to determine where to place the currently falling zoid so as to maximize the goal. In Study 1, we build cross-entropy reinforcement learning models to determine whether different goals result (...)
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  4.  21
    Feature Biases in Early Word Learning: Network Distinctiveness Predicts Age of Acquisition.Tomas Engelthaler & Thomas T. Hills - 2016 - Cognitive Science 40 (6):n/a-n/a.
    Do properties of a word's features influence the order of its acquisition in early word learning? Combining the principles of mutual exclusivity and shape bias, the present work takes a network analysis approach to understanding how feature distinctiveness predicts the order of early word learning. Distance networks were built from nouns with edge lengths computed using various distance measures. Feature distinctiveness was computed as a distance measure, showing how far an object in a network is from other (...)
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  5.  36
    Interrogating Feature Learning Models to Discover Insights Into the Development of Human Expertise in a Real‐Time, Dynamic Decision‐Making Task.Catherine Sibert, Wayne D. Gray & John K. Lindstedt - 2016 - Topics in Cognitive Science 8 (4).
    Tetris provides a difficult, dynamic task environment within which some people are novices and others, after years of work and practice, become extreme experts. Here we study two core skills; namely, choosing the goal or objective function that will maximize performance and a feature-based analysis of the current game board to determine where to place the currently falling zoid so as to maximize the goal. In Study 1, we build cross-entropy reinforcement learning models to determine whether different goals result (...)
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  6.  28
    Feature discovery by competitive learning.David E. Rumelhart & David Zipser - 1985 - Cognitive Science 9 (1):75-112.
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  7.  13
    Learning Boolean concepts in the presence of many irrelevant features.Hussein Almuallim & Thomas G. Dietterich - 1994 - Artificial Intelligence 69 (1-2):279-305.
  8.  11
    Machine Learning Based Classification of Resting-State fMRI Features Exemplified by Metabolic State.Arkan Al-Zubaidi, Alfred Mertins, Marcus Heldmann, Kamila Jauch-Chara & Thomas F. Münte - 2019 - Frontiers in Human Neuroscience 13.
  9.  22
    Feature Extraction of Plant Leaf Using Deep Learning.Muhammad Umair Ahmad, Sidra Ashiq, Gran Badshah, Ali Haider Khan & Muzammil Hussain - 2022 - Complexity 2022:1-8.
    Half a million species of plants could be existing in the world. Classification of plants based on leaf features is a critical job as feature extraction from binary images of leaves may result in duplicate identification. However, leaves are an effective means of differentiating plant species because of their unique characteristics like area, diameter, perimeter, circularity, aspect ratio, solidity, eccentricity, and narrow factor. This paper presents the extraction of plant leaf gas alongside other features from the camera images (...)
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  10.  3
    Feature Biases in Early Word Learning: Network Distinctiveness Predicts Age of Acquisition.Tomas Engelthaler & Thomas T. Hills - 2017 - Cognitive Science 41 (S1):120-140.
    Do properties of a word's features influence the order of its acquisition in early word learning? Combining the principles of mutual exclusivity and shape bias, the present work takes a network analysis approach to understanding how feature distinctiveness predicts the order of early word learning. Distance networks were built from nouns with edge lengths computed using various distance measures. Feature distinctiveness was computed as a distance measure, showing how far an object in a network is from other (...)
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  11. Learning and teaching as emergent features of informal settings: An ethnographic study in an environmental action group.Leanna Boyer & Wolff‐Michael Roth - 2006 - Science Education 90 (6):1028-1049.
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  12. The feature-label-order effect in symbolic learning.Michael Ramscar, Daniel Yarlett, Melody Dye & Nal Kalchbrenner - 2010 - Cognitive Science 34 (7).
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  13.  9
    Contextual features of problem-solving and social learning give rise to spurious associations, the raw materials for the evolution of rituals.M. T. Daniel - 2006 - Behavioral and Brain Sciences 29 (6).
  14.  32
    Flexible features, connectionism, and computational learning theory.Georg Dorffner - 1998 - Behavioral and Brain Sciences 21 (1):24-25.
    This commentary is an elaboration on Schyns, Goldstone & Thibaut's proposal for flexible features in categorization in the light of three areas not explicitly discussed by the authors: connectionist models of categorization, computational learning theory, and constructivist theories of the mind. In general, the authors' proposal is strongly supported, paving the way for model extensions and for interesting novel cognitive research. Nor is the authors' proposal incompatible with theories positing some fixed set of features.
