Effect of Modality on Human and Machine Scoring of Presentation Videos

Haley Lepp, C. W. Leong, K. Roohr, Michelle P. Martín‐Raugh, Vikram Ramanarayanan
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引用次数: 2

Abstract

We investigate the effect of observed data modality on human and machine scoring of informative presentations in the context of oral English communication training and assessment. Three sets of raters scored the content of three minute presentations by college students on the basis of either the video, the audio or the text transcript using a custom scoring rubric. We find significant differences between the scores assigned when raters view a transcript or listen to audio recordings in comparison to watching a video of the same presentation, and present an analysis of those differences. Using the human scores, we train machine learning models to score a given presentation using text, audio, and video features separately. We analyze the distribution of machine scores against the modality and label bias we observe in human scores, discuss its implications for machine scoring and recommend best practices for future work in this direction. Our results demonstrate the importance of checking and correcting for bias across different modalities in evaluations of multi-modal performances.
模态对演示视频人机评分的影响
我们研究了在英语口语交流训练和评估的背景下,观察到的数据模式对人类和机器对信息演示的评分的影响。三组评分员根据视频、音频或文本文本,使用自定义评分标准对大学生三分钟演讲的内容进行评分。我们发现,与观看同一演讲的视频相比,评分者在观看成绩单或听录音时所给出的分数存在显著差异,并对这些差异进行了分析。使用人类评分,我们训练机器学习模型分别使用文本、音频和视频特征对给定的演示进行评分。我们分析了机器得分的分布与我们在人类得分中观察到的模态和标签偏差,讨论了它对机器得分的影响,并为这个方向的未来工作推荐了最佳实践。我们的结果证明了在多模态性能评估中检查和纠正不同模态偏差的重要性。
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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