CARRNN: A Continuous Autoregressive Recurrent Neural Network for Deep Representation Learning from Sporadic Temporal Data

Publikation: Working paperPreprintForskning

Standard

CARRNN : A Continuous Autoregressive Recurrent Neural Network for Deep Representation Learning from Sporadic Temporal Data. / Mehdipour Ghazi, Mostafa; Sørensen, Lauge ; Ourselin, Sebastien; Nielsen, Mads.

arXiv.org, 2021.

Publikation: Working paperPreprintForskning

Harvard

Mehdipour Ghazi, M, Sørensen, L, Ourselin, S & Nielsen, M 2021 'CARRNN: A Continuous Autoregressive Recurrent Neural Network for Deep Representation Learning from Sporadic Temporal Data' arXiv.org.

APA

Mehdipour Ghazi, M., Sørensen, L., Ourselin, S., & Nielsen, M. (2021). CARRNN: A Continuous Autoregressive Recurrent Neural Network for Deep Representation Learning from Sporadic Temporal Data. arXiv.org.

Vancouver

Mehdipour Ghazi M, Sørensen L, Ourselin S, Nielsen M. CARRNN: A Continuous Autoregressive Recurrent Neural Network for Deep Representation Learning from Sporadic Temporal Data. arXiv.org. 2021.

Author

Mehdipour Ghazi, Mostafa ; Sørensen, Lauge ; Ourselin, Sebastien ; Nielsen, Mads. / CARRNN : A Continuous Autoregressive Recurrent Neural Network for Deep Representation Learning from Sporadic Temporal Data. arXiv.org, 2021.

Bibtex

@techreport{7e7afc6b4956488db550f86f6989134b,
title = "CARRNN: A Continuous Autoregressive Recurrent Neural Network for Deep Representation Learning from Sporadic Temporal Data",
abstract = "Learning temporal patterns from multivariate longitudinal data is challenging especially in cases when data is sporadic, as often seen in, e.g., healthcare applications where the data can suffer from irregularity and asynchronicity as the time between consecutive data points can vary across features and samples, hindering the application of existing deep learning models that are constructed for complete, evenly spaced data with fixed sequence lengths. In this paper, a novel deep learning-based model is developed for modeling multiple temporal features in sporadic data using an integrated deep learning architecture based on a recurrent neural network (RNN) unit and a continuous-time autoregressive (CAR) model. The proposed model, called CARRNN, uses a generalized discrete-time autoregressive model that is trainable end-to-end using neural networks modulated by time lags to describe the changes caused by the irregularity and asynchronicity. It is applied to multivariate time-series regression tasks using data provided for Alzheimer's disease progression modeling and intensive care unit (ICU) mortality rate prediction, where the proposed model based on a gated recurrent unit (GRU) achieves the lowest prediction errors among the proposed RNN-based models and state-of-the-art methods using GRUs and long short-term memory (LSTM) networks in their architecture.",
author = "{Mehdipour Ghazi}, Mostafa and Lauge S{\o}rensen and Sebastien Ourselin and Mads Nielsen",
year = "2021",
language = "English",
publisher = "arXiv.org",
type = "WorkingPaper",
institution = "arXiv.org",

}

RIS

TY - UNPB

T1 - CARRNN

T2 - A Continuous Autoregressive Recurrent Neural Network for Deep Representation Learning from Sporadic Temporal Data

AU - Mehdipour Ghazi, Mostafa

AU - Sørensen, Lauge

AU - Ourselin, Sebastien

AU - Nielsen, Mads

PY - 2021

Y1 - 2021

N2 - Learning temporal patterns from multivariate longitudinal data is challenging especially in cases when data is sporadic, as often seen in, e.g., healthcare applications where the data can suffer from irregularity and asynchronicity as the time between consecutive data points can vary across features and samples, hindering the application of existing deep learning models that are constructed for complete, evenly spaced data with fixed sequence lengths. In this paper, a novel deep learning-based model is developed for modeling multiple temporal features in sporadic data using an integrated deep learning architecture based on a recurrent neural network (RNN) unit and a continuous-time autoregressive (CAR) model. The proposed model, called CARRNN, uses a generalized discrete-time autoregressive model that is trainable end-to-end using neural networks modulated by time lags to describe the changes caused by the irregularity and asynchronicity. It is applied to multivariate time-series regression tasks using data provided for Alzheimer's disease progression modeling and intensive care unit (ICU) mortality rate prediction, where the proposed model based on a gated recurrent unit (GRU) achieves the lowest prediction errors among the proposed RNN-based models and state-of-the-art methods using GRUs and long short-term memory (LSTM) networks in their architecture.

AB - Learning temporal patterns from multivariate longitudinal data is challenging especially in cases when data is sporadic, as often seen in, e.g., healthcare applications where the data can suffer from irregularity and asynchronicity as the time between consecutive data points can vary across features and samples, hindering the application of existing deep learning models that are constructed for complete, evenly spaced data with fixed sequence lengths. In this paper, a novel deep learning-based model is developed for modeling multiple temporal features in sporadic data using an integrated deep learning architecture based on a recurrent neural network (RNN) unit and a continuous-time autoregressive (CAR) model. The proposed model, called CARRNN, uses a generalized discrete-time autoregressive model that is trainable end-to-end using neural networks modulated by time lags to describe the changes caused by the irregularity and asynchronicity. It is applied to multivariate time-series regression tasks using data provided for Alzheimer's disease progression modeling and intensive care unit (ICU) mortality rate prediction, where the proposed model based on a gated recurrent unit (GRU) achieves the lowest prediction errors among the proposed RNN-based models and state-of-the-art methods using GRUs and long short-term memory (LSTM) networks in their architecture.

M3 - Preprint

BT - CARRNN

PB - arXiv.org

ER -

ID: 300683684