Temporal Convolutional Networks


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

Architectural Insights for Post-Tornado Damage Recognition

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Feb 16, 2026
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Exploring the Performance of ML/DL Architectures on the MNIST-1D Dataset

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Feb 12, 2026
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Real-Time Proactive Anomaly Detection via Forward and Backward Forecast Modeling

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Feb 12, 2026
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Radio Map Prediction from Noisy Environment Information and Sparse Observations

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Feb 12, 2026
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TimeSynth: A Framework for Uncovering Systematic Biases in Time Series Forecasting

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Feb 11, 2026
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WiFlow: A Lightweight WiFi-based Continuous Human Pose Estimation Network with Spatio-Temporal Feature Decoupling

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Feb 09, 2026
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Benchmarking Artificial Intelligence Models for Daily Coastal Hypoxia Forecasting

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Feb 05, 2026
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A Hybrid Autoencoder for Robust Heightmap Generation from Fused Lidar and Depth Data for Humanoid Robot Locomotion

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Feb 05, 2026
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Human-Centered Explainable AI for Security Enhancement: A Deep Intrusion Detection Framework

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Feb 04, 2026
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Convolution Operator Network for Forward and Inverse Problems (FI-Conv): Application to Plasma Turbulence Simulations

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Feb 04, 2026
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