Bayesian Convolutional Neural Networks with Bernoulli Approximate Variational Inference
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Abstract
Convolutional neural networks (CNNs) work well on large datasets. But labelled data is hard to collect, and in some applications larger amounts of data are not available. The problem then is how to use CNNs with small data -- as CNNs overfit quickly. We present an efficient Bayesian CNN, offering better robustness to over-fitting on small data than traditional approaches. This is by placing a probability distribution over the CNN's kernels. We approximate our model's intractable posterior with Bernoulli variational distributions, requiring no additional model parameters. On the theoretical side, we cast dropout network training as approximate inference in Bayesian neural networks. This allows us to implement…
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Keywords
- Overfitting
- Computer science
- Convolutional neural network
- Artificial intelligence
- Dropout (neural networks)
- Bayesian inference
- Inference
- Machine learning
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