Previous work has shown that in Artificial Immune Systems (AIS) the best static mutation rates to escape local optima with the ageing operator are far from the optimal ones to do so via large hyper-mutations and vice-versa. In this paper we propose an AIS that automatically adapts the mutation rate during the run to make good use of both operators. We perform rigorous time complexity analyses for standard multimodal benchmark functions with significant characteristics and prove that our proposed algorithm can learn to adapt the mutation rate appropriately such that both ageing and hypermutation are effective when they are most useful for escaping local optima. In particular, the algorithm provably adapts the mutation rate such that it is ef...
Artificial immune systems (AIS) are a special class of biologically inspired algorithms, which are b...
In this paper we describe an efficient approach for multimodal function optimization using Genetic A...
Artificial immune systems can be applied to a variety of very different tasks including function opt...
Previous work has shown that in Artificial Immune Systems (AIS) the best static mutation rates to es...
We present a time complexity analysis of the Opt-IA artificial immune system (AIS). We first highlig...
We focus on the clonal selection inspired computational models of the immune system developed for ge...
Various studies have shown that immune system-inspired hypermutation operators can allow artificial ...
Different studies have theoretically analyzed the performance of artificial immune systems in the co...
Artificial Immune Systems (AIS) employing hypermutations with linear static mutation potential have ...
Typical Artificial Immune System (AIS) operators such as hypermutations with mutation potential and ...
Typical artificial immune system (AIS) operators such as hypermutations with mutation potential and ...
In the last years, multi-objective evolutionary algorithms (MOEA) have been applied to different sof...
Multimodal optimization algorithms inspired by the immune system are generally characterized by a dy...
Selection hyper-heuristics are automated algorithm selection methodologies that choose between diffe...
Recent development of large databases, especially those in genetics and proteomics, is pushing the d...
Artificial immune systems (AIS) are a special class of biologically inspired algorithms, which are b...
In this paper we describe an efficient approach for multimodal function optimization using Genetic A...
Artificial immune systems can be applied to a variety of very different tasks including function opt...
Previous work has shown that in Artificial Immune Systems (AIS) the best static mutation rates to es...
We present a time complexity analysis of the Opt-IA artificial immune system (AIS). We first highlig...
We focus on the clonal selection inspired computational models of the immune system developed for ge...
Various studies have shown that immune system-inspired hypermutation operators can allow artificial ...
Different studies have theoretically analyzed the performance of artificial immune systems in the co...
Artificial Immune Systems (AIS) employing hypermutations with linear static mutation potential have ...
Typical Artificial Immune System (AIS) operators such as hypermutations with mutation potential and ...
Typical artificial immune system (AIS) operators such as hypermutations with mutation potential and ...
In the last years, multi-objective evolutionary algorithms (MOEA) have been applied to different sof...
Multimodal optimization algorithms inspired by the immune system are generally characterized by a dy...
Selection hyper-heuristics are automated algorithm selection methodologies that choose between diffe...
Recent development of large databases, especially those in genetics and proteomics, is pushing the d...
Artificial immune systems (AIS) are a special class of biologically inspired algorithms, which are b...
In this paper we describe an efficient approach for multimodal function optimization using Genetic A...
Artificial immune systems can be applied to a variety of very different tasks including function opt...