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  15.  26
    Feature learning during the acquisition of perceptual expertise.Pepper Williams, Isabel Gauthier & Michael J. Tarr - 1998 - Behavioral and Brain Sciences 21 (1):40-41.
    Does feature evolution stop once we have acquired sufficient features to perform a recognition task? With extended practice, novices may develop a more sophisticated feature space that allows them to perform more accurately or quickly. Our work on perceptual expertise indicates that feature learning and reorganization can continue even after an initial set of features is available to represent a novel class of objects.
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  16.  31
    New-feature learning: How common is it?Robert M. French & Mark Weaver - 1998 - Behavioral and Brain Sciences 21 (1):26-26.
    The fixed-feature viewpoint Schyns et al. are opposing is not a widely held theoretical position but rather a working assumption of cognitive psychologists – and thus a straw man. We accept their demonstration of new-feature acquisition, but question its ubiquity in category learning. We suggest that new-feature learning (at least in adults) is rarer and more difficult than the authors suggest.
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  17.  4
    Feature distribution learning by passive exposure.David Pascucci, Gizay Ceylan & Árni Kristjánsson - 2022 - Cognition 227 (C):105211.
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  18.  15
    Identifying Features of Bodily Expression As Indicators of Emotional Experience during Multimedia Learning.Valentin Riemer, Julian Frommel, Georg Layher, Heiko Neumann & Claudia Schrader - 2017 - Frontiers in Psychology 8.
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  19.  26
    Surface features can deeply affect artificial grammar learning.Luis Jiménez, Helena Mendes Oliveira & Ana Paula Soares - 2020 - Consciousness and Cognition 80:102919.
  20.  37
    Learning to recognize features of valid textual entailments.Christopher Manning - unknown
    separated from evaluating entailment. Current approaches to semantic inference in question answer-.
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  21.  33
    Feature learning, multiresolution analysis, and symbol grounding.Karl F. MacDorman - 1998 - Behavioral and Brain Sciences 21 (1):32-33.
    Cognitive theories based on a fixed feature set suffer from frame and symbol grounding problems. Flexible features and other empirically acquired constraints (e.g., analog-to-analog mappings) provide a framework for letting extrinsic relations influence symbol manipulation. By offering a biologically plausible basis for feature learning, nonorthogonal multiresolution analysis and dimensionality reduction, informed by functional constraints, may contribute to a solution to the symbol grounding problem.
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  22. Adaptation to Novel Accents: Feature-Based Learning of Context-Sensitive Phonological Regularities.Katrin Skoruppa & Sharon Peperkamp - 2011 - Cognitive Science 35 (2):348-366.
    This paper examines whether adults can adapt to novel accents of their native language that contain unfamiliar context-dependent phonological alternations. In two experiments, French participants listen to short stories read in accented speech. Their knowledge of the accents is then tested in a forced-choice identification task. In Experiment 1, two groups of listeners are exposed to newly created French accents in which certain vowels harmonize or disharmonize, respectively, to the rounding of the preceding vowel. Despite the cross-linguistic predominance of vowel (...)
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  23.  59
    The Effects of Feature-Label-Order and Their Implications for Symbolic Learning.Michael Ramscar, Daniel Yarlett, Melody Dye, Katie Denny & Kirsten Thorpe - 2010 - Cognitive Science 34 (6):909-957.
    Symbols enable people to organize and communicate about the world. However, the ways in which symbolic knowledge is learned and then represented in the mind are poorly understood. We present a formal analysis of symbolic learning—in particular, word learning—in terms of prediction and cue competition, and we consider two possible ways in which symbols might be learned: by learning to predict a label from the features of objects and events in the world, and by learning (...)
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  24.  7
    Deep Learning Image Feature Recognition Algorithm for Judgment on the Rationality of Landscape Planning and Design.Bin Hu - 2021 - Complexity 2021:1-15.
    This paper uses an improved deep learning algorithm to judge the rationality of the design of landscape image feature recognition. The preprocessing of the image is proposed to enhance the data. The deficiencies in landscape feature extraction are further addressed based on the new model. Then, the two-stage training method of the model is used to solve the problems of long training time and convergence difficulties in deep learning. Innovative methods for zoning and segmentation training of landscape pattern (...)
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  25.  42
    Contextual features of problem-solving and social learning give rise to spurious associations, the raw materials for the evolution of rituals.Daniel M. T. Fessler - 2006 - Behavioral and Brain Sciences 29 (6):617-618.
