Skip to Content
Python Deep Learning
book

Python Deep Learning

by Valentino Zocca, Gianmario Spacagna, Daniel Slater, Peter Roelants
April 2017
Intermediate to advanced
406 pages
10h 15m
English
Packt Publishing
Content preview from Python Deep Learning

Anomaly detection using deep auto-encoders

The proposed approach using deep learning is semi-supervised and it is broadly explained in the following three steps:

  1. Identify a set of data that represents the normal distribution. In this context, the word "normal" represents a set of points that we are confident to majorly represent non-anomalous entities and not to be confused with the Gaussian normal distribution.

    The identification is generally historical, where we know that no anomalies were officially recognized. This is why this approach is not purely unsupervised. It relies on the assumption that the majority of observations are anomaly-free. We can use external information (even labels if available) to achieve a higher quality of the selected ...

Become an O’Reilly member and get unlimited access to this title plus top books and audiobooks from O’Reilly and nearly 200 top publishers, thousands of courses curated by job role, 150+ live events each month,
and much more.
Start your free trial

You might also like

Python Deep Learning - Second Edition

Python Deep Learning - Second Edition

Ivan Vasilev, Daniel Slater, Gianmario Spacagna, Peter Roelants, Valentino Zocca
Python Deep Learning Projects

Python Deep Learning Projects

Matthew Lamons, Rahul Kumar, Abhishek Nagaraja

Publisher Resources

ISBN: 9781786464453Supplemental Content