DS1 spectrogram: Analysis of Long Range Dependency Understanding in State Space Models

Analysis of Long Range Dependency Understanding in State Space Models

January 19, 20262601.13048v1

Authors

Srividya Ravikumar,Abhinav Anand,Shweta Verma,Mira Mezini

Abstract

Although state-space models (SSMs) have demonstrated strong performance on long-sequence benchmarks, most research has emphasized predictive accuracy rather than interpretability. In this work, we present the first systematic kernel interpretability study of the diagonalized state-space model (S4D) trained on a real-world task (vulnerability detection in source code).

Through time and frequency domain analysis of the S4D kernel, we show that the long-range modeling capability of S4D varies significantly under different model architectures, affecting model performance. For instance, we show that the depending on the architecture, S4D kernel can behave as low-pass, band-pass or high-pass filter.

The insights from our analysis can guide future work in designing better S4D-based models.

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