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arxiv: 1805.07159 · v2 · pith:IAD3HLDYnew · submitted 2018-05-18 · 💻 cs.LG · stat.ML

Low-Cost Recurrent Neural Network Expected Performance Evaluation

classification 💻 cs.LG stat.ML
keywords neuralrecurrentconfigurationcostexpectedhyper-parameternetworkperformance
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Recurrent neural networks are a powerful tool, but they are very sensitive to their hyper-parameter configuration. Moreover, training properly a recurrent neural network is a tough task, therefore selecting an appropriate configuration is critical. Varied strategies have been proposed to tackle this issue. However, most of them are still impractical because of the time/resources needed. In this study, we propose a low computational cost model to evaluate the expected performance of a given architecture based on the distribution of the error of random samples of the weights. We empirically validate our proposal using three use cases. The results suggest that this is a promising alternative to reduce the cost of exploration for hyper-parameter optimization.

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