Abstract
Neural networks have been employed to learn, generalize, and generate musical pieces with a constrained notion of creativity. Yet, these computational models typically suffer from an inability to characterize and reproduce long-term dependencies indicative of musical structure. Hierarchical and deep learning models propose to remedy this deficiency, but remain to be adequately proven. We describe and examine a novel dynamic bayesian network model with the goal of learning and reproducing longer-term formal musical structures. Incorporating a computational model of intrinsic motivation and novelty, this hierarchical probabilistic model is able to generate pastiches based on exemplars. Copyright © 2013, Association for the Advancement of Artificial Intelligence. All rights reserved.
Cite
CITATION STYLE
Smith, B. D. (2013). Tracking creative musical structure: The hunt for the intrinsically motivated generative agent. In AAAI Workshop - Technical Report (Vol. WS-13-22, pp. 101–107). AI Access Foundation. https://doi.org/10.1609/aiide.v9i5.12648
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