Abstract
Extreme learning machine (ELM) is a rapid classifier evolved for batch
learning mode unsuitable for sequential input. Retrieving data from the new inventory
leads to a time-extended process. Therefore, online sequential extreme learning
machine (OSELM) algorithms were proposed by Liang et al.. The OSELM is able to
handle the sequential input by reading data 1 by 1 or chunk by chunk mode. The
overall system generalization performance may devalue because of the amalgamation
of the random initialization of OS-ELM and the presence of redundant and irrelevant
features. To resolve the said problem, this paper proposes a correspondence multimodal
genetic optimized feature selection paradigm for sequential input (MG-OSELM) for
radial basis function by using clinical datasets. For performance comparison, the
proposed paradigm is implemented and evaluated for ELM, multimodal genetic
optimized for ELM classifier (MG-ELM), OS-ELM, MG-OSELM. Experimental
results are calculated and analysed accordingly. The comparative results analysis
illustrates that MG-ELM provides 10.94% improved accuracy with 43.25% features
compared to ELM.
Keywords: Classification Problem, Feature Selection problem, Genetic Algorithm, Online sequential Extreme Learning Machine.