Prediction of hierarchical time series using structured regularization and its application to artificial neural networks.
This paper discusses the prediction of hierarchical time series, where each upper-level time series is calculated by summing appropriate lower-level time series. Forecasts for such hierarchical time series should be coherent, meaning that the forecast for an upper-level time series equals the sum of...
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Online Access: | https://doi.org/10.1371/journal.pone.0242099 |
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doaj-1712d4dee152453b82dd3adaac14e42e2021-03-04T12:27:25ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-011511e024209910.1371/journal.pone.0242099Prediction of hierarchical time series using structured regularization and its application to artificial neural networks.Tomokaze ShiratoriKen KobayashiYuichi TakanoThis paper discusses the prediction of hierarchical time series, where each upper-level time series is calculated by summing appropriate lower-level time series. Forecasts for such hierarchical time series should be coherent, meaning that the forecast for an upper-level time series equals the sum of forecasts for corresponding lower-level time series. Previous methods for making coherent forecasts consist of two phases: first computing base (incoherent) forecasts and then reconciling those forecasts based on their inherent hierarchical structure. To improve time series predictions, we propose a structured regularization method for completing both phases simultaneously. The proposed method is based on a prediction model for bottom-level time series and uses a structured regularization term to incorporate upper-level forecasts into the prediction model. We also develop a backpropagation algorithm specialized for applying our method to artificial neural networks for time series prediction. Experimental results using synthetic and real-world datasets demonstrate that our method is comparable in terms of prediction accuracy and computational efficiency to other methods for time series prediction.https://doi.org/10.1371/journal.pone.0242099 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Tomokaze Shiratori Ken Kobayashi Yuichi Takano |
spellingShingle |
Tomokaze Shiratori Ken Kobayashi Yuichi Takano Prediction of hierarchical time series using structured regularization and its application to artificial neural networks. PLoS ONE |
author_facet |
Tomokaze Shiratori Ken Kobayashi Yuichi Takano |
author_sort |
Tomokaze Shiratori |
title |
Prediction of hierarchical time series using structured regularization and its application to artificial neural networks. |
title_short |
Prediction of hierarchical time series using structured regularization and its application to artificial neural networks. |
title_full |
Prediction of hierarchical time series using structured regularization and its application to artificial neural networks. |
title_fullStr |
Prediction of hierarchical time series using structured regularization and its application to artificial neural networks. |
title_full_unstemmed |
Prediction of hierarchical time series using structured regularization and its application to artificial neural networks. |
title_sort |
prediction of hierarchical time series using structured regularization and its application to artificial neural networks. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2020-01-01 |
description |
This paper discusses the prediction of hierarchical time series, where each upper-level time series is calculated by summing appropriate lower-level time series. Forecasts for such hierarchical time series should be coherent, meaning that the forecast for an upper-level time series equals the sum of forecasts for corresponding lower-level time series. Previous methods for making coherent forecasts consist of two phases: first computing base (incoherent) forecasts and then reconciling those forecasts based on their inherent hierarchical structure. To improve time series predictions, we propose a structured regularization method for completing both phases simultaneously. The proposed method is based on a prediction model for bottom-level time series and uses a structured regularization term to incorporate upper-level forecasts into the prediction model. We also develop a backpropagation algorithm specialized for applying our method to artificial neural networks for time series prediction. Experimental results using synthetic and real-world datasets demonstrate that our method is comparable in terms of prediction accuracy and computational efficiency to other methods for time series prediction. |
url |
https://doi.org/10.1371/journal.pone.0242099 |
work_keys_str_mv |
AT tomokazeshiratori predictionofhierarchicaltimeseriesusingstructuredregularizationanditsapplicationtoartificialneuralnetworks AT kenkobayashi predictionofhierarchicaltimeseriesusingstructuredregularizationanditsapplicationtoartificialneuralnetworks AT yuichitakano predictionofhierarchicaltimeseriesusingstructuredregularizationanditsapplicationtoartificialneuralnetworks |
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1714802584051515392 |