Pareto-Optimal Fairness-Utility Amortizations in Rankings with a DBN Exposure Model
Till Kletti, Jean-Michel Renders, Patrick Loiseau

TL;DR
This paper introduces an efficient geometric algorithm to compute Pareto-optimal fair ranking policies under the more realistic DBN exposure model, advancing fairness-utility tradeoff solutions beyond traditional assumptions.
Contribution
It develops the first exact, polynomial-time algorithm for Pareto-optimal fair rankings under the DBN exposure model, extending previous work based on simpler models.
Findings
Algorithm computes the entire set of Pareto-optimal exposure vectors.
Method outperforms baselines in Pareto-optimality and speed.
Applicable to various fairness notions, including demographic fairness.
Abstract
In recent years, it has become clear that rankings delivered in many areas need not only be useful to the users but also respect fairness of exposure for the item producers. We consider the problem of finding ranking policies that achieve a Pareto-optimal tradeoff between these two aspects. Several methods were proposed to solve it; for instance a popular one is to use linear programming with a Birkhoff-von Neumann decomposition. These methods, however, are based on a classical Position Based exposure Model (PBM), which assumes independence between the items (hence the exposure only depends on the rank). In many applications, this assumption is unrealistic and the community increasingly moves towards considering other models that include dependences, such as the Dynamic Bayesian Network (DBN) exposure model. For such models, computing (exact) optimal fair ranking policies remains an…
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