On rater reliability and agreement based dynamic active learning

Yue Zhang, E. Coutinho, Björn Schuller, Zixing Zhang, M. Adam
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引用次数: 17

Abstract

In this paper, we propose two novel Dynamic Active Learning (DAL) methods with the aim of ultimately reducing the costly human labelling work for subjective tasks such as speech emotion recognition. Compared to conventional Active Learning (AL) algorithms, the proposed DAL approaches employ a highly efficient adaptive query strategy that minimises the number of annotations through three advancements. First, we shift from the standard majority voting procedure, in which unlabelled instances are annotated by a fixed number of raters, to an agreement-based annotation technique that dynamically determines how many human annotators are required to label a selected instance. Second, we introduce the concept of the order-based DAL algorithm by considering rater reliability and inter-rater agreement. Third, a highly dynamic development trend is successfully implemented by upgrading the agreement levels depending on the prediction uncertainty. In extensive experiments on standardised test-beds, we show that the new dynamic methods significantly improve the efficiency of the existing AL algorithms by reducing human labelling effort up to 85.41%, while achieving the same classification accuracy. Thus, the enhanced DAL derivations opens up high-potential research directions for the utmost exploitation of unlabelled data.
基于协议的动态主动学习的可靠性研究
在本文中,我们提出了两种新的动态主动学习(DAL)方法,旨在最终减少语音情感识别等主观任务中昂贵的人工标记工作。与传统的主动学习(AL)算法相比,本文提出的DAL方法采用了一种高效的自适应查询策略,通过三个改进将注释的数量降至最低。首先,我们从标准的多数投票过程(其中由固定数量的评分者对未标记的实例进行注释)转变为基于协议的注释技术,该技术动态地决定需要多少人对选定的实例进行注释。其次,我们引入了基于顺序的DAL算法的概念,考虑了分级可靠性和分级间一致性。第三,根据预测不确定性,通过提升协议级别,成功实现了高度动态的发展趋势。在标准化试验台的大量实验中,我们表明,新的动态方法显著提高了现有人工智能算法的效率,在达到相同的分类精度的同时,将人工标记的工作量减少了85.41%。因此,增强的DAL衍生为最大限度地利用未标记数据开辟了高潜力的研究方向。
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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