IPS 872 - Functional Data Analysis Approaches on Wearable Device Data
Category: IPSParticipants
Wearable devices are recent popular tools to record data, especifically in medicine. They are used to collect continous data with high observation frequency in a determined time period. That helps to montior people’s health and facilitates to diagnose many important diseases such Type II diabetes. Depending to the type of the characteristic that is intended to be measured, different types of wearable sensors are used. For instance, accelerometers have a wide range of use from counting steps to monitoring heartbeats, glucometers are used to monitor blood glucose levels and wearable tensiometres are used to measure continous systolic blood pressure. The continous and high frequency structure of the data requires implementation of alternative statistical methods. Functional Data Analysis (FDA) is one of the popular approaches that handles time-dependent measurements as functions of time and this way allows to reveal the funcional nature of the data recorded at discrete time points. The extensions of multivariate statistical methods to funcional data let us construct linear models to make predictions or let us compute the most important variations of the data defined in a continous time interval. Our objective in organizing this session is to bring together scientists who deal with both theoretical and applied aspects of FDA and to discuss the use of FDA approaches on wearable sensor data.
Abstracts and papers
For more details on registrations and submissions for the 65th ISI World Statistics Congress 2025, please first login to your account. If you do not have an account then you can create one below:
X Cookies Policy
We have placed cookies on your device to help make this website better.
You can change your cookie settings in your web browser. Otherwise, we’ll assume you’re OK to continue.
Some of the cookies we use are essential for the site to work.
We also use some non-essential cookies to collect information for making reports and to help us improve the site. The cookies collect information in an anonymous form.
To control third party cookies, you can also adjust your browser settings.
Do Not Accept Third Party Cookies