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Published inJan 2022
PublisherPackt
ISBN-139781801072137
Edition1st Edition
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Roy Jafari
Roy Jafari
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Roy Jafari

Roy Jafari, Ph.D. is an assistant professor of business analytics at the University of Redlands. Roy has taught and developed college-level courses that cover data cleaning, decision making, data science, machine learning, and optimization. Roy's style of teaching is hands-on and he believes the best way to learn is to learn by doing. He uses active learning teaching philosophy and readers will get to experience active learning in this book. Roy believes that successful data preprocessing only happens when you are equipped with the most efficient tools, have an appropriate understanding of data analytic goals, are aware of data preprocessing steps, and can compare a variety of methods. This belief has shaped the structure of this book.
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Normalization and standardization

At different points during our journey in this book, we've already talked about and used normalization and standardization. For instance, before applying K-Nearest Neighbors (KNN) in Chapter 7, Classification, and before using K-means on our dataset in Chapter 8, Clustering Analysis, we used normalization. Furthermore, before applying Principal Component Analysis (PCA) to our dataset for unsupervised dimension reduction in Chapter 13, Data Reduction, we used standardization.

Here is the general rule of when we need normalization or standardization. We need normalization when we need the range of all the attributes in a dataset to be equal. This will be needed especially for algorithmic data analytics that uses the distance between the data objects. Examples of such algorithms are K-means and KNN. On the other hand, we need standardization when we need the variance and/or the standard deviation of all the attributes to be equal. We saw an example...

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Hands-On Data Preprocessing in Python
Published in: Jan 2022Publisher: PacktISBN-13: 9781801072137

Author (1)

author image
Roy Jafari

Roy Jafari, Ph.D. is an assistant professor of business analytics at the University of Redlands. Roy has taught and developed college-level courses that cover data cleaning, decision making, data science, machine learning, and optimization. Roy's style of teaching is hands-on and he believes the best way to learn is to learn by doing. He uses active learning teaching philosophy and readers will get to experience active learning in this book. Roy believes that successful data preprocessing only happens when you are equipped with the most efficient tools, have an appropriate understanding of data analytic goals, are aware of data preprocessing steps, and can compare a variety of methods. This belief has shaped the structure of this book.
Read more about Roy Jafari