English

Spatiotemporal Data Mining: A Survey on Challenges and Open Problems

Machine Learning 2021-04-01 v1 Databases

Abstract

Spatiotemporal data mining (STDM) discovers useful patterns from the dynamic interplay between space and time. Several available surveys capture STDM advances and report a wealth of important progress in this field. However, STDM challenges and problems are not thoroughly discussed and presented in articles of their own. We attempt to fill this gap by providing a comprehensive literature survey on state-of-the-art advances in STDM. We describe the challenging issues and their causes and open gaps of multiple STDM directions and aspects. Specifically, we investigate the challenging issues in regards to spatiotemporal relationships, interdisciplinarity, discretisation, and data characteristics. Moreover, we discuss the limitations in the literature and open research problems related to spatiotemporal data representations, modelling and visualisation, and comprehensiveness of approaches. We explain issues related to STDM tasks of classification, clustering, hotspot detection, association and pattern mining, outlier detection, visualisation, visual analytics, and computer vision tasks. We also highlight STDM issues related to multiple applications including crime and public safety, traffic and transportation, earth and environment monitoring, epidemiology, social media, and Internet of Things.

Keywords

Cite

@article{arxiv.2103.17128,
  title  = {Spatiotemporal Data Mining: A Survey on Challenges and Open Problems},
  author = {Ali Hamdi and Khaled Shaban and Abdelkarim Erradi and Amr Mohamed and Shakila Khan Rumi and Flora Salim},
  journal= {arXiv preprint arXiv:2103.17128},
  year   = {2021}
}

Comments

Accepted for publication at Artificial Intelligence Review

R2 v1 2026-06-24T00:44:18.541Z