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首页> 外文期刊>Occupational ergonomics: The journal of the international society for occupational ergonomics and safety >Classification of jobs with risk of low back disorders by applying data mining techniques
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Classification of jobs with risk of low back disorders by applying data mining techniques

机译:通过使用数据挖掘技术对具有下背部疾病风险的工作进行分类

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摘要

Work related low back disorders (LBDs) continue to pose significant occupational health problem that affects the quality of life of the industrial population. The main objective of this study was to explore the application of various data mining techniques, including neural networks, logistic regression, decision trees, memory-based reasoning, and the ensemble model, for classification of industrial jobs with respect to the risk of work-related LBDs. The results from extensive computer simulations using a 10-fold cross validation showed that memory-based reasoning and ensemble models were the best in the overall classification accuracy. The decision tree and memory-based reasoning models were the most accurate in classifying jobs with high risk of LBDs, whereas neural networks and logistic regression were the best in classifying jobs with low risk of LBDs. The decision tree model delivered the most stable results across 10 generations of different data sets randomly chosen for training, validation, and testing. The classification results generated by the decision tree were the easiest to interpret because they were given in the form of simple 'if-then' rules. These results produced by the decision tree method showed that the peak moment had the highest predictive power of LBDs.
机译:与工作有关的下背部疾病(LBD)继续构成严重的职业健康问题,影响着工业人口的生活质量。这项研究的主要目的是探索各种数据挖掘技术的应用,包括神经网络,逻辑回归,决策树,基于记忆的推理和集成模型,以根据工作风险对工业工作进行分类。相关的LBD。使用10倍交叉验证进行的广泛计算机模拟的结果表明,基于记忆的推理和整体模型是整体分类准确性中最好的。决策树和基于记忆的推理模型在对LBD风险高的工作进行分类时最准确,而神经网络和逻辑回归在对LBD风险低的工作进行分类时最准确。决策树模型在10代不同数据集(随机选择用于训练,验证和测试)中提供了最稳定的结果。决策树生成的分类结果最容易解释,因为它们以简单的“ if-then”规则形式给出。决策树方法产生的这些结果表明,峰值矩具有LBD的最高预测能力。

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