Air passenger forecasting using Neural Granger causal Google trend queries

Air passenger forecasting provides important insights for both Governments and Aerospace industries to plan their for their future activities. Google Trends can provide a large database of historical search query frequency which can be used as explanatory variables for air passenger forecasting. Thi...

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Main Authors: Long, Chan Li, Guleria, Yash, Alam, Sameer
Other Authors: Air Traffic Management Research Institute
Format: Article
Language:English
Published: 2022
Subjects:
Online Access:https://hdl.handle.net/10356/160638
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1606382022-07-29T02:03:29Z Air passenger forecasting using Neural Granger causal Google trend queries Long, Chan Li Guleria, Yash Alam, Sameer Air Traffic Management Research Institute Engineering::Civil engineering Granger Causal Neural Network Air passenger forecasting provides important insights for both Governments and Aerospace industries to plan their for their future activities. Google Trends can provide a large database of historical search query frequency which can be used as explanatory variables for air passenger forecasting. This paper explores the use of a Neural Granger Causality model to select the best search query that can forecast arrival air passengers in Singapore Changi Airport. Neural Granger Causality models are an extension of the original Granger Causality model that uses neural networks instead of Linear Vector Auto-Regressive (VAR) models to capture non-linear relations between the targets and the tested explanatory variables. In this paper, 1317 Google Trends search queries are tested for Neural Granger Causality of which 171 queries are deemed as Neural Granger Causal for forecasting Singapore Changi Airport monthly arrival passengers. The model that used all 171 Neural Granger Queries achieved the highest R2 value (R2=0.919) with the lowest Standard Deviation (SD=0.363) compared to the other models which was not filtered for Neural Granger Causality. The 171 queries found are search terms that reflects a unidirectional neural granger causal relationship with the number of arrival air passengers at Changi Airport. 2022-07-29T02:03:28Z 2022-07-29T02:03:28Z 2021 Journal Article Long, C. L., Guleria, Y. & Alam, S. (2021). Air passenger forecasting using Neural Granger causal Google trend queries. Journal of Air Transport Management, 95, 102083-. https://dx.doi.org/10.1016/j.jairtraman.2021.102083 0969-6997 https://hdl.handle.net/10356/160638 10.1016/j.jairtraman.2021.102083 2-s2.0-85107033049 95 102083 en Journal of Air Transport Management © 2021 Elsevier Ltd. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Civil engineering
Granger Causal
Neural Network
spellingShingle Engineering::Civil engineering
Granger Causal
Neural Network
Long, Chan Li
Guleria, Yash
Alam, Sameer
Air passenger forecasting using Neural Granger causal Google trend queries
description Air passenger forecasting provides important insights for both Governments and Aerospace industries to plan their for their future activities. Google Trends can provide a large database of historical search query frequency which can be used as explanatory variables for air passenger forecasting. This paper explores the use of a Neural Granger Causality model to select the best search query that can forecast arrival air passengers in Singapore Changi Airport. Neural Granger Causality models are an extension of the original Granger Causality model that uses neural networks instead of Linear Vector Auto-Regressive (VAR) models to capture non-linear relations between the targets and the tested explanatory variables. In this paper, 1317 Google Trends search queries are tested for Neural Granger Causality of which 171 queries are deemed as Neural Granger Causal for forecasting Singapore Changi Airport monthly arrival passengers. The model that used all 171 Neural Granger Queries achieved the highest R2 value (R2=0.919) with the lowest Standard Deviation (SD=0.363) compared to the other models which was not filtered for Neural Granger Causality. The 171 queries found are search terms that reflects a unidirectional neural granger causal relationship with the number of arrival air passengers at Changi Airport.
author2 Air Traffic Management Research Institute
author_facet Air Traffic Management Research Institute
Long, Chan Li
Guleria, Yash
Alam, Sameer
format Article
author Long, Chan Li
Guleria, Yash
Alam, Sameer
author_sort Long, Chan Li
title Air passenger forecasting using Neural Granger causal Google trend queries
title_short Air passenger forecasting using Neural Granger causal Google trend queries
title_full Air passenger forecasting using Neural Granger causal Google trend queries
title_fullStr Air passenger forecasting using Neural Granger causal Google trend queries
title_full_unstemmed Air passenger forecasting using Neural Granger causal Google trend queries
title_sort air passenger forecasting using neural granger causal google trend queries
publishDate 2022
url https://hdl.handle.net/10356/160638
_version_ 1739837473491517440