Learning abstract visual concepts via probabilistic program induction in a Language of Thought
暂无分享,去创建一个
[1] F. van der Velde,et al. Neural blackboard architectures of combinatorial structures in cognition , 2006, Behavioral and Brain Sciences.
[2] E. S. Pearson,et al. THE USE OF CONFIDENCE OR FIDUCIAL LIMITS ILLUSTRATED IN THE CASE OF THE BINOMIAL , 1934 .
[3] Peter M. Vishton,et al. Rule learning by seven-month-old infants. , 1999, Science.
[4] F. Attneave. Symmetry, information, and memory for patterns. , 1955, The American journal of psychology.
[5] Noah D. Goodman,et al. Bootstrapping in a language of thought: A formal model of numerical concept learning , 2012, Cognition.
[6] F. Velde,et al. Neural blackboard architectures of combinatorial structures in cognition , 2006 .
[7] J. Siskind. A computational study of cross-situational techniques for learning word-to-meaning mappings , 1996, Cognition.
[8] Joshua B. Tenenbaum,et al. A Generative Theory of Similarity , 2005 .
[9] Joe Pater. The harmonic mind : from neural computation to optimality-theoretic grammar , 2009 .
[10] Ross W. Gayler,et al. Vector symbolic architectures are a viable alternative for Jackendoff's challenges , 2006, Behavioral and Brain Sciences.
[11] Michael C. Frank. Throwing out the Bayesian baby with the optimal bathwater: Response to Endress (2013) , 2013, Cognition.
[12] D. Medin,et al. The role of theories in conceptual coherence. , 1985, Psychological review.
[13] R. Nosofsky. Attention, similarity, and the identification-categorization relationship. , 1986, Journal of experimental psychology. General.
[14] J. Fodor,et al. Connectionism and cognitive architecture: A critical analysis , 1988, Cognition.
[15] Jacob Feldman,et al. Minimization of Boolean complexity in human concept learning , 2000, Nature.
[16] R. Jackendoff. Foundations of Language: Brain, Meaning, Grammar, Evolution , 2002 .
[17] Stefan Carlsson,et al. CNN Features Off-the-Shelf: An Astounding Baseline for Recognition , 2014, 2014 IEEE Conference on Computer Vision and Pattern Recognition Workshops.
[18] Trevor Darrell,et al. Caffe: Convolutional Architecture for Fast Feature Embedding , 2014, ACM Multimedia.
[19] Robert A. Jacobs,et al. From Sensory Signals to Modality-Independent Conceptual Representations: A Probabilistic Language of Thought Approach , 2015, PLoS Comput. Biol..
[20] Noah D. Goodman,et al. The logical primitives of thought: Empirical foundations for compositional cognitive models. , 2016, Psychological review.
[21] Sergio Gomez Colmenarejo,et al. Hybrid computing using a neural network with dynamic external memory , 2016, Nature.
[22] N. Chater,et al. Simplicity: a unifying principle in cognitive science? , 2003, Trends in Cognitive Sciences.
[23] Joshua B. Tenenbaum,et al. Human-level concept learning through probabilistic program induction , 2015, Science.
[24] Noah D. Goodman,et al. Theory learning as stochastic search in the language of thought , 2012 .
[25] D. Kersten,et al. Three-dimensional symmetric shapes are discriminated more efficiently than asymmetric ones. , 2003, Journal of the Optical Society of America. A, Optics, image science, and vision.
[26] A. Yuille,et al. Opinion TRENDS in Cognitive Sciences Vol.10 No.7 July 2006 Special Issue: Probabilistic models of cognition Vision as Bayesian inference: analysis by synthesis? , 2022 .
[27] LouAnn Gerken,et al. Decisions, decisions: infant language learning when multiple generalizations are possible , 2006, Cognition.
[28] Geoffrey E. Hinton. Tensor Product Variable Binding and the Representation of Symbolic Structures in Connectionist Systems , 1991 .
[29] Robert A Jacobs,et al. Learning multisensory representations for auditory-visual transfer of sequence category knowledge: a probabilistic language of thought approach , 2014, Psychonomic bulletin & review.
[30] W. Geisler. Ideal Observer Analysis , 2002 .
[31] Thomas L. Griffiths,et al. A Rational Analysis of Rule-Based Concept Learning , 2008, Cogn. Sci..
[32] Wilson S. Geisler,et al. Ideal Observer Analysis of Overt Attention , 2010 .
[33] R. Gómez,et al. Infant artificial language learning and language acquisition , 2000, Trends in Cognitive Sciences.
[34] Alex Graves,et al. DRAW: A Recurrent Neural Network For Image Generation , 2015, ICML.
[35] G. Marcus. The Algebraic Mind: Integrating Connectionism and Cognitive Science , 2001 .
[36] Geoffrey E. Hinton,et al. ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.
[37] J. H. Steiger. Tests for comparing elements of a correlation matrix. , 1980 .
[38] J. Tenenbaum. A Bayesian framework for concept learning , 1999 .
[39] Vladimir I. Levenshtein,et al. Binary codes capable of correcting deletions, insertions, and reversals , 1965 .
[40] Robert A. Jacobs,et al. Four Problems Solved by the Probabilistic Language of Thought , 2016 .
[41] Nando de Freitas,et al. Neural Programmer-Interpreters , 2015, ICLR.
[42] Charles Kemp,et al. Exploring the conceptual universe. , 2012, Psychological review.
[43] Joshua B. Tenenbaum,et al. Learning Structured Generative Concepts , 2010 .
[44] Alex Graves,et al. Neural Turing Machines , 2014, ArXiv.
[45] Joshua B. Tenenbaum,et al. Bootstrap Learning via Modular Concept Discovery , 2013, IJCAI.
[46] John E. Hummel,et al. Distributed representations of structure: A theory of analogical access and mapping. , 1997 .
[47] George Stiny,et al. Shape Grammars and the Generative Specification of Painting and Sculpture , 1971, IFIP Congress.
[48] J. Tenenbaum,et al. Generalization, similarity, and Bayesian inference. , 2001, The Behavioral and brain sciences.
[49] M. Leyton. Symmetry, Causality, Mind , 1999 .
[50] Michael C. Frank,et al. Three ideal observer models for rule learning in simple languages , 2011, Cognition.
[51] Feldman,et al. The Structure of Perceptual Categories , 1997, Journal of mathematical psychology.
[52] Raymond J. Dolan,et al. Anticipation and Choice Heuristics in the Dynamic Consumption of Pain Relief , 2015, PLoS Comput. Biol..