Evaluation of a New Heart Beat Classification Method Based on ABC Algorithm, Comparison with GA, PSO and ACO Classifiers
Künye
DİLMAÇ, Selim, Ali NİZAM & Mehmet KORÜREK. "Evaluation of a New Heart Beat Classification Method Based on ABC Algorithm, Comparison with GA, PSO and ACO Classifiers". International Journal of Reasoning-based Intelligent Systems, 6.3/4 (2014): 98-108.Özet
In this paper, we proposed a new method modified artificial bee colony (MABC)
algorithm and it is applied to ECG signal analysis for heart beat classification. MITBIH database
ECG data is used. In this dataset, MABC algorithm can reach high classification success rate,
even with the low values of colony size and other control parameters such as MCN and limit. The
classification success rate result of MABC is compared with results of three other classifiers:
GA, PSO and ACO. In classification problem, choosing distinctive features has important effect
to get a high classification success rate. By using the right features on analysed dataset, high
system classification success rate (98.73%) is achieved by MABC, similar to other compared
classifiers. MABC and ACO has high sensitivity for all beat types while GA and PSO have lower
classification success rates for some beat types.