FreqLens: Interpretable Frequency Attribution for Time Series Forecasting

Abstract

Time series forecasting models often lack interpretability, limiting their adoption in domains requiring explainable predictions. We propose FreqLens, an interpretable forecasting framework that discovers and attributes predictions to learnable frequency components. FreqLens introduces two key innovations: (1) learnable frequency discovery -- frequency bases are parameterized via sigmoid mapping and learned from data with diversity regularization, enabling automatic discovery of dominant periodic patterns without domain knowledge; and (2) axiomatic frequency attribution -- a theoretically grounded framework that provably satisfies Completeness, Faithfulness, Null-Frequency, and Symmetry axioms, with per-frequency attributions equivalent to Shapley values. On Traffic and Weather datasets, FreqLens achieves competitive or superior performance while discovering physically meaningful frequencies: all 5 independent runs discover the 24-hour daily cycle (24.6 0.1h, 2.5\% error) and 12-hour half-daily cycle (11.8 0.1h, 1.6\% error) on Traffic, and weekly cycles (10× longer than the input window) on Weather. These results demonstrate genuine frequency-level knowledge discovery with formal theoretical guarantees on attribution quality.

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