The co-op bookstore for avid readers
Book Cover for: Investigating Model Coefficients In Python Programming, Alex Erazo

Investigating Model Coefficients In Python Programming

Alex Erazo

Delve deep into the mathematical foundation of machine learning with Investigating Model Coefficients in Python Programming by Alex Erazo. This comprehensive guide offers readers an intricate exploration of how to interpret and manipulate model coefficients in Python, bridging the gap between theoretical concepts and practical application. Whether you're a seasoned data scientist or a budding enthusiast, this book will elevate your understanding of model training, feature selection, and how coefficients shape the behavior of algorithms.

Starting with the basics, the book provides an in-depth breakdown of linear models such as linear regression, logistic regression, and more. Alex Erazo covers everything from data preprocessing and feature scaling to understanding the significance of coefficients in model performance. Each chapter is meticulously designed to help you gain a practical understanding of how coefficients affect predictions and decision-making.

The book also dives into advanced topics like regularization techniques (L1, L2), feature importance, and interpreting model outputs with tools like statsmodels and scikit-learn. Real-world case studies and hands-on Python code examples ensure that you're not just learning theory, but also how to apply these principles to solve real-world problems. By the end of the book, you'll be equipped with the knowledge to fine-tune your models, optimize their coefficients, and make more accurate, interpretable predictions.

This book is an essential resource for anyone looking to master the nuances of machine learning model coefficients in Python, with a focus on practical implementation, clear explanations, and the mathematical insights that make the difference between good and great machine learning models.

Book Details

  • Publisher: Loco Bird
  • Publish Date: Apr 15th, 2025
  • Pages: 384
  • Language: English
  • Edition: undefined - undefined
  • Dimensions: 9.00in - 6.00in - 0.79in - 1.13lb
  • EAN: 9798330452309
  • Categories: Languages - PythonAppliedData Science - Machine Learning