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Published inApr 2016
Reading LevelBeginner
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ISBN-139781785882951
Edition1st Edition
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David Julian
David Julian
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David Julian

David Julian is a freelance technology consultant and educator. He has worked as a consultant for government, private, and community organizations on a variety of projects, including using machine learning to detect insect outbreaks in controlled agricultural environments (Urban Ecological Systems Ltd., Bluesmart Farms), designing and implementing event management data systems (Sustainable Industry Expo, Lismore City Council), and designing multimedia interactive installations (Adelaide University). He has also written Designing Machine Learning Systems With Python for Packt Publishing and was a technical reviewer for Python Machine Learning and Hands-On Data Structures and Algorithms with Python - Second Edition, published by Packt.
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Regularization


We mentioned earlier that linear regression can become unstable, that is, highly sensitive to small changes in the training data, if features are correlated. Consider the extreme case where two features are perfectly negatively correlated such that any increase in one feature is accompanied by an equivalent decrease in another feature. When we apply our linear regression algorithm to just these two features, it will result in a function that is constant, so this is not really telling us anything about the data. Alternatively, if the features are positively correlated, small changes in them will be amplified. Regularization helps moderate this.

We saw previously that we could get our hypothesis to more closely fit the training data by adding polynomial terms. As we add these terms, the shape of the function becomes more complicated, and this usually results in the hypothesis overfitting the training data and performing poorly on the test data. As we add features, either directly...

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Designing Machine Learning Systems with Python
Published in: Apr 2016Publisher: ISBN-13: 9781785882951

Author (1)

author image
David Julian

David Julian is a freelance technology consultant and educator. He has worked as a consultant for government, private, and community organizations on a variety of projects, including using machine learning to detect insect outbreaks in controlled agricultural environments (Urban Ecological Systems Ltd., Bluesmart Farms), designing and implementing event management data systems (Sustainable Industry Expo, Lismore City Council), and designing multimedia interactive installations (Adelaide University). He has also written Designing Machine Learning Systems With Python for Packt Publishing and was a technical reviewer for Python Machine Learning and Hands-On Data Structures and Algorithms with Python - Second Edition, published by Packt.
Read more about David Julian