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Qualitative Analysis of Monte Carlo Dropout

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In this report, we present qualitative analysis of Monte Carlo (MC) dropout method for measuring model uncertainty in neural network (NN) models. We first consider the sources of uncertainty in NNs, and briefly review Bayesian Neural Networks (BNN), the group of Bayesian approaches to tackle uncertainties in NNs. After presenting mathematical formulation of MC dropout, we proceed to suggesting potential benefits and associated costs for using MC dropout in typical NN models, with the results from our experiments.

Ronald Seoh• 2020

Related benchmarks

TaskDatasetResultRank
Breast Cancer Subtype PredictionBRACS → BACH
F1 Score0.6914
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Breast Cancer Subtype PredictionBRACS 512x512
F1 Score63.05
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Breast Cancer Subtype PredictionBRACS original
F1 Score56.13
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