CGSA优化LSTM自动编码器进行离群点检测

Q2 Computer Science
Chigurupati Ravi Swaroop, K. Raja
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引用次数: 1

摘要

近年来,异常点检测因其广泛的应用受到了机器学习技术的广泛关注。考虑到输入数据的分布特性和大维度,异常值检测成为一个具有挑战性的问题。鲁棒的异常值检测系统对于无标记数据的数据模式预测至关重要。本研究提出了一种基于长短期记忆(LSTM)叠加自编码器的离群值预测方法。利用混沌引力搜索算法(CGSA)对超参数进行优化,提高了异常点检测的检测精度。在提出的离群值检测过程中,CGSA最大限度地减少了训练损失,提高了检测精度。离群值检测中的自编码器将输入转换为潜在空间表示,生成原始输入序列。学习参数的参与计算和最小化输入和生成序列之间的误差。提出的工作进行了实验,并与最近研究的最先进的方法进行了比较。采用该方法进行异常值预测,准确率为98.6%,灵敏度为96.1%,特异性为97.8%,g均值为96%,曲线下面积(AUC)为0.935,准确率为92.3%。此外,异常点检测误差最小,表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CGSA optimized LSTM auto encoder for outlier detection
In recent years, outlier detection has attained great attention with machine learning techniques due to its wide range of applications. By considering the input data’s distributive nature and large dimensionality, outlier detection becomes a challenging issue. Robust outlier detection systems are crucial for data pattern prediction without labeled data. This research develops a novel approach based on stacking auto encoders over Long-Short Term Memory (LSTM) for outlier prediction. The detection accuracy of outlier detection is improved with the hyperparameters optimized with the Chaotic Gravitational Search Algorithm (CGSA). CGSA minimizes the training loss with enhanced detection accuracy in the proposed outlier detection process. The auto encoder in outlier detection transforms the input into a latent space representation to generate the original input sequence. The involvement of learning parameters computes and minimizes the errors between input and generated sequences. The proposed work is experimented and compared with state-of-the-art approaches of recent research. Using the proposed approach, the performance of outlier prediction is improved with an accuracy of98.6%, sensitivity of 96.1%, specificity of 97.8%, G-mean of 96%, Area Under Curve (AUC) of 0.935, Hit rate of 92.3%. Also, the outlier detection errors are minimized, showing the proposed approach’s efficiency.
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来源期刊
International Journal of Computers and Applications
International Journal of Computers and Applications Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
4.70
自引率
0.00%
发文量
20
期刊介绍: The International Journal of Computers and Applications (IJCA) is a unique platform for publishing novel ideas, research outcomes and fundamental advances in all aspects of Computer Science, Computer Engineering, and Computer Applications. This is a peer-reviewed international journal with a vision to provide the academic and industrial community a platform for presenting original research ideas and applications. IJCA welcomes four special types of papers in addition to the regular research papers within its scope: (a) Papers for which all results could be easily reproducible. For such papers, the authors will be asked to upload "instructions for reproduction'''', possibly with the source codes or stable URLs (from where the codes could be downloaded). (b) Papers with negative results. For such papers, the experimental setting and negative results must be presented in detail. Also, why the negative results are important for the research community must be explained clearly. The rationale behind this kind of paper is that this would help researchers choose the correct approaches to solve problems and avoid the (already worked out) failed approaches. (c) Detailed report, case study and literature review articles about innovative software / hardware, new technology, high impact computer applications and future development with sufficient background and subject coverage. (d) Special issue papers focussing on a particular theme with significant importance or papers selected from a relevant conference with sufficient improvement and new material to differentiate from the papers published in a conference proceedings.
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