Using machine learning techniques to interpret
results from discrete event simulation
This paper describes an approach to the interpretation of discrete
event simulation results
using machine learning techniques. The results of two simulators
were processed as machine learning problems. In the experiments,
the simulation results were interpreted by two attribute-based learning
programs Retis and Assistant, and by an Inductive Logic
Programming system Markus. Some interesting regularities
were thereby automatically discovered.