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Java Deep Learning Cookbook
book

Java Deep Learning Cookbook

by Rahul Raj
November 2019
Intermediate to advanced
304 pages
8h 40m
English
Packt Publishing
Content preview from Java Deep Learning Cookbook

Performing Anomaly Detection on Unsupervised Data

In this chapter, we will perform anomaly detection with the Modified National Institute of Standards and Technology (MNIST) dataset using a simple autoencoder without any pretraining. We will identify the outliers in the given MNIST data. Outlier digits can be considered as most untypical or not normal digits. We will encode the MNIST data and then decode it back in the output layer. Then, we will calculate the reconstruction error for the MNIST data.

The MNIST sample that closely resembles a digit value will have low reconstruction error. We will then sort them based on the reconstruction errors and then display the best samples and the worst samples (outliers) using the JFrame window. The ...

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Publisher Resources

ISBN: 9781788995207Supplemental Content