A unifying partially-interpretable framework for neural network-based extreme quantile regression

08/16/2022
by   Jordan Richards, et al.
0

Risk management in many environmental settings requires an understanding of the mechanisms that drive extreme events. Useful metrics for quantifying such risk are extreme quantiles of response variables conditioned on predictor variables that describe e.g., climate, biosphere and environmental states. Typically these quantiles lie outside the range of observable data and so, for estimation, require specification of parametric extreme value models within a regression framework. Classical approaches in this context utilise linear or additive relationships between predictor and response variables and suffer in either their predictive capabilities or computational efficiency; moreover, their simplicity is unlikely to capture the truly complex structures that lead to the creation of extreme wildfires. In this paper, we propose a new methodological framework for performing extreme quantile regression using artificial neutral networks, which are able to capture complex non-linear relationships and scale well to high-dimensional data. The "black box" nature of neural networks means that they lack the desirable trait of interpretability often favoured by practitioners; thus, we combine aspects of linear, and additive, models with deep learning to create partially interpretable neural networks that can be used for statistical inference but retain high prediction accuracy. To complement this methodology, we further propose a novel point process model for extreme values which overcomes the finite lower-endpoint problem associated with the generalised extreme value class of distributions. Efficacy of our unified framework is illustrated on U.S. wildfire data with a high-dimensional predictor set and we illustrate vast improvements in predictive performance over linear and spline-based regression techniques.

READ FULL TEXT
research
08/16/2022

Neural Networks for Extreme Quantile Regression with an Application to Forecasting of Flood Risk

Risk assessment for extreme events requires accurate estimation of high ...
research
05/19/2023

The Deep Promotion Time Cure Model

We propose a novel method for predicting time-to-event in the presence o...
research
02/13/2020

A Unifying Network Architecture for Semi-Structured Deep Distributional Learning

We propose a unifying network architecture for deep distributional learn...
research
06/11/2021

Neural Networks for Partially Linear Quantile Regression

Deep learning has enjoyed tremendous success in a variety of application...
research
12/15/2022

Learning Inter-Annual Flood Loss Risk Models From Historical Flood Insurance Claims and Extreme Rainfall Data

Flooding is one of the most disastrous natural hazards, responsible for ...
research
12/04/2022

Insights into the drivers and spatio-temporal trends of extreme Mediterranean wildfires with statistical deep-learning

Extreme wildfires continue to be a significant cause of human death and ...
research
05/04/2023

Using interpretable boosting algorithms for modeling environmental and agricultural data

We describe how interpretable boosting algorithms based on ridge-regular...

Please sign up or login with your details

Forgot password? Click here to reset