📣 Help Shape the Future of UKRI's Gateway to Research (GtR)

We're improving UKRI's Gateway to Research and are seeking your input! If you would be interested in being interviewed about the improvements we're making and to have your say about how we can make GtR more user-friendly, impactful, and effective for the Research and Innovation community, please email gateway@ukri.org.

Using unsupervised machine learning to quantify physical activity from accelerometry in a diverse and rapidly changing population (2022)

First Author: Thornton C

Abstract

No abstract provided

Bibliographic Information

Digital Object Identifier: http://dx.doi.org/10.48550/arxiv.2201.10322

Publication URI: https://arxiv.org/abs/2201.10322

Type: Preprint