A Marketplace Price Anomaly Detection System at Scale
- URL: http://arxiv.org/abs/2310.04367v2
- Date: Mon, 9 Oct 2023 17:06:05 GMT
- Title: A Marketplace Price Anomaly Detection System at Scale
- Authors: Akshit Sarpal, Qiwen Kang, Fangping Huang, Yang Song, Lijie Wan
- Abstract summary: MoatPlus is a scalable price anomaly detection framework for a growing marketplace platform.
We build an ensemble of models to detect irregularities in price-based features.
Our approach improves precise anchor coverage by up to 46.6% in high-vulnerability item subsets.
- Score: 3.8632181427836945
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Online marketplaces execute large volume of price updates that are initiated
by individual marketplace sellers each day on the platform. This price
democratization comes with increasing challenges with data quality. Lack of
centralized guardrails that are available for a traditional online retailer
causes a higher likelihood for inaccurate prices to get published on the
website, leading to poor customer experience and potential for revenue loss. We
present MoatPlus (Masked Optimal Anchors using Trees, Proximity-based Labeling
and Unsupervised Statistical-features), a scalable price anomaly detection
framework for a growing marketplace platform. The goal is to leverage proximity
and historical price trends from unsupervised statistical features to generate
an upper price bound. We build an ensemble of models to detect irregularities
in price-based features, exclude irregular features and use optimized weighting
scheme to build a reliable price bound in real-time pricing pipeline. We
observed that our approach improves precise anchor coverage by up to 46.6% in
high-vulnerability item subsets
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