Results for 'TRACX'

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  1.  27
    TRACX: A recognition-based connectionist framework for sequence segmentation and chunk extraction.Robert M. French, Caspar Addyman & Denis Mareschal - 2011 - Psychological Review 118 (4):614-636.
  2.  11
    Chunking Versus Transitional Probabilities: Differentiating Between Theories of Statistical Learning.Samantha N. Emerson & Christopher M. Conway - 2023 - Cognitive Science 47 (5):e13284.
    There are two main approaches to how statistical patterns are extracted from sequences: The transitional probability approach proposes that statistical learning occurs through the computation of probabilities between items in a sequence. The chunking approach, including models such as PARSER and TRACX, proposes that units are extracted as chunks. Importantly, the chunking approach suggests that the extraction of full units weakens the processing of subunits while the transitional probability approach suggests that both units and subunits should strengthen. Previous findings (...)
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  3.  5
    A Recurrent Connectionist Model of Melody Perception: An Exploration Using TRACX2.Daniel Defays, Robert M. French & Barbara Tillmann - 2023 - Cognitive Science 47 (4):e13283.
    Are similar, or even identical, mechanisms used in the computational modeling of speech segmentation, serial image processing, and music processing? We address this question by exploring how TRACX2, a recognition‐based, recursive connectionist autoencoder model of chunking and sequence segmentation, which has successfully simulated speech and serial‐image processing, might be applied to elementary melody perception. The model, a three‐layer autoencoder that recognizes “chunks” of short sequences of intervals that have been frequently encountered on input, is trained on the tone intervals of (...)
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