TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Disentangling Structured Components: Towards Adaptive, Int...

Disentangling Structured Components: Towards Adaptive, Interpretable and Scalable Time Series Forecasting

Jinliang Deng, Xiusi Chen, Renhe Jiang, Du Yin, Yi Yang, Xuan Song, Ivor W. Tsang

2023-05-22Time Series ForecastingTime SeriesMultivariate Time Series Forecasting
PaperPDFCode(official)

Abstract

Multivariate time-series (MTS) forecasting is a paramount and fundamental problem in many real-world applications. The core issue in MTS forecasting is how to effectively model complex spatial-temporal patterns. In this paper, we develop a adaptive, interpretable and scalable forecasting framework, which seeks to individually model each component of the spatial-temporal patterns. We name this framework SCNN, as an acronym of Structured Component-based Neural Network. SCNN works with a pre-defined generative process of MTS, which arithmetically characterizes the latent structure of the spatial-temporal patterns. In line with its reverse process, SCNN decouples MTS data into structured and heterogeneous components and then respectively extrapolates the evolution of these components, the dynamics of which are more traceable and predictable than the original MTS. Extensive experiments are conducted to demonstrate that SCNN can achieve superior performance over state-of-the-art models on three real-world datasets. Additionally, we examine SCNN with different configurations and perform in-depth analyses of the properties of SCNN.

Results

TaskDatasetMetricValueModel
Time Series ForecastingETTm1 (192) MultivariateMSE0.327SCNN
Time Series ForecastingWeather (192)MSE0.188SCNN
Time Series ForecastingETTm2 (96) MultivariateMSE0.163SCNN
Time Series ForecastingETTh1 (192) MultivariateMAE0.398SCNN
Time Series ForecastingETTh1 (192) MultivariateMSE0.379SCNN
Time Series ForecastingETTm1 (96) MultivariateMSE0.287SCNN
Time Series ForecastingWeather (96)MSE0.142SCNN
Time Series ForecastingETTm2 (192) MultivariateMSE0.221SCNN
Time Series AnalysisETTm1 (192) MultivariateMSE0.327SCNN
Time Series AnalysisWeather (192)MSE0.188SCNN
Time Series AnalysisETTm2 (96) MultivariateMSE0.163SCNN
Time Series AnalysisETTh1 (192) MultivariateMAE0.398SCNN
Time Series AnalysisETTh1 (192) MultivariateMSE0.379SCNN
Time Series AnalysisETTm1 (96) MultivariateMSE0.287SCNN
Time Series AnalysisWeather (96)MSE0.142SCNN
Time Series AnalysisETTm2 (192) MultivariateMSE0.221SCNN

Related Papers

The Power of Architecture: Deep Dive into Transformer Architectures for Long-Term Time Series Forecasting2025-07-17MoTM: Towards a Foundation Model for Time Series Imputation based on Continuous Modeling2025-07-17Data Augmentation in Time Series Forecasting through Inverted Framework2025-07-15D3FL: Data Distribution and Detrending for Robust Federated Learning in Non-linear Time-series Data2025-07-15Towards Interpretable Time Series Foundation Models2025-07-10MoFE-Time: Mixture of Frequency Domain Experts for Time-Series Forecasting Models2025-07-09Foundation models for time series forecasting: Application in conformal prediction2025-07-09Bridging the Last Mile of Prediction: Enhancing Time Series Forecasting with Conditional Guided Flow Matching2025-07-09