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A01=Bogdan Burlacu
A01=Gabriel Kronberger
A01=Michael Affenzeller
A01=Michael Kommenda
A01=Stephan M. Winkler
Age Group_Uncategorized
Age Group_Uncategorized
applied mathematics methods
artificial intelligence
Author_Bogdan Burlacu
Author_Gabriel Kronberger
Author_Michael Affenzeller
Author_Michael Kommenda
Author_Stephan M. Winkler
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Category1=Non-Fiction
Category=UYQM
COP=United Kingdom
data-driven modelling
Delivery_Pre-order
empirical model discovery
engineering data analysis
eq_bestseller
eq_computing
eq_isMigrated=2
eq_nobargain
eq_non-fiction
evolutionary computation
genetic programming
intelligent systems
Language_English
machine learning
model interpretability
neural networks
PA=Not yet available
Price_€50 to €100
PS=Forthcoming
softlaunch
supervised learning
transparent machine learning models

Product details

  • ISBN 9781138054813
  • Weight: 730g
  • Dimensions: 156 x 234mm
  • Publication Date: 16 Aug 2024
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
  • Language: English
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Symbolic regression (SR) is one of the most powerful machine learning techniques that produces transparent models, searching the space of mathematical expressions for a model that represents the relationship between the predictors and the dependent variable without the need of taking assumptions about the model structure. Currently, the most prevalent learning algorithms for SR are based on genetic programming (GP), an evolutionary algorithm inspired from the well-known principles of natural selection. This book is an in-depth guide to GP for SR, discussing its advanced techniques, as well as examples of applications in science and engineering.

The basic idea of GP is to evolve a population of solution candidates in an iterative, generational manner, by repeated application of selection, crossover, mutation, and replacement, thus allowing the model structure, coefficients, and input variables to be searched simultaneously. Given that explainability and interpretability are key elements for integrating humans into the loop of learning in AI, increasing the capacity for data scientists to understand internal algorithmic processes and their resultant models has beneficial implications for the learning process as a whole.

This book represents a practical guide for industry professionals and students across a range of disciplines, particularly data science, engineering, and applied mathematics. Focused on state-of-the-art SR methods and providing ready-to-use recipes, this book is especially appealing to those working with empirical or semi-analytical models in science and engineering.

The authors are all affiliated with the University of Applied Sciences (UAS) Upper Austria.

Gabriel Kronberger is professor for data engineering and business intelligence. His research interests are symbolic regression and machine learning as well as probabilistic graphical models.

Bogdan Burlacu is a research assistant. His main focus is the study of genetic programming evolutionary dynamics in symbolic regression scenarios.

Michael Kommenda is a research assistant. He has been applying symbolic regression methods in various industrial projects and application scenarios.

Stephan M. Winkler is professor for medical and bioinformatics and head of the bioinformatics research group. His research interests despite bioinformatics include genetic programming, nonlinear model identification and machine learning.

Michael Affenzeller is professor for heuristic optimization and machine learning and head of the Heuristic and Evolutionary Algorithms Laboratory. Furthermore, he is the vice dean for research and overall head of the COMET project for heuristic optimization in production and logistics (HOPL).

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