SEED: Spectral Entropy-Guided Evaluation of SpatialTemporal Dependencies for Multivariate Time Series Forecasting
- URL: http://arxiv.org/abs/2512.14718v2
- Date: Thu, 18 Dec 2025 04:24:34 GMT
- Title: SEED: Spectral Entropy-Guided Evaluation of SpatialTemporal Dependencies for Multivariate Time Series Forecasting
- Authors: Feng Xiong, Zongxia Xie, Yanru Sun, Haoyu Wang, Jianhong Lin,
- Abstract summary: We develop a Spectral Entropy-guided Evaluation framework for spatial-temporal Dependency modeling.<n>SEED provides a preliminary evaluation of the spatial and temporal dependencies of each variable, enabling the model to adaptively balance Channel Independence (CI) and Channel Dependence (CD) strategies.<n>SEED achieves state-of-the-art performance, validating its effectiveness and generality.
- Score: 8.507253633170947
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Effective multivariate time series forecasting often benefits from accurately modeling complex inter-variable dependencies. However, existing attention- or graph-based methods face three key issues: (a) strong temporal self-dependencies are often disrupted by irrelevant variables; (b) softmax normalization ignores and reverses negative correlations; (c) variables struggle to perceive their temporal positions. To address these, we propose \textbf{SEED}, a Spectral Entropy-guided Evaluation framework for spatial-temporal Dependency modeling. SEED introduces a Dependency Evaluator, a key innovation that leverages spectral entropy to dynamically provide a preliminary evaluation of the spatial and temporal dependencies of each variable, enabling the model to adaptively balance Channel Independence (CI) and Channel Dependence (CD) strategies. To account for temporal regularities originating from the influence of other variables rather than intrinsic dynamics, we propose Spectral Entropy-based Fuser to further refine the evaluated dependency weights, effectively separating this part. Moreover, to preserve negative correlations, we introduce a Signed Graph Constructor that enables signed edge weights, overcoming the limitations of softmax. Finally, to help variables perceive their temporal positions and thereby construct more comprehensive spatial features, we introduce the Context Spatial Extractor, which leverages local contextual windows to extract spatial features. Extensive experiments on 12 real-world datasets from various application domains demonstrate that SEED achieves state-of-the-art performance, validating its effectiveness and generality.
Related papers
- MEMTS: Internalizing Domain Knowledge via Parameterized Memory for Retrieval-Free Domain Adaptation of Time Series Foundation Models [51.506429027626005]
Memory for Time Series (MEMTS) is a lightweight and plug-and-play method for retrieval-free domain adaptation in time series forecasting.<n>Key component of MEMTS is a Knowledge Persistence Module (KPM), which internalizes domain-specific temporal dynamics.<n>This paradigm shift enables MEMTS to achieve accurate domain adaptation with constant-time inference and near-zero latency.
arXiv Detail & Related papers (2026-02-14T14:00:06Z) - Learning Multi-Modal Mobility Dynamics for Generalized Next Location Recommendation [51.00494428978262]
We leverage multi-modal spatial-temporal knowledge to characterize mobility dynamics for the location recommendation task.<n>First, we construct a unified spatial-temporal relational graph (STRG) for multi-modal representation.<n>Second, we design a gating mechanism to fuse spatial-temporal graph representations of different modalities.
arXiv Detail & Related papers (2025-12-27T14:23:04Z) - Beyond Marginals: Learning Joint Spatio-Temporal Patterns for Multivariate Anomaly Detection [2.893006778402251]
In time series data, an anomaly may be indicated by the simultaneous deviation of interrelated time series.<n>Our approach addresses this by modeling joint dependencies in the latent space.
arXiv Detail & Related papers (2025-09-18T14:57:55Z) - Multivariate Long-term Time Series Forecasting with Fourier Neural Filter [42.60778405812048]
We introduce FNF as the backbone and DBD as architecture to provide excellent learning capabilities and optimal learning pathways for spatial-temporal modeling.<n>We show that FNF unifies local time-domain and global frequency-domain information processing within a single backbone that extends naturally to spatial modeling.
arXiv Detail & Related papers (2025-06-10T18:40:20Z) - Spatial-Temporal-Spectral Unified Modeling for Remote Sensing Dense Prediction [20.1863553357121]
Current deep learning architectures for remote sensing are fundamentally rigid.<n>We introduce the Spatial-Temporal-Spectral Unified Network (STSUN) for unified modeling.<n> STSUN can adapt to input and output data with arbitrary spatial sizes, temporal lengths, and spectral bands.<n>It unifies various dense prediction tasks and diverse semantic class predictions.
arXiv Detail & Related papers (2025-05-18T07:39:17Z) - MFRS: A Multi-Frequency Reference Series Approach to Scalable and Accurate Time-Series Forecasting [51.94256702463408]
Time series predictability is derived from periodic characteristics at different frequencies.<n>We propose a novel time series forecasting method based on multi-frequency reference series correlation analysis.<n> Experiments on major open and synthetic datasets show state-of-the-art performance.
arXiv Detail & Related papers (2025-03-11T11:40:14Z) - Reduced Spatial Dependency for More General Video-level Deepfake Detection [9.51656628987442]
We propose a novel method called Spatial Dependency Reduction (SDR), which integrates common temporal consistency features from multiple spatially-perturbed clusters.<n>Extensive benchmarks and ablation studies demonstrate the effectiveness and rationale of our approach.
arXiv Detail & Related papers (2025-03-05T08:51:55Z) - Time Series Domain Adaptation via Latent Invariant Causal Mechanism [28.329164754662354]
Time series domain adaptation aims to transfer the complex temporal dependence from the labeled source domain to the unlabeled target domain.<n>Recent advances leverage the stable causal mechanism over observed variables to model the domain-invariant temporal dependence.<n>However, modeling precise causal structures in high-dimensional data, such as videos, remains challenging.
arXiv Detail & Related papers (2025-02-23T16:25:58Z) - Cross Space and Time: A Spatio-Temporal Unitized Model for Traffic Flow Forecasting [16.782154479264126]
Predicting backbone-temporal traffic flow presents challenges due to complex interactions between temporal factors.
Existing approaches address these dimensions in isolation, neglecting their critical interdependencies.
In this paper, we introduce Sanonymous-Temporal Unitized Unitized Cell (ASTUC), a unified framework designed to capture both spatial and temporal dependencies.
arXiv Detail & Related papers (2024-11-14T07:34:31Z) - PDETime: Rethinking Long-Term Multivariate Time Series Forecasting from
the perspective of partial differential equations [49.80959046861793]
We present PDETime, a novel LMTF model inspired by the principles of Neural PDE solvers.
Our experimentation across seven diversetemporal real-world LMTF datasets reveals that PDETime adapts effectively to the intrinsic nature of the data.
arXiv Detail & Related papers (2024-02-25T17:39:44Z) - Stochastically forced ensemble dynamic mode decomposition for
forecasting and analysis of near-periodic systems [65.44033635330604]
We introduce a novel load forecasting method in which observed dynamics are modeled as a forced linear system.
We show that its use of intrinsic linear dynamics offers a number of desirable properties in terms of interpretability and parsimony.
Results are presented for a test case using load data from an electrical grid.
arXiv Detail & Related papers (2020-10-08T20:25:52Z) - Supporting Optimal Phase Space Reconstructions Using Neural Network
Architecture for Time Series Modeling [68.8204255655161]
We propose an artificial neural network with a mechanism to implicitly learn the phase spaces properties.
Our approach is either as competitive as or better than most state-of-the-art strategies.
arXiv Detail & Related papers (2020-06-19T21:04:47Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.