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Uncovering Drift in Textual Data: An Unsupervised Method for Detecting and Mitigating Drift in Machine Learning Models

Authors :
Khaki, Saeed
Aditya, Akhouri Abhinav
Karnin, Zohar
Ma, Lan
Pan, Olivia
Chandrashekar, Samarth Marudheri
Publication Year :
2023

Abstract

Drift in machine learning refers to the phenomenon where the statistical properties of data or context, in which the model operates, change over time leading to a decrease in its performance. Therefore, maintaining a constant monitoring process for machine learning model performance is crucial in order to proactively prevent any potential performance regression. However, supervised drift detection methods require human annotation and consequently lead to a longer time to detect and mitigate the drift. In our proposed unsupervised drift detection method, we follow a two step process. Our first step involves encoding a sample of production data as the target distribution, and the model training data as the reference distribution. In the second step, we employ a kernel-based statistical test that utilizes the maximum mean discrepancy (MMD) distance metric to compare the reference and target distributions and estimate any potential drift. Our method also identifies the subset of production data that is the root cause of the drift. The models retrained using these identified high drift samples show improved performance on online customer experience quality metrics.<br />Comment: 8 pages, Accepted in 2023 Amazon Internal Machine Learning Conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.03831
Document Type :
Working Paper