作者
Sina Molavipour, Germán Bassi, Mikael Skoglund
发表日期
2020/6/12
期刊
arXiv preprint arXiv:2006.07225
简介
The estimation of mutual information (MI) or conditional mutual information (CMI) from a set of samples is a longstanding problem. A recent line of work in this area has leveraged the approximation power of artificial neural networks and has shown improvements over conventional methods. One important challenge in this new approach is the need to obtain, given the original dataset, a different set where the samples are distributed according to a specific product density function. This is particularly challenging when estimating CMI. In this paper, we introduce a new technique, based on k nearest neighbors (k-NN), to perform the resampling and derive high-confidence concentration bounds for the sample average. Then the technique is employed to train a neural network classifier and the CMI is estimated accordingly. We propose three estimators using this technique and prove their consistency, make a comparison …
引用总数
20212022202320243421
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