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Practical Machine Learning With R And Python Machine Learning In Stereo Tinniam V Ganesh

  • SKU: BELL-11116082
Practical Machine Learning With R And Python Machine Learning In Stereo Tinniam V Ganesh
$ 31.00 $ 45.00 (-31%)

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Practical Machine Learning With R And Python Machine Learning In Stereo Tinniam V Ganesh instant download after payment.

Publisher: Independently published
File Extension: PDF
File size: 8.47 MB
Pages: 244
Author: Tinniam V Ganesh
ISBN: 9781973443506, 1973443503
Language: English
Year: 2017

Product desciption

Practical Machine Learning With R And Python Machine Learning In Stereo Tinniam V Ganesh by Tinniam V Ganesh 9781973443506, 1973443503 instant download after payment.

This book implements many common Machine Learning algorithms in equivalent R and Python. The book touches on R and Python implementations of different regression models, classification algorithms including logistic regression, KNN classification, SVMs, b-splines, random forest, boosting etc. Other techniques like best-fit, forward fit, backward fit, and lasso and ridge regression are also covered. The book further touches on classification metrics for computing accuracy, recall, precision etc. There are implementations of validation, ROC and AUC curves in both R and Python. Finally, the book covers unsupervised learning methods like K-Means, PCA and Hierarchical clustering. The book is well suited for the novice and the expert. The first two chapters discuss the most important programming constructs in R and Python. The third chapter highlights equivalent programming phrases in R and Python. Hence, those with no knowledge of R and Python will find these introductory chapters useful. Those who are proficient in one of the language can further their knowledge on the other. Those are familiar with both R and Python will find the equivalent implementations useful to internalize the algorithms. This book should serve as a useful and handy reference for Machine Learning algorithms in both R and Python

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