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Figure 1: Neural Autoencoder Dimensionality Reduction in Action A good way to see where this article is headed is to take a look at the screenshot of a demo program in Figure 1. The demo uses a ...
Compared to using PCA for dimensionality reduction, using a neural autoencoder has the big advantage that it works with source data that contains both numeric and categorical data, while PCA works ...
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