Python for probability, statistics and machine learning / by Jose Unpingco. English.
Material type:
TextPublisher: : Edition: 3rdDescription: xvii, 509 p. 24 cmContent type: text Media type: computer Carrier type: online resourceISBN: 9783319307176Subject(s): Applied mathematics | Data mining | Electrical engineering | Engineering mathematics | Mathematical statistics | Statistics | Communications Engineering, Networks | Data Mining and Knowledge Discovery | Mathematical and Computational Engineering | Probability and Statistics in Computer Science | Statistics for Engineering, Physics, Computer Science, Chemistry and Earth SciencesAdditional physical formats: Print version:: Python for probability, statistics, and machine learning.; Printed edition:: No title; Printed edition:: No titleDDC classification: 621.382 | Item type | Current library | Home library | Call number | Status | Notes | Date due | Barcode | Item holds |
|---|---|---|---|---|---|---|---|---|
| Books | Jayakar Knowledge Resource Centre | Jayakar Knowledge Resource Centre | 621.382 UNP.J (Browse shelf(Opens below)) | Available | 89.99 Euro | 520837 |
Getting Started with Scientific Python -- Probability -- Statistics -- Machine Learning -- Notation.
This book covers the key ideas that link probability, statistics, and machine learning illustrated using Python modules in these areas. The entire text, including all the figures and numerical results, is reproducible using the Python codes and their associated Jupyter/IPython notebooks, which are provided as supplementary downloads. The author develops key intuitions in machine learning by working meaningful examples using multiple analytical methods and Python codes, thereby connecting theoretical concepts to concrete implementations. Modern Python modules like Pandas, Sympy, and Scikit-learn are applied to simulate and visualize important machine learning concepts like the bias/variance trade-off, cross-validation, and regularization. Many abstract mathematical ideas, such as convergence in probability theory, are developed and illustrated with numerical examples. This book is suitable for anyone with an undergraduate-level exposure to probability, statistics, or machine learning and with rudimentary knowledge of Python programming. Explains how to simulate, conceptualize, and visualize random statistical processes and apply machine learning methods; Connects to key open-source Python communities and corresponding modules focused on the latest developments in this area; Outlines probability, statistics, and machine learning concepts using an intuitive visual approach, backed up with corresponding visualization codes.
Description based on publisher-supplied MARC data.
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