A Quantum Natural Language Processing Approach to Musical Intelligence
Eduardo Reck Miranda, Richie Yeung, Anna Pearson, Konstantinos, Meichanetzidis, Bob Coecke

TL;DR
This paper introduces Quanthoven, a pioneering quantum natural language processing system for music, demonstrating how quantum computing can classify and compose meaningful musical pieces using interpretable, grammar-inspired models.
Contribution
It presents the first quantum NLP approach to music, encoding compositions as quantum circuits and enabling classification and generation of music with interpretability.
Findings
Quantum computer can classify music conveying different meanings.
Quantum circuits can encode musical compositions.
Demonstrated system can compose meaningful music pieces.
Abstract
There has been tremendous progress in Artificial Intelligence (AI) for music, in particular for musical composition and access to large databases for commercialisation through the Internet. We are interested in further advancing this field, focusing on composition. In contrast to current black-box AI methods, we are championing an interpretable compositional outlook on generative music systems. In particular, we are importing methods from the Distributional Compositional Categorical (DisCoCat) modelling framework for Natural Language Processing (NLP), motivated by musical grammars. Quantum computing is a nascent technology, which is very likely to impact the music industry in time to come. Thus, we are pioneering a Quantum Natural Language Processing (QNLP) approach to develop a new generation of intelligent musical systems. This work follows from previous experimental implementations…
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Taxonomy
TopicsNeural Networks and Applications
