Abstract

This paper proposes a methodology that utilises model performance as a metric to assess the representativeness of external or pooled data when it is used by banks in regulatory model development and calibration. There is currently no formal methodology to assess representativeness. The paper provides a review of existing regulatory literature on the requirements of assessing representativeness and emphasises that both qualitative and quantitative aspects need to be considered. We present a novel methodology and apply it to two case studies. We compared our methodology with the Multivariate Prediction Accuracy Index. The first case study investigates whether a pooled data source from Global Credit Data (GCD) is representative when considering the enrichment of internal data with pooled data in the development of a regulatory loss given default (LGD) model. The second case study differs from the first by illustrating which other countries in the pooled data set could be representative when enriching internal data during the development of a LGD model. Using these case studies as examples, our proposed methodology provides users with a generalised framework to identify subsets of the external data that are representative of their Country’s or bank’s data, making the results general and universally applicable.

Highlights

  • Following our investigation into the regulatory requirements and literature pertaining to the assessment of the representativeness of external data, we propose the following methodology to assess the representativeness of data for model development and calibration

  • In this first case study, we assess our methodology when investigating whether a pooled data source is representative when considering the enrichment of internal data with pooled data in developing a loss given default (LGD) model for regulatory purposes

  • The proposed methodology aims at assessing the premise of whether the data set in question (Data set Q)

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Summary

Introduction

The Basel Committee on Banking Supervision (BCBS) establishes guidelines for how banks should be regulated. These regulations relate to all aspects of the models used to estimate risk parameters, amongst others. Where internal or external data is used, the bank must demonstrate that its estimates are representative of long-run experience” (BCBS 2006). These regulatory requirements provide the milieu of this research. The aim of this paper is to develop a methodology to measure representativeness when using external data in regulatory models. This research problem originated from the banking industry, as there is currently no formal methodology to assess representativeness

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