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Biological Pattern Discovery With R Machine Learning Approaches Zheng Rong Yang

  • SKU: BELL-38303710
Biological Pattern Discovery With R Machine Learning Approaches Zheng Rong Yang
$ 31.00 $ 45.00 (-31%)

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Biological Pattern Discovery With R Machine Learning Approaches Zheng Rong Yang instant download after payment.

Publisher: World Scientific Publishing Company
File Extension: PDF
File size: 17.77 MB
Pages: 462
Author: Zheng Rong Yang
ISBN: 9789811240119, 9811240116
Language: English
Year: 2022

Product desciption

Biological Pattern Discovery With R Machine Learning Approaches Zheng Rong Yang by Zheng Rong Yang 9789811240119, 9811240116 instant download after payment.

This book provides the research directions for new or junior researchers who are going to use machine learning approaches for biological pattern discovery. The book was written based on the research experience of the author's several research projects in collaboration with biologists worldwide. The chapters are organised to address individual biological pattern discovery problems. For each subject, the research methodologies and the machine learning algorithms which can be employed are introduced and compared. Importantly, each chapter was written with the aim to help the readers to transfer their knowledge in theory to practical implementation smoothly. Therefore, the R programming environment was used for each subject in the chapters. The author hopes that this book can inspire new or junior researchers' interest in biological pattern discovery using machine learning algorithms.

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