DriftGuard: A Hierarchical Framework for Concept Drift Detection and Remediation in Supply Chain Forecasting
Shahnawaz Alam, Mohammed Abdul Rahman, Bareera Sadeqa

TL;DR
DriftGuard is a comprehensive framework that detects, explains, and automatically remediates concept drift in supply chain forecasting models, improving accuracy and reducing unnecessary retraining.
Contribution
It introduces an end-to-end hierarchical system combining multiple detection methods, root cause analysis, and targeted model updates for supply chain data.
Findings
Achieves 97.8% detection recall within 4.2 days
Provides up to 417 ROI through targeted remediation
Handles over 30,000 retail time series effectively
Abstract
Supply chain forecasting models degrade over time as real-world conditions change. Promotions shift, consumer preferences evolve, and supply disruptions alter demand patterns, causing what is known as concept drift. This silent degradation leads to stockouts or excess inventory without triggering any system warnings. Current industry practice relies on manual monitoring and scheduled retraining every 3-6 months, which wastes computational resources during stable periods while missing rapid drift events. Existing academic methods focus narrowly on drift detection without addressing diagnosis or remediation, and they ignore the hierarchical structure inherent in supply chain data. What retailers need is an end-to-end system that detects drift early, explains its root causes, and automatically corrects affected models. We propose DriftGuard, a five-module framework that addresses the…
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Taxonomy
TopicsData Stream Mining Techniques · Forecasting Techniques and Applications · Time Series Analysis and Forecasting
