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Blackmailer or Consumer? A Character-level CNN Approach for Identifying Malicious Complaint Behaviors

机译:勒索还是消费者?字符级CNN识别恶意投诉行为的方法

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Blackmailers are becoming a serious Ecommerce security problem in China. They use the threat of complaining in an extortion ploy which is disrupting normal business order and causing interference in law enforcement and justice. This paper proposed a character-level CNN approach, named DeepDetector, to identify malicious complaint behaviors. DeepDetector was a simple CNN with one layer of convolution on top of character vectors obtained from lookup table. The experimental results showed that the AUC and F1 score of DeepDetector were respectively 97.32% and 96.00%. Both higher than that of RNN and bag-of-words, bag-of-n-grams model using machine learning method like Random Forest or XGBoost as classifier. Based on the real-world dataset of “National 12358 price regulation platform of China”, the data-driven experimental results indicated the effectiveness and efficiency of DeepDetector. Finally, the model was implemented in the whole unlabeled dataset ranging from Apr 1st, 2015 to Apr 1st, 2019 to identify malicious complaint behaviors. We analyzed the behavioral patterns and gathering area of E-commerce blackmailers in detail. Our study is useful for market regulators to identify E-commerce blackmailers and allocate supervision resources.
机译:敲诈者正在成为中国一个严重的电子商务安全问题。他们利用勒索手段进行投诉的威胁,破坏了正常的商业秩序,并干扰了执法和司法。本文提出了一种名为DeepDetector的字符级CNN方法,以识别恶意投诉行为。 DeepDetector是一个简单的CNN,在从查找表获得的字符向量之上具有一层卷积。实验结果表明,DeepDetector的AUC和F1分数分别为97.32%和96.00%。使用随机学习或XGBoost等机器学习方法进行分类的N-​​grams袋模型均高于RNN和词袋模型。基于“中国国家12358价格调节平台”的真实数据集,数据驱动的实验结果表明DeepDetector的有效性和效率。最后,该模型已在4月1日开始的所有未标记数据集中实施 st ,2015年至4月1日 st ,2019年,以识别恶意投诉行为。我们详细分析了电子商务勒索者的行为模式和聚集区域。我们的研究对于市场监管者识别电子商务勒索者和分配监管资源很有用。

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