Mobility Prediction Using a Weighted Markov Model Based on Mobile User Classification
The vast amounts of mobile communication data collected by mobile operators can provide important insights regarding epidemic transmission or traffic patterns. By analyzing historical data and extracting user location information, various methods can be used to predict the mobility of mobile users....
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doaj-cd49a26a4d8445da861d15645e4913ad2021-03-04T00:03:47ZengMDPI AGSensors1424-82202021-03-01211740174010.3390/s21051740Mobility Prediction Using a Weighted Markov Model Based on Mobile User ClassificationMing Yan0Shuijing Li1Chien Aun Chan2Yinghua Shen3Ying Yu4State Key Laboratory of Media Convergence and Communication, Communication University of China, Beijing 100024, ChinaSchool of Information and Communications Engineering, Communication University of China, Beijing 100024, ChinaInsta-Wireless, Notting Hill, VIC 3168, AustraliaSchool of Information and Communications Engineering, Communication University of China, Beijing 100024, ChinaSchool of Information and Communications Engineering, Communication University of China, Beijing 100024, ChinaThe vast amounts of mobile communication data collected by mobile operators can provide important insights regarding epidemic transmission or traffic patterns. By analyzing historical data and extracting user location information, various methods can be used to predict the mobility of mobile users. However, existing prediction algorithms are mainly based on the historical data of all users at an aggregated level and ignore the heterogeneity of individual behavior patterns. To improve prediction accuracy, this paper proposes a weighted Markov prediction model based on mobile user classification. The trajectory information of a user is extracted first by analyzing real mobile communication data, where the complexity of a user’s trajectory is measured using the mobile trajectory entropy. Second, classification criteria are proposed based on different user behavior patterns, and all users are classified with machine learning algorithms. Finally, according to the characteristics of each user classification, the step threshold and the weighting coefficients of the weighted Markov prediction model are optimized, and mobility prediction is performed for each user classification. Our results show that the optimized weighting coefficients can improve the performance of the weighted Markov prediction model.https://www.mdpi.com/1424-8220/21/5/1740mobility predictionweighted Markov modelmobile useruser classificationmobile communication |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ming Yan Shuijing Li Chien Aun Chan Yinghua Shen Ying Yu |
spellingShingle |
Ming Yan Shuijing Li Chien Aun Chan Yinghua Shen Ying Yu Mobility Prediction Using a Weighted Markov Model Based on Mobile User Classification Sensors mobility prediction weighted Markov model mobile user user classification mobile communication |
author_facet |
Ming Yan Shuijing Li Chien Aun Chan Yinghua Shen Ying Yu |
author_sort |
Ming Yan |
title |
Mobility Prediction Using a Weighted Markov Model Based on Mobile User Classification |
title_short |
Mobility Prediction Using a Weighted Markov Model Based on Mobile User Classification |
title_full |
Mobility Prediction Using a Weighted Markov Model Based on Mobile User Classification |
title_fullStr |
Mobility Prediction Using a Weighted Markov Model Based on Mobile User Classification |
title_full_unstemmed |
Mobility Prediction Using a Weighted Markov Model Based on Mobile User Classification |
title_sort |
mobility prediction using a weighted markov model based on mobile user classification |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2021-03-01 |
description |
The vast amounts of mobile communication data collected by mobile operators can provide important insights regarding epidemic transmission or traffic patterns. By analyzing historical data and extracting user location information, various methods can be used to predict the mobility of mobile users. However, existing prediction algorithms are mainly based on the historical data of all users at an aggregated level and ignore the heterogeneity of individual behavior patterns. To improve prediction accuracy, this paper proposes a weighted Markov prediction model based on mobile user classification. The trajectory information of a user is extracted first by analyzing real mobile communication data, where the complexity of a user’s trajectory is measured using the mobile trajectory entropy. Second, classification criteria are proposed based on different user behavior patterns, and all users are classified with machine learning algorithms. Finally, according to the characteristics of each user classification, the step threshold and the weighting coefficients of the weighted Markov prediction model are optimized, and mobility prediction is performed for each user classification. Our results show that the optimized weighting coefficients can improve the performance of the weighted Markov prediction model. |
topic |
mobility prediction weighted Markov model mobile user user classification mobile communication |
url |
https://www.mdpi.com/1424-8220/21/5/1740 |
work_keys_str_mv |
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1724232503037788160 |