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Exploring the facets of overall job satisfaction through a novel ensemble learning

机译:通过新颖的整体学习探索整体工作满意度的各个方面

摘要

The aim of this work is to understand the relationship between the overall job satisfaction and the facet job satisfaction, using a comprehensive Italian social cooperatives workers dataset. On this issue, recent works have explored how ensemble learning like Random Forest and TreeBoost can be used to assess the importance of potential predictors in the job satisfaction. Taking a similar way, in this study we use a tailored data mining approach for hierarchical data, namely a new algorithm called CRAGGING, shedding some light about the drivers of Job Satisfaction. To do this we use the variable importance measure designed for the CRAGGING and then we grow a synthetic model to relate the overall job satisfaction with corresponding facets, providing sufficient evidence about good accuracy and less complexity of the model leading to simple and direct interpretation.
机译:这项工作的目的是使用全面的意大利社会合作社工人数据集来了解总体工作满意度和方面工作满意度之间的关系。在这个问题上,最近的工作探索了如何使用像随机森林和TreeBoost这样的集成学习来评估潜在预测因素对工作满意度的重要性。以类似的方式,在这项研究中,我们使用了针对分层数据的量身定制的数据挖掘方法,即一种称为CRAGGING的新算法,从而揭示了工作满意度驱动因素。为此,我们使用了为CRAGGING设计的可变重要性度量,然后我们开发了一个综合模型,将整体工作满意度与相应方面相关联,为该模型的良好准确性和较低复杂性提供了充足的证据,从而可以进行简单直接的解释。

著录项

  • 作者

    Vezzoli Marika;

  • 作者单位
  • 年度 2011
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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