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Main Authors: Shaaban, Mai A., Kashkash, Mariam, Alghfeli, Maryam, Ibrahim, Adham
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2303.08021
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author Shaaban, Mai A.
Kashkash, Mariam
Alghfeli, Maryam
Ibrahim, Adham
author_facet Shaaban, Mai A.
Kashkash, Mariam
Alghfeli, Maryam
Ibrahim, Adham
contents One of the main challenges in the field of deep learning is obtaining the optimal model hyperparameters. The search for optimal hyperparameters usually hinders the progress of solutions to real-world problems such as healthcare. Previous solutions have been proposed, but they can still get stuck in local optima. To overcome this hurdle, we propose OptBA to automatically fine-tune the hyperparameters of deep learning models by leveraging the Bees Algorithm, which is a recent promising swarm intelligence algorithm. In this paper, the optimization problem of OptBA is to maximize the accuracy in classifying ailments using medical text, where initial hyperparameters are iteratively adjusted by specific criteria. Experimental results demonstrate a noteworthy enhancement in accuracy with approximately 1.4%. This outcome highlights the effectiveness of the proposed mechanism in addressing the critical issue of hyperparameter optimization and its potential impact on advancing solutions for healthcare. The code is available publicly at \url{https://github.com/Mai-CS/OptBA}.
format Preprint
id arxiv_https___arxiv_org_abs_2303_08021
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle OptBA: Optimizing Hyperparameters with the Bees Algorithm for Improved Medical Text Classification
Shaaban, Mai A.
Kashkash, Mariam
Alghfeli, Maryam
Ibrahim, Adham
Computation and Language
Artificial Intelligence
One of the main challenges in the field of deep learning is obtaining the optimal model hyperparameters. The search for optimal hyperparameters usually hinders the progress of solutions to real-world problems such as healthcare. Previous solutions have been proposed, but they can still get stuck in local optima. To overcome this hurdle, we propose OptBA to automatically fine-tune the hyperparameters of deep learning models by leveraging the Bees Algorithm, which is a recent promising swarm intelligence algorithm. In this paper, the optimization problem of OptBA is to maximize the accuracy in classifying ailments using medical text, where initial hyperparameters are iteratively adjusted by specific criteria. Experimental results demonstrate a noteworthy enhancement in accuracy with approximately 1.4%. This outcome highlights the effectiveness of the proposed mechanism in addressing the critical issue of hyperparameter optimization and its potential impact on advancing solutions for healthcare. The code is available publicly at \url{https://github.com/Mai-CS/OptBA}.
title OptBA: Optimizing Hyperparameters with the Bees Algorithm for Improved Medical Text Classification
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2303.08021