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首页> 外文期刊>Journal of Scientific Research and Reports >Application of Data Mining Techniques toAudiometric Data among Professionals in India
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Application of Data Mining Techniques toAudiometric Data among Professionals in India

机译:数据挖掘技术在印度专业人员中的测听数据中的应用

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Aims: Noise induced hearing loss (NIHL) is among the principal occupational health hazard. To illustrate that, in order to enrich the database on audiometric status and fast dissemination of knowledgebase, data mining techniques are imperative tools.Study Design: A cross sectional study design was used.Place and Duration of Study: Pure tone audiometric data of both ears of drivers that have 10 years working experience and office workers from Kolkata City, India were recorded.Methodology: The data were subjected to both unsupervised and supervised learning techniques, in turn, in order to train the classifier that determines the clusters for newly generated cases. Expectation Maximization (EM), k-means, Linear Vector Quantization (LVQ), and Self Organization Map (SOM) unsupervised learning techniques were utilized.Results: Silhouette Plot (SP) validation showed that 93.3% of the considered cases for the left ear and 85.8% for the right ear were correctly classified. These metadata were further subjected to supervised learning algorithm to achieve a high level correctly classified result, in which, each cluster bears its class label. Naïve Bays Classifier (NBC) recorded, as accurate (98.8%) for both left and right ears. The high accuracy of supervised learning algorithms, cross validated with 10-fold cross validation tends to predict the class of audiometric data whenever a newly generated data are introduced.Conclusion: This feasibility of using machine learning and data classification models on the audiometric data would be an effective tool in the hearing conservation program for individuals exposed to noisy environments in their respective workplaces.
机译:目的:噪声诱发的听力损失(NIHL)是主要的职业健康危害之一。为了说明这一点,为了丰富有关听力状态和快速传播知识库的数据库,数据挖掘技术是必不可少的工具。研究设计:采用横断面研究设计研究的地点和持续时间:两只耳朵的纯音听力数据记录了来自印度加尔各答市的具有10年工作经验的驾驶员和上班族。方法:依次对数据进行无监督和有监督的学习技术训练,以训练分类器确定新生成的案例的聚类。使用了期望最大化(EM),k均值,线性向量量化(LVQ)和自组织图(SOM)无监督学习技术。结果:轮廓图(SP)验证显示,有93.3%的左耳病例被考虑右耳的正确率为85.8%。对这些元数据进一步进行监督学习算法,以获得高水平的正确分类结果,其中,每个聚类均带有其类别标签。朴素海湾分类器(NBC)记录为左耳和右耳均准确(98.8%)。引入10倍交叉验证进行交叉验证的监督学习算法的高精度往往会在引入新生成的数据时预测听觉数据的类别。结论:在听觉数据上使用机器学习和数据分类模型的这种可行性将是可行的。听力保护计划中针对暴露于各自工作场所嘈杂环境中的个人的有效工具。

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