Towards a Framework to Evaluate Generative Time Series Models for Mobility Data Features

被引:0
作者
Ribeiro, Iran F. [1 ]
Comarela, Giovanni [1 ]
Rocha, Antonio A. A. [2 ]
Mota, Vinicius F. S. [1 ]
机构
[1] Univ Fed Espirito Santo, Vitoria, Brazil
[2] Univ Fed Fluminense, Niteroi, Brazil
基金
巴西圣保罗研究基金会;
关键词
Generative adversarial networks; time series; Mobility; NEURAL-NETWORK; DYNAMICS; ARIMA;
D O I
10.5753/jisa.2023.3887
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Understanding human mobility has implications for several areas, such as immigration, disease control, mobile networks performance, and urban planning. However, gathering and disseminating mobility data face challenges such as data collection, handling of missing information, and privacy protection. An alternative to tackle these problems consists of modeling raw data to generate synthetic data, preserving its characteristics while maintaining its privacy. Thus, we propose MobDeep, a unified framework to compare and evaluate generative models of time series based on mobility data features, which considers statistical and deep learning-based modeling. To achieve its goal, MobDeep receives as input statistical or Generative Adversarial Network-based models (GANs) and the raw mobility data, and outputs synthetic data and the metrics comparing the synthetic with the original data. In such way, MobDeep allows evaluating synthetic datasets through qualitative and quantitative metrics. As a proof-of-concept, MobDeep implements one classical statistical model (ARIMA) and three GANs models. To demonstrate MobDeep on distinct mobility scenarios, we considered an open dataset containing information about bicycle rentals in US cities and a private dataset containing information about a Brazilian metropolis's urban traffic. MobDeep allows observing how each model performs in specific scenarios, depending on the characteristics of the mobility data. Therefore, by using MobDeep researchers can evaluate their resulting models, improving the fidelity of the synthetic data regarding the original dataset.
引用
收藏
页码:258 / 272
页数:15
相关论文
共 58 条
[1]   Pros and cons of GAN evaluation measures: New developments [J].
Borji, Ali .
COMPUTER VISION AND IMAGE UNDERSTANDING, 2022, 215
[2]  
Brock A, 2019, Arxiv, DOI arXiv:1809.11096
[3]  
Brockwell P.J., 2009, Time Series: Theory and Methods
[4]   Generative Adversarial Networks in Time Series: A Systematic Literature Review [J].
Brophy, Eoin ;
Wang, Zhengwei ;
She, Qi ;
Ward, Tomas .
ACM COMPUTING SURVEYS, 2023, 55 (10)
[5]   Recent Advances of Generative Adversarial Networks in Computer Vision [J].
Cao, Yang-Jie ;
Jia, Li-Li ;
Chen, Yong-Xia ;
Lin, Nan ;
Yang, Cong ;
Zhang, Bo ;
Liu, Zhi ;
Li, Xue-Xiang ;
Dai, Hong-Hua .
IEEE ACCESS, 2019, 7 :14985-15006
[6]  
Chollet F., 2018, DEEP LEARNING PYTHON, V361
[7]   A Complete Review on the Application of Statistical Methods for Evaluating Internet Traffic Usage [J].
Cunha, Vanice Canuto ;
Zavala, Arturo Zavala ;
Magoni, Damien ;
Inacio, Pedro R. M. ;
Freire, Mario M. .
IEEE ACCESS, 2022, 10 :128433-128455
[8]  
Esteban C, 2017, Arxiv, DOI arXiv:1706.02633
[9]   Event labeling combining ensemble detectors and background knowledge [J].
Fanaee-T H. ;
Gama J. .
Progress in Artificial Intelligence, 2014, 2 (2-3) :113-127
[10]   Learning to Simulate Human Mobility [J].
Feng, Jie ;
Yang, Zeyu ;
Xu, Fengli ;
Yu, Haisu ;
Wang, Mudan ;
Li, Yong .
KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, :3426-3433