Gradient boosting with extreme-value theory for wildfire prediction
Jonathan Koh
Abstract
in the 2021 Extreme Value Analysis data challenge, dealing with the prediction of wildfire counts and sizes over the contiguous US. Our approach uses ideas from extreme-value theory in a machine learning context with theoretically justified loss functions for gradient boosting. We devise a spatial cross-validation scheme and show that in our setting it provides a better proxy for test set performance than naive cross-validation. The predictions are benchmarked against boosting approaches with different loss functions, and perform competitively in terms of the score criterion, finally placing second in the competition ranking.
Topics & Concepts
Boosting (machine learning)Extreme value theoryGradient boostingMathematicsCross-validationArtificial intelligenceMachine learningProxy (statistics)Extreme learning machineComputer scienceData miningStatisticsRandom forestArtificial neural networkLandslides and related hazardsFire effects on ecosystemsGaussian Processes and Bayesian Inference