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High-level online user attribution model based on human Polychronic-Monochronic tendency

机译:基于人类多时态-趋势趋势的高级在线用户归因模型

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User attribution process based on human inherent dynamics and preference is one area of research that is capable of elucidating and capturing human dynamics on the Internet. Prior works on user attribution concentrated on behavioral biometrics, 1-to-1 user identification process without consideration for individual preference and human inherent temporal tendencies, which is capable of providing a discriminatory baseline for online users, as well as providing a higher level classification framework for novel user attribution. To address these limitations, the study developed a temporal model, which comprises the human Polyphasia tendency based on Polychronic-Monochronic tendency scale measurement instrument and the extraction of unique human-centric features from server-side network traffic of 48 active users. Several machine-learning algorithms were applied to observe distinct pattern among the classes of the Polyphasia tendency, through which a logistic model tree was observed to provide higher classification accuracy for a 1-to-N user attribution process. The study further developed a high-level attribution model for higher-level user attribution process. The result from this study is relevant in online profiling process, forensic identification and profiling process, e-learning profiling process as well as in social network profiling process.
机译:基于人类固有动态和偏好的用户归因过程是能够阐明和捕捉互联网上人类动态的研究领域之一。先前关于用户归因的研究集中于行为生物特征识别,一对一用户识别过程,而无需考虑个人偏好和人类固有的时空倾向,这能够为在线用户提供歧视性基线,并提供更高级别的分类框架新颖的用户归因。为了解决这些局限性,该研究开发了一个时间模型,该模型包括基于多时-单时趋势量表测量工具的人类多相倾向趋势,以及从48位活跃用户的服务器端网络流量中提取的以人为本的独特功能。应用了几种机器学习算法来观察多相倾向趋势类别之间的不同模式,通过观察逻辑模型树可以为1-to-N用户归因过程提供更高的分类精度。该研究进一步为高级用户归因流程开发了高级归因模型。这项研究的结果与在线分析过程,法医鉴定和分析过程,电子学习分析过程以及社交网络分析过程有关。

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