2000
DOI: 10.1016/s0003-6870(99)00055-1
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A new approach to applying feedforward neural networks to the prediction of musculoskeletal disorder risk

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Cited by 34 publications
(34 citation statements)
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“…Recently, ANNs have been investigated as to their effectiveness for modeling LBD risk (Chen, Kaber, & Dempsey, 2000;Kaber & Chen, 1998;Karwowski, Zurada, Marras, & Gaddie, 1994;Zurada, Karwowski, & Marras, 1997). These methods do not often require strict assumptions such as those required by logistic regression, and the results of the cited investigations indicate that ANNs are a promising method for modeling LBD risk.…”
Section: Introductionmentioning
confidence: 99%
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“…Recently, ANNs have been investigated as to their effectiveness for modeling LBD risk (Chen, Kaber, & Dempsey, 2000;Kaber & Chen, 1998;Karwowski, Zurada, Marras, & Gaddie, 1994;Zurada, Karwowski, & Marras, 1997). These methods do not often require strict assumptions such as those required by logistic regression, and the results of the cited investigations indicate that ANNs are a promising method for modeling LBD risk.…”
Section: Introductionmentioning
confidence: 99%
“…In two previous studies (Chen et al, 2000;Kaber & Chen, 1998), the authors developed a unique method for architecting feedforward neural networks (FNNs) and applying them to problems of classifying industrial jobs in terms of risk for LBDs. Historically, FNNs used for ergonomic applications have been developed using an error backpropagation (EBP) algorithm (Killough et al, 1995;Nussbaum & Chaffin, 1996;Zurada et al, 1997).…”
Section: Introductionmentioning
confidence: 99%
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“…In the context of the model, a low-workload classification represented the experimental condition in which participants were required to manage three aircraft at any time, and a high-workload classification represented the experiment condition in which operators were presented with seven aircraft. We initially used multiple linear regression for selection of input variables for the NN (see Chen, Kaber, & Dempsey, 2000, for a detailed example) among all workload measures recorded during the ATC simulation. We sought to investigate only those predictors that appeared to be significant in explaining objective workload states as inputs to the NN models.…”
Section: Development Of a Functional State Classification Toolmentioning
confidence: 99%