Publication: Subsampled Factor Models for Asset Pricing: The Rise of Vasa
Subsampled Factor Models for Asset Pricing: The Rise of Vasa
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De Nard, G., Hediger, S., & Leippold, M. (2020). Subsampled Factor Models for Asset Pricing: The Rise of Vasa (No. 3557957; SSRN). https://papers.ssrn.com/sol3/papers.cfm?abstract_id=3557957
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We propose a new method, VASA, based on variable subsample aggregation of model predictions for equity returns using a large-dimensional set of factors. To demonstrate the effectiveness, robustness, and dimension reduction power of VASA, we perform a comparative analysis between state-of-the-art machine learning algorithms. As a performance measure, we explore not only the global predictive but also the stock-specific R2's and their distribution. While the global R2 indicates the average forecasting accuracy, we find that high variabi
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De Nard, G., Hediger, S., & Leippold, M. (2020). Subsampled Factor Models for Asset Pricing: The Rise of Vasa (No. 3557957; SSRN). https://papers.ssrn.com/sol3/papers.cfm?abstract_id=3557957