Multiple Discriminant Analysis of Corporate Bankruptcy

Similar documents
30-1. CHAPTER 30 Financial Distress. Multiple Choice Questions: I. DEFINITIONS

Application of the Z -Score Model with Consideration of Total Assets Volatility in Predicting Corporate Financial Failures from

Bankruptcy Prediction for Large and Small Firms in Asia: A Comparison of Ohlson and Altman

Final Exam MØA 155 Financial Economics Fall 2009 Permitted Material: Calculator

BANKRUPTCY AND THE ALTMAN MODELS. CASE OF ALBANIA

Chapter 11, Risk and Return

Seasoned Equity Offerings: Characteristics of Firms

BUSM 411: Derivatives and Fixed Income

PREDICTION FINANCIAL DISTRESS BY USE OF LOGISTIC IN FIRMS ACCEPTED IN TEHRAN STOCK EXCHANGE

American Society of Appraisers. ASA Business Valuation Standards

Credit Analysis 10-1

Chapter 5: Business Valuation (Market Approach)

High Yield Bonds A Primer

SIX RED FLAG MODELS 1. Fraud Z-Score Model SGI Sales Growth Index x GMI Gross Margin Index x AQI Asset Quality Index x 0.

SSAP 24 STATEMENT OF STANDARD ACCOUNTING PRACTICE 24 ACCOUNTING FOR INVESTMENTS IN SECURITIES

How To Outperform The High Yield Index

Society of Actuaries in Ireland

Interpretation of Financial Statements

Dr. Edward I. Altman Stern School of Business New York University

Stock Valuation. Everything You Wanted to Know About Stocks. and Their Value. FINC 3610 Yost

CONSULTATION PAPER P October Proposed Regulatory Framework on Mortgage Insurance Business

Rating Methodology by Sector. Life Insurance

Meet challenges head on

Understanding a Firm s Different Financing Options. A Closer Look at Equity vs. Debt

Predicting Bankruptcy with Robust Logistic Regression

CMAC meeting Agenda paper 2 Debt vs Equity

McKinley Capital U.S. Equity Income Prospects for Performance in a Changing Interest Rate Environment

Return on Equity has three ratio components. The three ratios that make up Return on Equity are:

Discussion Board Articles Ratio Analysis

EARLY WARNING INDICATOR FOR TURKISH NON-LIFE INSURANCE COMPANIES

Call Price as a Function of the Stock Price

Solvency II and Money Market Funds

Evaluation on Hybrid Capital of Life Insurance Companies

NorthCoast Investment Advisory Team

INSURANCE RATING METHODOLOGY

The Determinants and the Value of Cash Holdings: Evidence. from French firms

FINANCIAL PERFORMANCE AND BANKRUPTCY ANALYSIS FOR SELECT PARAMEDICAL COMPANIES AN EMPERICAL ANALYSIS MAHESH KUMAR.T ANAND SHANKAR RAJA.

How To Value An Asset

Mortgage and Asset Backed Securities Investment Strategy

Five Things To Know About Shares

ABOUT FINANCIAL RATIO ANALYSIS

Financial Condition Analysis Model

RELEVANT TO ACCA QUALIFICATION PAPER F9

Fourteenth Meeting of the IMF Committee on Balance of Payments Statistics Tokyo, Japan, October 24-26, 2001

Spectrum Insights. Time to float. Why invest in corporate bonds? - Value

Micro Simulation Study of Life Insurance Business

Bankruptcy Prediction Model for Listed Companies in Romania

Factors Influencing Price/Earnings Multiple

LVIP Dimensional Non-U.S. Equity RPM Fund. Summary Prospectus April 30, 2013

Understanding Financial Information for Bankruptcy Lawyers Understanding Financial Statements

Compare and Contrast of Option Decay Functions. Nick Rettig and Carl Zulauf *,**

Predicting Bankruptcy: Evidence from Israel

AMERICAN REGISTRY OF INTERNET NUMBERS INVESTMENT POLICY STATEMENT January 2014

American Society of Appraisers. ASA Business Valuation Standards

ICAP GROUP S.A. FINANCIAL RATIOS EXPLANATION

CLASS TIME & ROOM: Mondays and Wednesdays, 10:50 to 12:05 in M1040 (class) and breakout rooms: M1062, 64, 68, 70, 72 and 73

Rating Methodology by Sector. Non-life Insurance

The Purchase Price in M&A Deals

The following 30 questions are drawn from the Claritas supplemental study materials. The format and difficulty level are similar to what candidates

How To Calculate Financial Leverage Ratio

Predicting Bankruptcy of Manufacturing Firms

PREDICTIVE ANALYSIS SOFTWARE FOR MODELING THE ALTMAN Z-SCORE FINANCIAL DISTRESS STATUS OF COMPANIES

Credit Risk Models. August 24 26, 2010

Purpose of Selling Stocks Short JANUARY 2007 NUMBER 5

Course 1: Evaluating Financial Performance

OPTIONS AND THE FINANCIAL ADVISOR.

