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A hybrid training mechanism for applying neural networks to Web-based applications

机译:一种将神经网络应用于基于Web的应用程序的混合训练机制

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This paper proposes a hybrid training neural network and applying it to the accuracy counter (AC) developed previously. The neural network is used for detecting the cheating model for abnormal browsing behaviors performed by users in the conflicting environment. The most significant issue, training, should be taken into consideration while we are applying the neural network to Web-based applications such as the accuracy counter. Therefore, we design a hybrid Web based training mechanism for neural networks to deal with this kind of training problem. Finally, we also find out that the AC's block rate for detecting the abnormal browsing behaviors is increasing from 61% (rule-based) to 76% (neural networks with hybrid training mechanism) in the efficient and acceptable training period.
机译:本文提出了一种混合训练神经网络,并将其应用于先前开发的精度计数器(AC)。神经网络用于检测用户在冲突环境中执行的异常浏览行为的作弊模型。在将神经网络应用于基于Web的应用程序(如精度计数器)时,应考虑最重要的问题,即培训。因此,我们设计了一种基于混合Web的神经网络训练机制来处理这种训练问题。最后,我们还发现,在有效且可接受的训练期间,用于检测异常浏览行为的AC阻止率从61%(基于规则)提高到76%(具有混合训练机制的神经网络)。

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