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Automatic prediction of fluency in interface-based interviews

机译:基于界面访谈的流利程度自动预测

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In this paper, we provide a computational framework to automatically predict fluency in interface-based employment interviews. Fluency is known to influence the outcome of employment interviews. The interface-based interview setting is useful in assessing and giving feedback to the participants without any human intervention. To this end, we have collected a set of 106 interview videos from graduate students. Three external observers rate the interview videos for the variable of interest i.e., speaking fluency on a five point scale. We define several tasks based on grouping the fluency rating for easy prediction. We build a predictive model by first extracting linguistic and acoustic features automatically and then using machine learning algorithms like Linear Regression, Multi class Support Vector Machine (SVM) and Logistic Regression. We also analyze the role of different features and different categorizations towards characterization of speaking fluency.
机译:在本文中,我们提供了一个计算框架,以自动预测基于界面的就业面试流畅性。众所周知,众所周知,影响就业面试的结果。基于界面的面试设置可用于评估和向参与者提供反馈,而无需任何人为干预。为此,我们从研究生收集了一套106个访谈视频。三个外部观察者利率对利息变量的访谈视频,即发表五分比例的流畅程度。我们根据分组流畅评级来定义多个任务,以便于预测。我们通过自动提取语言和声学功能来构建预测模型,然后使用像线性回归,多类支持向量机(SVM)和Logistic回归等机器学习算法。我们还分析了不同特征和不同分类的作用,以表现出讲话流利程度。

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