Temporal Convolutional Networks


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

CBOL-Tuner: Classifier-pruned Bayesian optimization to explore temporally structured latent spaces for particle accelerator tuning

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Dec 02, 2024
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Dual-Branch Graph Transformer Network for 3D Human Mesh Reconstruction from Video

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Dec 02, 2024
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HiMoE: Heterogeneity-Informed Mixture-of-Experts for Fair Spatial-Temporal Forecasting

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Nov 30, 2024
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Signal Processing over Time-Varying Graphs: A Systematic Review

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Nov 30, 2024
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Forecasting Foreign Exchange Market Prices Using Technical Indicators with Deep Learning and Attention Mechanism

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Nov 29, 2024
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Real-Time Anomaly Detection in Video Streams

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Nov 29, 2024
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Predicting Extubation Failure in Intensive Care: The Development of a Novel, End-to-End Actionable and Interpretable Prediction System

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Nov 27, 2024
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Machine learning-based classification for Single Photon Space Debris Light Curves

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Nov 27, 2024
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SpikeAtConv: An Integrated Spiking-Convolutional Attention Architecture for Energy-Efficient Neuromorphic Vision Processing

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Nov 26, 2024
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Multi-Resolution Generative Modeling of Human Motion from Limited Data

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Nov 25, 2024
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