EDA fundamentals
When facing a new dataset in the form of a table (a DataFrame) in Excel or a dataset, EDA helps us gain insight into the underlying pattern and irregularities of variables in the dataset. This is an important first-step exercise before building any predictive model. As the saying goes, garbage in, garbage out. When the input variables used for model development suffer from problems, such as missing values or different scales, the resulting model will either perform poorly, converge slowly, or even hit an error in the training stage. Therefore, understanding your data and ensuring the raw materials are in check are critical steps in warrantying a good-performing model later on.
This is where EAD comes in. Instead of being a rigid statistical procedure, EAD is a set of exploratory analyses that enables you to develop a better understanding of the features and potential relationships in the data. It serves as a transitional analysis to guide modeling later on, involving...