4.6 Article

Innovative Artificial Intelligence Approach for Hearing-Loss Symptoms Identification Model Using Machine Learning Techniques

期刊

SUSTAINABILITY
卷 13, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/su13105406

关键词

hearing-loss symptoms; frequent pattern growth; multivariate Bernoulli naive Bayes; machine learning techniques; identification model

资金

  1. Basque Country Government

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Physicians rely on experience and symptomatic diagnosis, which may lead to longer wait times and patient pressure. A decision-support system for diagnosing hearing loss symptoms was developed using machine learning techniques, with an average accuracy rate of 98.25% demonstrated in the study.
Physicians depend on their insight and experience and on a fundamentally indicative or symptomatic approach to decide on the possible ailment of a patient. However, numerous phases of problem identification and longer strategies can prompt a longer time for consulting and can subsequently cause other patients that require attention to wait for longer. This can bring about pressure and tension concerning those patients. In this study, we focus on developing a decision-support system for diagnosing the symptoms as a result of hearing loss. The model is implemented by utilizing machine learning techniques. The Frequent Pattern Growth (FP-Growth) algorithm is used as a feature transformation method and the multivariate Bernoulli naive Bayes classification model as the classifier. To find the correlation that exists between the hearing thresholds and symptoms of hearing loss, the FP-Growth and association rule algorithms were first used to experiment with small sample and large sample datasets. The result of these two experiments showed the existence of this relationship, and that the performance of the hybrid of the FP-Growth and naive Bayes algorithms in identifying hearing-loss symptoms was found to be efficient, with a very small error rate. The average accuracy rate and average error rate for the multivariate Bernoulli model with FP-Growth feature transformation, using five training sets, are 98.25% and 1.73%, respectively.

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