Book Image

Pandas 1.x Cookbook - Second Edition

By : Matt Harrison, Theodore Petrou
Book Image

Pandas 1.x Cookbook - Second Edition

By: Matt Harrison, Theodore Petrou

Overview of this book

The pandas library is massive, and it's common for frequent users to be unaware of many of its more impressive features. The official pandas documentation, while thorough, does not contain many useful examples of how to piece together multiple commands as one would do during an actual analysis. This book guides you, as if you were looking over the shoulder of an expert, through situations that you are highly likely to encounter. This new updated and revised edition provides you with unique, idiomatic, and fun recipes for both fundamental and advanced data manipulation tasks with pandas. Some recipes focus on achieving a deeper understanding of basic principles, or comparing and contrasting two similar operations. Other recipes will dive deep into a particular dataset, uncovering new and unexpected insights along the way. Many advanced recipes combine several different features across the pandas library to generate results.
Table of Contents (17 chapters)
15
Other Books You May Enjoy
16
Index

Comparing categorical values with categorical values

In this section, we will focus on dealing with multiple categorical values. One thing to keep in mind is that continuous columns can be converted into categorical columns by binning the values.

In this section, we will look at makes and vehicle class.

How to do it…

  1. Lower the cardinality. Limit the VClass column to six values, in a simple class column, SClass. Only use Ford, Tesla, BMW, and Toyota:
    >>> def generalize(ser, match_name, default):
    ...     seen = None
    ...     for match, name in match_name:
    ...         mask = ser.str.contains(match)
    ...         if seen is None:
    ...             seen = mask
    ...         else:
    ...             seen |= mask
    ...         ser = ser.where(~mask, name)
    ...     ser = ser.where(seen, default)
    ...     return ser
    >>> makes = ["Ford", "Tesla", "BMW", "Toyota"]
    >>> data = fueleco[fueleco.make.isin(makes...