Multimodal Forecasting for Commodity Prices Using Spectrogram-Based and Time Series Representations

Authors

  • Soyeon Park Handong Global University
  • Doohee Chung Handong Global University
  • Charmgil Hong Handong Global University

DOI:

https://doi.org/10.1609/aaaiss.v9i1.42925

Abstract

Forecasting multivariate time series remains challenging due to complex cross-variable dependencies and the presence of heterogeneous external influences. This paper presents Spectrogram-Enhanced Multimodal Fusion (SEMF), which combines spectral and temporal representations for more accurate and robust forecasting. The target time series is transformed into Morlet wavelet spectrograms, from which a Vision Transformer encoder extracts localized, frequency-aware features. In parallel, exogenous variables, such as financial indicators and macroeconomic signals, are encoded via a Transformer to capture temporal dependencies and multivariate dynamics. A bidirectional cross-attention module integrates these modalities into a unified representation that preserves distinct signal characteristics while modeling cross-modal correlations. Applied to multiple commodity price forecasting tasks, SEMF achieves consistent improvements over six competitive baselines across multiple forecasting horizons and evaluation metrics. These results demonstrate the effectiveness of multimodal fusion and spectrogram-based encoding in capturing multi-scale patterns within complex financial time series.

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Published

2026-06-23

How to Cite

Park, S., Chung, D., & Hong, C. (2026). Multimodal Forecasting for Commodity Prices Using Spectrogram-Based and Time Series Representations. Proceedings of the AAAI Symposium Series, 9(1), 195–203. https://doi.org/10.1609/aaaiss.v9i1.42925

Issue

Section

AI in Business: Intelligent Transformation and Management (Full Papers)