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Credit risk development and validation tools

Project description

PyPI version CI Build

About the package

meliora is a Python package that provides a set of statistical tests and tools to assess the performance of the credit risk models. All tests are covered with unit tests and algorithms have been replicated in other tools like R, MATLAB and SAS to avoid errors. Whenever possible, the definition of the test was retrieved from the authoritive source like the EBA, the ECB or the Basel Committee.

The main contributors started building their first statistical credit models back in 2003. Over the years, we have impemented similar set of tests in several different financial institutions.

This package is standing on the shoulders of giants as it makes heavy use of the Python ecosystem and especially Scikit-learn, Scipy and Statsmodels. Several functions are straightforward wrappers using these resources and are provided to the user for convenience purposes. The authors have taken great care to ensure that no part of this package contains proprietary code.

Main aim

The aim of the package is to provide all common tests used by today's modellers when developing, maintaining and validating their PD, LGD, EAD and prepayment models. The aim of this package is to provide credit risk practioners with the tools to develop their credit risk models without reinventing the wheel.

Main Features

  • tests cover both IFRS 9 and IRB models as well as non-regulatory models
  • the tool contains more than 30 tests
  • all test have been covered with unit tests
  • the tests have been documented in detail
  • commonly accepted tresholds have been provided for convenience purposes

For the list of all tests, see Overview > List of tests

Tests that are currently included in the package

# Name Area Estimate
1 Binomial test Calibration PD
2 Chi-Square test (Hoshmer-Lemeshow test) Calibration PD
3 Normal test Calibration PD
4 Traffic lights approach Calibration PD
5 Spiegehalter test Calibration PD
6 Redelmeier test Calibration PD
7 Herfhindahl index / Concentration of rating grades Concentration PD
8 Brier score Discrimination PD
9 Receiver Operating Characteristic Discrimination PD
10 Accuracy Ratio Discrimination PD
11 Kendall’s τ Discrimination PD
12 Somers’ D Discrimination PD
13 The Pietra Index Discrimination PD
14 Conditional Information Entropy Ratio Discrimination PD
15 Kullback-Leibler distance Discrimination PD
16 Information value Discrimination PD
17 Bayesian error rate Discrimination PD
18 Cumulative LGD accuracy ratio Discrimination LGD
19 Loss Capture Ratio Discrimination LGD
20 Kolmogorov-Smirnov test Discrimination PD
21 Spearman’s rank correlation Discrimination LGD
22 Jeffrey's test Discrimination PD
23 ELBE back-test using a t-test Discrimination LGD
24 Migration matrices test Discrimination PD
25 Loss Shortfall Predictive power LGD
26 Mean Absolute Deviation Predictive power LGD
27 Bucket test Predictive power LGD
28 Transition matrix test Predictive power LGD
29 Population Stability Index Stability PD
30 Stability of transition matrices Stability PD

Full list of dependencies

Getting Help

For usage questions, send an email to anton.treialt@aistat.com

License

MIT License

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