text
stringlengths 0
820
|
---|
4 |
Accepted as a paper at ICLR 2023 Workshop on Machine Learning for Remote Sensing |
ACKNOWLEDGMENTS |
Esther Rolf was supported by the Harvard Data Science Initiative (HDSI) and the Center for Re- |
search on Computation and Society (CRCS). Thank you to Konstantin Klemmer, Caleb Robinson, |
and Jessie Finocchiaro for feedback on earlier drafts of this work. |
REFERENCES |
Antti Airola, Jonne Pohjankukka, Johanna Torppa, Maarit Middleton, Vesa Nyk ¨anen, Jukka Heikko- |
nen, and Tapio Pahikkala. The spatial leave-pair-out cross-validation method for reliable AUC |
estimation of spatial classifiers. Data Mining and Knowledge Discovery , 33(3):730–747, 2019. |
Luigi Boschetti, Stephen V Stehman, and David P Roy. A stratified random sampling design in |
space and time for regional to global scale burned area product validation. Remote sensing of |
environment , 186:465–478, 2016. |
Alexander Brenning. Spatial machine-learning model diagnostics: A model-agnostic distance-based |
approach. International Journal of Geographical Information Science , pp. 1–23, 2022. |
Dick J Brus. Statistical approaches for spatial sample survey: Persistent misconceptions and new |
developments. European Journal of Soil Science , 72(2):686–703, 2021. |
Marshall Burke, Anne Driscoll, David B Lobell, and Stefano Ermon. Using satellite imagery to |
understand and promote sustainable development. Science , 371(6535):eabe8628, 2021. |
Guanghua Chi, Han Fang, Sourav Chatterjee, and Joshua E Blumenstock. Microestimates of wealth |
for all low-and middle-income countries. Proceedings of the National Academy of Sciences , 119 |
(3):e2113658119, 2022. |
Ian Dowman and Hannes I Reuter. Global geospatial data from earth observation: Status and issues. |
International Journal of Digital Earth , 10(4):328–341, 2017. |
Wala Draidi Areed, Aiden Price, Kathryn Arnett, and Kerrie Mengersen. Spatial statistical machine |
learning models to assess the relationship between development vulnerabilities and educational |
factors in children in queensland, australia. BMC Public Health , 22(1):1–12, 2022. |
Yoan Fourcade, Aur ´elien G Besnard, and Jean Secondi. Paintings predict the distribution of species, |
or the challenge of selecting environmental predictors and evaluation statistics. Global Ecology |
and Biogeography , 27(2):245–256, 2018. |
Carlo Gaetan and Xavier Guyon. Spatial statistics and modeling , volume 90. Springer, 2010. |
Robert Haining. The special nature of spatial data. The SAGE Handbook of Spatial Analysis. Los |
Angeles: SAGE Publications , pp. 5–23, 2009. |
J´ulio Hoffimann, Maciel Zortea, Breno De Carvalho, and Bianca Zadrozny. Geostatistical learning: |
Challenges and opportunities. Frontiers in Applied Mathematics and Statistics , 7:689393, 2021. |
Neal Jean, Marshall Burke, Michael Xie, W Matthew Davis, David B Lobell, and Stefano Ermon. |
Combining satellite imagery and machine learning to predict poverty. Science , 353(6301):790– |
794, 2016. |
Konstantin Klemmer and Daniel B Neill. Auxiliary-task learning for geographic data with au- |
toregressive embeddings. In Proceedings of the 29th International Conference on Advances in |
Geographic Information Systems , pp. 141–144, 2021. |
Pang Wei Koh, Shiori Sagawa, Henrik Marklund, Sang Michael Xie, Marvin Zhang, Akshay Bal- |
subramani, Weihua Hu, Michihiro Yasunaga, Richard Lanas Phillips, Irena Gao, et al. Wilds: A |
benchmark of in-the-wild distribution shifts. In International Conference on Machine Learning , |
pp. 5637–5664. PMLR, 2021. |
K´evin Le Rest, David Pinaud, Pascal Monestiez, Jo ¨el Chadoeuf, and Vincent Bretagnolle. Spatial |
leave-one-out cross-validation for variable selection in the presence of spatial autocorrelation. |
Global ecology and biogeography , 23(7):811–820, 2014. |
5 |
Accepted as a paper at ICLR 2023 Workshop on Machine Learning for Remote Sensing |
Sharon L Lohr. Sampling: design and analysis . Chapman and Hall/CRC, 2021. |
