Approximating Pareto Sum via Bounded Monotone Min-Plus Convolution
Geri Gokaj, Marvin K\"unnemann, Sabine Storandt, Carina Truschel

TL;DR
This paper introduces a subquadratic approximation algorithm for Pareto sums in bi-criteria optimization, connecting it to Bounded Monotone Min-Plus Convolution, and demonstrates practical efficiency on real instances.
Contribution
It establishes a theoretical link between approximate Pareto sums and Bounded Monotone Min-Plus Convolution, enabling faster algorithms, and provides practical implementations that outperform existing exact methods.
Findings
Subquadratic approximation algorithm for Pareto sums.
Theoretical equivalence to Bounded Monotone Min-Plus Convolution.
Practical implementations outperform quadratic algorithms on large instances.
Abstract
The Pareto sum of two-dimensional point sets and in is defined as the skyline of the points in their Minkowski sum. The problem of efficiently computing the Pareto sum arises frequently in bi-criteria optimization algorithms. Prior work establishes that computing the Pareto sum of sets and of size suffers from conditional lower bounds that rule out strongly subquadratic -time algorithms, even when the output size is . Naturally, we ask: How efficiently can we \emph{approximate} Pareto sums, both in theory and practice? Can we beat the near-quadratic-time state of the art for exact algorithms? On the theoretical side, we formulate a notion of additively approximate Pareto sets and show that computing an approximate Pareto set is \emph{fine-grained equivalent} to Bounded Monotone Min-Plus Convolution. Leveraging a…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Complexity and Algorithms in Graphs · Computational Geometry and Mesh Generation
