Understanding and Predicting the Resolution of Financial Distress

Understanding and Predicting the Resolution of Financial Distress PDF Author: Ahmet K. Karagozoglu
Publisher:
ISBN:
Category :
Languages : en
Pages : 48

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Book Description
In this study, we empirically investigate the determinants of the process utilized to resolve financial distress (resolution process) and also the outcome of the financial distress (resolution outcome). Specifically, we separate firms that utilize a private (work out) versus a public (filing for bankruptcy) resolution process and then we further separate the firms by outcome - liquidation or reorganization. Various qualitative dependent variable models are estimated and compared: ordered logistic regression (OLR), local regression models (LRMs) and feed forward neural network (FNN). We select several accounting and economic variables, measured at the time of default, which are expected to influence the resolution process and the resolution outcome. Estimation results reveal the OLR specification achieves the best balance between in-sample fit, consistency with financial theory, and out-of-sample classification accuracy. We find that larger firms with higher liquidity and more secured debt in their capital structure are more likely to follow a public resolution process. Firms with higher Z-scores and more total leverage are less likely to follow a public resolution process and attempt to resolve the financial distress privately. For resolution outcome, we find that firms with greater liquidity, more secured debt and lower cumulative abnormal returns are more likely to be liquidated rather than reorganized. And firms with more leverage, more intangible assets and filing a prepackaged bankruptcy are more likely to be reorganized.Model performance is assessed on the dimensions of discriminatory power, predictive and classification accuracy. The former two are measured by implementing standard tests (power curve analysis and chi-squared tests), while classification accuracy is assessed according to alternative categorization criteria (expected cost of misclassification, minimization of total misclassification and deviation from historical averages) as compared to nayacute;ve random benchmarks. While in- and out-of-sample performance along these dimensions exhibits wide variation across models and criteria, the OLR and LRM models are found to perform comparably, while the FNN model is found to consistently underperform. The statistical significance of these results is rigorously analyzed and confirmed through a resampling procedure, yielding estimated sampling distributions of the performance statistics, confirming these observations.

Understanding and Predicting the Resolution of Financial Distress

Understanding and Predicting the Resolution of Financial Distress PDF Author: Ahmet K. Karagozoglu
Publisher:
ISBN:
Category :
Languages : en
Pages : 48

Get Book Here

Book Description
In this study, we empirically investigate the determinants of the process utilized to resolve financial distress (resolution process) and also the outcome of the financial distress (resolution outcome). Specifically, we separate firms that utilize a private (work out) versus a public (filing for bankruptcy) resolution process and then we further separate the firms by outcome - liquidation or reorganization. Various qualitative dependent variable models are estimated and compared: ordered logistic regression (OLR), local regression models (LRMs) and feed forward neural network (FNN). We select several accounting and economic variables, measured at the time of default, which are expected to influence the resolution process and the resolution outcome. Estimation results reveal the OLR specification achieves the best balance between in-sample fit, consistency with financial theory, and out-of-sample classification accuracy. We find that larger firms with higher liquidity and more secured debt in their capital structure are more likely to follow a public resolution process. Firms with higher Z-scores and more total leverage are less likely to follow a public resolution process and attempt to resolve the financial distress privately. For resolution outcome, we find that firms with greater liquidity, more secured debt and lower cumulative abnormal returns are more likely to be liquidated rather than reorganized. And firms with more leverage, more intangible assets and filing a prepackaged bankruptcy are more likely to be reorganized.Model performance is assessed on the dimensions of discriminatory power, predictive and classification accuracy. The former two are measured by implementing standard tests (power curve analysis and chi-squared tests), while classification accuracy is assessed according to alternative categorization criteria (expected cost of misclassification, minimization of total misclassification and deviation from historical averages) as compared to nayacute;ve random benchmarks. While in- and out-of-sample performance along these dimensions exhibits wide variation across models and criteria, the OLR and LRM models are found to perform comparably, while the FNN model is found to consistently underperform. The statistical significance of these results is rigorously analyzed and confirmed through a resampling procedure, yielding estimated sampling distributions of the performance statistics, confirming these observations.

