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Feature Selection and Dimensionality Reduction Using Covariance Matrix Plot
Latest   Machine Learning

Feature Selection and Dimensionality Reduction Using Covariance Matrix Plot

Last Updated on July 24, 2023 by Editorial Team

Author(s): Benjamin Obi Tayo Ph.D.

Originally published on Towards AI.

1. Import Necessary Libraries

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This article will discuss how the covariance matrix plot can be used for feature selection and dimensionality reduction.

A machine learning algorithm (such as classification, clustering or regression) uses a training dataset to determine weight factors that can be applied to unseen data for predictive purposes. Before implementing a machine learning algorithm, it is necessary to select only relevant features in the training dataset. The process of transforming a dataset in order to select only relevant features necessary for training is called dimensionality reduction. Feature selection and dimensionality reduction are important because of three main reasons:

Prevents Overfitting: A high-dimensional dataset… Read the full blog for free on Medium.

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