Artificial Intelligence and Machine Learning for Multi-Domain Operations Applications II 2020
DOI: 10.1117/12.2563843
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Self-updating models with error remediation

Abstract: Many environments currently employ machine learning models for data processing and analytics that were built using a limited number of training data points. Once deployed, the models are exposed to significant amounts of previously-unseen data, not all of which is representative of the original, limited training data. However, updating these deployed models can be difficult due to logistical, bandwidth, time, hardware, and/or data sensitivity constraints. We propose a framework, Self-Updating Models with Error… Show more

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