Probabilistic Backpropagation for Scalable Learning of Bayesian Neural Networks
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Abstract
Large multilayer neural networks trained with backpropagation have recently achieved state-of-the-art results in a wide range of problems. However, using backprop for neural net learning still has some disadvantages, e.g., having to tune a large number of hyperparameters to the data, lack of calibrated probabilistic predictions, and a tendency to overfit the training data. In principle, the Bayesian approach to learning neural networks does not have these problems. However, existing Bayesian techniques lack scalability to large dataset and network sizes. In this work we present a novel scalable method for learning Bayesian neural networks, called probabilistic backpropagation (PBP). Similar to classical…
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Topics
Keywords
- Backpropagation
- Computer science
- Artificial intelligence
- Artificial neural network
- Machine learning
- Probabilistic logic
- Scalability
- Overfitting
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