Model Features
This section provides the option to select features that will be used for training, options to change the data type and transform each selected feature.
Note: The target feature is not considered a training
feature.
- In this section, the user can see the list of features with prefilled default values.
- Type of feature can be selected as date, index, categorical, numerical, or text.
- Six fill method is supported with the default value for numerical being Median and for Categorical is Mode.
- User can select different Encoding techniques for different features.
- Outlier and Normalization can be selected from the list of given options.
- Finally mention the Target Features (for supervised learning).