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DIAGNOSING ASSETS IMPAIRMENT BY USING RANDOM FORESTS MODEL

机译:使用随机森林模型诊断资产减损

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摘要

This study develops a diagnosing model to examine the outcomes of assets write-off in enriching the literatures of assets impairment. Prior studies employed the Logit, linear and Tobit regression models to classify the determination of assets impairment and to diagnose the magnitude of the impairment, respectively. However, the drivers of assets write-off are somewhat complicated explicitly or implicitly, these models are unlikely to provide fairly satisfactory results. To improve the diagnosis, the Random Forests model is used for the classification determining and the magnitude diagnosing of assets impairment in this study. The result reveals that the Random Forests model outperforms the Logit and linear regression models in each case with variables selected by individual wrapping approach. This study also demonstrates diagnostic checks for both models with similar selected variables. The results are robust to these various specifications.
机译:本研究建立了一个诊断模型,以检查资产冲销的结果,以丰富资产减损的文献。先前的研究分别使用Logit,线性和Tobit回归模型对资产减值的确定进行分类并诊断减值的幅度。但是,资产注销的驱动因素在显式或隐式上有些复杂,这些模型不太可能提供令人满意的结果。为了改善诊断,本研究使用随机森林模型进行资产减值的分类确定和大小诊断。结果表明,在每种情况下,随机森林模型均优于Logit模型和线性回归模型,并且通过单独包装方法选择变量。这项研究还展示了对具有相似选择变量的两个模型的诊断检查。结果对于这些各种规格是可靠的。

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