Robustifying and simplifying high‑dimensional regression with applications to yearly stock return and telematics data
Metadatos
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Springer
Materia
Forecasting Non-linear prediction Stock returns
Fecha
2024-10-02Referencia bibliográfica
Marchese, M. et. al. Financial Innovation (2024) 10:138. [https://doi.org/10.1186/s40854-024-00657-9]
Patrocinador
inisterio de Ciencia, Innovación y Universidades (PID2020- 116587GB-I00); Austrian National Bank (Jubiläumsfondsprojekt 18901)Resumen
The availability of many variables with predictive power makes their selection
in a regression context difficult. This study considers robust and understandable
low-dimensional estimators as building blocks to improve overall predictive power
by optimally combining these building blocks. Our new algorithm is based on generalized
cross-validation and builds a predictive model step-by-step from a simple mean
to more complex predictive combinations. Empirical applications to annual financial
returns and actuarial telematics data show its usefulness in the financial and insurance
industries.