Dynamic batch mode active learning

Shayok Chakraborty, V. Balasubramanian, S. Panchanathan
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引用次数: 19

Abstract

Active learning techniques have gained popularity to reduce human effort in labeling data instances for inducing a classifier. When faced with large amounts of unlabeled data, such algorithms automatically identify the exemplar and representative instances to be selected for manual annotation. More recently, there have been attempts towards a batch mode form of active learning, where a batch of data points is simultaneously selected from an unlabeled set. Real-world applications require adaptive approaches for batch selection in active learning. However, existing work in this field has primarily been heuristic and static. In this work, we propose a novel optimization-based framework for dynamic batch mode active learning, where the batch size as well as the selection criteria are combined in a single formulation. The solution procedure has the same computational complexity as existing state-of-the-art static batch mode active learning techniques. Our results on four challenging biometric datasets portray the efficacy of the proposed framework and also certify the potential of this approach in being used for real world biometric recognition applications.
动态批处理模式主动学习
主动学习技术已经得到普及,以减少人类在标记数据实例以诱导分类器方面的努力。当面对大量未标记的数据时,这种算法自动识别要选择的范例和代表性实例进行手动注释。最近,有人尝试了一种批量模式的主动学习形式,其中一批数据点同时从未标记的集合中选择。实际应用需要主动学习中批量选择的自适应方法。然而,这一领域的现有工作主要是启发式的和静态的。在这项工作中,我们提出了一个新的基于优化的动态批量模式主动学习框架,其中批量大小和选择标准被组合在一个单一的公式中。求解过程的计算复杂度与现有最先进的静态批处理模式主动学习技术相同。我们在四个具有挑战性的生物特征数据集上的结果描绘了所提出的框架的有效性,并证明了这种方法在用于现实世界生物特征识别应用中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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