2021
DOI: 10.48550/arxiv.2104.10715
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Uncertainty-Aware Boosted Ensembling in Multi-Modal Settings

Abstract: Reliability of machine learning (ML) systems is crucial in safety-critical applications such as healthcare, and uncertainty estimation is a widely researched method to highlight the confidence of ML systems in deployment. Sequential and parallel ensemble techniques have shown improved performance of ML systems in multi-modal settings by leveraging the feature sets together. We propose an uncertainty-aware boosting technique for multi-modal ensembling in order to focus on the data points with higher associated … Show more

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References 23 publications
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