The automatic composition of music with long-term structure is a central problem in music generation. Neural network-based models have been shown to perform relatively well in melody generation, but generating music with long-term structure is still a major challenge. This paper introduces a new approach for music modelling that combines recent advancements of transformer models with recurrent networks – the long-short term universal transformer (LSTUT), and compare its ability to predict music against current state-of-the-art music models. Our experiments are designed to push the boundaries of music models on considerably long music sequences – a crucial requirement for learning long-term structure effectively. Results show that the LSTUT ...
In this paper, we introduce new methods and discuss results of text-based LSTM (Long Short-Term Memo...
We present a model for capturing musical features and creating novel sequences of music, called the ...
Music generation using computers is a task that while interesting, has received comparatively littl...
The automatic composition of music with long-term structure is a central problem in music generation...
Master's Project (M.S.) University of Alaska Fairbanks, 2019In this paper, we compare the effectiven...
We demonstrate two generative models created by traininga recurrent neural network (RNN) with three ...
We propose an end-to-end approach for modeling polyphonic music with a novel graphical representatio...
Recurrent (neural) networks have been deployed as models for learning musical processes, by computat...
In this paper we take a connectionist machine learning approach to the problem of metre perception a...
Humans are able to learn and compose complex, yet beautiful, pieces of music as seen in e.g. the hig...
Learning symbolic music representations, especially disentangled representations with probabilistic ...
Existing approaches for generating multitrack music with transformer models have been limited to eit...
Long Short-Term Memory (LSTM) neural networks have been ef- fectively applied on learning and genera...
Automatic music generation is an interdisciplinary research topic that combines computational creati...
A big challenge in algorithmic composition is to devise a model that is both easily trainable and ab...
In this paper, we introduce new methods and discuss results of text-based LSTM (Long Short-Term Memo...
We present a model for capturing musical features and creating novel sequences of music, called the ...
Music generation using computers is a task that while interesting, has received comparatively littl...
The automatic composition of music with long-term structure is a central problem in music generation...
Master's Project (M.S.) University of Alaska Fairbanks, 2019In this paper, we compare the effectiven...
We demonstrate two generative models created by traininga recurrent neural network (RNN) with three ...
We propose an end-to-end approach for modeling polyphonic music with a novel graphical representatio...
Recurrent (neural) networks have been deployed as models for learning musical processes, by computat...
In this paper we take a connectionist machine learning approach to the problem of metre perception a...
Humans are able to learn and compose complex, yet beautiful, pieces of music as seen in e.g. the hig...
Learning symbolic music representations, especially disentangled representations with probabilistic ...
Existing approaches for generating multitrack music with transformer models have been limited to eit...
Long Short-Term Memory (LSTM) neural networks have been ef- fectively applied on learning and genera...
Automatic music generation is an interdisciplinary research topic that combines computational creati...
A big challenge in algorithmic composition is to devise a model that is both easily trainable and ab...
In this paper, we introduce new methods and discuss results of text-based LSTM (Long Short-Term Memo...
We present a model for capturing musical features and creating novel sequences of music, called the ...
Music generation using computers is a task that while interesting, has received comparatively littl...