Interpretable machine learning for analysing heterogeneous drivers of geographic events in space-time. Issue 4 (3rd April 2022)
- Record Type:
- Journal Article
- Title:
- Interpretable machine learning for analysing heterogeneous drivers of geographic events in space-time. Issue 4 (3rd April 2022)
- Main Title:
- Interpretable machine learning for analysing heterogeneous drivers of geographic events in space-time
- Authors:
- Masrur, Arif
Yu, Manzhu
Mitra, Prasenjit
Peuquet, Donna
Taylor, Alan - Abstract:
- ABSTRACT: Machine learning (ML) interpretability has become increasingly crucial for identifying accurate and relevant structural relationships between spatial events and factors that explain them. Methodologically aspatial ML algorithms with an apparent high predictive power ignore non-stationary domain relationships in spatio-temporal data (e.g. dependence, heterogeneity), leading to incorrect interpretations and poor management decisions. This study addresses this critical methodological issue of 'interpretability' in ML-based modeling of structural relationships using the example of heterogeneous drivers of wildfires across the United States. Specifically, we present and evaluate a spatio-temporally interpretable random forest (iST-RF) that uses spatio-temporal sampling-based training and weighted prediction. Although the ultimate scientific objective is to derive interpretation in space-time, experiments show that iST-RF can improve predictive accuracy (76%) compared to the aspatial RF approach (70%) while enhancing interpretations of the trained model's spatio-temporal relevance for its ensemble prediction. This novel approach can help balance prediction and interpretation with fidelity in a spatial data science life cycle. However, challenges exist for predictive modeling when the dataset is very small because in such cases locally optimized sub-model's prediction performance can be suboptimal. With that caveat, our proposed approach is an ideal choice for identifyingABSTRACT: Machine learning (ML) interpretability has become increasingly crucial for identifying accurate and relevant structural relationships between spatial events and factors that explain them. Methodologically aspatial ML algorithms with an apparent high predictive power ignore non-stationary domain relationships in spatio-temporal data (e.g. dependence, heterogeneity), leading to incorrect interpretations and poor management decisions. This study addresses this critical methodological issue of 'interpretability' in ML-based modeling of structural relationships using the example of heterogeneous drivers of wildfires across the United States. Specifically, we present and evaluate a spatio-temporally interpretable random forest (iST-RF) that uses spatio-temporal sampling-based training and weighted prediction. Although the ultimate scientific objective is to derive interpretation in space-time, experiments show that iST-RF can improve predictive accuracy (76%) compared to the aspatial RF approach (70%) while enhancing interpretations of the trained model's spatio-temporal relevance for its ensemble prediction. This novel approach can help balance prediction and interpretation with fidelity in a spatial data science life cycle. However, challenges exist for predictive modeling when the dataset is very small because in such cases locally optimized sub-model's prediction performance can be suboptimal. With that caveat, our proposed approach is an ideal choice for identifying drivers of spatio-temporal events at country- or regional-scale studies. … (more)
- Is Part Of:
- International journal of geographical information science. Volume 36:Issue 4(2022)
- Journal:
- International journal of geographical information science
- Issue:
- Volume 36:Issue 4(2022)
- Issue Display:
- Volume 36, Issue 4 (2022)
- Year:
- 2022
- Volume:
- 36
- Issue:
- 4
- Issue Sort Value:
- 2022-0036-0004-0000
- Page Start:
- 692
- Page End:
- 719
- Publication Date:
- 2022-04-03
- Subjects:
- Spatial heterogeneity -- spatial modeling -- machine learning interpretability -- random forest -- wildfire
Geography -- Data processing -- Periodicals
Information storage and retrieval systems -- Periodicals
Géomatique -- Périodiques
Systèmes d'information -- Périodiques
910.285 - Journal URLs:
- http://www.tandfonline.com/loi/tgis20 ↗
http://www.tandfonline.com/ ↗ - DOI:
- 10.1080/13658816.2021.1965608 ↗
- Languages:
- English
- ISSNs:
- 1365-8816
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 4542.266150
British Library DSC - BLDSS-3PM
British Library HMNTS - ELD Digital store - Ingest File:
- 21717.xml