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Lightly trained support vector data description for novelty detection

机译:训练有素的支持向量数据描述,用于新颖性检测

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Anomaly (or outlier) detection is well researched objective in data mining due to its importance and inherent challenges. An outlier could be the key discovery to be made from large datasets and the insights gathered from them could be of significance in a wide variety of domains like information security, business intelligence, clinical decision support, financial monitoring etc. Recently, Support Vector Data Description (SVDD) driven approaches are shown as having good predictive accuracy. This paper proposes a novel low-complexity anomaly detection algorithm based on Support Vector Data Description (SVDD). The proposed algorithm reduces the complexity by avoiding the calculation of Lagrange multipliers of an objective function, instead locates an approximate pre-image of the SVDD sphere's center, within the input space itself. The crux of the training algorithm is a gradient descent of the primal objective function using Simultaneous Perturbation Stochastic Approximation (SPSA). Experiments using datasets obtained from UCI machine learning repository have demonstrated that the accuracies of the proposed approach are comparable while the training time is much lesser than Classical SVDD. (C) 2017 Elsevier Ltd. All rights reserved.
机译:由于异常(或异常值)检测的重要性和固有的挑战,因此在数据挖掘中是研究充分的目标。离群值可能是从大型数据集获取的关键发现,并且从它们中收集的见解在信息安全,商业智能,临床决策支持,财务监控等广泛领域中都可能具有重要意义。最近,支持向量数据描述(SVDD)驱动的方法显示具有良好的预测准确性。提出了一种基于支持向量数据描述(SVDD)的低复杂度异常检测算法。所提出的算法通过避免计算目标函数的拉格朗日乘数来降低复杂度,而是在输入空间本身内定位SVDD球中心的近似原像。训练算法的关键是使用同时扰动随机逼近(SPSA)的原始目标函数的梯度下降。使用从UCI机器学习存储库获得的数据集进行的实验表明,该方法的准确性是可比的,而训练时间却比经典SVDD少得多。 (C)2017 Elsevier Ltd.保留所有权利。

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