重构流行语音应用程序的用户体验

Adriana Caione, A. Fiore, L. Mainetti, Luigi Manco, R. Vergallo
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引用次数: 1

摘要

谷歌Assistant和亚马逊Alexa等商业语音服务正变得非常受欢迎。虽然应用于听觉通道的自然语言处理(NLP)和人工智能(AI)技术提供了高质量的语音识别,但语音通道仍然缺乏设计用户体验的良好方法。例如,亚马逊Alexa团队建议,通过在幕后与测试用户交谈,假装是机器,来收集Alexa技能的信息模型。在我们看来,这种自底向上的策略是无效的,因为它将用户体验过度适应于非常具体的情况。自上而下的方法也可以在看不见和不可预测的情况下提供正确的答案。我们的工作旨在提出一种新颖的模型驱动方法,允许作者从头开始设计整个声音UX,并在将其移植到听觉通道之前重新思考现有的视觉UX。我们的方法,本质上是自上而下的,是基于听觉IDM的,这是一种在2000年初为屏幕阅读器建模而设计的用户体验设计方法。在本文中,我们重构了Spotify Alexa技能,以证明听觉IDM在设计声音ux时的有效性。Spotify在Alexa上的体验是相当原始的,并不能反映桌面应用程序的丰富性。一个原型目前正在开发中,目前和将来的语音技能之间的比较结果将是未来工作的主题。
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Refactoring the UX of a popular voice application
Commercial voice services like Google Assistant and Amazon Alexa are reaching extreme popularity. While Natural Language Processing (NLP) and Artificial Intelligence (AI) techniques -- applied to the aural channel -- deliver high quality voice recognition, the voice channel still lacks a good methodology to design user experiences. For instance, The Amazon Alexa team suggests gathering the information model of Alexa skills by talking with test users behind a curtain, pretending to be the machine. In our opinion, such kind of bottom-up strategy is not effective because it overfits the UX to very specific cases. A top-down approach could provide the right answer also in unseen and unpredictable situations instead. Our work aims to propose a novel model driven approach that allows authors to design from scratch the overall vocal UX as well as rethink existing visual UX before porting them to the aural channel. Our approach, which is inherently top-down, is based on Aural IDM, an UX design method thought for screen readers modelling in the early '00. In this paper we've refactored the Spotify Alexa skill to demonstrate the validity of Aural IDM for designing vocal UXs. The experience of Spotify on Alexa is quite primordial and does not reflect the richness of the desktop app. A prototype is currently under development, and the result of a comparison between the AS-IS and TO-BE voice skill will be subject of a future work.
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