    If rituals persist in part because of their memory-taxing attributes, from whence do they arise? I suggest that magical practices form the core of rituals, and that many such practices derive from learned pseudo-causal associations. Spurious associations are likely to be acquired during problem-solving under conditions of ambiguity and danger, and are often a consequence of imitative social learning. (Published Online February 8 2007).
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  26.  19
    Ensemble Learning-Based Person Re-identification with Multiple Feature Representations.Yun Yang, Xiaofang Liu, Qiongwei Ye & Dapeng Tao - 2018 - Complexity 2018:1-12.
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  27. Discrimination learning with the distinctive feature on positive or negative trials.H. M. Jenkins & Robert S. Sainsbury - 1970 - In D. Mostofsky (ed.), Attention: Contemporary Theory and Analysis. Appleton-Century-Crofts. pp. 239--273.
  28.  67
    When learning to classify by relations is easier than by features.Bradley C. Love & Marc T. Tomlinson - 2010 - Thinking and Reasoning 16 (4):372-401.
  29.  27
    Feature saliency and feedback information interactively impact visual category learning.Rubi Hammer, Vladimir Sloutsky & Kalanit Grill-Spector - 2015 - Frontiers in Psychology 6.
  30.  7
    Feature Extraction of Broken Glass Cracks in Road Traffic Accident Site Based on Deep Learning.Shuai Liang - 2021 - Complexity 2021:1-12.
    This paper studies the feature extraction and middle-level expression of Convolutional Neural Network convolutional layer glass broken and cracked at the scene of road traffic accident. The image pyramid is constructed and used as the input of the CNN model, and the convolutional layer road traffic accident scene glass breakage and crack characteristics at each scale in the pyramid are extracted separately, and then the depth descriptors at different image scales are extracted. In order to improve the discriminative power of (...)
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  31.  15
    Learning arbitrary stimulus-reward associations for naturalistic stimuli involves transition from learning about features to learning about objects.Shiva Farashahi, Jane Xu, Shih-Wei Wu & Alireza Soltani - 2020 - Cognition 205 (C):104425.
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  32. Facial features for affective state detection in learning environments.B. T. McDaniel, S. K. D'Mello, B. G. King, Patrick Chipman, Kristy Tapp & A. C. Graesser - 2007 - In McNamara D. S. & Trafton J. G. (eds.), Proceedings of the 29th Annual Cognitive Science Society. Cognitive Science Society.
     
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  33. Features of Resource-Based Learning in Professional Development-The Case of the Acee.Vladmir Russo - 2004 - Quaestio: Revista de Estudos Em Educação 6 (1).
     
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  34. Learning new features of representation.R. L. Goldstone & P. Schyns - 1994 - In Ashwin Ram & Kurt Eiselt (eds.), Proceedings of the Sixteenth Annual Conference of the Cognitive Science Society. Erlbaum. pp. 974--978.
  35.  17
    Feature-negative effect in serial learning.Steven J. Haggbloom & Frank K. Sheppard - 1986 - Bulletin of the Psychonomic Society 24 (3):217-218.
  36.  70
    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 (...)
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  37.  14
    Learning to Spell in Arabic: The Impact of Script-Specific Visual-Orthographic Features.Rana Yassin, David L. Share & Yasmin Shalhoub-Awwad - 2020 - Frontiers in Psychology 11.
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  38.  9
    Digital Dialogue in Learning: Cognitive, Social, Existential Features and Risks.Liudmila Vladimirovna Baeva - 2022 - RUDN Journal of Philosophy 26 (2):439-453.
    Digitalization of socio-cultural phenomena, including the education system, generates transformations of their qualitative characteristics and parameters, which requires research from the standpoint of methodological analysis and assessment of their possible consequences on humans and society. A significant element of the digital environment, in general, and educational, in particular, is the dialogue, the role of which has both cognitive and ideological, existential, social aspects. The purpose of the research is a philosophical analysis of the digital transformation of dialogue in the context (...)
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  39.  6
    Selection of relevant features and examples in machine learning.Avrim L. Blum & Pat Langley - 1997 - Artificial Intelligence 97 (1-2):245-271.
  40.  11
    Children’s Learning From Interactive eBooks: Simple Irrelevant Features Are Not Necessarily Worse Than Relevant Ones.Roxanne A. Etta & Heather L. Kirkorian - 2019 - Frontiers in Psychology 9.
