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In this paper we introduce a new approximation of MLP inference that takes under consideration this residual uncertainty. The proposed algorithm propagates not ...
In this paper we introduce a new approximation of MLP inference that takes under consideration this residual uncertainty. The proposed algorithm propagates not ...
In this paper we introduce a new approximation of MLP inference that takes under consideration this residual uncertainty. The proposed algorithm propagates not ...
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This paper presents an identification method based on artificial neural networks, which can be used for the robust fault detection.
May 5, 2024 · Compared to traditional shallow convolutional neural networks, deeper ResNet based on residual structures(2D) are designed for DOA estimation.
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This work develops tools to obtain practical uncertainty estimates in deep learning, casting recent deep learning tools as Bayesian models.
In Section 4.1, we introduced softmax regression, implementing the algorithm from scratch (Section 4.4) and using high-level APIs (Section 4.5).
In this paper we present a Residual Neural Network inspired DL- based Intrusion Detection System (IDS) that incorporates weight pruning to make the model more ...