I have some discrete variables I want to convert them to continus variables to use as the inputs of a neural network has anyone an idea?
It results in a large number of input features, but you could use an indicator input (0 or 1) for each state of the discrete variable(s). Technically, you could drop one of these inputs for a given variable, since it is equivalent to all of the others being zero. 


Would scaling the discrete values to be between 0 and 1 (or, rather, 0.1 and 0.9 for better numerical behavior) work for your application? 

