A Quantile Analysis of Default Risk for Speculative and Emerging Companies

R. Powell, D. Allen, A. Kramadibrata, Abhay K. Singh
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引用次数: 3

Abstract

Using quantile regression, this article examines default risk of emerging and speculative companies in Australia and the United States as compared to established investment entities. We use two datasets for each of the two countries, one speculative and one established. In the US we compare companies from the S&P 500 to those on the Speculative Grade Liquidity Ratings list (Moody's Investor Services, 2010). For Australia, we compare entities from the S&P/ASX 200 to those on the S&P/ASX Emerging Companies Index (EMCOX). We also divide the datasets into GFC and Pre-GFC periods to examine default risk over different economic circumstances. Quantile Regression splits the data into parts or quantiles, thus allowing default risk to be examined at different risk levels. This is especially useful in measuring extreme risk quantiles, when corporate failures are most likely. We apply Monte Carlo simulation to asset returns to calculate Distance to Default using a Merton structural credit model approach. In both countries, the analysis finds substantially higher default risk for speculative as compared to established companies. The spread between speculative company and established company default risk is found to remain constant in Australia through different economic circumstances, but to increase in the US during the GFC as compared to pre-GFC. These findings are important to lenders in understanding, and providing for, default risk for companies of different grades through varying economic cycles.Classification-JEL:
投机和新兴公司违约风险的分位数分析
本文使用分位数回归分析了澳大利亚和美国新兴公司和投机公司与成熟投资实体的违约风险。我们分别为两个国家使用了两个数据集,一个是推测性的,一个是已建立的。在美国,我们将标准普尔500指数中的公司与投机级流动性评级列表中的公司进行比较(穆迪投资者服务公司,2010年)。对于澳大利亚,我们比较了S&P/ASX 200指数与S&P/ASX新兴公司指数(EMCOX)的实体。我们还将数据集划分为全球金融危机和前全球金融危机时期,以检查不同经济环境下的违约风险。分位数回归将数据分成部分或分位数,从而允许在不同的风险级别上检查违约风险。当企业最有可能破产时,这在衡量极端风险分位数时尤其有用。我们将蒙特卡罗模拟应用于资产回报,使用默顿结构信用模型方法计算违约距离。分析发现,在这两个国家,投机企业的违约风险比老牌企业高得多。在不同的经济环境下,澳大利亚的投机公司和成熟公司违约风险之间的利差保持不变,但在全球金融危机期间,与全球金融危机前相比,美国的违约风险有所增加。这些发现对于贷方理解和提供不同经济周期中不同等级公司的违约风险非常重要。Classification-JEL:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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