Symbolic Regression - Kronberger, Gabriel; Burlacu, Bogdan; Kommenda, Michael; - Prospero Internet Bookshop

Symbolic Regression
 
Product details:

ISBN13:9781138054813
ISBN10:113805481X
Binding:Hardback
No. of pages:308 pages
Size:234x156 mm
Weight:730 g
Language:English
Illustrations: 36 Illustrations, black & white; 100 Illustrations, color; 36 Line drawings, black & white; 100 Line drawings, color; 33 Tables, black & white
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Category:

Symbolic Regression

 
Edition number: 1
Publisher: Chapman and Hall
Date of Publication:
 
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GBP 77.00
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37 191 HUF (35 420 HUF + 5% VAT)
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Short description:

 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.

Long description:

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.

Table of Contents:


Contents


Preface


Symbols and Notation


1. Introduction
2. Basics of Supervised Learning
3. Basics of Symbolic Regression
4. Evolutionary Computation and Genetic Programming
5. Model Validation, Inspection, Simplification and Selection
6. Advanced Techniques
7. Examples and Applications
8. Conclusion
Appendix
Bibliography