EQUITY SHARES 1. INTRODUCTION

Working Capital Management & Financial Performance of Manufacturing Sector in Sri Lanka

Key Concepts and Skills Chapter 8 Stock Valuation

Bootstrapping Big Data

Assessing Credit Risk for a Ghanaian Bank Using the Black- Scholes Model

Chapter 31. Financial Management in Not-for-Profit Businesses

Investing in International Financial Markets

Course Syllabus For Banking and Financial Management Department

for Analysing Listed Private Equity Companies

Investment Guidelines for a Donor-Advised Fund

Accurately and Efficiently Measuring Individual Account Credit Risk On Existing Portfolios

Financial Statement Ratio Analysis

Indxx SuperDividend U.S. Low Volatility Index

Financial Statement Analysis: An Introduction

Brookfield financial Review q2 2010

Concepts in Investments Risks and Returns (Relevant to PBE Paper II Management Accounting and Finance)

National Policy Statement 29 Mutual Funds Investing in Mortgages SECTION III INVESTMENT POLICY SECTION IV DISCLOSURE

Option Values. Option Valuation. Call Option Value before Expiration. Determinants of Call Option Values

Delphi Management, Inc. Firm Brochure (Part 2A of Form ADV)

UNIVERSITY OF WAH Department of Management Sciences

A Shortcut to Calculating Return on Required Equity and It s Link to Cost of Capital

Swaps: Debt-equity swap

International Financial Reporting for Insurers: IFRS and U.S. GAAP September 2009 Session 25: Solvency II vs. IFRS

Transcription:

Multiple Discriminant Analysis of Corporate Bankruptcy In this paper, corporate bankruptcy is analyzed by employing the predictive tool of multiple discriminant analysis. Using several firm-specific metrics gauging qualitative and quantitative characteristics of a company, the multiple discriminant analysis successfully predicts bankruptcy up to five years in advance for a sample study of 111 firms. Further applications of multiple discriminant analysis in quantitative value investing and portfolio design strategy are also discussed, and potential areas of continued research are proposed. Background For any corporation or firm, a comprehensive and clear understanding of the business s current and projected performance is crucial on both an internal and external level. Clients and employees alike are interested in how the firm s profits, returns, and other significant indicators not only demonstrate its prevailing wellbeing, but also its potential for either failure or continued success. In this paper, we examine the predictability of bankruptcy in firms. The implementation of particular tools to measure a company s health has become a crucial element of quantitative investment research. However, the question of how exactly a company s wellbeing should be modeled, as well as the quantitative and qualitative effectiveness of any such tools present various complications in the analysis. After considering regressions across market history, we have focused on solvency metrics, debt metrics, efficiency metrics, and profitability metrics, as they continue to have a high degree of predictive power in indicating company failure or success.

Multiple Discriminant Analysis Reliance upon ratio analysis has historically drawn criticism for its overall univariate approach and consequential inability to fully address the correlations and interactions between potential indicators. Multiple discriminant analysis is another (perhaps more effective tool) that makes predictions in a particular context based on generally qualitative observations. Multiple discriminant analysis has been used across a spectrum of disciplines, from behavioral sciences to consumer credit evaluations. Numerous advantages arise when using multiple discriminant analysis, as opposed to ratio analysis. Multiple discriminant analysis enables a comprehensive analysis of multiple characteristics of a firm and their interactions, while ratio analysis solely permits a valuation of the indicators one at a time. Furthermore, multiple discriminant analysis reduces the number of variables from N to N-1 groups, where N is the number of initial groups. With this paper s particular focus on bankruptcy, the analysis occurs in only one dimension, as the two initial groups are the bankrupt and non-bankrupt firms. In this paper, we will implement multiple discriminant analysis to prioritize indicators of firm bankruptcy, determine the effect of each ratio in the analysis, and establish a method for measuring such effects. July 2014 Page2

