February 2020
Intermediate to advanced
328 pages
8h 19m
English
We often come across problems where the dimensions of the data are huge. We might need to reduce the dimensions of the data in such a way that the reduced dimensional data best represents the original data. Principal Component Analysis (PCA) and autoencoders are some of the popular techniques to achieve this.
Although the intention of both these algorithms is the same for dimensionality reduction, there are some key differences in these two techniques:
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