Early Rug Pull Warning for BSC Meme Tokens via Multi-Granularity Wash-Trading Pattern Profiling
Dingding Cao, Bianbian Jiao, Jingzong Yang, Yujing Zhong, Wei Yang

TL;DR
This paper presents a multi-granularity wash-trading pattern profiling framework for early warning of rug pulls in BSC meme tokens, combining behavioral features and supervised models to improve detection accuracy and interpretability.
Contribution
It introduces a reproducible warning pipeline with novel wash-trading features, validated under weak supervision, and provides deployment-oriented insights like lead-time and error analysis.
Findings
Random Forest achieves high AUC of 0.9098
Trade-level features are the main performance drivers
Model offers an average lead time of 3.81 hours for warnings
Abstract
The high-frequency issuance and short-cycle speculation of meme tokens in decentralized finance (DeFi) have significantly amplified rug-pull risk. Existing approaches still struggle to provide stable early warning under scarce anomalies, incomplete labels, and limited interpretability. To address this issue, an end-to-end warning framework is proposed for BSC meme tokens, consisting of four stages: dataset construction and labeling, wash-trading pattern feature modeling, risk prediction, and error analysis. Methodologically, 12 token-level behavioral features are constructed based on three wash-trading patterns (Self, Matched, and Circular), unifying transaction-, address-, and flow-level signals into risk vectors. Supervised models are then employed to output warning scores and alert decisions. Under the current setting (7 tokens, 33,242 records), Random Forest outperforms Logistic…
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Taxonomy
TopicsFinancial Markets and Investment Strategies · Stock Market Forecasting Methods · Blockchain Technology Applications and Security
