The healthcare landscape is moving from the reactive interventions focused on symptoms treatment to a more proactive prevention, from one-size-fits-all to personalized medicine, and from centralized to distributed paradigms. Wearable IoT devices and novel algorithms for continuous monitoring are essential components of this transition. Hyperdimensional (HD) computing is an emerging ML paradigm inspired by neuroscience research with various aspects interesting for IoT devices and biomedical applications. Here we explore the not yet addressed topic of optimal encoding of spatio-temporal data, such as electroencephalogram (EEG) signals, and all information it entails to the HD vectors. Further, we demonstrate how the HD computing framework can be used to perform feature selection by choosing an adequate encoding. To the best of our knowledge, this is the first approach to performing feature selection using HD computing in the literature. As a result, we believe it can support the ML community to further foster the research in multiple directions related to feature and channel selection, as well as model interpretability.
翻译:保健环境正在从注重症状治疗的被动干预转向更主动的预防,从一刀切到个性化医学,从集中到分布式的范式。 易穿的IOT装置和用于持续监测的新型算法是这一过渡的重要组成部分。 超维(HD)计算是神经科学研究所启发的新兴ML模式,涉及对IOT装置和生物医学应用感兴趣的各个方面。 在这里,我们探索尚未探讨的关于空间时空数据的最佳编码专题,例如电脑图信号,以及它给HD矢量带来的所有信息。 此外,我们演示如何通过选择适当的编码来利用HD计算框架进行特征选择。 据我们所知,这是在文献中使用HD计算进行特征选择的第一种方法。结果,我们相信它可以支持ML社区进一步促进与特征和频道选择以及模型解释有关的多重方向的研究。