Search Results

SORT BY: PREVIOUS / NEXT
Keywords:Random forest 

Working Paper
Machine Learning, the Treasury Yield Curve and Recession Forecasting

We use machine learning methods to examine the power of Treasury term spreads and other financial market and macroeconomic variables to forecast US recessions, vis-à-vis probit regression. In particular we propose a novel strategy for conducting cross-validation on classifiers trained with macro/financial panel data of low frequency and compare the results to those obtained from standard k-folds cross-validation. Consistent with the existing literature we find that, in the time series setting, forecast accuracy estimates derived from k-folds are biased optimistically, and cross-validation ...
Finance and Economics Discussion Series , Paper 2020-038

Working Paper
Parallel Trends Forest: Data-Driven Control Sample Selection in Difference-in-Differences

This paper introduces parallel trends forest, a novel approach to selecting optimal control samples when using difference-in-differences (DiD) in a relatively long panel data with little randomization in treatment assignment. Our method uses machine learning techniques to find control units that best meet the parallel trends assumption. We demonstrate that our approach outperforms existing methods, particularly with noisy, granular data. Applying the parallel trends forest to analyze the impact of post-trade transparency in corporate bond markets, we find that it produces more robust ...
Finance and Economics Discussion Series , Paper 2025-091

FILTER BY year

FILTER BY Content Type

FILTER BY Author

FILTER BY Jel Classification

C10 1 items

C21 1 items

C23 1 items

C45 1 items

C53 1 items

E37 1 items

show more (2)

FILTER BY Keywords

PREVIOUS / NEXT