Temporal Convolutional Networks


Temporal convolutional networks (TCNs) are deep learning models that use 1D convolutions for sequence modeling tasks.

Causal Graph Spatial-Temporal Autoencoder for Reliable and Interpretable Process Monitoring

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Feb 03, 2026
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PaAno: Patch-Based Representation Learning for Time-Series Anomaly Detection

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Feb 01, 2026
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Schrödinger-Inspired Time-Evolution for 4D Deformation Forecasting

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Jan 31, 2026
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MoHETS: Long-term Time Series Forecasting with Mixture-of-Heterogeneous-Experts

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Jan 29, 2026
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CoBA: Integrated Deep Learning Model for Reliable Low-Altitude UAV Classification in mmWave Radio Networks

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Jan 28, 2026
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ACFormer: Mitigating Non-linearity with Auto Convolutional Encoder for Time Series Forecasting

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Jan 28, 2026
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MarketGANs: Multivariate financial time-series data augmentation using generative adversarial networks

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Jan 25, 2026
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A Feature Extraction Pipeline for Enhancing Lightweight Neural Networks in sEMG-based Joint Torque Estimation

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Jan 23, 2026
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Strip-Fusion: Spatiotemporal Fusion for Multispectral Pedestrian Detection

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Jan 25, 2026
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How Much Temporal Modeling is Enough? A Systematic Study of Hybrid CNN-RNN Architectures for Multi-Label ECG Classification

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Jan 25, 2026
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