Saved in:
Bibliographic Details
Main Authors: Claes, Yann, Huynh-Thu, Vân Anh, Geurts, Pierre
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2307.02229
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912189983490048
author Claes, Yann
Huynh-Thu, Vân Anh
Geurts, Pierre
author_facet Claes, Yann
Huynh-Thu, Vân Anh
Geurts, Pierre
contents Learning processes by exploiting restricted domain knowledge is an important task across a plethora of scientific areas, with more and more hybrid training methods additively combining data-driven and model-based approaches. Although the obtained models are more accurate than purely data-driven models, the optimization process usually comes with sensitive regularization constraints. Furthermore, while such hybrid methods have been tested in various scientific applications, they have been mostly tested on dynamical systems, with only limited study about the influence of each model component on global performance and parameter identification. In this work, we introduce a new hybrid training approach based on partial dependence, which removes the need for intricate regularization. Moreover, we assess the performance of hybrid modeling against traditional machine learning methods on standard regression problems. We compare, on both synthetic and real regression problems, several approaches for training such hybrid models. We focus on hybrid methods that additively combine a parametric term with a machine learning term and investigate model-agnostic training procedures. Therefore, experiments are carried out with different types of machine learning models, including tree-based models and artificial neural networks. We also extend our partial dependence optimization process for dynamical systems forecasting and compare it to existing schemes.
format Preprint
id arxiv_https___arxiv_org_abs_2307_02229
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Hybrid additive modeling with partial dependence for supervised regression and dynamical systems forecasting
Claes, Yann
Huynh-Thu, Vân Anh
Geurts, Pierre
Machine Learning
Learning processes by exploiting restricted domain knowledge is an important task across a plethora of scientific areas, with more and more hybrid training methods additively combining data-driven and model-based approaches. Although the obtained models are more accurate than purely data-driven models, the optimization process usually comes with sensitive regularization constraints. Furthermore, while such hybrid methods have been tested in various scientific applications, they have been mostly tested on dynamical systems, with only limited study about the influence of each model component on global performance and parameter identification. In this work, we introduce a new hybrid training approach based on partial dependence, which removes the need for intricate regularization. Moreover, we assess the performance of hybrid modeling against traditional machine learning methods on standard regression problems. We compare, on both synthetic and real regression problems, several approaches for training such hybrid models. We focus on hybrid methods that additively combine a parametric term with a machine learning term and investigate model-agnostic training procedures. Therefore, experiments are carried out with different types of machine learning models, including tree-based models and artificial neural networks. We also extend our partial dependence optimization process for dynamical systems forecasting and compare it to existing schemes.
title Hybrid additive modeling with partial dependence for supervised regression and dynamical systems forecasting
topic Machine Learning
url https://arxiv.org/abs/2307.02229