The use of clustering in various applications is key to its popularity in data analysis and data mining. Algorithms used for optimisation can be extended to perform clustering on a dataset. In this paper, a swarm intelligence technique – Stochastic Diffusion Search – is deployed for clustering purposes. This algorithm has been used in the past as a multi-agent global search and optimisation technique. In the context of this paper, the algorithm is applied to a clustering problem, tested on the classical Iris dataset and its performance is contrasted against nine other clustering techniques. The outcome of the comparison highlights the promising and competitive performance of the proposed method in terms of the quality of the solutions and i...
A Letter to Nature demonstrated that a simple ant-inspired ‘tandem calling’ recruitment mechanism im...
narrates the early research on using Stochastic Diffusion Search (SDS) – a swarm intelligence algor...
The concept of partial evaluation of ¯tness functions, together with mechanisms manipulating the res...
Stochastic Diffusion Search, first incepted in 1989, belongs to the extended family of swarm intelli...
Stochastic Diffusion Search, first incepted in 1989, belongs to the extended family of swarm intelli...
Stochastic diffusion search (SDS) is a multi-agent global optimisation technique based on the behavi...
This article presents the long-term behaviour analysis of Stochastic Diffusion Search (SDS), a distr...
This article presents the long-term behaviour analysis of Stochastic Diffusion Search (SDS), a distr...
This study reports early research aimed at applying the powerful resource allocation mechanism deplo...
This study reports early research aimed at applying the powerful resource allocation mechanism deplo...
The integration of Swarm Intelligence (SI) algorithms and Evolutionary algorithms (EAs) might be one...
Stochastic Diffusion Search is a well characterised robust swarm intelligence global metaheuristic, ...
Over the years, machine learning has been facing the issue of imbalance dataset. It occurs when the ...
Over the years, machine learning has been facing the issue of imbalance dataset. It occurs when the ...
This work introduces a generalised hybridisation strategy which utilises the information sharing mec...
A Letter to Nature demonstrated that a simple ant-inspired ‘tandem calling’ recruitment mechanism im...
narrates the early research on using Stochastic Diffusion Search (SDS) – a swarm intelligence algor...
The concept of partial evaluation of ¯tness functions, together with mechanisms manipulating the res...
Stochastic Diffusion Search, first incepted in 1989, belongs to the extended family of swarm intelli...
Stochastic Diffusion Search, first incepted in 1989, belongs to the extended family of swarm intelli...
Stochastic diffusion search (SDS) is a multi-agent global optimisation technique based on the behavi...
This article presents the long-term behaviour analysis of Stochastic Diffusion Search (SDS), a distr...
This article presents the long-term behaviour analysis of Stochastic Diffusion Search (SDS), a distr...
This study reports early research aimed at applying the powerful resource allocation mechanism deplo...
This study reports early research aimed at applying the powerful resource allocation mechanism deplo...
The integration of Swarm Intelligence (SI) algorithms and Evolutionary algorithms (EAs) might be one...
Stochastic Diffusion Search is a well characterised robust swarm intelligence global metaheuristic, ...
Over the years, machine learning has been facing the issue of imbalance dataset. It occurs when the ...
Over the years, machine learning has been facing the issue of imbalance dataset. It occurs when the ...
This work introduces a generalised hybridisation strategy which utilises the information sharing mec...
A Letter to Nature demonstrated that a simple ant-inspired ‘tandem calling’ recruitment mechanism im...
narrates the early research on using Stochastic Diffusion Search (SDS) – a swarm intelligence algor...
The concept of partial evaluation of ¯tness functions, together with mechanisms manipulating the res...