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Zero-Shot Learning for S&P 500 Forecasting via Constituent-Level Dynamics: Latent Structure Modeling Without Index Supervision

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  • Yoonjae Noh

    (Department of Management Information Systems, Dong-A University, Busan 49236, Republic of Korea)

  • Sangjin Kim

    (Department of Management Information Systems, Dong-A University, Busan 49236, Republic of Korea)

Abstract

Market indices, such as the S&P 500, serve as compressed representations of complex constituent-level dynamics. This study proposes a zero-shot forecasting framework capable of predicting index-level trajectories without direct supervision from index data. By leveraging a Variational AutoEncoder (VAE), the model learns a latent mapping from constituent-level price movements and macroeconomic factors to index behavior, effectively bypassing the need for aggregated index labels during training. Using hourly OHLC data of S&P 500 constituents, combined with the U.S. 10-Year Treasury Yield and the CBOE Volatility Index, the model is trained solely on disaggregated inputs. Experimental results demonstrate that the VAE achieves superior accuracy in index-level forecasting compared to models trained directly on index targets, highlighting its effectiveness in capturing the implicit generative structure of index formation. These findings suggest that constituent-driven latent representations can provide a scalable and generalizable approach to modeling aggregate market indicators, offering a robust alternative to traditional direct supervision paradigms.

Suggested Citation

  • Yoonjae Noh & Sangjin Kim, 2025. "Zero-Shot Learning for S&P 500 Forecasting via Constituent-Level Dynamics: Latent Structure Modeling Without Index Supervision," Mathematics, MDPI, vol. 13(17), pages 1-17, August.
  • Handle: RePEc:gam:jmathe:v:13:y:2025:i:17:p:2762-:d:1735945
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