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Data Mining Approaches for the Methods to Minimize Total Tardiness in Parallel Machine Scheduling Problem

机译:并行机器调度问题中使总拖延最小的方法的数据挖掘方法

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This study examines large sample size of instances and tries to extract useful knowledge about the domain of parallel machine scheduling problem (PMSP) and solution space explored. The aim of this study is to provide statistical interpretations and classify the differences between the instances. The interrelationship between specified predetermined inputs and the output is examined through artificial neural networks (ANNs) along with regression analysis since they can easily explore which inputs are related to the output and develop regression model. The results of both analyses reveal significancies of the relationships and predicted importance of the predetermined inputs on the output. Furthermore, we examined the behaviours or patterns of the instances, after realizing the easiness and hardiness of the instances accentuating the differences. In order to link the predetermined inputs of instances with the performances of the set of tested methods, the differences between instances are evaluated in terms of variability. Then, we grouped instances into three clusters, specifying as exact, equal and difficult zones, for information retrieval about their complexities via hierarchical clustering method.
机译:这项研究检查了大型实例实例,并尝试提取有关并行机调度问题(PMSP)和所探索的解决方案空间的有用知识。这项研究的目的是提供统计解释并对实例之间的差异进行分类。通过人工神经网络(ANN)以及回归分析,可以检查指定的预定输入与输出之间的相互关系,因为它们可以轻松探索哪些输入与输出相关,并可以开发回归模型。两种分析的结果都揭示了这种关系的重要性,并预测了预定输入对输出的重要性。此外,在意识到实例之间的难易程度加剧差异之后,我们检查了实例的行为或模式。为了将实例的预定输入与一组测试方法的性能联系起来,需要根据可变性评估实例之间的差异。然后,我们将实例分为三个簇,分别指定为精确,相等和困难的区域,以便通过分层聚类方法检索有关其复杂性的信息。

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