000 01787nam a22001697a 4500
005 20251201145235.0
020 _a978-9354601590
082 _a006.31 GOP
100 _aGopal M
_91132
245 _aApplied Machine Learning_2nd Edition
250 _a2
260 _aMc Graw Hill
_bNew Delhi
_c2024
520 _aApplied Machine Learning continues to explore the theoretical underpinnings of learning and equips the readers with the knowledge needed to apply powerful machine learning techniques to solve challenging real-world problems. This book shows in a step-by-step manner how to conceptualize problems, accurately represent data, select and tune algorithms, interpret and analyze results, and make informed strategic decisions. Presented in a non-rigorous mathematical style, the book covers a broad array of machine learning methods that have been profitably employed. It also provides a platform for hands-on experience through case studies and exercise experiments. Salient Features: 1. Simple and lucid explanation of all basic concepts and techniques of machine learning, well supported with case studies and exercise experiments 2. New sections on widely used techniques, such as log loss (cross entropy) metric for classification, imbalanced data problems and solutions, Ridge and LASSO regression, multiclass logistic regression, softmax function, and many more 3. New chapter on ‘Understanding Machine Learning by Application’ provides a platform for gentle start on hands-on experience through case studies on real-life problems in diverse and important application areas 4. Datasets in Excel files for Case studies and Exercise Experiments available online (refer to the complete list on the back inner cover)
650 _aCSE
_914
942 _cBK
999 _c38045
_d38045