社交网络游戏中敏感信息识别的区块链模型

Bai Jie, Duan Yanhui, Lu Tianliang
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摘要

本文研究了社交网络游戏中的敏感信息识别与处理系统。提出了一种基于区块链模式的在线游戏敏感信息实时数据挖掘框架。选择一个大型社交网络游戏聊天室数据库进行测试,使用基于Python的SKLearn库进行数据预处理。通过tensorflow实现模型的训练和验证。结果表明,TextCNN模型在网络游戏情境下的短文本识别准确率比朴素贝叶斯和CNN模型高出5%以上,能够满足大规模网络游戏情境下敏感信息识别的高效率和准确性要求。结论证明基于区块链的网络游戏敏感信息挖掘框架具有联盟链分层管理的优势,分布式账本在信息传播全过程留下痕迹的特点,并通过智能合约和共识机制增强了合同的执行力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blockchain Model of Sensitive Information Identification in Social Online Games
This paper studies the sensitive information recognition and processing system in social online games. A real-time data mining framework for sensitive information on online games in the blockchain mode is proposed. A large-scale social online game chat room database is selected for testing, with SKLearn library based on Python is used for data preprocessing. The model training and verification are implemented through tensorflow. The results show that the accuracy of TextCNN is over 5% higher than that of Naive Bayes and CNN models for short text recognition in online game context, so TextCNN model can meet the requirements for high efficiency and accuracy of sensitive information recognition in large-scale online games. The conclusion proves that the blockchain-based online game sensitive information mining framework has the advantage of alliance chain hierarchical management, the characteristics of the distributed ledgers leaving traces in the whole process of information dissemination, and enhanced contract enforcement through the smart contracts and consensus mechanisms.
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