To demonstrate the value of machine learning based smart health technologies, researchers have to deploy their solutions into complex real-world environments with real participants. This gives rise to many, oftentimes unexpected, challenges for creating technology in a lab environment that will work when deployed in real home environments. In other words, like more mature disciplines, we need solutions for what can be done at development time to increase success at deployment time. To illustrate an approach and solutions, we use an example of an ongoing project that is a pipeline of voice based machine learning solutions that detects the anger and verbal conflicts of the participants. For anonymity, we call it the XYZ system. XYZ is a smart health technology because by notifying the participants of their anger, it encourages the participants to better manage their emotions. This is important because being able to recognize one's emotions is the first step to better managing one's anger. XYZ was deployed in 6 homes for 4 months each and monitors the emotion of the caregiver of a dementia patient. In this paper we demonstrate some of the necessary steps to be accomplished during the development stage to increase deployment time success, and show where continued work is still necessary. Note that the complex environments arise both from the physical world and from complex human behavior.
翻译:为了展示基于机器学习的智能健康技术的价值,研究人员必须将其解决方案运用到复杂的现实世界环境中,并有真正的参与者参与。这导致在实验室环境中创造技术方面出现许多(往往出乎意料的)挑战,当在真正的家庭环境中部署时,在实验室环境中创造技术将发挥作用。换句话说,像更成熟的学科一样,我们需要在开发时找到解决方案,以便在部署时提高成功率。为了说明一种方法和解决方案,我们以一个正在进行的项目为例,该项目是一个基于声音的机器学习解决方案管道,用于检测参与者的愤怒和言语冲突。关于匿名,我们称之为XYZ系统。XYZ是一种智能的卫生技术,因为向参与者通报他们的愤怒,它鼓励参与者更好地管理他们的情绪。这很重要,因为能够识别一个人的情绪是更好地管理一个人的愤怒的第一步。 XYZ被部署在6个家庭,每个4个月,并监测痴呆病人护理者的情感。在这个文件中,我们展示了在发展阶段需要完成的一些必要步骤,以增加部署成功的时间,并显示从复杂的世界中产生哪些持续复杂的工作。