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Temporal Convolutional Networks

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CA-TCN: A Causal-Anticausal Temporal Convolutional Network for Direct Auditory Attention Decoding

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Crop Recommendation and Agricultural Query Answering System Using Spatio-Temporal Graph Neural Networks and Hybrid Retrieval Augmentation

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Hybrid Robustness Verification for Spatio-Temporal Neural Networks

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Uncertainty-Aware Adaptive Sensor Fusion for Autonomous Navigation

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Efficient Traffic Prediction at Scale: A Systematic Study of STGCN Architectural Depth

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An Improved CNN-LSTM Based Intrusion Detection System for IoT Networks

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VMDNet: Temporal Leakage-Free Variational Mode Decomposition for Electricity Demand Forecasting

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Physics-Guided Attention in a Lightweight TCN for Efficient WiFi CSI-Based Human Activity Recognition

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A Comparative Study of Deep Learning Models for Geological Carbon Sequestration

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Evidence-Guided Neural Architecture Selection under Uncertainty for Subject-Specific Blood Glucose Forecasting

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