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arXiv 提交日期: 2026-05-14
📄 Abstract - Time-Varying Deep State Space Models for Sequences with Switching Dynamics

The identification and modeling of time-varying systems is a fundamental challenge in signal processing and system identification. To address this challenge, we propose a class of time-varying state-space model (SSM) based neural networks in which the neurons' states are governed by time-varying dynamics. The proposed model provides the learnable time-varying dynamics through a dictionary of basis functions, where each basis function evolves differently over time. We evaluate the proposed approach on both synthetic data from switching systems and a speech denoising task where real audio is corrupted with switching dynamics noise. The results show that the proposed time-varying model consistently outperforms its time-invariant counterparts while maintaining comparable computational complexity. Our investigations also reveal which aspects of the time-varying dynamics of the data most need to be captured by the proposed time-invariant models, how the additional freedom provided by time-varying basis functions should be allocated across model components, and to what extent larger models can compensate for time-invariant limitations.

顶级标签: machine learning audio
详细标签: state space models time-varying dynamics speech denoising switching systems 或 搜索:

用于切换动态序列的时变深度状态空间模型 / Time-Varying Deep State Space Models for Sequences with Switching Dynamics


1️⃣ 一句话总结

本文提出了一类新型神经网络,其内部神经元状态随时间动态变化,通过一组可学习的基函数来捕捉系统在不同时间段的切换行为,实验证明该方法在合成数据和语音降噪任务中均优于传统的时不变模型,且计算复杂度相当。

源自 arXiv: 2605.15311