A fundamental problem in the field of unsupervised machine learning is the detection of anomalies corresponding to rare and unusual observations of interest; reasons include for their rejection, accommodation or further investigation. Anomalies are intuitively understood to be something unusual or inconsistent, whose occurrence sparks immediate attention. More formally anomalies are those observations-under appropriate random variable modelling-whose expectation of occurrence with respect to a grouping of prior interest is less than one; such a definition and understanding has been used to develop the parameter-free perception anomaly detection algorithm. The present work seeks to establish important and practical connections between the approach used by the perception algorithm and prior decades of research in neurophysiology and computational neuroscience; particularly that of information processing in the retina and visual cortex. The algorithm is conceptualised as a neuron model which forms the kernel of an unsupervised neural network that learns to signal unexpected observations as anomalies. Both the network and neuron display properties observed in biological processes including: immediate intelligence; parallel processing; redundancy; global degradation; contrast invariance; parameter-free computation, dynamic thresholds and non-linear processing. A robust and accurate model for anomaly detection in univariate and multivariate data is built using this network as a concrete application.
翻译:在未受监督的机器学习领域,一个根本的问题是发现与罕见和异常的兴趣观测相对应的异常现象;原因包括拒绝、住宿或进一步调查;异常现象被直觉理解为不寻常或不一致,其发生立即引起注意。更正式的异常现象是那些在适当的随机随机建模下观测的异常现象,这些观察者预期会发生与先前有兴趣的一组有关;这种定义和理解已被用于开发无参数的感知异常探测算法。目前的工作力求在神经生理学和计算神经科学的认知算法所采用的方法与过去几十年的研究方法之间建立重要和实际的联系;特别是视线和视觉皮层的信息处理方法。这种算法被概念化为一个神经模型,形成一个不受监督的神经网络的核心,该神经网络学会将意外观察作为异常现象进行信号。网络和神经显示在生物过程中观察到的特性包括:即时情报;平行处理;冗余;全球退化;差异对比;无参数计算、动态阈值和非线性处理。一个牢固和准确的网络是用来在不测反常态情况下建立多式的模型。