A five-year milestone: reflections on advances and limitations in GeoAI research DOI Creative Commons
Yingjie Hu, Michael F. Goodchild, A‐Xing Zhu

et al.

Annals of GIS, Journal Year: 2024, Volume and Issue: 30(1), P. 1 - 14

Published: Jan. 2, 2024

The Annual Meeting of the American Association Geographers (AAG) in 2023 marked a five-year milestone since first Geospatial Artificial Intelligence (GeoAI) Symposium was held at AAG 2018. In past five years, progress has been made while open questions remain. this context, we organized an panel and invited panellists to discuss advances limitations GeoAI research. commended successes, such as development spatially explicit models, production large-scale geographic datasets, use address real-world problems. also shared their thoughts on current research, which were considered opportunities engage theories geography, enhance model explainability, quantify uncertainty, improve generalizability. This article summarizes presentations from provides after-panel organizers. We hope that can make these more accessible interested readers help stimulate new ideas for future breakthroughs.

Language: Английский

Environmental factors for outdoor jogging in Beijing: Insights from using explainable spatial machine learning and massive trajectory data DOI
Wei Yang, Yingpeng Li, Yong Liu

et al.

Landscape and Urban Planning, Journal Year: 2023, Volume and Issue: 243, P. 104969 - 104969

Published: Dec. 4, 2023

Language: Английский

Citations

58

Interpretability of simple RNN and GRU deep learning models used to map land susceptibility to gully erosion DOI
Hamid Gholami,

Aliakbar Mohammadifar,

Shahram Golzari

et al.

The Science of The Total Environment, Journal Year: 2023, Volume and Issue: 904, P. 166960 - 166960

Published: Sept. 9, 2023

Language: Английский

Citations

46

A review of machine learning for modeling air quality: Overlooked but important issues DOI
Dié Tang, Yu Zhan, Fumo Yang

et al.

Atmospheric Research, Journal Year: 2024, Volume and Issue: 300, P. 107261 - 107261

Published: Jan. 21, 2024

Language: Английский

Citations

37

Comparative Analysis of the Seasonal Driving Factors of the Urban Heat Environment Using Machine Learning: Evidence from the Wuhan Urban Agglomeration, China, 2020 DOI Creative Commons
Ce Xu, Gaoliu Huang, Maomao Zhang

et al.

Atmosphere, Journal Year: 2024, Volume and Issue: 15(6), P. 671 - 671

Published: May 31, 2024

With the ongoing advancement of globalization significantly impacting ecological environment, continuous rise in Land Surface Temperature (LST) is increasingly jeopardizing human production and living conditions. This study aims to investigate seasonal variations LST its driving factors using mathematical models. Taking Wuhan Urban Agglomeration (WHUA) as a case study, it explores characteristics employs Principal Component Analysis (PCA) categorize factors. Additionally, compares traditional models with machine-learning select optimal model for this investigation. The main conclusions are follows. (1) WHUA’s exhibits significant differences among seasons demonstrates distinct spatial-clustering different seasons. (2) Compared geographic spatial models, Extreme Gradient Boosting (XGBoost) shows better explanatory power investigating effects LST. (3) Human Activity (HA) dominates influence throughout year positive correlation LST; Physical Geography (PG) negative Climate Weather (CW) show similar variation PG, peaking transition; Landscape Pattern (LP) weak LST, winter while being relatively inconspicuous summer transition. Finally, through comparative analysis multiple constructs framework exploring features aiming provide references guidance development WHUA regions.

Language: Английский

Citations

27

Integrating prior knowledge to build transformer models DOI Creative Commons
Pei Jiang, Takashi Obi, Yoshikazu Nakajima

et al.

