Questions

Does scaling affect model performance?

Does scaling affect model performance?

All Answers (5) Feature scaling usually helps, but it is not guaranteed to improve performance. If you use distance-based methods like SVM, omitting scaling will basically result in models that are disproportionally influenced by the subset of features on a large scale.

Which models are affected by feature scaling?

The Machine Learning algorithms that require the feature scaling are mostly KNN (K-Nearest Neighbours), Neural Networks, Linear Regression, and Logistic Regression.

Does Scaling change the distribution?

The difference is that, in scaling, you’re changing the range of your data while in normalization you’re changing the shape of the distribution of your data.

Does scaling affect accuracy?

I performed feature scaling on both the training and testing data using different methods, and I observed that accuracy actually reduces after performing scaling. I performed feature scaling because there was a difference of many orders between many features.

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Is feature scaling required for naive Bayes?

Naive Bayes doesn’t require and is not affected by feature scaling. In fact, any Algorithm which is NOT distance based, is not affected by Feature Scaling.

Is feature scaling necessary for linear regression?

We need to perform Feature Scaling when we are dealing with Gradient Descent Based algorithms (Linear and Logistic Regression, Neural Network) and Distance-based algorithms (KNN, K-means, SVM) as these are very sensitive to the range of the data points.

Which of the following are reasons for using feature scaling?

Which of the following are reasons for using feature scaling? It speeds up solving for θ using the normal equation. It prevents the matrix XTX (used in the normal equation) from being non-invertable (singular/degenerate). It is necessary to prevent gradient descent from getting stuck in local optima.

Does feature scaling change results?

The person is still the same height regardless of the unit. Whereas typical feature scaling “transform” the data, which changes the “height” of the person.

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What is feature bias and feature scaling?

Feature scaling is a method used to scale the range of independent variables or features of data,so that the features comes down to the same range in order to avoid any kind of bias in the modelling.