Formula If we take all of the potential indicators, call them variables y1, y2, y3, yn and assign the calculated discriminant coefficients a1, a2, a3, an, we will establish a discriminant function formula that combines all the indicators and coefficients to equal an ultimate discriminant value, X. X = a1y1 + a2y2 + a3y3 + anyn Analysis of firms and their potential for bankruptcy will be analyzed using this discriminant function, and thus X will determine whether or not the firm will ultimately reach bankruptcy. Variables The variables included in the analysis are five financial metrics that would otherwise be analyzed in the univariate method of financial ratio analysis. These five metrics are not necessarily the most statistically significant independently, but are selected through measuring the statistical significance of alternative functions, evaluating the relative contributions of each variable, and evaluating the correlations among the variables. Using an F-test for equality of variance for each metric, the variables were generally deemed discriminating between the bankrupt and non-bankrupt groups. The determinant function thus includes the following properties of any firm: a liquidity metric, a cumulative profitability metric, a productivity metric, a solvency metric, and an efficiency metric. July 2014 Page3

The liquidity metric is a critical property of a firm to include and analyze, as it measures the firm s capacity to cover its financial liabilities in the short term. Generally, those companies experiencing losses also experience diminishing present assets in comparison to total assets. As a result, the metric in the discriminant function would be expected to decrease for those firms more likely to face bankruptcy. The cumulative profitability metric measures how much profit a firm makes on a relative scale to its total assets. This ratio is also unique in that it is affected by the particular age of a company those companies more recently established are more likely to have lower retained earnings than older businesses. The productivity metric measures earnings prior to any tax or interest reductions, thereby demonstrating how well a firm can generate earnings from its assets before any fees or obligations must be taken into account. The solvency metric marks a boundary between a firm s insolvency and solvency. By relating the market value of equity and total debt, the metric determines how much the firm s total equity and total debt can decline in value before the liabilities surpass the total assets (equity and total debt). The efficiency metric demonstrates a firm s assets ability to generate sales. This property is uniquely important for multiple discriminant analysis, as the metric becomes even more significant when analyzing its interactions with the other properties at once in a firm-competitive context. July 2014 Page4

As a general summary of the five properties, a firm that is less likely to experience bankruptcy should experience higher ratios for each of the properties. We expect these coefficients to be positive, and thus, the higher the X, the healthier the company. Results In a study of 111 sample firms divided by each group as discussed above (one group includes 53 public companies that filed for bankruptcy between 1969-1975, and the other group includes a 58 paired sample of public companies that still existed in 1976), a multiple discriminant analysis employed the five aforementioned properties and calculated each companies respective discriminant function and value (X). Much like a regression model with R2 measuring the predictive power of the indicators, a percentage was calculated of the total correct classifications of a firm (either bankrupt or not bankrupt) divided by the total number of firms (66). The first classification percentage was calculated for the 111 firms themselves, using the data that we used to derive the original discriminant function. Thus, we expect a very high percentage. Results show that 92.8% classifications were indeed correct. The next percentage was calculated using data from the firms two years prior to bankruptcy. 89% of the classifications were correct, indicating the predictive capability of the discriminant function even two years in advance. July 2014 Page5

To see how far back the multiple discriminant analysis could be utilized in predicting bankruptcy, percentages were also calculated for firms three, four, and five years prior. The results were 83.5%, 79.8%, and 76.8%, respectively. Past 5 years prior to bankruptcy, the percentages indicate the increasing temporal limitations of our model to a maximum of five years prior to filing for bankruptcy. In another study, 86 distressed firms from 1969-1975, 110 bankrupted companies from 1976-1995, and 120 bankrupted companies from 1997-1999 were analyzed. The calculated accuracy percentage was between 82% and 94%. Aside from the percentages, the discriminant value (X) itself was calculated for each firm as well. Results showed that firms with X values above 2.99 will fall into the non-bankrupt group, while firms with X values below 1.81 are all bankrupt. To reconcile the range of X values between 1.81 and 2.99, the midpoint of a calculated critical value interval is used as the best discriminating marker between bankruptcy and non-bankruptcy: 2.675. In the model, Type I errors occur when the X value does not predict bankruptcy, even though bankruptcy ultimately occurs. Type II errors occur when the X value predicts bankruptcy, and the firm does not experience bankruptcy. Further Applications Use of the multiple discriminant model of analysis has also been shown to be highly predictive in appraising particular investment criteria for both July 2014 Page6

portfolio and stock strategy. For quantitative value investing, an investor has the ability to potentially prevent making poor investment decisions by anticipating any declines in the relevant firms. If an investor is cognizant of such future declines, he should sell his stock in order to avoid further falling prices. Such a financial decision would be preventative of increased losses and provide greater capital for the individual to make alternative investment decisions. Further areas of research to explore in the analysis of corporate bankruptcy could be an examination of non-us firms, smaller, unincorporated firms, and firms across a wider range of industries. Another area for further research could be exploring multiple levels of bankruptcy to account for the associated, more realistic risks involved in bankruptcy, as opposed to the dichotomous classification of bankrupt vs. non-bankrupt firms. July 2014 Page7