DLOT-Net: A Deep Learning Tool For Outlier Identification

C. Jayaramulu, B. Venkateswarlu
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Abstract

Outlier identification is one of the trending research projects, which is used to detect the normal (important) and abnormal (abusive, unimportant, attack) content presented in the data. So, the automatic outlier detection plays the major role in various applications. However, the conventional methods are failed to provide the maximum accuracy, efficiency due to ineffective classification. Therefore, this work focused on implementation of deep learning-based outlier tool network (DLOT-Net). Initially, Outlier Detection Datasets (ODDS) is considered for simulations, which is preprocessed to remove the missed symbols. Then, the deep learning convolutional neural network (DLCNN) model trained with the preprocessed dataset. During the training process, DLCNN model creates the memory of outliers. Then, for every random test sample, the DLCNN model identifies the normal and abnormal attributes presented in the data using probability comparisons. The simulations conducted on ODDS dataset shows that, the proposed DLOT-Net resulted in superior objective performance as compared to several other outlier detection methods.
一种用于离群值识别的深度学习工具
异常值识别是趋势研究项目之一,用于检测数据中呈现的正常(重要)和异常(滥用、不重要、攻击)内容。因此,异常点自动检测在各种应用中起着重要的作用。然而,传统的分类方法由于分类效果不佳,无法提供最大的准确性和效率。因此,本研究的重点是基于深度学习的离群工具网络(lot - net)的实现。首先,将异常值检测数据集(ODDS)用于模拟,并对其进行预处理以去除缺失的符号。然后,用预处理后的数据集训练深度学习卷积神经网络(DLCNN)模型。在训练过程中,DLCNN模型产生异常值记忆。然后,对于每个随机测试样本,DLCNN模型使用概率比较来识别数据中呈现的正常和异常属性。在ODDS数据集上进行的仿真表明,与其他几种离群值检测方法相比,所提出的lot - net具有更好的客观性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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