Aaron E Maxwell, Timothy A Warner, and Luis Andr ´es Guill ´en. Accuracy assessment in convo- |
lutional neural network-based deep learning remote sensing studies—part 1: Literature review. |
Remote Sensing , 13(13):2450, 2021. |
Hanna Meyer and Edzer Pebesma. Machine learning-based global maps of ecological variables and |
the challenge of assessing them. Nature Communications , 13(1):1–4, 2022. |
Hanna Meyer, Christoph Reudenbach, Stephan W ¨ollauer, and Thomas Nauss. Importance of spatial |
predictor variable selection in machine learning applications–moving from data reproduction to |
spatial prediction. Ecological Modelling , 411:108815, 2019. |
Carles Mil `a, Jorge Mateu, Edzer Pebesma, and Hanna Meyer. Nearest neighbour distance matching |
leave-one-out cross-validation for map validation. Methods in Ecology and Evolution , 2022. |
Margaret Mitchell, Simone Wu, Andrew Zaldivar, Parker Barnes, Lucy Vasserman, Ben Hutchinson, |
Elena Spitzer, Inioluwa Deborah Raji, and Timnit Gebru. Model cards for model reporting. In |
Proceedings of the conference on fairness, accountability, and transparency , pp. 220–229, 2019. |
Catherine Nakalembe. Characterizing agricultural drought in the Karamoja subregion of Uganda |
with meteorological and satellite-based indices. Natural Hazards , 91(3):837–862, 2018. |
Behnam Nikparvar and Jean-Claude Thill. Machine learning of spatial data. ISPRS International |
Journal of Geo-Information , 10(9):600, 2021. |
Kristine Nilsen, Natalia Tejedor-Garavito, Douglas R Leasure, C Edson Utazi, Corrine W Ruk- |
tanonchai, Adelle S Wigley, Claire A Dooley, Zoe Matthews, and Andrew J Tatem. A review of |
geospatial methods for population estimation and their use in constructing reproductive, mater- |
nal, newborn, child and adolescent health service indicators. BMC health services research , 21 |
(1):1–10, 2021. |
Ruth Y Oliver, Carsten Meyer, Ajay Ranipeta, Kevin Winner, and Walter Jetz. Global and national |
trends, gaps, and opportunities in documenting and monitoring species distributions. PLoS Biol- |
ogy, 19(8):e3001336, 2021. |
Madhava Paliyam, Catherine Nakalembe, Kevin Liu, Richard Nyiawung, and Hannah Kerner. |
Street2sat: A machine learning pipeline for generating ground-truth geo-referenced labeled |
datasets from street-level images. In Tackling Climate Change with Machine Learning Workshop |
at the International Conference on Machine Learning , 2021. |
Pierre Ploton, Fr ´ed´eric Mortier, Maxime R ´ejou-M ´echain, Nicolas Barbier, Nicolas Picard, Vivien |
Rossi, Carsten Dormann, Guillaume Cornu, Ga ¨elle Viennois, Nicolas Bayol, et al. Spatial val- |
idation reveals poor predictive performance of large-scale ecological mapping models. Nature |
communications , 11(1):1–11, 2020. |
Jonne Pohjankukka, Tapio Pahikkala, Paavo Nevalainen, and Jukka Heikkonen. Estimating the |
prediction performance of spatial models via spatial k-fold cross validation. International Journal |
of Geographical Information Science , 31(10):2001–2019, 2017. |
Jonathan Proctor, Tamma Carleton, and Sandy Sum. Parameter recovery using remotely sensed |
variables. Working Paper 30861, National Bureau of Economic Research, January 2023. URL |
http://www.nber.org/papers/w30861 . |
David R Roberts, V olker Bahn, Simone Ciuti, Mark S Boyce, Jane Elith, Gurutzeta Guillera-Arroita, |
Severin Hauenstein, Jos ´e J Lahoz-Monfort, Boris Schr ¨oder, Wilfried Thuiller, et al. Cross- |
validation strategies for data with temporal, spatial, hierarchical, or phylogenetic structure. Ecog- |
raphy , 40(8):913–929, 2017. |
Caleb Robinson, Anthony Ortiz, Hogeun Park, Nancy Lozano, Jon Kher Kaw, Tina Sederholm, |
Rahul Dodhia, and Juan M Lavista Ferres. Fast building segmentation from satellite imagery and |
few local labels. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern |
Recognition , pp. 1463–1471, 2022. |
6 |
Accepted as a paper at ICLR 2023 Workshop on Machine Learning for Remote Sensing |