Debt rating model based on default identification

2019 ◽  
Vol 57 (9) ◽  
pp. 2239-2260 ◽  
Author(s):  
Guotai Chi ◽  
Bin Meng

Purpose The purpose of this paper is to propose a debt rating index system for small industrial enterprises that significantly distinguishes the default state. This debt rating system is constructed using the F-test and correlation analysis method, with the small industrial enterprise loans of a Chinese commercial bank as the data sample. This study establishes the weighting principle for the debt scoring model: “the more significant the default state, the larger is the weight.” The debt rating system for small industrial enterprises is constructed based on the standard “the higher the debt rating, the lower is the loss given default.” Design/methodology/approach In this study, the authors selected indexes that pass the homogeneity of variance test based on the principle that a greater deviation of the default sample’s mean from the whole sample’s mean leads to greater significance in distinguishing the default samples from the non-default samples. The authors removed correlated indexes based on the results of the correlation analysis and constructed a debt rating index system for small industrial enterprises that included 23 indexes. Findings Among the 23 indexes, the weights of 12 quantitative indexes add up to 0.547, while the weights of the remaining 11 qualitative indexes add up to 0.453. That is, in the debt rating of the small industry enterprises, the financial indexes are not capable of reflecting all the debt situations, and the qualitative indexes play a more important role in debt rating. The weights of indexes “X17 Outstanding loans to all assets ratio” and “X59 Date of the enterprise establishment” are 0.146 and 0.133, respectively; both these are greater than 0.1, and the indexes are ranked first and second, respectively. The weights of indexes “X6 EBIT-to- current liabilities ratio,” “X13 Ratio of capital to fixed” and “X78 Legal dispute number” are between 0.07 and 0.09, these indexes are ranked third to fifth. The weights of indexes “X3 Quick ratio” and “X50 Per capital year-end savings balance of Urban and rural residents” are both 0.013, and these are the lowest ranked indexes. Originality/value The data of index i are divided into two categories: default and non-default. A greater deviation in the mean of the default sample from that of the whole sample leads to greater deviation from the non-default sample’s mean as well; thus, the index can easily distinguish the default and the non-default samples. Following this line of thought, the authors select indexes that pass the F-test for the debt rating system that identifies whether or not the sample is default. This avoids the disadvantages of the existing research in which the standard for selecting the index has nothing to do with the default state; further, this presents a new way of debt rating. When the correlation coefficient of two indexes is greater than 0.8, the index with the smaller F-value is removed because of its weaker prediction capacity. This avoids the mistake of eliminating an index that has strong ability to distinguish default and non-default samples. The greater the deviation of the default sample’s mean from the whole sample’s mean, the greater is the capability of the index to distinguish the default state. According to this rule, the authors assign a larger weight to the index that exhibits the ability to identify the default state. This is different from the existing index system, which does not take into account the ability to identify the default state.

2018 ◽  
Vol 70 (6) ◽  
pp. 927-934 ◽  
Author(s):  
Dongju Chen ◽  
Jihong Han ◽  
Xianxian Cui ◽  
Jinwei Fan

Purpose To identify the dynamic feature of the aerostatic slider caused by gas film, an evaluation system by a piezoelectric acceleration sensor is presented in time and frequency domain. Design/methodology/approach The dynamic pressure fluctuation is evaluated by the wavelet transform, cross correlation analysis and power spectral density (PSD). Wavelet transform is used to process the measured result of the aerostatic slider and the signal is decomposed into high-frequency and low-frequency signal. Correlation analysis method is used to evaluate the impact of the initial gas gap on the fluctuation in time domain. Findings According to the PSD analysis of the processed signal in the frequency domain, the natural frequency of the aerostatic slider is identified from the measured signal in frequency domain; this method provides a basis for the identification of guideway errors. Research limitations/implications The method can also be applied to the error identification of other components of the machine tool. Originality/value Wavelet transform is used to process the measured result of the aerostatic slider by acceleration sensor, and the signal is decomposed into high-frequency and low-frequency signal. Correlation analysis method is used to evaluate the impact of the initial gas gap on the fluctuation in time domain. According to the PSD analysis of the processed signal in the frequency domain, the natural frequency of the aerostatic slider is identified from the measured signal in frequency domain; this method provides a basis for the identification of slider errors.


2014 ◽  
Vol 584-586 ◽  
pp. 2153-2158
Author(s):  
Hong Ke ◽  
Xiu Na Liu ◽  
Fu Yan Zhou

The right project delivery system is critical to the success of a project. A factors index system is important to choose a right project delivery system. Based on features and business properties of a project,a factors index system is established including the project, the performance of project, project parties and external environment. After using the two methods of index selectionfrequency number statistic and correlation analysis method, 19 factors in the said 4 levels are finally selected to form the factors index system, which can be a reference for selecting the project delivery system.


2019 ◽  
Vol 11 (1) ◽  
pp. 01025-1-01025-5 ◽  
Author(s):  
N. A. Borodulya ◽  
◽  
R. O. Rezaev ◽  
S. G. Chistyakov ◽  
E. I. Smirnova ◽  
...  

2018 ◽  
Vol 36 (1) ◽  
pp. 93-107 ◽  
Author(s):  
Zahy Ramadan

Purpose China is establishing a social credit rating system with the aim to score the trust level of citizens. The scores will be based on an integrated database that includes a vast range of information sources, rating aspects like professional conduct, corruption, type of products bought, peers’ own scores and tax evasion. While this form of gamification is expected to have dire consequences on brands and consumers alike, the literature in that particular area of interest remains non-existent. The paper aims to discuss these issues. Design/methodology/approach A conceptual framework is suggested that highlights early on the risks and implications on brands and companies operating in that particular upcoming landscape. Findings The gamification of trust that the social credit system focuses on presents potential risks on brand and consumer relationships. This in turn will affect brand sustainability vis-à-vis the expected drastic changes in the Chinese business landscape. This study suggests the strategies to follow which will be of high interest to companies, consumers, as well as to the Chinese authorities during and after implementation stage. Originality/value This paper is amongst the first to discuss the potential effects of the Chinese social credit rating system on brands. The conceptual framework fills a sizeable gap in the literature and pioneers the discussion on potential dilemmas brands will be faced with within this new business landscape.


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