Fair integer programming under dichotomous and cardinal preferences
arxiv(2023)
摘要
One cannot make truly fair decisions using integer linear programs unless one
controls the selection probabilities of the (possibly many) optimal solutions.
For this purpose, we propose a unified framework when binary decision variables
represent agents with dichotomous preferences, who only care about whether they
are selected in the final solution. We develop several general-purpose
algorithms to fairly select optimal solutions, for example, by maximizing the
Nash product or the minimum selection probability, or by using a random
ordering of the agents as a selection criterion (Random Serial Dictatorship).
We also discuss in detail how to extend the proposed methods when agents have
cardinal preferences. As such, we embed the black-box procedure of solving an
integer linear program into a framework that is explainable from start to
finish. Lastly, we evaluate the proposed methods on two specific applications,
namely kidney exchange (dichotomous preferences), and the scheduling problem of
minimizing total tardiness on a single machine (cardinal preferences). We find
that while the methods maximizing the Nash product or the minimum selection
probability outperform the other methods on the evaluated welfare criteria,
methods such as Random Serial Dictatorship perform reasonably well in
computation times that are similar to those of finding a single optimal
solution.
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