In this paper, we present the application of a Multi-Agent Classifier System (MACS) to medical data classification tasks. The MACS model comprises a number of Fuzzy Min-Max (FMM) neural network classifiers as its agents. A trust measurement method is used to integrate the predictions from multiple agents, in order to improve the overall performance of the MACS model. An auction procedure based on the sealed bid is adopted for the MACS model in determining the winning agent. The effectiveness of the MACS model is evaluated using the Wisconsin Breast Cancer (WBC) benchmark problem and a real-world heart disease diagnosis problem. The results demonstrate that stable results are produced by the MACS model in undertaking medical data classificat...
The goal of this master’s thesis is to identify and evaluate data mining algorithms which are common...
The medical data and its classification have to be treated in particular way. The data should not be...
The integration of multi-agent system and blockchain technology can be beneficial to healthcare appl...
A novel trust measurement method, namely, certified belief in strength (CBS), for a multi-agent clas...
In this paper, a neural network (NN)-based multi-agent classifier system (MACS) utilising the trust-...
In this paper, a study of the effectiveness of a multiple classifier system (MCS) in a medical diagn...
We present an agent-based distributed decision support system for the diagnosis and prognosis of bra...
An ensemble of Enhanced Fuzzy Min Max (EFMM) neural networks for data classification is proposed in ...
We present an agent-based distributed decision support system for the diagnosis and prognosis of bra...
The adoption of agent technologies and multiagentconstitutes an emerging area inbioinformatics. Arti...
Multiagent technologies enable us to explore their sociological and psychological foundations. A med...
AbstractRecognizing the biomedical named entity hasbecome one of the most fundamental tasks in thebi...
Many data mining methods have been proposed to generate computer-aided diagnostic systems, which may...
This paper presents a study of the application of autonomously learning multiple neural network syst...
This paper introduces HealthAgents, an EC-funded research project to improve the classification of b...
The goal of this master’s thesis is to identify and evaluate data mining algorithms which are common...
The medical data and its classification have to be treated in particular way. The data should not be...
The integration of multi-agent system and blockchain technology can be beneficial to healthcare appl...
A novel trust measurement method, namely, certified belief in strength (CBS), for a multi-agent clas...
In this paper, a neural network (NN)-based multi-agent classifier system (MACS) utilising the trust-...
In this paper, a study of the effectiveness of a multiple classifier system (MCS) in a medical diagn...
We present an agent-based distributed decision support system for the diagnosis and prognosis of bra...
An ensemble of Enhanced Fuzzy Min Max (EFMM) neural networks for data classification is proposed in ...
We present an agent-based distributed decision support system for the diagnosis and prognosis of bra...
The adoption of agent technologies and multiagentconstitutes an emerging area inbioinformatics. Arti...
Multiagent technologies enable us to explore their sociological and psychological foundations. A med...
AbstractRecognizing the biomedical named entity hasbecome one of the most fundamental tasks in thebi...
Many data mining methods have been proposed to generate computer-aided diagnostic systems, which may...
This paper presents a study of the application of autonomously learning multiple neural network syst...
This paper introduces HealthAgents, an EC-funded research project to improve the classification of b...
The goal of this master’s thesis is to identify and evaluate data mining algorithms which are common...
The medical data and its classification have to be treated in particular way. The data should not be...
The integration of multi-agent system and blockchain technology can be beneficial to healthcare appl...