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arXiv 提交日期: 2026-02-03
📄 Abstract - LISA: Laplacian In-context Spectral Analysis

We propose Laplacian In-context Spectral Analysis (LISA), a method for inference-time adaptation of Laplacian-based time-series models using only an observed prefix. LISA combines delay-coordinate embeddings and Laplacian spectral learning to produce diffusion-coordinate state representations, together with a frozen nonlinear decoder for one-step prediction. We introduce lightweight latent-space residual adapters based on either Gaussian-process regression or an attention-like Markov operator over context windows. Across forecasting and autoregressive rollout experiments, LISA improves over the frozen baseline and is often most beneficial under changing dynamics. This work links in-context adaptation to nonparametric spectral methods for dynamical systems.

顶级标签: machine learning model training model evaluation
详细标签: time-series forecasting in-context learning spectral methods laplacian learning autoregressive models 或 搜索:

LISA:拉普拉斯上下文谱分析 / LISA: Laplacian In-context Spectral Analysis


1️⃣ 一句话总结

这篇论文提出了一种名为LISA的新方法,它能让基于拉普拉斯算子的时间序列模型,在预测时仅根据一小段历史数据就自动调整自身参数,从而在系统动态变化时更准确地进行预测。

源自 arXiv: 2602.04906