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Enhancing CVaR portfolio optimisation performance with GAM factor models

Enhancing CVaR portfolio optimisation performance with GAM factor models ArXiv ID: 2401.00188 “View on arXiv” Authors: Unknown Abstract We propose a discrete-time econometric model that combines autoregressive filters with factor regressions to predict stock returns for portfolio optimisation purposes. In particular, we test both robust linear regressions and general additive models on two different investment universes composed of the Dow Jones Industrial Average and the Standard & Poor’s 500 indexes, and we compare the out-of-sample performances of mean-CVaR optimal portfolios over a horizon of six years. The results show a substantial improvement in portfolio performances when the factor model is estimated with general additive models. ...

December 30, 2023 · 2 min · Research Team

Hedging Forecast Combinations With an Application to the Random Forest

Hedging Forecast Combinations With an Application to the Random Forest ArXiv ID: 2308.15384 “View on arXiv” Authors: Unknown Abstract This papers proposes a generic, high-level methodology for generating forecast combinations that would deliver the optimal linearly combined forecast in terms of the mean-squared forecast error if one had access to two population quantities: the mean vector and the covariance matrix of the vector of individual forecast errors. We point out that this problem is identical to a mean-variance portfolio construction problem, in which portfolio weights correspond to forecast combination weights. We allow negative forecast weights and interpret such weights as hedging over and under estimation risks across estimators. This interpretation follows directly as an implication of the portfolio analogy. We demonstrate our method’s improved out-of-sample performance relative to standard methods in combining tree forecasts to form weighted random forests in 14 data sets. ...

August 29, 2023 · 2 min · Research Team