Comparative Analysis of Indicators for Multiobjective Diversity Optimization
Ksenia Pereverdieva, Andr\'e Deutz, Tessa Ezendam, Thomas B\"ack,, H\`erm Hofmeyer, Michael T.M. Emmerich

TL;DR
This paper compares various diversity indicators for multiobjective optimization, analyzing their theoretical properties, computational complexity, and practical performance within the NOAH evolutionary algorithm framework.
Contribution
It introduces new theoretical results, including NP-hardness proofs, and provides a comprehensive analysis of diversity indicators in multiobjective evolutionary algorithms.
Findings
Riesz s-Energy subset selection is NP-hard.
Different indicators influence search dynamics uniquely.
Proposed NOAH adaptations improve Max-Min indicator performance.
Abstract
Indicator-based (multiobjective) diversity optimization aims at finding a set of near (Pareto-)optimal solutions that maximizes a diversity indicator, where diversity is typically interpreted as the number of essentially different solutions. Whereas, in the first diversity-oriented evolutionary multiobjective optimization algorithm, the NOAH algorithm by Ulrich and Thiele, the Solow Polasky Diversity (also related to Magnitude) served as a metric, other diversity indicators might be considered, such as the parameter-free Max-Min Diversity, and the Riesz s-Energy, which features uniformly distributed solution sets. In this paper, focusing on multiobjective diversity optimization, we discuss different diversity indicators from the perspective of indicator-based evolutionary algorithms (IBEA) with multiple objectives. We examine theoretical, computational, and practical properties of these…
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Taxonomy
TopicsEfficiency Analysis Using DEA · Innovation Diffusion and Forecasting · Environmental Sustainability in Business
MethodsSparse Evolutionary Training
