Dynamic Decision Boundary for One-class Classifiers applied to non-uniformly Sampled Data

Riccardo La Grassa, I. Gallo, Nicola Landro
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引用次数: 2

Abstract

A typical issue in Pattern Recognition is the nonuniformly sampled data, which modifies the general performance and capability of machine learning algorithms to make accurate predictions. Generally, the data is considered non-uniformly sampled when in a specific area of data space, they are not enough, leading us to misclassification problems. This issue cut down the goal of the one-class classifiers decreasing their performance. In this paper, we propose a one-class classifier based on the minimum spanning tree with a dynamic decision boundary (OCdmst) to make good prediction also in the case we have non-uniformly sampled data. To prove the effectiveness and robustness of our approach we compare with the most recent one-class classifier reaching the state-of-the-art in most of them. The code and all results are available online https://gitlab.com/artelabsuper/ocdmst.
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应用于非均匀采样数据的单类分类器动态决策边界
模式识别中的一个典型问题是非均匀采样数据,这改变了机器学习算法的一般性能和能力,无法做出准确的预测。通常,当数据空间的特定区域不够时,数据被认为是非均匀采样的,从而导致我们出现误分类问题。这个问题降低了单类分类器的目标,降低了它们的性能。本文提出了一种基于最小生成树的单类分类器,该分类器具有动态决策边界(OCdmst),在非均匀采样数据的情况下也能很好地进行预测。为了证明我们方法的有效性和鲁棒性,我们与最新的单类分类器进行了比较,其中大多数分类器达到了最先进的水平。代码和所有结果都可以在线获得https://gitlab.com/artelabsuper/ocdmst。
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