Anomaly Detection for an E-commerce Pricing System
Online retailers execute a very large number of price updates when compared to brick-and-mortar stores. Even a few mis-priced items can have a significant business impact and result in a loss of customer trust. Early detection of anomalies in an automated real-time fashion is an important part of su...
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Zusammenfassung: | Online retailers execute a very large number of price updates when compared
to brick-and-mortar stores. Even a few mis-priced items can have a significant
business impact and result in a loss of customer trust. Early detection of
anomalies in an automated real-time fashion is an important part of such a
pricing system. In this paper, we describe unsupervised and supervised anomaly
detection approaches we developed and deployed for a large-scale online pricing
system at Walmart. Our system detects anomalies both in batch and real-time
streaming settings, and the items flagged are reviewed and actioned based on
priority and business impact. We found that having the right architecture
design was critical to facilitate model performance at scale, and business
impact and speed were important factors influencing model selection, parameter
choice, and prioritization in a production environment for a large-scale
system. We conducted analyses on the performance of various approaches on a
test set using real-world retail data and fully deployed our approach into
production. We found that our approach was able to detect the most important
anomalies with high precision. |
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DOI: | 10.48550/arxiv.1902.09566 |