2015
DOI: 10.1155/2015/178197
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A Hybrid Analysis Approach to Improve Financial Distress Forecasting: Empirical Evidence from Iran

Abstract: Bankruptcy prediction is an important problem facing financial decision support for stakeholders of firms, including auditors, managers, shareholders, debt-holders, and potential investors, as well as academic researchers. Popular discourse on financial distress forecasting focuses on developing the discrete models to improve the prediction. The aim of this paper is to develop a novel hybrid financial distress model based on combining various statistical and machine learning methods. Then multiple attribute de… Show more

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Cited by 8 publications
(3 citation statements)
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“…The financial decision support effect of the existing system is not good [ 19 21 ]. In terms of useful information for decision-making, the existing system focuses on the collection of internal business and financial information of the enterprise, while ignoring the collection of external information such as industry information, policy information, and macroeconomic information, and even some key decision-making useful information needs to be supplemented by decision makers, which leads to insufficient decision-making useful information integrity and reduces the quality of decision-making useful information [ 22 25 ].…”
Section: The Proposed Systemmentioning
confidence: 99%
“…The financial decision support effect of the existing system is not good [ 19 21 ]. In terms of useful information for decision-making, the existing system focuses on the collection of internal business and financial information of the enterprise, while ignoring the collection of external information such as industry information, policy information, and macroeconomic information, and even some key decision-making useful information needs to be supplemented by decision makers, which leads to insufficient decision-making useful information integrity and reduces the quality of decision-making useful information [ 22 25 ].…”
Section: The Proposed Systemmentioning
confidence: 99%
“…A model based on multivariate discriminant analysis was presented by Altman et al (2014). For Iranian companies, Khademolqorani et al (2015) developed a hybrid model based on a combination of statistical methods and machine learning methods. Singh and Mishra (2016) have developed a prediction model for the Indian manufacturing companies.…”
Section: Literature Reviewmentioning
confidence: 99%
“…En esta línea se encuentran estudios de análisis de ciclo de vida de pavimentos (Zheng et al, 2020), de vulnerabilidad ecológica (Hu et al, 2021; y de agricultura ante inundaciones (Guo et al, 2021), así como evaluaciones de calidad de aire en interiores (Piasecki & Kostyrko, 2020) y de emisiones de CO2 . En otros ámbitos se enmarcan priorizaciones de proyectos municipales (Khademolqorani, 2018) y evaluaciones de responsabilidad social en empresas transportistas (Luo et al, 2021) y del nivel de bienestar en los países (Murat, 2020). También existen artículos con esta normalización que utilizan múltiples MCDM para analizar y comparar sus respuestas.…”
Section: Sistema De Evaluación Y Priorización De Inversiones Públicasunclassified