2014
DOI: 10.1016/j.knosys.2014.03.007
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Financial ratio selection for business failure prediction using soft set theory

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Cited by 66 publications
(49 citation statements)
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References 33 publications
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“…Leverage ratio represented by total liabilities to total asset is positively related to the probability of default. This supports the argument that highly levered firms are more prone to financial distress (Altman, 1968;Shumway, 2001;Xu et al, 2014;Zmijewski, 1984). The cash flow to total liabilities ratio and cash flow from operations to sales are significant predictors in the estimated model.…”
Section: Results and Analysissupporting
confidence: 80%
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“…Leverage ratio represented by total liabilities to total asset is positively related to the probability of default. This supports the argument that highly levered firms are more prone to financial distress (Altman, 1968;Shumway, 2001;Xu et al, 2014;Zmijewski, 1984). The cash flow to total liabilities ratio and cash flow from operations to sales are significant predictors in the estimated model.…”
Section: Results and Analysissupporting
confidence: 80%
“…The firm can increase the debt to minimize its cost of capital while the borrowing beyond some points increases the risk of bankruptcy as firms with high debt ratios are more prone to financial distress. Altman (1968), Bandyopadhyay (2013), Shumway (2001), and Xu et al (2014) find the significance of leverage ratios in predicting financial distress. Another important set of financial ratios in predicting financial distress is cash flow ratios.…”
Section: Literature Reviewmentioning
confidence: 97%
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“…On the other hand, in the field of management, Zhang and Xu [13] deal with the problem of choosing material suppliers by a manufacturer to purchase key components in order to reach a competitive advantage in the market of watches; Xu and Xia [25] provide a management case study by using the hesitant fuzzy elements to estimate the degree to which an alternative satisfies a criterion in a decision-making process; Taş et al [26] present new applications of a soft set theory and a fuzzy soft set theory to the effective management of stock-out situations. In the field of finance, Xu and Xiao [27] apply the soft set theory to select financial ratios for business failure prediction by using real data sets from Chinese listed firms; Kalaichelvi [28] and Özgür and Taş [29] apply fuzzy soft sets to solve the investment decision making problem.…”
Section: Introductionmentioning
confidence: 99%
“…Those methods may have good performance with samples of large sizes and certainty information. However, they are not good at dealing with small samples and soft and uncertain information [27,28]. Besides, these combined methods also have a contradiction that the over-fitting problem may occur and the generalization power may be poor as the number of components increases.…”
Section: Introductionmentioning
confidence: 99%