Promoting Poor Features to Supervisors: Some Inputs Work Better as Outputs
Caruana, Rich, Sa, Virginia R. de
–Neural Information Processing Systems
In supervised learning there is usually a clear distinction between inputs and outputs - inputs are what you will measure, outputs are what you will predict from those measurements. This paper shows that the distinction between inputs and outputs is not this simple. Some features are more useful as extra outputs than as inputs. By using a feature as an output we get more than just the case values but can. For many features this mapping may be more useful than the feature value itself.
Neural Information Processing Systems
Dec-31-1997