How can you improve machine learning model accuracy using sampling?
Machine learning models often depend on large and complex datasets to learn patterns and make predictions. However, working with big data can pose many challenges, such as high computational costs, overfitting, and bias. Sampling is a technique that can help you reduce the size of your data without losing too much information or accuracy. In this article, you will learn how to use sampling methods to improve your machine learning model accuracy.