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Metric Learning based Framework for Streaming Classification with Concept Evolution

机译:基于度量学习的概念演变流分类的框架

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A primary challenge in label prediction over a stream of continuously occurring data instances is the emergence of instances belonging to unknown or novel classes. It is imperative to detect such novel-class instances quickly along the stream for a superior prediction performance. Existing techniques that perform novel class detection typically employ a clustering-based mechanism by observing that instances belonging to the same class (intra-class) are closer to each other (cohesion) than inter-class samples (separation). While this is generally true in low dimensional feature spaces, we observe that such a property is not intrinsic among instances in complex real-world high-dimensional feature space such as images and text. In this paper, we focus on addressing this key challenge that negatively affects prediction performance of a data stream classifier. Concretely, we develop a metric learning mechanism that transforms high-dimensional features into a latent feature space to make above property holds true. Unlike existing metric learning method which only focus on classification task, our approach address the novel class detection and stream classification simultaneously. We showcase a framework along the stream to achieve larger prediction performance compared to existing state-of-the-art detection techniques while using the least amount of labeled data during detection. Extensive experimental results on simulated and real-world stream demonstrate the effectiveness of our approach.
机译:在连续发生的数据实例流中标记预测中的主要挑战是属于未知或新类的情况的出现。必须沿着流沿着流迅速检测此类新型阶级实例以进行卓越的预测性能。执行新类检测的现有技术通常通过观察属于同一类(帧内)的实例彼此更靠近(间隙)而不是类别的样本(分离)来使用基于聚类的机制。虽然这在低维特征空间中通常是真实的,但我们观察到这样的属性在复杂的现实世界高度特征空间(如图像和文本)中的情况下的内在。在本文中,我们专注于解决对数据流分类器的预测性能产生负面影响的这种关键挑战。具体地,我们开发了一个公制学习机制,将高维功能转换为潜在的特征空间,以使其成为属性的持续特征空间。与只关注分类任务的现有度量学习方法不同,我们的方法同时解决新颖的类检测和流分类。我们展示沿着流的框架,以实现与现有的最先进的检测技术相比,在使用期间使用最少的标记数据的现有最先进的检测技术来实现更大的预测性能。模拟和实际流的广泛实验结果证明了我们方法的有效性。

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