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Main Authors: Das, Sanjiv R, Goyal, Tarang, Yadav, Mohini
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.21504
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author Das, Sanjiv R
Goyal, Tarang
Yadav, Mohini
author_facet Das, Sanjiv R
Goyal, Tarang
Yadav, Mohini
contents Using Chronos-2, an open-source time-series foundation model, we evaluate pretrained time-series models for economic and financial forecasting with an emphasis on whether multivariate (MV) inputs improve accuracy relative to univariate (UV) baselines. The study covers two panels -- the Magnificent-7 equities and U.S. Treasury interest rates -- as well as a combined panel, using rolling monthly evaluations from 2000--2025. We vary input window lengths and forecast horizons and report RMSE and MAPE. Across datasets, MV forecasts consistently outperform UV forecasts, with especially strong gains for interest rates and meaningful improvements for equities. Series-level comparisons show MV improvements in every case, and error dispersion is generally lower under MV inputs. We also provide parameter-heatmap and time-series visualizations. However, mixing time series across equity and interest rate markets reduces forecast accuracy, indicating that adding noisy context degrades model performance. Overall, the results indicate that foundation models can leverage cross-series information to improve forecast accuracy in finance, and that the benefits are strongest when related series are modeled jointly under disciplined rolling protocols. Other than using an open-source foundation model, this paper also showcases how AI may be used for financial research.
format Preprint
id arxiv_https___arxiv_org_abs_2605_21504
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Multivariate Financial Forecasting using the Chronos Time Series Foundation Models
Das, Sanjiv R
Goyal, Tarang
Yadav, Mohini
Statistical Finance
Artificial Intelligence
91B84
I.2; J.4
Using Chronos-2, an open-source time-series foundation model, we evaluate pretrained time-series models for economic and financial forecasting with an emphasis on whether multivariate (MV) inputs improve accuracy relative to univariate (UV) baselines. The study covers two panels -- the Magnificent-7 equities and U.S. Treasury interest rates -- as well as a combined panel, using rolling monthly evaluations from 2000--2025. We vary input window lengths and forecast horizons and report RMSE and MAPE. Across datasets, MV forecasts consistently outperform UV forecasts, with especially strong gains for interest rates and meaningful improvements for equities. Series-level comparisons show MV improvements in every case, and error dispersion is generally lower under MV inputs. We also provide parameter-heatmap and time-series visualizations. However, mixing time series across equity and interest rate markets reduces forecast accuracy, indicating that adding noisy context degrades model performance. Overall, the results indicate that foundation models can leverage cross-series information to improve forecast accuracy in finance, and that the benefits are strongest when related series are modeled jointly under disciplined rolling protocols. Other than using an open-source foundation model, this paper also showcases how AI may be used for financial research.
title Multivariate Financial Forecasting using the Chronos Time Series Foundation Models
topic Statistical Finance
Artificial Intelligence
91B84
I.2; J.4
url https://arxiv.org/abs/2605.21504