Qi Chen Bing Xue Mengjie Zhang Chen Evolving Insights: Genetic Programming for Symbolic Regression

Evolving Insights: Genetic Programming for Symbolic Regression

von Qi Chen Bing Xue Mengjie Zhang

Generalisation and Interpretability

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Beschreibung

This book explores the power of genetic programming for symbolic regression (GPSR), offering a unique pathway to discovering models that are both highly accurate and naturally interpretable. With a clear focus on the twin goals of generalisation and interpretability, the book introduces cutting-edge techniques such as representation learning, complexity control, semantic-aware operators, and multi-objective optimisation for GPSR. Each chapter blends foundational theory with empirical investigation, guiding readers through model development, evaluation, and experiments on a variety of scientific and engineering datasets. A central theme of this book is generalisation—the ability of a model to perform well on new, unseen data. Unlike traditional symbolic regression methods that risk overfitting, the techniques presented in this book aim to evolve models that not only fit the training data but also maintain performance on new, independent data. Readers will explore principled approaches to regularisation, semantic diversity preservation, and fitness evaluations to promote generalisation, all designed to build models that are robust and reliable in practical settings. Designed for researchers, data scientists, and research students, this book provides practical tools to evolve symbolic models that are interpretable, trustworthy, and effective in capturing meaningful patterns in data. Readers will benefit from structured frameworks for building interpretable models, proven strategies to reduce overfitting and improve robustness, and insights into model interpretability. Engaging case studies and examples throughout the book bring these methods to life, making Evolving Insights an essential resource for anyone seeking clarity and trust in machine learning.

This book explores the power of genetic programming for symbolic regression (GPSR), offering a unique pathway to discovering models that are both highly accurate and naturally interpretable. With a clear focus on the twin goals of generalisation and interpretability, the book introduces cutting-edge techniques such as representation learning, complexity control, semantic-aware operators, and multi-objective optimisation for GPSR. Each chapter blends foundational theory with empirical investigation, guiding readers through model development, evaluation, and experiments on a variety of scientific and engineering datasets.

A central theme of this book is generalisation—the ability of a model to perform well on new, unseen data. Unlike traditional symbolic regression methods that risk overfitting, the techniques presented in this book aim to evolve models that not only fit the training data but also maintain performance on new, independent data. Readers will explore principled approaches to regularisation, semantic diversity preservation, and fitness evaluations to promote generalisation, all designed to build models that are robust and reliable in practical settings.

Designed for researchers, data scientists, and research students, this book provides practical tools to evolve symbolic models that are interpretable, trustworthy, and effective in capturing meaningful patterns in data. Readers will benefit from structured frameworks for building interpretable models, proven strategies to reduce overfitting and improve robustness, and insights into model interpretability. Engaging case studies and examples throughout the book bring these methods to life, making Evolving Insights an essential resource for anyone seeking clarity and trust in machine learning.


Discusses both theoretical and methodological improvements of genetic programing for symbolic regression (GPSR) Features generalization and interpretation of GPSR as a good integration of GP and modern machine learning Provides case studies and real-world application problems to generate both academic impact and real-world impact

Autor*in

Qi Chen

Themen in »Evolving Insights: Genetic Programming for Symbolic Regression«

Symbolic Regression Genetic Programming Model Interpretability Generalisation Evolutionary Machine Learning Explainable AI XAI

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Details

ISBN: 9789819219988
Verlag: Springer Singapore
Erscheinung: 21.08.2026

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