International Journal of Information Technology, Journal Year: 2024, Volume and Issue: 16(3), P. 1279 - 1292

Published: Jan. 2, 2024

Abstract The big Artificial General Intelligence models inspire hot topics currently. black box problems of (AI) still exist and need to be solved urgently, especially in the medical area. Therefore, transparent reliable AI with small data are also urgently necessary. To build a trustable model data, we proposed prior knowledge-integrated transformer model. We first acquired knowledge using Shapley Additive exPlanations from various pre-trained machine learning models. Then, used construct compared our Feature Tokenization Transformer other classification tested on three open datasets one non-open public dataset Japan confirm feasibility methodology. Our results certified that perform better (1%) than general Meanwhile, methodology identified self-attention factors is nearly same, which needs explored future work. Moreover, research inspires endeavors exploring

Language: Английский

Citations

23

On the use of explainable AI for susceptibility modeling: Examining the spatial pattern of SHAP values DOI Creative Commons
Nan Wang, Hongyan Zhang, Ashok Dahal

et al.

Geoscience Frontiers, Journal Year: 2024, Volume and Issue: 15(4), P. 101800 - 101800

Published: Feb. 2, 2024

Hydro-morphological processes (HMP, any natural phenomenon contained within the spectrum defined between debris flows and flash floods) are globally occurring hazards which pose great threats to our society, leading fatalities economical losses. For this reason, understanding dynamics behind HMPs is needed aid in hazard risk assessment. In work, we take advantage of an explainable deep learning model extract global local interpretations HMP occurrences across whole Chinese territory. We use a neural network architecture interpret results through spatial pattern SHAP values. doing so, can understand prediction on hierarchical basis, looking at how predictor set controls overall susceptibility as well same level single mapping unit. Our accurately predicts with AUC values measured ten-fold cross-validation ranging 0.83 0.86. This predictive performance attests for excellent skill. The main difference respect traditional statistical tools that latter usually lead clear interpretation expense high performance, otherwise reached via machine/deep solutions, though interpretation. recent development AI key combine both strengths. explore combination context modeling. Specifically, demonstrate extent one enter new data-driven interpretation, supporting decision-making process disaster mitigation prevention actions.

Language: Английский

Citations

20

Risk-driven composition decoupling analysis for urban flooding prediction in high-density urban areas using Bayesian-Optimized LightGBM DOI
Shiqi Zhou, Dongqing Zhang, Mo Wang

et al.

Journal of Cleaner Production, Journal Year: 2024, Volume and Issue: 457, P. 142286 - 142286

Published: April 20, 2024

Language: Английский

Citations

19

Exploring the scale effect of urban thermal environment through XGBoost model DOI
Jingjuan He, Yijun Shi, Lihua Xu

et al.

Sustainable Cities and Society, Journal Year: 2024, Volume and Issue: 114, P. 105763 - 105763

Published: Aug. 23, 2024

Language: Английский

Citations

19

The Dynamic Monitoring and Driving Forces Analysis of Ecological Environment Quality in the Tibetan Plateau Based on the Google Earth Engine DOI Creative Commons
Muhadaisi Airiken, Shuangcheng Li

Remote Sensing, Journal Year: 2024, Volume and Issue: 16(4), P. 682 - 682

Published: Feb. 14, 2024

As a region susceptible to the impacts of climate change, evaluating temporal and spatial variations in ecological environment quality (EEQ) potential influencing factors is crucial for ensuring security Tibetan Plateau. This study utilized Google Earth Engine (GEE) platform construct Remote Sensing-based Ecological Index (RSEI) examined dynamics Plateau’s EEQ from 2000 2022. The findings revealed that RSEI Plateau predominantly exhibited slight degradation trend 2022, with multi-year average 0.404. Utilizing SHAP (Shapley Additive Explanation) interpret XGBoost (eXtreme Gradient Boosting), identified natural as primary influencers on Plateau, temperature, soil moisture, precipitation variables exhibiting higher values, indicating their substantial contributions. interaction between temperature showed positive effect RSEI, value increasing rising precipitation. methodology results this could provide insights comprehensive understanding monitoring dynamic evolution amidst context change.

Language: Английский

Citations

16

A novel agricultural drought index based on multi-source remote sensing data and interpretable machine learning DOI Creative Commons
Hao Chen, Yang Ni, Xuanhua Song

et al.

Agricultural Water Management, Journal Year: 2025, Volume and Issue: 308, P. 109303 - 109303

Published: Jan. 16, 2025

Language: Английский

Citations

3