Predicting and avoiding financial distress

Predicting and avoiding financial distress PDF Author:
Publisher:
ISBN:
Category :
Languages : it
Pages :

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Predicting Financial Distress

Predicting Financial Distress PDF Author: Jedidah Mwiti
Publisher:
ISBN: 9783330006836
Category :
Languages : en
Pages : 52

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Predicting Financial Distress

Predicting Financial Distress PDF Author: Deborah Flynn
Publisher:
ISBN:
Category : Bankruptcy
Languages : en
Pages : 118

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Financial Distress Prediction with an Expanded Information Set

Financial Distress Prediction with an Expanded Information Set PDF Author: Charles T. Grant
Publisher:
ISBN:
Category : Bankruptcy
Languages : en
Pages : 300

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Theory and Evidence on the Resolution of Financial Distress

Theory and Evidence on the Resolution of Financial Distress PDF Author: David T. Brown
Publisher:
ISBN:
Category :
Languages : en
Pages : 41

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Book Description
This paper models financial distress of an owner-managed project. As a result of a negative shock to project value, financial distress occurs in three stages: default-no-default, reorganization-foreclose, sell the foreclosed asset immediately-delay the asset sale. Factors that impact equilibrium outcomes include the severity of the shock to project fundementals, the quality of asset management, and the liquidity of outside investors. Borrower default is endogenous in our model, in the sense that the anticipated outcome of default can determine whether or not default occurs in the first place. Model predictions include that the reorganization-foreclosure decision depends crucially on the interaction between project value and industry liquidity and that the lender waits for the industry to recapitalize before selling assets obtained through foreclosure. An empirical analysis of a large sample of defaulted commercial real estate loans supports many of the predictions of the model, including the existence of endogenous borrower default, significant underinvestment on foreclosed assets, and delayed asset sales in response to weak industry conditions.

Financial Distress Prediction Models - An Introduction

Financial Distress Prediction Models - An Introduction PDF Author: Sakalya Venkata Seshaiah
Publisher:
ISBN: 9788131403822
Category : Business failures
Languages : en
Pages : 188

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Book Description
Financial Distress Prediction is a condition in which a business can neither pay up its debts nor liquidate them. The property of the debtor is taken over by the receiver/trustee on behalf of the creditors. Though financial distress prediction is very co

Corporate Financial Distress

Corporate Financial Distress PDF Author: Alberto Tron
Publisher: Emerald Group Publishing
ISBN: 1839829826
Category : Business & Economics
Languages : en
Pages : 129

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Book Description
Financial distress and crises for businesses can be used to implement substantial organizational changes and turnaround the damage done to achieve financial equilibrium in the short term and financial stability in the long term. Plans, methodology and tools are provided here to examine how this turnaround can be achieved.

Proceedings of the International Colloquium on Business and Economics (ICBE 2022)

Proceedings of the International Colloquium on Business and Economics (ICBE 2022) PDF Author: Rahmawati Rahmawati
Publisher: Springer Nature
ISBN: 9464630663
Category : Business & Economics
Languages : en
Pages : 340

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Book Description
This is an open access book. Doctoral Program of Economics and Business Faculty, Universitas Sebelas Maret organizes the 2022 International Colloquium onBusiness and Economics. The conference will be conducted bothonline and offline (hybrid) in Economic Faculty of UNS, Solo, onSeptember 27-28, 2022. In this conference, 30 papers were selectedfor international proceedings. Faculty of Economics and Business Universitas Sebelas Maret is one ofthe respectable Business School in Indonesia. In the recent releasefrom the Times Higher Education (THE), the faculty is categorized asTop 10 Economics and Business Faculty among hundreds University inIndonesia. Currently, our faculty have 3 undergraduate degrees, 3master’s degrees, and 1 doctoral degree program and all of them areaccredited with a rank “A”.

Corporate Financial Distress, Restructuring, and Bankruptcy

Corporate Financial Distress, Restructuring, and Bankruptcy PDF Author: Edward I. Altman
Publisher: John Wiley & Sons
ISBN: 1119481805
Category : Business & Economics
Languages : en
Pages : 374

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Book Description
A comprehensive look at the enormous growth and evolution of distressed debt markets, corporate bankruptcy, and credit risk models This Fourth Edition of the most authoritative finance book on the topic updates and expands its discussion of financial distress and bankruptcy, as well as the related topics dealing with leveraged finance, high-yield, and distressed debt markets. It offers state-of-the-art analysis and research on U.S. and international restructurings, applications of distress prediction models in financial and managerial markets, bankruptcy costs, restructuring outcomes, and more.