Random Forest Table Classification.
|   | Name | Type | Identifier | Description | Constraints | 
| Input | Table | Table, input | TABLE | Table with features, must include class-ID | - | 
| Output | Feature Importances | Table, output | IMPORTANCES | - | - | 
| Options | Features | Table fields | FEATURES | Select features (table fields) for classification | - | 
 | Prediction (*) | Table field | PREDICTION | This is field that will have the prediction results. If not set it will be added to the table. | - | 
 | Training | Table field | TRAINING | this is the table field that defines the training classes | - | 
 | Use Label as Identifier | Boolean | LABEL_AS_ID | Use training area labels as identifier in classification result, assumes all label values are integer numbers! | Default: 0 | 
 | Load Model | File path | RF_IMPORT | - | - | 
 | Save Model | File path | RF_EXPORT | - | - | 
 | Tree Count | Integer | RF_TREE_COUNT | How many trees to create? | Minimum: 1 Default: 32 | 
 | Samples per Tree | Floating point | RF_TREE_SAMPLES | Specifies the fraction of the total number of samples used per tree for learning. | Minimum: 0.000000 Maximum: 1.000000 Default: 1.000000 | 
 | Sample with Replacement | Boolean | RF_REPLACE | Sample from training population with or without replacement? | Default: 1 | 
 | Minimum Node Split Size | Integer | RF_SPLIT_MIN_SIZE | Number of examples required for a node to be split. Choose 1 for complete growing. | Minimum: 1 Default: 1 | 
 | Features per Node | Choice | RF_NODE_FEATURES | - | Available Choices: [0] logarithmic [1] square root [2] all Default: 1 | 
 | Stratification | Choice | RF_STRATIFICATION | Specifies stratification strategy. Either none, equal amount of class samples, or proportional to fraction of class samples. | Available Choices: [0] none [1] equal [2] proportional Default: 0 | 
| (*) optional |