基于增量多项式分类器和极值理论的半监督学习

Husam Al-Behadili, A. Grumpe, C. Wohler
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引用次数: 2

摘要

在许多现实世界的应用中,数据是连续流的,这导致了各种各样的问题,例如无限长的数据流、概念漂移、在线或实时分类以及噪声或离群样本。为了克服这些问题,分类器应该不断更新,并且应该具有检测异常值的能力。由于数据集的大小随着数据流的持续时间而增长,分类器应该增量更新,而不需要存储整个训练集。我们提出了一个多项式分类器,该分类器使用极值理论结合回归技术得出的置信带区间有效地检测异常值。所有参数都是增量更新的,而不需要旧数据。这种方法使分类器适合在线分类,因为更新的处理时间相对于处理整个训练数据集所需的时间可以忽略不计。相对于其他仅适用于一类系统的新颖性检测算法,该方法可以适用于多类系统。在一个不平衡的多类手势数据库上对该算法进行了评估。将该方法与支持向量数据描述分类器进行了比较,结果表明该方法具有更好的性能。
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Semi-supervised Learning Using Incremental Polynomial Classifier and Extreme Value Theory
The data in many real-world applications are streamed continuously which causes a variety of problems, e.g. Infinitely long data streams, concept drift, on-line or real-time classification and noise or outlier samples. To overcome these problems, the classifier should be updated continuously and it should have the ability to detect outliers. Since the size of the data set is growing with the duration of the data stream, the classifier should be updated incrementally without storing the whole training set. We present a polynomial classifier that efficiently detects the outliers using the extreme value theory in combination with confidence band intervals derived from regression techniques. All parameters are updated incrementally without requiring the old data. This approach makes the classifier suitable for on-line classification, since the processing time of the update is negligible with respect to the time required for processing the full training data set. In contrast to other novelty detection algorithms which work only with one-class systems, the proposed method can be applied in multi-class systems. The proposed algorithm is evaluated on an unbalanced multi-class gesture database. A comparison of the proposed method with the support vector data description classifier shows that it has superior properties.
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