基于幻灯片和音频特征的演讲技巧评估

Gonzalo Luzardo, B. Guamán, K. Chiluiza, Jaime Castells, X. Ochoa
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引用次数: 30

摘要

本文提出了一个简单的评估学生口头报告的质量。它是基于对从448个演讲的音频和数字幻灯片中提取的特征的研究和分析。这项工作的主要目标是自动预测教授在演示评估标题中为不同标准分配的值。使用机器学习方法创建了几个模型,将学生分为两类:高绩效和低绩效。根据幻灯片特征创建的模型准确率高达65%。基于幻灯片的模型最相关的特性是:单词、图像和表格的数量,以及最大字体大小。基于音频的模型达到了69%的准确率,其中音调和填充停顿相关的特征是最重要的。通过这些非常简单的特性获得的相对较高的准确度鼓励了用于改进表示技巧的自动评估工具的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Presentations Skills Based on Slides and Audio Features
This paper proposes a simple estimation of the quality of student oral presentations. It is based on the study and analysis of features extracted from the audio and digital slides of 448 presentations. The main goal of this work is to automatically predict the values assigned by professors to different criteria in a presentation evaluation rubric. Machine Learning methods were used to create several models that classify students in two clusters: high and low performers. The models created from slide features were accurate up to 65%. The most relevant features for the slide-base models were: number of words, images, and tables, and the maximum font size. The audio-based models reached up to 69% of accuracy, with pitch and filled pauses related features being the most significant. The relatively high degrees of accuracy obtained with these very simple features encourage the development of automatic estimation tools for improving presentation skills.
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