Explaining the decisions made by population-based metaheuristics can often be considered difficult due to the stochastic nature of the mechanisms employed by these optimisation methods. As industries continue to adopt these methods in areas that increasingly require end-user input and confirmation, the need to explain the internal decisions being made has grown. In this article, we present our approach to the extraction of explanation supporting features using trajectory mining. This is achieved through the application of principal components analysis techniques to identify new methods of tracking population diversity changes post-runtime. The algorithm search trajectories were generated by solving a set of benchmark problems with a genetic...
Artificial evolution can be applied to machine learning thanks to genetic programming, for instance,...
Inspired by natural processes such as evolution and collective animal behaviour, population-based me...
In the past decade, Explainable Artificial Intelligence (XAI) has attracted a great interest in the ...
Explaining the decisions made by population-based metaheuristics can often be considered difficult d...
The generation of explanations regarding decisions made by population-based meta-heuristics is often...
Metaheuristic search algorithms look for solutions that either max-imise or minimise a set of object...
Metaheuristics are randomised search algorithms that are effective at finding "good enough" solution...
Metaheuristics are randomised search algorithms that are effective at finding ”good enough” solution...
A large number of metaheuristics inspired by natural and social phenomena have been proposed in the ...
In the field of Explainable AI, population-based search metaheuristics are of growing interest as th...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
In this article we propose a formalisation of the concept of exploration performed by metaheuristics...
Traditional methods of creating explanations from complex systems involving the use of AI have resul...
A significant amount of previous research into feature selection has been aimed at developing method...
A non-dominated sorting genetic algorithm is used to evolve models of learning from different theori...
Artificial evolution can be applied to machine learning thanks to genetic programming, for instance,...
Inspired by natural processes such as evolution and collective animal behaviour, population-based me...
In the past decade, Explainable Artificial Intelligence (XAI) has attracted a great interest in the ...
Explaining the decisions made by population-based metaheuristics can often be considered difficult d...
The generation of explanations regarding decisions made by population-based meta-heuristics is often...
Metaheuristic search algorithms look for solutions that either max-imise or minimise a set of object...
Metaheuristics are randomised search algorithms that are effective at finding "good enough" solution...
Metaheuristics are randomised search algorithms that are effective at finding ”good enough” solution...
A large number of metaheuristics inspired by natural and social phenomena have been proposed in the ...
In the field of Explainable AI, population-based search metaheuristics are of growing interest as th...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
In this article we propose a formalisation of the concept of exploration performed by metaheuristics...
Traditional methods of creating explanations from complex systems involving the use of AI have resul...
A significant amount of previous research into feature selection has been aimed at developing method...
A non-dominated sorting genetic algorithm is used to evolve models of learning from different theori...
Artificial evolution can be applied to machine learning thanks to genetic programming, for instance,...
Inspired by natural processes such as evolution and collective animal behaviour, population-based me...
In the past decade, Explainable Artificial Intelligence (XAI) has attracted a great interest in the ...