Feature Engineering for Beginners: A Practical Guide to Enhancing Machine Learning Models by Sam Green
English | September 28, 2024 | ISBN: N/A | ASIN: B0DJ6XQFCZ | 98 pages | EPUB | 1.56 Mb
English | September 28, 2024 | ISBN: N/A | ASIN: B0DJ6XQFCZ | 98 pages | EPUB | 1.56 Mb
This book provides a clear and practical approach to transforming raw data into valuable features that enhance model performance and accuracy.
In this book, you will:
- Understand the Basics: Learn what feature engineering is and why it is crucial for building effective machine learning models. Discover the difference between feature engineering, selection, and dimensionality reduction.
- Get Hands-On with Data: Explore fundamental data preprocessing techniques, including handling missing values, scaling, and normalization. Master the art of encoding categorical variables and creating new features from raw data.
- Dive into Advanced Techniques: Explore more sophisticated methods such as feature extraction, construction, and transformation. Gain insights into domain-specific techniques for time series and text data.
- Implement in Practice: Follow a real-world case study that demonstrates the complete feature engineering process, from data exploration to model improvement. Learn about tools and libraries that streamline your feature engineering workflow.
- Stay Ahead of the Curve: Explore the latest trends in automated feature engineering and big data. Understand how emerging technologies and practices are shaping the future of feature engineering.
Feature Engineering for Beginners is the ultimate resource for anyone looking to build a strong foundation in feature engineering and leverage the full potential of their data. Start your journey today and transform the way you approach machine learning!