Book Image

Practical Data Analysis Cookbook

By : Tomasz Drabas
Book Image

Practical Data Analysis Cookbook

By: Tomasz Drabas

Overview of this book

Data analysis is the process of systematically applying statistical and logical techniques to describe and illustrate, condense and recap, and evaluate data. Its importance has been most visible in the sector of information and communication technologies. It is an employee asset in almost all economy sectors. This book provides a rich set of independent recipes that dive into the world of data analytics and modeling using a variety of approaches, tools, and algorithms. You will learn the basics of data handling and modeling, and will build your skills gradually toward more advanced topics such as simulations, raw text processing, social interactions analysis, and more. First, you will learn some easy-to-follow practical techniques on how to read, write, clean, reformat, explore, and understand your data—arguably the most time-consuming (and the most important) tasks for any data scientist. In the second section, different independent recipes delve into intermediate topics such as classification, clustering, predicting, and more. With the help of these easy-to-follow recipes, you will also learn techniques that can easily be expanded to solve other real-life problems such as building recommendation engines or predictive models. In the third section, you will explore more advanced topics: from the field of graph theory through natural language processing, discrete choice modeling to simulations. You will also get to expand your knowledge on identifying fraud origin with the help of a graph, scrape Internet websites, and classify movies based on their reviews. By the end of this book, you will be able to efficiently use the vast array of tools that the Python environment has to offer.
Table of Contents (19 chapters)
Practical Data Analysis Cookbook
Credits
About the Author
Acknowledgments
About the Reviewers
www.PacktPub.com
Preface
Index

Using Principal Component Analysis to find things that matter


Kernel PCA, in contrast to the PCA method that we just introduced, uses a user-defined kernel function to map the dataset with n dimensions to an m-dimensional feature space. PCA uses a linear function for the mapping and is equivalent to Kernel PCA with a linear kernel.

Kernel PCA can be especially useful if the data cannot be linearly separable so various nonlinear kernels can be used to map your data to higher dimensions.

Getting ready

To execute this recipe, you will need pandas and Scikit. No other prerequisites are required.

How to do it…

Once again, we wrap our model in a method so that we can track how long it takes for the model to converge. With Kernel PCA, you should expect significantly longer estimation times (the reduce_kernelPCA.py file):

@hlp.timeit
def reduce_KernelPCA(x, **kwd_params):
    '''
        Reduce the dimensions using Principal Component
        Analysis with different kernels
    '''
    # create the PCA...