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Simulating melodic and harmonic expectations for tonal cadences using probabilistic models

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posted on 2017-09-08, 09:55 authored by David R. W. Sears, Marcus T. Pearce, William E. Caplin, Stephen McAdams

This study examines how the mind’s predictive mechanisms contribute to the perception of cadential closure during music listening. Using the Information Dynamics of Music model (or IDyOM) to simulate the formation of schematic expectations—a finite-context (or n-gram) model that predicts the next event in a musical stimulus by acquiring knowledge through unsupervised statistical learning of sequential structure—we predict the terminal melodic and harmonic events from 245 exemplars of the five most common cadence categories from the classical style. Our findings demonstrate that (1) terminal events from cadential contexts are more predictable than those from non-cadential contexts; (2) models of cadential strength advanced in contemporary cadence typologies reflect the formation of schematic expectations; and (3) a significant decrease in predictability follows the terminal note and chord events of the cadential formula.

Funding

Funding was provided by a Richard H. Tomlinson fellowship and a Quebec doctoral fellowship from the Programme de bourses d’excellence pour étudiants étrangers awarded to David Sears, a UK Engineering and Physical Sciences Research Council [grant number EP/M000702/1] awarded to Marcus Pearce, a Canadian Social Sciences and Humanities Research Council [grant number 410-2010-1091] and James McGill Professorship awarded to William E. Caplin, and Canadian Natural Sciences and Engineering Research Council [RGPIN 2015-05280] and Social Sciences and Humanities Research Council [grant number 410-2009-2201] grants and Canada Research Chair [grant number 950-223484] awarded to Stephen McAdams.

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    Journal of New Music Research

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