基于一致性的动态主动学习及其在口语互动情绪识别中的应用

Yue Zhang, E. Coutinho, Zixing Zhang, C. Quan, Björn Schuller
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引用次数: 21

摘要

在这篇文章中,我们提出了一种新的主动学习(AL)方法——动态主动学习(DAL)——其目标是减少建模主观任务(如口头互动中的情绪识别)所需的昂贵的人类标签工作。该方法实现了一种自适应查询策略,通过决定每个实例是由机器自动标记还是由人工手动标记,以及需要多少人工注释者,来最大限度地减少人工标记工作。在标准化试验台上进行的大量实验表明,DAL显著提高了传统人工智能的效率,特别是DAL达到了与人工智能相同的分类精度,而人工标注的工作量减少了79.17%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Active Learning Based on Agreement and Applied to Emotion Recognition in Spoken Interactions
In this contribution, we propose a novel method for Active Learning (AL) - Dynamic Active Learning (DAL) - which targets the reduction of the costly human labelling work necessary for modelling subjective tasks such as emotion recognition in spoken interactions. The method implements an adaptive query strategy that minimises the amount of human labelling work by deciding for each instance whether it should automatically be labelled by machine or manually by human, as well as how many human annotators are required. Extensive experiments on standardised test-beds show that DAL significantly improves the efficiency of conventional AL. In particular, DAL achieves the same classification accuracy obtained with AL with up to 79.17% less human annotation effort.
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