„Recurrent Neural Networks“
Suchergebnisse
771 Treffer
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A real time prediction methodology for hurricane evolution using LSTM recurrent neural networks
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Prediction of retail sales of footwear using feedforward and recurrent neural networks
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Visual analytics tool for the interpretation of hidden states in recurrent neural networks
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Decoding neurobiological spike trains using recurrent neural networks: a case study with electrophysiological auditory cortex recordings
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Analyzing gene polymorphism and metal folic acid interactions in neural tube defects using optimized deep recurrent neural networks
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Human Activity Recognition from Accelerometer with Convolutional and Recurrent Neural Networks
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Efficient and effective training of sparse recurrent neural networks
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Attentive Hybrid Recurrent Neural Networks for sequential recommendation
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Urban traffic flows forecasting by recurrent neural networks with spiral structures of layers
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Real-time torque control using discrete-time recurrent high-order neural networks
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LRCN-RetailNet: A recurrent neural network architecture for accurate people counting
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Automatic detection of sleep-disordered breathing events using recurrent neural networks from an electrocardiogram signal
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Exponential synchronization of memristor-based recurrent neural networks with multi-proportional delays
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Real-time prediction of online shoppers’ purchasing intention using multilayer perceptron and LSTM recurrent neural networks
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Recurrent fuzzy wavelet neural networks based on robust adaptive sliding mode control for industrial robot manipulators
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Character-level recurrent neural networks in practice: comparing training and sampling schemes
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IoT enabled predictive maintenance system in Industry 4.0 using target-based feature pool linked dilated recurrent neural network
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Efficient time-series approximation with linear recurrent neural networks: architecture learning and predictive power
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Fluctuation-learning relationship in recurrent neural networks
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Recurrent Neural Network Exploration Strategies During Reinforcement Learning Depend on Network Capacity