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Introduction to Power BI
What do you understand by feature vectors?
We typically rely on computer features to extract useful information for the prediction of another function, assuming that they have a static or non-linear relationship. The output of the built machine learning model will demonstrate the validity of this statement.
Feature vector is an n-dimensional vector of numerical features that describe some object in pattern recognition in machine learning
Many machine learning algorithms rely on numerical representations of objects because they make processing and statistical analysis easier. A vector is nothing more than a list of numerical values. It’s clear that a vector is simply a list of a feature’s calculated values. The values that were found.