Deep Music Information Dynamics

02/01/2021
by   Shlomo Dubnov, et al.
0

Music comprises of a set of complex simultaneous events organized in time. In this paper we introduce a novel framework that we call Deep Musical Information Dynamics, which combines two parallel streams - a low rate latent representation stream that is assumed to capture the dynamics of a thought process contrasted with a higher rate information dynamics derived from the musical data itself. Motivated by rate-distortion theories of human cognition we propose a framework for exploring possible relations between imaginary anticipations existing in the listener's mind and information dynamics of the musical surface itself. This model is demonstrated for the case of symbolic (MIDI) data, as accounting for acoustic surface would require many more layers to capture instrument properties and performance expressive inflections. The mathematical framework is based on variational encoding that first establishes a high rate representation of the musical observations, which is then reduced using a bit-allocation method into a parallel low rate data stream. The combined loss considered here includes both the information rate in terms of time evolution for each stream, and the fidelity of encoding measured in terms of mutual information between the high and low rate representations. In the simulations presented in the paper we are able to juxtapose aspects of latent/imaginary surprisal versus surprisal of the music surface in a manner that is quantifiable and computationally tractable. The set of computational tools is discussed in the paper, suggesting that a trade off between compression and prediction are an important factor in the analysis and design of time-based music generative models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/24/2021

Towards Cross-Cultural Analysis using Music Information Dynamics

A music piece is both comprehended hierarchically, from sonic events to ...
research
01/15/2020

Learning Style-Aware Symbolic Music Representations by Adversarial Autoencoders

We address the challenging open problem of learning an effective latent ...
research
01/31/2018

Deep Predictive Models in Interactive Music

Automatic music generation is a compelling task where much recent progre...
research
06/21/2019

Query-based Deep Improvisation

In this paper we explore techniques for generating new music using a Var...
research
09/08/2021

Signal-domain representation of symbolic music for learning embedding spaces

A key aspect of machine learning models lies in their ability to learn e...
research
07/10/2019

Explicitly Conditioned Melody Generation: A Case Study with Interdependent RNNs

Deep generative models for symbolic music are typically designed to mode...
research
12/08/2020

A Geometric Framework for Pitch Estimation on Acoustic Musical Signals

This paper presents a geometric approach to pitch estimation (PE)-an imp...

Please sign up or login with your details

Forgot password? Click here to reset