Supervised Learning in Biological Applications

book24h

Power User
LV
5
 
Csatlakozás
2024.09.10.
Üzenetek
41,569
Reakció pontszám
8
Díjak
5
Kor
37
91f7145064b5cfca47ac0a080100e9e1.webp

Free Download Supervised Learning in Biological Applications (Genesis Protocol: Next Generation Technology for Biological and Life Sciences) by Jamie Flux
English | August 24, 2024 | ISBN: N/A | ASIN: B0DF6CVBQD | 204 pages | PDF | 4.00 Mb
Discover the power of supervised learning in biological applications with this comprehensive guide. This book introduces you to a wide range of gradient boosting algorithms, exploring their principles and implementation in Python. Each chapter focuses on a specific algorithm or technique, providing in-depth explanations, practical examples, and fully-coded Python applications.

Key Features:
  • Understand the principles behind gradient boosting algorithms
  • Explore popular algorithms such as XGBoost, LightGBM, CatBoost, and AdaBoost
  • Learn how to apply gradient boosting with decision trees, linear discriminant analysis, and quadratic discriminant analysis
  • Dive into advanced topics like softmax function, entropy and information gain, maximum likelihood estimation, and Bayesian inference
  • Gain hands-on experience with optimization techniques such as stochastic gradient descent, Adam optimizer, and ridge, lasso, and elastic net regressions
  • Master the concepts of kernel methods, radial basis function networks, Fourier and wavelet transforms, and Monte Carlo methods
  • Discover the power of genetic algorithms, ant colony optimization, primal-dual methods, latent variable models, and reinforcement learning
Book Description:
Supervised Learning in Biological Applications is a comprehensive guide that brings together various supervised learning techniques with a focus on their applications in the field of biology. Whether you are a biologist, researcher, or data scientist, this book will equip you with the necessary knowledge and skills to effectively apply these algorithms to solve biological problems. Each chapter presents a different algorithm or technique, including detailed explanations, Python code examples, and practical applications.
What You Will Learn:
  • Understand the principles and concepts behind gradient boosting algorithms
  • Implement popular gradient boosting algorithms like XGBoost, LightGBM, and CatBoost in Python
  • Apply gradient boosting with decision trees and explore its equations and model derivation
  • Perform linear and quadratic discriminant analysis for classification problems
  • Use softmax function for multi-class classification and input to neural networks
  • Measure information gain and apply it to improve model decisions
  • Implement optimization techniques such as stochastic gradient descent and Adam optimizer
  • Apply ridge, lasso, and elastic net regressions for regularization and bias-variance tradeoff in linear regressions
  • Explore kernel methods, radial basis function networks, Fourier and wavelet transforms
  • Understand Monte Carlo methods, simulated annealing, genetic algorithms, ant colony optimization, and primal-dual methods
  • Explore latent variable models, including factor analysis and independent component analysis
  • Discover the principles of reinforcement learning and implement Q-learning and policy gradient algorithms
Who This Book Is For:
This book is for biologists, researchers, and data scientists interested in applying supervised learning algorithms in biological applications. You should have basic knowledge of Python programming and a background in biology or related fields. The Python code provided in each chapter will help you implement and experiment with the algorithms discussed in the book.


Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me
Code:
            
                
                
                    
                   
                    A kód megtekintéséhez jelentkezz be.
					Please log in to view the code.
                
            
        
Links are Interchangeable - Single Extraction
 
Top Alul