Article

A Bayesian Assessment of Real-World Behavior During Multitasking

Details

Citation

Bergmann JHM, Fei J, Green DA, Hussain A & Howard N (2017) A Bayesian Assessment of Real-World Behavior During Multitasking. Cognitive Computation, 9 (6), pp. 749-757. https://doi.org/10.1007/s12559-017-9500-6

Abstract
Multitasking is common in everyday life, but its effect on activities of daily living is not well understood. Critical appraisal of performance for both healthy individuals and patients is required. Motor activities during meal preparation were monitored in healthy individuals with a wearable sensor network during single and multitask conditions. Motor performance was quantified by the median frequencies (fm) of hand trajectories and wrist accelerations. The probability that multitasking occurred based on the obtained motor information was estimated using a Naïve Bayes Model, with a specific focus on the single and triple loading conditions. The Bayesian probability estimator showed task distinction for the wrist accelerometer data at the high and low value ranges. The likelihood of encountering a certain motor performance during well-established everyday activities, such as preparing a simple meal, changed when additional (cognitive) tasks were performed. Within a healthy population, the probability of lower acceleration frequency patterns increases when people are asked to multitask. Cognitive decline due to aging or disease might yield even greater differences.

Keywords
Wearable sensors; Activities of daily living; Cognitive loading; Executive function; Motor control

Journal
Cognitive Computation: Volume 9, Issue 6

StatusPublished
Publication date31/12/2017
Publication date online12/08/2017
Date accepted by journal18/07/2017
URLhttp://hdl.handle.net/1893/25811
PublisherSpringer
ISSN1866-9956