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HINTS: Extraction of Human Insights from Time-Series Without External Sources

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Human decision-making, emotions, and collective psychology are complex factors that shape the temporal dynamics observed in financial and economic systems. Many recent time series forecasting models leverage external sources (e.g., news and social media) to capture human factors, but these approaches incur high data dependency costs in terms of financial, computational, and practical implications. In this study, we propose HINTS, a self-supervised learning framework that extracts these latent factors endogenously from time series residuals without external data. HINTS leverages the Friedkin-Johnsen (FJ) opinion dynamics model as a structural inductive bias to model evolving social influence, memory, and bias patterns. The extracted human factors are integrated into a state-of-the-art backbone model as an attention map. Experimental results using nine real-world and benchmark datasets demonstrate that HINTS consistently improves forecasting accuracy. Furthermore, multiple case studies and ablation studies validate the interpretability of HINTS, demonstrating strong semantic alignment between the extracted factors and real-world events, demonstrating the practical utility of HINTS.

Sheo Yon Jhin, Noseong Park• 2025

Related benchmarks

TaskDatasetResultRank
Time Series ForecastingExchange
MSE0.077
176
Time Series ForecastingPeMS08
MSE0.081
103
Time Series ForecastingPeMS03
MSE0.076
82
Time Series ForecastingPeMS07
MSE0.075
82
ForecastingS&P 500
MAE0.329
76
Time Series ForecastingPeMS04
MSE0.088
71
Time Series ForecastingILL
MSE0.88
24
Time Series ForecastingTech Stock 10
MSE0.481
24
Time Series ForecastingS&P 100
MSE0.38
24
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