Early Rug Pull Warning for BSC Meme Tokens via Multi-Granularity Wash-Trading Pattern Profiling
arXiv cs.AI / 3/17/2026
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Key Points
- The paper proposes an end-to-end rug-pull warning framework for BSC meme tokens to address scarce anomalies, incomplete labels, and limited interpretability in DeFi risk detection.
- It constructs 12 token-level features from three wash-trading patterns (Self, Matched, Circular) by integrating transaction-, address-, and flow-level signals into risk vectors for risk assessment.
- In experiments on 7 tokens and 33,242 records, Random Forest outperformed Logistic Regression with AUC 0.9098, PR-AUC 0.9185, and F1 0.7429, with trade-level features driving performance and address-level features offering stable gains.
- The framework demonstrates actionable early-warning potential with a mean lead time of 3.8133 hours and an error profile (FP=1, FN=8), characterizing it as a high-precision screener rather than a high-recall alarm engine, plus executable pipeline and validation contributions.
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