2019
DOI: 10.1007/s12652-019-01574-x
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A random forest-based job shop rescheduling decision model with machine failures

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Cited by 5 publications
(3 citation statements)
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“…Simultaneously, the method avoids errors of bias and variance by random choosing of input-predictor variables with the application of various subsets of the related training dataset (Ren et al 2019;Lee and Moon 2018). Classification problem involves the forest, ascertaining the classification with the highest votes above total trees in the forest (Zhao et al 2019). Furthermore, the algorithm has also been widely used for a wide variety of wetland classification, and mapping natural coastal salt marsh vegetation environments (Tian et al 2016;Van Beijma and Comber 2014;Corcoran et al 2013).…”
Section: Introductionmentioning
confidence: 99%
“…Simultaneously, the method avoids errors of bias and variance by random choosing of input-predictor variables with the application of various subsets of the related training dataset (Ren et al 2019;Lee and Moon 2018). Classification problem involves the forest, ascertaining the classification with the highest votes above total trees in the forest (Zhao et al 2019). Furthermore, the algorithm has also been widely used for a wide variety of wetland classification, and mapping natural coastal salt marsh vegetation environments (Tian et al 2016;Van Beijma and Comber 2014;Corcoran et al 2013).…”
Section: Introductionmentioning
confidence: 99%
“…Their findings suggested that ensemble approaches may be more useful for credit risk analysis as random forests and gradient-boosting machines have stronger predictive power than decision trees. In a separate study, [6] assessed the effectiveness of various machine learning classifiers for analyzing German credit risk, including Support Vector Machines, Logistic regression, Decision trees, Random forests, and Neural networks. The maximum accuracy as well as recall was obtained in random forests, suggesting that it would be the most effective classifier for this task.…”
Section: Related Workmentioning
confidence: 99%
“…Another machine learning technique that combines several decision trees is random forest (RF). The authors in [20] started by generating and processing data samples of machine failures, then designed the RF-based rescheduling model that would decide which rescheduling strategy has to be made (no rescheduling, right-shift rescheduling or total rescheduling). In [21], a comparison between several machine learning techniques was made.…”
Section: Job Shop Scheduling Using Artificial Intelligencementioning
confidence: 99%