The Magnitude of Dominated Sets: A Pareto Compliant Indicator Grounded in Metric Geometry
TLDR
Magnitude is introduced as a new Pareto-compliant quality indicator for multiobjective optimization, offering an alternative to hypervolume.
Key contributions
- Introduces "magnitude" as a new, strictly Pareto-compliant quality indicator for multiobjective optimization.
- Derives an all-dimensional projection formula and proves weak/strict set monotonicity for magnitude.
- Magnitude assigns positive value to boundary points, favoring boundary-including populations over interior-filling.
- Computationally viable, reducing to hypervolume on coordinate projections with similar asymptotic complexity.
Why it matters
This paper introduces magnitude, a new Pareto-compliant quality indicator for multiobjective optimization, as an alternative to hypervolume. It addresses hypervolume's limitations by valuing boundary points, providing a more comprehensive assessment of Pareto front approximations.
Original Abstract
We investigate \emph{magnitude} as a new unary and strictly Pareto-compliant quality indicator for finite approximation sets to the Pareto front in multiobjective optimization. Magnitude originates in enriched category theory and metric geometry, where it is a notion of size or point content for compact metric spaces and a generalization of cardinality. For dominated regions in the \(\ell_1\) box setting, magnitude is close to hypervolume but not identical: it contains the top-dimensional hypervolume term together with positive lower-dimensional projection and boundary contributions. This paper gives a first theoretical study of magnitude as an indicator. We consider multiobjective maximization with a common anchor point. For dominated sets generated by finite approximation sets, we derive an all-dimensional projection formula, prove weak and strict set monotonicity on finite unions of anchored boxes, and thereby obtain weak and strict Pareto compliance. Unlike hypervolume, magnitude assigns positive value to boundary points sharing one or more coordinates with the anchor point, even when their top-dimensional hypervolume contribution vanishes. We then formulate projected set-gradient methods and compare hypervolume and magnitude on biobjective and three-dimensional simplex examples. Numerically, magnitude favors boundary-including populations and, for suitable cardinalities, complete Das--Dennis grids, whereas hypervolume prefers more interior-filling configurations. Computationally, magnitude reduces to hypervolume on coordinate projections; for fixed dimension this yields the same asymptotic complexity up to a factor \(2^d-1\), and in dimensions two and three \(Θ(n\log n)\) time. These results identify magnitude as a mathematically natural and computationally viable alternative to hypervolume for finite Pareto front approximations.
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