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Truthiness: Challenges Associated with Employing Machine Learning on Neurophysiological Sensor Data

机译:真实性:在神经生理传感器数据上采用机器学习带来的挑战

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The use of neurophysiological sensors in HCI research is increasing in use and sophistication, largely because such sensors offer the potential benefit of providing "ground truth" in studies, and also because they are expected to underpin future adaptive systems. Sensors have shown significant promise in the efforts to develop measurements to help determine users' mental and emotional states in real-time, allowing the system to use that information to adjust user experience. Most of the sensors used generate a substantial amount of data, a high dimensionality and volume of data that requires analysis using powerful machine learning algorithms. However, in the process of developing machine learning algorithms to make sense of the data and subject's mental or emotional state under experimental conditions, researchers often rely on existing and imperfect measures to provide the "ground truth" needed to train the algorithms. In this paper, we highlight the different ways in which researchers try to establish ground truth and the strengths and limitations of those approaches. The paper concludes with several suggestions and specific areas that require more discussion.
机译:在HCI研究中,神经生理学传感器的使用和复杂性正在增加,这主要是因为此类传感器具有在研究中提供“地面真理”的潜在优势,并且还因为它们有望支撑未来的自适应系统。传感器在开发测量以帮助实时确定用户的心理和情绪状态的努力中显示出巨大的希望,从而使系统能够使用该信息来调整用户体验。使用的大多数传感器都会生成大量数据,高维度和大量数据,需要使用强大的机器学习算法进行分析。但是,在开发机器学习算法以在实验条件下理解数据和受试者的心理或情绪状态的过程中,研究人员经常依靠现有的和不完善的措施来提供训练算法所需的“基础事实”。在本文中,我们重点介绍了研究人员尝试建立地面真理的不同方法,以及这些方法的优点和局限性。本文最后提出了一些建议和需要进一步讨论的特定领域。

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