To ensure that your results are valid, consider the following guidelines when you collect data, perform the analysis, and interpret your results. 
 
 
 
 
- The response variable  should be categorical
-  Categorical variables contain a finite, countable number of categories or distinct groups. Categorical data may or may not have a logical order. For example, categorical variables include gender, material type, and payment method. 
 
- If your response variable has two categories, such as pass and fail, then the response is binary.
-  If your response variable contains three or more categories, then the response is multinomial.
 The data for the response variable must be either text values or numeric values. Date/time values are not allowed. If your response variable is continuous, use Random
		Forests® Regression. 
- Predictor variables may be continuous or categorical
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 You can use a combination of continuous or categorical predictors; however, the column lengths for each predictor must be the same length as the response column. Missing values are allowed. 
- All continuous predictors must be numeric. 
-  Categorical predictors can be text or numeric values.