Visualization and analysis of Pareto-optimal fronts using interpretable self-organizing map (iSOM)
Visualizing and analyzing multiple Pareto-optimal solutions obtained using an evolutionary
multi-or many-objective optimization algorithm is as important a task as the task of finding …
multi-or many-objective optimization algorithm is as important a task as the task of finding …
Many-objective optimization of multi-mode public transportation under carbon emission reduction
The incoordination between public transportation system construction and urban
infrastructure development is a challenge for the sustainable development of cities …
infrastructure development is a challenge for the sustainable development of cities …
A radial space division based evolutionary algorithm for many-objective optimization
In evolutionary many-objective optimization, diversity maintenance plays an important role in
pushing the population towards the Pareto optimal front. Existing many-objective …
pushing the population towards the Pareto optimal front. Existing many-objective …
Many-objective optimization of technology implementation in the industrial symbiosis system based on a modified NSGA-III
Industrial symbiosis is a promising approach for energy conservation and emission
reduction in the global industrial sector. The objective of this research is to optimize …
reduction in the global industrial sector. The objective of this research is to optimize …
An overview on evolutionary algorithms for many‐objective optimization problems
Multiobjective evolutionary algorithms (MOEAs) effectively solve several complex
optimization problems with two or three objectives. However, when they are applied to many …
optimization problems with two or three objectives. However, when they are applied to many …
PaletteViz: A visualization method for functional understanding of high-dimensional Pareto-optimal data-sets to aid multi-criteria decision making
To represent a many-objective Pareto-optimal front having four or more dimensions of the
objective space, a large number of points are necessary. However, for choosing a single …
objective space, a large number of points are necessary. However, for choosing a single …
Automated discovery of trade-off between utility, privacy and fairness in machine learning models
Machine learning models are deployed as a central component in decision making and
policy operations with direct impact on individuals' lives. In order to act ethically and comply …
policy operations with direct impact on individuals' lives. In order to act ethically and comply …
Machine learning-based framework to cover optimal Pareto-front in many-objective optimization
One of the crucial challenges of solving many-objective optimization problems is uniformly
well covering of the Pareto-front (PF). However, many the state-of-the-art optimization …
well covering of the Pareto-front (PF). However, many the state-of-the-art optimization …
Design space exploration and optimization using self-organizing maps
Identifying regions of interest (RoI) in the design space is extremely useful while building
metamodels with limited computational budget. Self-organizing maps (SOM) are used as a …
metamodels with limited computational budget. Self-organizing maps (SOM) are used as a …
Interactivized: Visual interaction for better decisions with interactive multiobjective optimization
In today's data-driven world, decision makers are facing many conflicting objectives. Since
there is usually no solution that optimizes all objectives simultaneously, the aim is to identify …
there is usually no solution that optimizes all objectives simultaneously, the aim is to identify …