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  • Author: sddd
  • Date: 12-08-2018, 19:12
12-08-2018, 19:12

Dimensionality Reduction: Using Statistics, Heuristics, and AI Methods

Category: Tutorial / Other Tutorial

Dimensionality Reduction: Using Statistics, Heuristics, and AI Methods
Dimensionality Reduction: Using Statistics, Heuristics, and AI Methods
MP4 | Video: AVC 1280x720 | Audio: AAC 44KHz 2ch | Duration: 27M | 65 MB
Genre: eLearning | Language: English

Dimensionality Reduction is a data science technique for reducing the number of dimensions to a smaller set, while retaining most of the information in the original set. Also known as feature selection, it is an essential part of the data preparation phase of data science, especially when the number of features is very high. Techniques discussed in this video include Components Analysis (PCA), Independent Components Analysis (ICA), Restricted Bolzmann Machine (RBM), and Autoencoders, along with advice on when to select each approach.

Dimensionality Reduction: Using Statistics, Heuristics, and AI Methods

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