一种新的异常检测算法与神经网络的比较分析

Srijan Das, Arpita Dutta, Saurav Sharma, Sangharatna Godboley
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引用次数: 6

摘要

异常检测是模式识别中一个重要的研究领域,它主要受分类和聚类问题的影响。本文提出了一种利用正常感知器、松弛准则、均方误差(MSE)和Ho-Kashyap等不同原始代价函数的异常检测算法。将这些准则函数最小化,定位数据空间中的决策边界,从而对正常数据对象和异常数据对象进行分类。作者提出的算法使用了监督分类的概念,尽管它与解决普通的监督分类问题有很大的不同。采用不同的准则函数与神经网络(NN)的精度进行了比较分析,并讨论了它们的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Analysis of a Novel Anomaly Detection Algorithm with Neural Networks
Anomaly Detection is an important research domain of Pattern Recognition due to its effects of classification and clustering problems. In this paper, an anomaly detection algorithm is proposed using different primitive cost functions such as Normal Perceptron, Relaxation Criterion, Mean Square Error (MSE) and Ho-Kashyap. These criterion functions are minimized to locate the decision boundary in the data space so as to classify the normal data objects and the anomalous data objects. The authors proposed algorithm uses the concept of supervised classification, though it is very different from solving normal supervised classification problems. This proposed algorithm using different criterion functions has been compared with the accuracy of the Neural Networks (NN) in order to bring out a comparative analysis between them and discuss some advantages.
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