RFMS Method for Credit Scoring Based on Bank Card Transaction Data
2021.01.01【Publication Time】2021.01.01
【Lead Author】Danyang Huang
【Journal】 Statistica Sinica
【Abstract】
Microcredit refers to small loans to borrowers who typically
lack collateral, steady employment, or a verifiable credit history. It is
designed not only for start-ups but also for individuals. The microcredit
industry is experiencing fast growth in China. In contrast with traditional
loans, microcredit typically lacks collateral, which makes credit scoring
important. Due to the fast development of on-line microcredit platforms, there
are various sources of data that could be used for credit evaluation. Among
them, bank card transaction records play an important role. How to conduct
credit scoring based on this type of data becomes a problem of importance. The
key issue to be solved is feature construction: how to construct meaningful and
useful features based on bank card transaction data. To this end, we propose
here a so-called RFMS method. Here “R” stands for recency, “F” stands for
frequency, and “M” stands for monetary value. Our method can be viewed as a
natural extension of the classical RFM model in marketing research. However, we
make a further extension by taking “S” (Standard Deviation) into consideration.
The performance of the method is empirically tested on a data example from a
Chinese microcredit company.
【Keywords】
Credit Scoring; Frequency; Logistic Regression; Microcredit; Monetary Value; Recency; Standard Deviation