An introduction to statistical learning: With applications in python
Series: Springer texts in statisticsPublication details: New York, Springer: 2023.Description: xv, 607p., ind., 25 cm X 18 cmISBN:- 978-3031387463
- 519.5
Item type | Current library | Call number | Status | Barcode | |
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Books | KEIC | 519.5 INT (Browse shelf(Opens below)) | Available | 22816 |
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519.5 HAR Applied time series modelling and forecasting | 519.5 HOO Statistics for business and economics | 519.5 INT An introduction to statistical learning : with applications in R | 519.5 INT An introduction to statistical learning: With applications in python | 519.5 LEV Statistics for the management | 519.5 LEV Statistics for the management | 519.5 LEV Statistics for the management |
Recommended by: Banikanta Mishra
Content:
Introduction
Statistical Learning
Linear Regression
Classification
Resampling Methods
Linear Model Selection and Regularization
Moving Beyond Linearity
Tree-Based Methods
Support Vector Machines
Deep Learning
Survival Analysis and Censored data
Unsupervised Learning
Multiple Testing
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