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Automatic Detection of Usability Problem Encounters in Think-aloud Sessions

机译:自动检测在思考会话中遇到的可用性问题

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摘要

Think-aloud protocols are a highly valued usability testing method for identifying usability problems. Despite the value of conducting think-aloud usability test sessions, analyzing think-aloud sessions is often time-consuming and labor-intensive. Consequently, previous research has urged the community to develop techniques to support fast-paced analysis. In this work, we took the first step to design and evaluate machine learning (ML) models to automatically detect usability problem encounters based on users' verbalization and speech features in think-aloud sessions. Inspired by recent research that shows subtle patterns in users' verbalizations and speech features tend to occur when they encounter problems, we examined whether these patterns can be utilized to improve the automatic detection of usability problems. We first conducted and recorded think-aloud sessions and then examined the effect of different input features, ML models, test products, and users on usability problem encounters detection. Our work uncovers several technical and user interface design challenges and sets a baseline for automating usability problem detection and integrating such automation into UX practitioners' workflow.
机译:思考 - 大声协议是用于识别可用性问题的高度值可用性测试方法。尽管进行了思考思考的可用性测试会话的价值,但分析思考 - 大声会常常耗时和劳动密集型。因此,先前的研究敦促社区开发技术支持快节奏分析。在这项工作中,我们迈出了第一步设计和评估了机器学习(ML)模型,以自动检测用户的语言和语音功能在思考 - 大声询问中遇到的可用性问题。灵感来自最近的研究,显示用户的语言和语音特征的微妙模式趋于发生在遇到问题时,我们检查了这些模式是否可以用于改善可用性问题的自动检测。我们首先进行并录制思考 - 大声思考,然后检查不同输入功能,ML模型,测试产品和用户对可用性问题的影响遇到检测。我们的工作揭示了几种技术和用户界面设计挑战,并为自动化可用性问题检测和将这种自动化集成到UX从业者的工作流程中的基准。

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