Book Image

Building Statistical Models in Python

By : Huy Hoang Nguyen, Paul N Adams, Stuart J Miller
Book Image

Building Statistical Models in Python

By: Huy Hoang Nguyen, Paul N Adams, Stuart J Miller

Overview of this book

The ability to proficiently perform statistical modeling is a fundamental skill for data scientists and essential for businesses reliant on data insights. Building Statistical Models with Python is a comprehensive guide that will empower you to leverage mathematical and statistical principles in data assessment, understanding, and inference generation. This book not only equips you with skills to navigate the complexities of statistical modeling, but also provides practical guidance for immediate implementation through illustrative examples. Through emphasis on application and code examples, you’ll understand the concepts while gaining hands-on experience. With the help of Python and its essential libraries, you’ll explore key statistical models, including hypothesis testing, regression, time series analysis, classification, and more. By the end of this book, you’ll gain fluency in statistical modeling while harnessing the full potential of Python's rich ecosystem for data analysis.
Table of Contents (22 chapters)
1
Part 1:Introduction to Statistics
7
Part 2:Regression Models
10
Part 3:Classification Models
13
Part 4:Time Series Models
17
Part 5:Survival Analysis

The normal distribution and central limit theorem

When discussing the normal distribution, we refer to the bell-shaped, standard normal distribution, which is formally synonymous with the Gaussian distribution, named after Carl Friedrich Gauss, an 18th- and 19th-century mathematician and physicist who – among other things – contributed to the concepts of approximation, and, in 1795, invented the method of least squares and the normal distribution, which is commonly used in statistical modeling techniques, such as least squares regression [3]. The standard normal distribution, also referred to as a parametric distribution, is characterized by a symmetrical distribution with a probability of data point dispersion consistent around the mean – that is, the data appears near the mean more frequently than data farther away. Since the location data dispersed within this distribution follows the laws of probability, we can call this a standard normal probability distribution...