Extreme Value Analysis (EVA) in Python
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Updated
Jul 30, 2024 - Python
Extreme Value Analysis (EVA) in Python
scikit-extremes is a basic statistical package to perform univariate extreme value calculations using Python
Modelling extreme values
Partially-Interpretable Neural Networks for Extreme Value modelling
The repo contains the main topics carried out in my master's thesis on operational risk. In particular, it is described how to implement the so called Loss Distribution Approach (LDA), which is considered the state-of-the-art method to compute capital charge among large banks.
Threshold Selection and Uncertainty for Extreme Value Analysis
CRAN Task View: Extreme Value Analysis
R package to apply the transformed-stationary extreme value analysis
Ratio-of-Uniforms Sampling for Bayesian Extreme Value Analysis
Loglikelihood Adjustment for Extreme Value Models
Likelihood-Based Inference for Time Series Extremes
Repository for the paper: "Causal Modelling of Heavy-Tailed Variables and Confounders with Application to River Flow".
Generalised Additive Extreme Value Models for Location, Scale and Shape
Extreme value analysis using MATLAB
Official implementation of "Extreme Value Meta-Learning for Few-Shot Open-Set Recognition of Hyperspectral Images" (TGRS'23)
This repository contains code, data, output, and figures associated with the A univariate extreme value analysis and change point detection of monthly discharge in Kali Kupang, Central Java, Indonesia manuscript
Extreme value statistics
Time Series Seasonal Extreme Studentized Deviate(S-ESD) in Python
Outputs for my thesis. Includes some R codes, mainly on analysis of spatial data
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