Quadratic Neuron-Empowered Heterogeneous Autoencoder for Unsupervised Anomaly Detection

Jing-Xiao Liao;Bo-Jian Hou;Hang-Cheng Dong;Hao Zhang;Xiaoge Zhang;Jinwei Sun;Shiping Zhang;Feng-Lei Fan
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Abstract

Inspired by the complexity and diversity of biological neurons, a quadratic neuron is proposed to replace the inner product in the current neuron with a simplified quadratic function. Employing such a novel type of neurons offers a new perspective on developing deep learning. When analyzing quadratic neurons, we find that there exists a function such that a heterogeneous network can approximate it well with a polynomial number of neurons but a purely conventional or quadratic network needs an exponential number of neurons to achieve the same level of error. Encouraged by this inspiring theoretical result on heterogeneous networks, we directly integrate conventional and quadratic neurons in an autoencoder to make a new type of heterogeneous autoencoders. To our best knowledge, it is the first heterogeneous autoencoder that is made of different types of neurons. Next, we apply the proposed heterogeneous autoencoder to unsupervised anomaly detection (AD) for tabular data and bearing fault signals. The AD faces difficulties such as data unknownness, anomaly feature heterogeneity, and feature unnoticeability, which is suitable for the proposed heterogeneous autoencoder. Its high feature representation ability can characterize a variety of anomaly data (heterogeneity), discriminate the anomaly from the normal (unnoticeability), and accurately learn the distribution of normal samples (unknownness). Experiments show that heterogeneous autoencoders perform competitively compared with other state-of-the-art models.
用于无监督异常检测的四元神经元赋能异构自动编码器
受生物神经元复杂性和多样性的启发,我们提出了一种二次神经元,用简化的二次函数取代当前神经元中的内积。采用这种新型神经元为开发深度学习提供了新的视角。在分析二次方神经元时,我们发现存在这样一个函数:异构网络只需使用多项式数量的神经元就能很好地逼近它,但纯粹的传统或二次方网络则需要指数数量的神经元才能达到相同的误差水平。在这一鼓舞人心的异构网络理论成果的鼓舞下,我们直接将传统神经元和二次神经元整合到自动编码器中,从而制造出一种新型的异构自动编码器。据我们所知,这是第一个由不同类型神经元组成的异构自编码器。接下来,我们将提出的异构自编码器应用于表格数据和轴承故障信号的无监督异常检测(AD)。异常检测面临着数据未知性、异常特征异质性和特征不可察觉性等困难,而这正是所提出的异构自编码器的适用范围。其较高的特征表示能力可以表征各种异常数据(异质性)、区分异常与正常(不可知性)以及准确学习正常样本的分布(未知性)。实验表明,与其他最先进的模型相比,异构自动编码器的表现极具竞争力。
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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CiteScore
7.70
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