Book Image

Python Data Analysis Cookbook

By : Ivan Idris
Book Image

Python Data Analysis Cookbook

By: Ivan Idris

Overview of this book

Data analysis is a rapidly evolving field and Python is a multi-paradigm programming language suitable for object-oriented application development and functional design patterns. As Python offers a range of tools and libraries for all purposes, it has slowly evolved as the primary language for data science, including topics on: data analysis, visualization, and machine learning. Python Data Analysis Cookbook focuses on reproducibility and creating production-ready systems. You will start with recipes that set the foundation for data analysis with libraries such as matplotlib, NumPy, and pandas. You will learn to create visualizations by choosing color maps and palettes then dive into statistical data analysis using distribution algorithms and correlations. You’ll then help you find your way around different data and numerical problems, get to grips with Spark and HDFS, and then set up migration scripts for web mining. In this book, you will dive deeper into recipes on spectral analysis, smoothing, and bootstrapping methods. Moving on, you will learn to rank stocks and check market efficiency, then work with metrics and clusters. You will achieve parallelism to improve system performance by using multiple threads and speeding up your code. By the end of the book, you will be capable of handling various data analysis techniques in Python and devising solutions for problem scenarios.
Table of Contents (23 chapters)
Python Data Analysis Cookbook
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
Glossary
Index

Estimating power spectral density with the Welch method


The Welch method is an improvement (it reduces noise) of the periodogram technique and is named after P.D. Welch. The noise of the power spectrum is reduced with the following steps:

  1. We split the signal with a fixed number of overlapping points. If the overlap is 0, then we have Bartlett's method.

  2. In the time domain, we apply window functions to each of the segments of step 1.

  3. We compute the periodogram for each segment as explained in the Spectral analysis with periodograms recipe.

  4. We average the periodograms, thus reducing noise. Averaging effectively smoothens the signal. However, we are now dealing with frequency bins (like in a histogram).

We will also explore the Fano factor, which is given as follows:

It is a windowed variance-to-mean ratio. Dividing by the mean basically normalizes the values, and we get a normalized measure of dispersion. As input data we will use temperature data.

How to do it...

  1. The imports are as follows:

    from scipy...