Statistical Modeling in Machine Learning: Concepts and Applications presents the basic concepts and roles of statistics, exploratory data analysis and machine learning. The various aspects of Machine Learning are discussed along with basics of statistics. Concepts are presented with simple examples and graphical representation for better understanding of techniques. This book takes a holistic approach - putting key concepts together with an in-depth treatise on multi-disciplinary applications of machine learning. New case studies and research problem statements are discussed, which will help researchers in their application areas based on the concepts of statistics and machine learning.
Statistical Modeling in Machine Learning: Concepts and Applications will help statisticians, machine learning practitioners and programmers solving various tasks such as classification, regression, clustering, forecasting, recommending and more.
- Provides a comprehensive overview of the state-of-the-art in statistical concepts applied to Machine Learning with the help of real-life problems, applications and tutorials
- Presents a step-by-step approach from fundamentals to advanced techniques
- Includes Case Studies with both successful and unsuccessful applications of Machine Learning to understand challenges in its implementation, along with worked examples
Sprache
Verlagsort
Verlagsgruppe
Elsevier Science & Techn.
Dateigröße
ISBN-13
978-0-323-97252-9 (9780323972529)
Schweitzer Klassifikation
1. Introduction to Statistical Modelling in Machine Learning - A Case Study2. A Technique of Data Collection- Web Scraping with Python3. Analysis of Covid-19 using Machine Learning Techniques4. Discriminative Dictionary Learning based on Statistical Methods5. Artificial Intelligence based Uncertainty Quantification technique for External flow CFD simulations6. Music Genres Classification7. Classification Model of Machine Learning for Medical Data Analysis 8. Regression Models for Machine learning9. Model Selection and Regularization10. Data Clustering using Unsupervised Machine Learning11. Emotion-based classification through fuzzy entropy enhanced FCM clustering12. Fundamental Optimization Methods for Machine Learning13. Stochastic Optimization of Industrial Grinding Operation through Data-Driven Robust Optimization14. Dimensionality Reduction using PCAs in Feature Partitioning Framework15. Impact of Mid-Day Meal Scheme in Primary Schools in India using Exploratory Data Analysis and Data Visualisation16. Nonlinear System Identification of Environmental pollutants using Recurrent Neural Networks and Global Sensitivity Analysis17. Comparative Study of Automated Deep Learning Techniques for Wind Time Series Forecasting