merton.backtest.rolling¶
Rolling-window backtester for PD models on a panel of firms.
Classes¶
Per-window metric values. |
Functions¶
|
Roll a window across |
Module Contents¶
- class merton.backtest.rolling.RollingBacktestResult[source]¶
Per-window metric values.
- window_starts: pandas.DatetimeIndex[source]¶
- accuracy_ratio: numpy.ndarray[source]¶
- brier: numpy.ndarray[source]¶
- to_pandas() pandas.DataFrame[source]¶
- merton.backtest.rolling.rolling_window(panel: pandas.DataFrame, *, pd_col: str = 'pd', default_col: str = 'default', date_col: str = 'date', window: str = '252D', step: str = '21D') RollingBacktestResult[source]¶
Roll a window across
paneland compute AUC/Brier/KS per window.- Parameters:
panel – Long-form DataFrame with at minimum
date_col,pd_col, anddefault_colcolumns.pd_colis the model’s predicted PD for that (firm, date) anddefault_colis the realised 0/1 default indicator over the next observation period.window – Pandas frequency strings; the window slides
stepforward at each iteration.step – Pandas frequency strings; the window slides
stepforward at each iteration.