Mutual Information Decay Curves and Hyper-parameter Grid Search Design for Recurrent Neural Architectures

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Mahalunkar A., Kelleher J.D. (2020) Mutual Information Decay Curves and Hyper-parameter Grid Search Design for Recurrent Neural Architectures. In: Yang H., Pasupa K., Leung A.CS., Kwok J.T., Chan J.H., King I. (eds) Neural Information Processing. ICONIP 2020. Communications in Computer and Information Science, vol 1333. Springer, Cham

Abstract

We present an approach to design the grid searches for hyper-parameter optimization for recurrent neural architectures. The basis for this approach is the use of mutual information to analyze long distance dependencies (LDDs) within a dataset. We also report a set of experiments that demonstrate how using this approach, we obtain state-of-the-art results for DilatedRNNs across a range of benchmark datasets.

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Sponsor: Science Foundation Ireland (SFI)
Grant Number: 13/ RC/2106

Type of material: Conference Paper