Uncertainty-Aware Boosted Ensembling in Multi-Modal Settings
Utkarsh Sarawgi, Rishab Khincha, Wazeer Zulfikar , Satrajit Ghosh, Pattie Maes
Identifiers and access
- DOI
- 10.1109/ijcnn52387.2021.9534161
- Cited by
- 0
Key findings
An uncertainty-aware boosted ensemble that re-weights training points by predictive uncertainty (rather than loss) improved multimodal speech-and-text classification of Dementia and Parkinson's disease, reduced system entropy, and produced better-calibrated, more robust predictions.
Abstract
Source: openalex
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 uncertainty estimates, rather than the ones with higher loss values. We evaluate this method on healthcare tasks related to Dementia and Parkinson's disease which involve real-world multi-modal speech and text data, wherein our method shows an improved performance. Additional analysis suggests that introducing uncertainty-awareness into the boosted ensembles decreases the overall entropy of the system, making it more robust to heteroscedasticity in the data, as well as better calibrating each of the modalities along with high quality prediction intervals. We open-source our entire codebase at https://github.com/usarawgi911/Uncertainty-aware-boosting
Topics
- ml-nlp-knowledge
- speech-voice-biomarkers
Lab authors
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