robustness of recommendation systems. These approaches have already had a beneficial
impact in other machine-learning driven fields. We identify and discuss a key trade-off
between data fidelity and privacy in the past work on synthetic data and simulators for
recommendation systems. For the important use case of predicting algorithm rankings on
real data from synthetic data, we provide motivation and current successes versus …