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Why credit risk markets are predestined for exhibiting log-periodic power law structures

机译:为什么信用风险市场注定要展现对数周期幂律结构

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Recent research has established the existence of log-periodic power law (LPPL) patterns in financial institutions' credit default swap (CDS) spreads. The main purpose of this paper is to clarify why credit risk markets are predestined for exhibiting LPPL structures. To this end, the credit risk prediction of two variants of logistic regression, i.e. polynomial logistic regression (PLR) and kernel logistic regression (KLR), are firstly compared to the standard logistic regression (SLR). In doing so, the question whether the performances of rating systems based on balance sheet ratios can be improved by nonlinear transformations of the explanatory variables is resolved. Building on the result that nonlinear balance sheet ratio transformations hardly improve the SLR's predictive power in our case, we secondly compare the classification performance of a multivariate SLR to the discriminative powers of probabilities of default derived from three different capital market data, namely bonds, CDSs, and stocks. Benefiting from the prompt inclusion of relevant information, the capital market data in general and CDSs in particular increasingly outperform the SLR while approaching the time of the credit event. Due to the higher classification performances, it seems plausible for creditors to align their investment decisions with capital market-based default indicators, i.e., to imitate the aggregate opinion of the market participants. Since imitation is considered to be the source of LPPL structures in financial time series, it is highly plausible to scan CDS spread developments for LPPL patterns. By establishing LPPL patterns in governmental CDS spread trajectories of some European crisis countries, the LPPL's application to credit risk markets is extended. This novel piece of evidence further strengthens the claim that credit risk markets are adequate breeding grounds for LPPL patterns.
机译:最近的研究已经建立了金融机构信用违约掉期(CDS)价差中对数周期幂律(LPPL)模式的存在。本文的主要目的是阐明为什么信用风险市场注定要展示LPPL结构。为此,首先将逻辑回归的两个变体即多项式逻辑回归(PLR)和核逻辑回归(KLR)的信用风险预测与标准逻辑回归(SLR)进行比较。通过这样做,解决了是否可以通过解释变量的非线性变换来改善基于资产负债表比率的评级系统的性能的问题。在我们的案例中,基于非线性资产负债表比率转换几乎不会提高SLR的预测能力的结果,我们接下来将多元SLR的分类性能与从三种不同的资本市场数据(即债券,CDS)得出的违约概率的判别能力进行比较和股票。得益于及时包含相关信息,在信贷事件发生之时,总体而言,资本市场数据尤其是CDS的表现越来越优于SLR。由于较高的分类性能,债权人似乎将其投资决策与基于资本市场的违约指标保持一致,即模仿市场参与者的总体意见,似乎是合理的。由于在金融时间序列中,模仿被认为是LPPL结构的来源,因此很有可能需要扫描CDS传播的发展情况来寻找LPPL模式。通过在一些欧洲危机国家的政府CDS传播轨迹中建立LPPL模式,LPPL在信用风险市场中的应用得以扩展。这一新颖的证据进一步证明了信用风险市场是LPPL模式的充分滋生地的说法。

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