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首页> 外文期刊>International Journal of Engineering & Technology >A fusion fuzzy model for detecting phony accounts in social networks
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A fusion fuzzy model for detecting phony accounts in social networks

机译:社交网络中用于检测语音帐户的融合模糊模型

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In online social network’s phony account detection is one of the major task among the ability of genuine user from forged user account. The fundamental objective of detection of phony account framework is to detect fake account and removal technique in Social network user sites. This work concentrates on detection of phony account in which it depends on normal basis framework, transformative Algorithms and fuzzy technique. Initially, the most essential attributes including personal attributes, comparability techniques and various real user review, tweets, or comments are extricated. A direct blend of these attributes demonstrates the significance of each reviews tweets comments etc. To compute closeness measure, a consolidated strategy in view of arti?cial honey bee state Algorithm and fuzzy technique are utilized. Second approach is proposed to alter the best weights of the normal user attributes utilizing the social network activities/transaction and inherited Algorithm. Finally, a normal rank rationale framework is utilized to calculate the ?nal scoring of normal user activities. The decision making of proposed approach to find phony account are variation with existing techniques user behavioral analysis using data sets and machine learning techniques such as crowdflower_sample and genuine_accounts_sample dataset of facebook and Twitter. The outcomes demonstrate that proposed strategy overcomes the previously mentioned strategies.
机译:在在线社交网络中,通过伪造用户帐户检测真实用户的能力是其中的主要任务之一。欺诈帐户框架检测的基本目标是检测社交网络用户站点中的虚假帐户和清除技术。这项工作集中在对欺诈帐户的检测上,它依赖于正常基础框架,转换算法和模糊技术。最初,最基本的属性(包括个人属性,可比性技术和各种实际用户评论,推文或评论)被提取。这些属性的直接融合说明了每个评论,推文,评论等的重要性。为了计算接近度,使用了基于人工蜜蜂状态算法和模糊技术的合并策略。提出了第二种方法,利用社交网络活动/交易和继承的算法来更改正常用户属性的最佳权重。最后,使用正常等级基本原理框架来计算正常用户活动的最终评分。所建议的查找电话帐户的方法的决策是与现有技术(使用数据集和机器学习技术,例如facebook和Twitter的crowdflower_sample和authentic_accounts_sample数据集)的用户行为分析相异的。结果表明,提出的策略克服了前面提到的策略。

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