Asset Pricing in Pre-trained Transformer
Abstract
This paper proposes an innovative Transformer model, Single-directional representative from Transformer (SERT), for US large capital stock pricing. It also innovatively applies the pre-trained Transformer models under the stock pricing and factor investment context. They are compared with standard Transformer models and encoder-only Transformer models in three periods covering the entire COVID-19 pandemic to examine the model adaptivity and suitability during the extreme market fluctuations. Namely, pre-COVID-19 period, COVID-19 period and 1-year post-COVID-19. The best proposed SERT model achieves the highest out-of-sample R2, 11.94\% and 11.47\% respectively, when extreme market fluctuation takes place, followed by pre-trained Transformer models (11.13\% and 9.72\%). Their Trend-following-based strategy's performance also proves their excellent capability for hedging downside risks during market shocks. The proposed SERT model achieves a Sortino ratio 47\% higher than the buy-and-hold benchmark in the equal-weighted portfolio and 28\% higher in the value-weighted portfolio in the static transaction cost scenario when the pandemic period is considered. It proves that Transformer models have a strong ability to capture patterns of temporal sparsity in asset pricing factor models, especially with high volatility. I also find the softmax signal filter as the common configuration of Transformer models in alternative contexts, which only eliminates differences between models, but does not improve strategy-wise performance, while increasing attention heads improves the model performance insignificantly and applying the 'layer normalization first' method does not boost the model performance in our case.
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