The wide-ranging impact of deep learning models implies significant application in music analysis, retrieval, and generation. Initial findings from musical application of a conditional restricted Boltzmann machine (CRBM) show promise towards informing creative computation. Taking advantage of the CRBM's ability to model temporal dependencies full reconstructions of pieces are achievable given a few starting seed notes. The generation of new material using figuration from the training corpus requires restrictions on the size and memory space of the CRBM, forcing associative rather than perfect recall. Musical analysis and information complexity measures show the musical encoding to be the primary determinant of the nature of the generated re...
AbstractIn this paper, we develop associative memorization architecture of the musical features from...
This dissertation utilizes a multi-method approach to investigate the processes underlying musical l...
We apply deep learning methods, specifically long short-term memory (LSTM) networks, to music transc...
This report demonstrated the use of conditioning inputs, together with an appropriate model architec...
Machine-learning models have been successfully applied to musical composition in a variety of forms,...
Music generation is increasingly recognized as an attractive field of study in Deep Learning. This p...
Special issue on Deep learning for music and audioInternational audienceIn addition to traditional t...
Music is an essential part of everyone’s life and plays a very important role in many of the media a...
International audienceThis book is a survey and an analysis of different ways of using deep learning...
The aim of this thesis is to review the current state of machine learning in music composition and t...
This paper describes two applications of conditional restricted Boltzmann machines (CRBMs) to the ta...
The discipline of Deep Learning has been recognized for its strong computational tools, which have b...
International audienceThis paper is a survey and an analysis of different ways of using deep learnin...
© Springer International Publishing AG 2017. In this paper the generative and feature extracting pow...
Practicing musical instruments can be experienced as repetitive and boring and is often a major barr...
AbstractIn this paper, we develop associative memorization architecture of the musical features from...
This dissertation utilizes a multi-method approach to investigate the processes underlying musical l...
We apply deep learning methods, specifically long short-term memory (LSTM) networks, to music transc...
This report demonstrated the use of conditioning inputs, together with an appropriate model architec...
Machine-learning models have been successfully applied to musical composition in a variety of forms,...
Music generation is increasingly recognized as an attractive field of study in Deep Learning. This p...
Special issue on Deep learning for music and audioInternational audienceIn addition to traditional t...
Music is an essential part of everyone’s life and plays a very important role in many of the media a...
International audienceThis book is a survey and an analysis of different ways of using deep learning...
The aim of this thesis is to review the current state of machine learning in music composition and t...
This paper describes two applications of conditional restricted Boltzmann machines (CRBMs) to the ta...
The discipline of Deep Learning has been recognized for its strong computational tools, which have b...
International audienceThis paper is a survey and an analysis of different ways of using deep learnin...
© Springer International Publishing AG 2017. In this paper the generative and feature extracting pow...
Practicing musical instruments can be experienced as repetitive and boring and is often a major barr...
AbstractIn this paper, we develop associative memorization architecture of the musical features from...
This dissertation utilizes a multi-method approach to investigate the processes underlying musical l...
We apply deep learning methods, specifically long short-term memory (LSTM) networks, to music transc...