Temporal Convolutional Networks


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

GTCN-G: A Residual Graph-Temporal Fusion Network for Imbalanced Intrusion Detection (Preprint)

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Oct 08, 2025
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Memory-Augmented Generative AI for Real-time Wireless Prediction in Dynamic Industrial Environments

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Oct 08, 2025
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From Actions to Kinesics: Extracting Human Psychological States through Bodily Movements

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Oct 06, 2025
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IntrusionX: A Hybrid Convolutional-LSTM Deep Learning Framework with Squirrel Search Optimization for Network Intrusion Detection

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Oct 01, 2025
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Adaptive Event Stream Slicing for Open-Vocabulary Event-Based Object Detection via Vision-Language Knowledge Distillation

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Oct 01, 2025
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VMDNet: Time Series Forecasting with Leakage-Free Samplewise Variational Mode Decomposition and Multibranch Decoding

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Sep 18, 2025
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Language Conditioning Improves Accuracy of Aircraft Goal Prediction in Untowered Airspace

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Sep 17, 2025
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A multi-temporal multi-spectral attention-augmented deep convolution neural network with contrastive learning for crop yield prediction

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Sep 19, 2025
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Forecasting Russian Equipment Losses Using Time Series and Deep Learning Models

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Sep 09, 2025
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Skeleton-based sign language recognition using a dual-stream spatio-temporal dynamic graph convolutional network

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Sep 10, 2025
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