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Going-concern prediction using hybrid random forests and rough set approach

机译:混合随机森林和粗糙集方法的持续经营预测

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摘要

Corporate going-concern opinions are not only useful in predicting bankruptcy but also provide some explanatory power in predicting bankruptcy resolution. The prediction of a firm's ability to remain a going concern is an important and challenging issue that has served as the impetus for many academic studies over the last few decades. Although intellectual capital (IC) is generally acknowledged as the key factor contributing to a corporation's ability to remain a going concern, it has not been considered in early prediction models. The objective of this study is to increase the accuracy of going-concern prediction by using a hybrid random forest (RF) and rough set theory (RST) approach, while adopting IC as a predictive variable. The results show that this proposed hybrid approach has the best classification rate and the lowest occurrence of Types I and II errors, and that IC is indeed valuable for going-concern prediction.
机译:公司持续经营的意见不仅有助于预测破产,而且可以为预测破产解决方案提供一定的解释力。对公司持续经营能力的预测是一个重要且具有挑战性的问题,在过去的几十年中,这一直是许多学术研究的动力。尽管通常公认智力资本(IC)是有助于公司保持持续经营能力的关键因素,但早期预测模型并未考虑到这一点。这项研究的目的是通过使用混合随机森林(RF)和粗糙集理论(RST)的方法来提高持续关注预测的准确性,同时采用IC作为预测变量。结果表明,该提出的混合方法具有最佳的分类率和最低的I型和II型错误发生,并且IC确实对于持续关注的预测非常有价值。

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