    The purpose of this study was to investigate experimentally the extent to which children’s novel word learning and story comprehension from eBooks depends on the relevance of interactive eBook features. A story was created in the lab to incorporate novel word-object pairs. The story was read to preschoolers (3-5 years old, N = 103) using one of the three books: noninteractive control, interactive-relevant, interactive-irrelevant. Novel word learning and story comprehension were assessed with posttests in which children picked (...)
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  41. Evaluation and Security Features in e-learning.Daniela Chuda - 2009 - Communication and Cognition. Monographies 42 (1-2):63-73.
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  42.  4
    Digital Art Feature Association Mining Based on the Machine Learning Algorithm.Zhiying Wu & Yuan Chen - 2021 - Complexity 2021:1-11.
    With the development of computer hardware and software, digital art is a new discipline. It uses computers and digital technology as tools to perform artistic expression. It can be expanded to various binary numerical codes with computers as the center and can also be refined to various categories of creation with computers. The research scope is set in the field of digital art, and all kinds of accidental factors of digital art creation based on the machine learning algorithm are (...)
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  43.  6
    Research on target feature extraction and location positioning with machine learning algorithm.Licheng Li - 2020 - Journal of Intelligent Systems 30 (1):429-437.
    The accurate positioning of target is an important link in robot technology. Based on machine learning algorithm, this study firstly analyzed the location positioning principle of binocular vision of robot, then extracted features of the target using speeded-up robust features (SURF) method, positioned the location using Back Propagation Neural Networks (BPNN) method, and tested the method through experiments. The experimental results showed that the feature extraction of SURF method was fast, about 0.2 s, and was less affected (...)
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  44.  51
    Internal attention to features in visual short-term memory guides object learning.Judith E. Fan & Nicholas B. Turk-Browne - 2013 - Cognition 129 (2):292-308.
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  45.  26
    Phonological distinctive features as cues in learning.James J. Jenkins, Donald J. Foss & Joseph H. Greenberg - 1968 - Journal of Experimental Psychology 77 (2):200.
  46.  13
    Do Additional Features Help or Hurt Category Learning? The Curse of Dimensionality in Human Learners.Wai Keen Vong, Andrew T. Hendrickson, Danielle J. Navarro & Amy Perfors - 2019 - Cognitive Science 43 (3):e12724.
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  47.  4
    Do Additional Features Help or Hurt Category Learning? The Curse of Dimensionality in Human Learners.Wai Keen Vong, Andrew T. Hendrickson, Danielle J. Navarro & Andrew Perfors - 2019 - Cognitive Science 43 (3).
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  48.  6
    A brain-like classification method for computed tomography images based on adaptive feature matching dual-source domain heterogeneous transfer learning.Yehang Chen & Xiangmeng Chen - 2022 - Frontiers in Human Neuroscience 16:1019564.
    Transfer learning can improve the robustness of deep learning in the case of small samples. However, when the semantic difference between the source domain data and the target domain data is large, transfer learning easily introduces redundant features and leads to negative transfer. According the mechanism of the human brain focusing on effective features while ignoring redundant features in recognition tasks, a brain-like classification method based on adaptive feature matching dual-source domain heterogeneous transfer (...) is proposed for the preoperative aided diagnosis of lung granuloma and lung adenocarcinoma for patients with solitary pulmonary solid nodule in the case of small samples. The method includes two parts: (1) feature extraction and (2) feature classification. In the feature extraction part, first, By simulating the feature selection mechanism of the human brain in the process of drawing inferences about other cases from one instance, an adaptive selected-based dual-source domain feature matching network is proposed to determine the matching weight of each pair of feature maps and each pair of convolution layers between the two source networks and the target network, respectively. These two weights can, respectively, adaptive select the features in the source network that are conducive to the learning of the target task, and the destination of feature transfer to improve the robustness of the target network. Meanwhile, a target network based on diverse branch block is proposed, which made the target network have different receptive fields and complex paths to further improve the feature expression ability of the target network. Second, the convolution kernel of the target network is used as the feature extractor to extract features. In the feature classification part, an ensemble classifier based on sparse Bayesian extreme learning machine is proposed that can automatically decide how to combine the output of base classifiers to improve the classification performance. Finally, the experimental results (the AUCs were 0.9542 and 0.9356, respectively) on the data of two center data show that this method can provide a better diagnostic reference for doctors. (shrink)
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  49.  14
    A study of certain features of punishment in serial learning.W. McTeer - 1931 - Journal of Experimental Psychology 14 (5):453.
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  50.  17
    Impact of feature saliency on visual category learning.Rubi Hammer - 2015 - Frontiers in Psychology 6.
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