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An efficient hybrid extreme learning machine and evolutionary framework with applications for medical diagnosis
Journal article   Peer reviewed

An efficient hybrid extreme learning machine and evolutionary framework with applications for medical diagnosis

Ali Al Bataineh, Seyed Mohammad Jafar Jalali, Seyed Jalaleddin Mousavirad, Amirmehdi Yazdani, Syed Mohammed Shamsul Islam and Abbas Khosravi
Expert systems, e13532
2024

Abstract

Integrating machine learning techniques into medical diagnostic systems holds great promise for enhancing disease identification and treatment. Among the various options for training such systems, the extreme learning machine (ELM) stands out due to its rapid learning capability and computational efficiency. However, the random selection of input weights and hidden neuron biases in the ELM can lead to suboptimal performance. To address this issue, our study introduces a novel approach called modified Harris hawks optimizer (MHHO) to optimize these parameters in ELM for medical classification tasks. By applying the MHHO‐based method to seven medical datasets, our experimental results demonstrate its superiority over seven other evolutionary‐based ELM trainer models. The findings strongly suggest that the MHHO approach can serve as a valuable tool for enhancing the performance of ELM in medical diagnosis.

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
1 Clinical & Life Sciences
1.104 Virology - General
1.104.2810 AI in COVID-19
Web Of Science research areas
Computer Science, Artificial Intelligence
Computer Science, Theory & Methods
ESI research areas
Computer Science
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