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Reliable and Interpretable Drift Detection in Streams of Short Texts

Ella Rabinovich, Matan Vetzler, Samuel Ackerman, Ateret Anaby Tavor

202316 citationsDOIOpen Access PDF

Abstract

Data drift is the change in model input data that is one of the key factors leading to machine learning models performance degradation over time. Monitoring drift helps detecting these issues and preventing their harmful consequences. Meaningful drift interpretation is a fundamental step towards effective re-training of the model. In this study we propose an end-to-end framework for reliable model-agnostic change-point detection and interpretation in large task-oriented dialog systems, proven effective in multiple customer deployments. We evaluate our approach and demonstrate its benefits with a novel variant of intent classification training dataset, simulating customer requests to a dialog system. We make the data publicly available.

Topics & Concepts

Concept driftComputer scienceDialog boxTask (project management)Data stream miningArtificial intelligenceKey (lock)Machine learningInterpretation (philosophy)Change detectionPoint (geometry)Data miningComputer securityEngineeringGeometrySystems engineeringWorld Wide WebMathematicsProgramming languageData Stream Mining TechniquesMachine Learning and Data ClassificationAdvanced Bandit Algorithms Research
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