Quantifying daily rhythms with non-negative matrix factorization applied to mobile phone data

Research output: Contribution to journalJournal articleResearchpeer-review

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Quantifying daily rhythms with non-negative matrix factorization applied to mobile phone data. / Aledavood, Talayeh; Kivimäki, Ilkka; Lehmann, Sune; Saramäki, Jari.

In: Scientific Reports, Vol. 12, No. 1, 5544, 2022.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Aledavood, T, Kivimäki, I, Lehmann, S & Saramäki, J 2022, 'Quantifying daily rhythms with non-negative matrix factorization applied to mobile phone data', Scientific Reports, vol. 12, no. 1, 5544. https://doi.org/10.1038/s41598-022-09273-y

APA

Aledavood, T., Kivimäki, I., Lehmann, S., & Saramäki, J. (2022). Quantifying daily rhythms with non-negative matrix factorization applied to mobile phone data. Scientific Reports, 12(1), [5544]. https://doi.org/10.1038/s41598-022-09273-y

Vancouver

Aledavood T, Kivimäki I, Lehmann S, Saramäki J. Quantifying daily rhythms with non-negative matrix factorization applied to mobile phone data. Scientific Reports. 2022;12(1). 5544. https://doi.org/10.1038/s41598-022-09273-y

Author

Aledavood, Talayeh ; Kivimäki, Ilkka ; Lehmann, Sune ; Saramäki, Jari. / Quantifying daily rhythms with non-negative matrix factorization applied to mobile phone data. In: Scientific Reports. 2022 ; Vol. 12, No. 1.

Bibtex

@article{1f244a32dca64f7c91a8ca2e98800064,
title = "Quantifying daily rhythms with non-negative matrix factorization applied to mobile phone data",
abstract = "Human activities follow daily, weekly, and seasonal rhythms. The emergence of these rhythms is related to physiology and natural cycles as well as social constructs. The human body and its biological functions undergo near 24-h rhythms (circadian rhythms). While their frequencies are similar across people, their phases differ. In the chronobiology literature, people are categorized into morning-type, evening-type, and intermediate-type groups called chronotypes based on their tendency to sleep at different times of day. Typically, this typology builds on carefully designed questionnaires or manually crafted features of time series data on people{\textquoteright}s activity. Here, we introduce a method where time-stamped data from smartphones are decomposed into components using non-negative matrix factorization. The method does not require any predetermined assumptions about the typical times of sleep or activity: the results are fully context-dependent and determined by the most prominent features of the activity data. We demonstrate our method by applying it to a dataset of mobile phone screen usage logs of 400 university students, collected over a year. We find four emergent temporal components: morning activity, night activity, evening activity and activity at noon. Individual behavior can be reduced to weights on these four components. We do not observe any clear categories of people based on the weights, but individuals are rather placed on a continuous spectrum according to the timings of their phone activities. High weights for the morning and night components strongly correlate with sleep and wake-up times. Our work points towards a data-driven way of characterizing people based on their full daily and weekly rhythms of activity and behavior, instead of only focusing on the timing of their sleeping periods.",
author = "Talayeh Aledavood and Ilkka Kivim{\"a}ki and Sune Lehmann and Jari Saram{\"a}ki",
note = "Publisher Copyright: {\textcopyright} 2022, The Author(s).",
year = "2022",
doi = "10.1038/s41598-022-09273-y",
language = "English",
volume = "12",
journal = "Scientific Reports",
issn = "2045-2322",
publisher = "nature publishing group",
number = "1",

}

RIS

TY - JOUR

T1 - Quantifying daily rhythms with non-negative matrix factorization applied to mobile phone data

AU - Aledavood, Talayeh

AU - Kivimäki, Ilkka

AU - Lehmann, Sune

AU - Saramäki, Jari

N1 - Publisher Copyright: © 2022, The Author(s).

PY - 2022

Y1 - 2022

N2 - Human activities follow daily, weekly, and seasonal rhythms. The emergence of these rhythms is related to physiology and natural cycles as well as social constructs. The human body and its biological functions undergo near 24-h rhythms (circadian rhythms). While their frequencies are similar across people, their phases differ. In the chronobiology literature, people are categorized into morning-type, evening-type, and intermediate-type groups called chronotypes based on their tendency to sleep at different times of day. Typically, this typology builds on carefully designed questionnaires or manually crafted features of time series data on people’s activity. Here, we introduce a method where time-stamped data from smartphones are decomposed into components using non-negative matrix factorization. The method does not require any predetermined assumptions about the typical times of sleep or activity: the results are fully context-dependent and determined by the most prominent features of the activity data. We demonstrate our method by applying it to a dataset of mobile phone screen usage logs of 400 university students, collected over a year. We find four emergent temporal components: morning activity, night activity, evening activity and activity at noon. Individual behavior can be reduced to weights on these four components. We do not observe any clear categories of people based on the weights, but individuals are rather placed on a continuous spectrum according to the timings of their phone activities. High weights for the morning and night components strongly correlate with sleep and wake-up times. Our work points towards a data-driven way of characterizing people based on their full daily and weekly rhythms of activity and behavior, instead of only focusing on the timing of their sleeping periods.

AB - Human activities follow daily, weekly, and seasonal rhythms. The emergence of these rhythms is related to physiology and natural cycles as well as social constructs. The human body and its biological functions undergo near 24-h rhythms (circadian rhythms). While their frequencies are similar across people, their phases differ. In the chronobiology literature, people are categorized into morning-type, evening-type, and intermediate-type groups called chronotypes based on their tendency to sleep at different times of day. Typically, this typology builds on carefully designed questionnaires or manually crafted features of time series data on people’s activity. Here, we introduce a method where time-stamped data from smartphones are decomposed into components using non-negative matrix factorization. The method does not require any predetermined assumptions about the typical times of sleep or activity: the results are fully context-dependent and determined by the most prominent features of the activity data. We demonstrate our method by applying it to a dataset of mobile phone screen usage logs of 400 university students, collected over a year. We find four emergent temporal components: morning activity, night activity, evening activity and activity at noon. Individual behavior can be reduced to weights on these four components. We do not observe any clear categories of people based on the weights, but individuals are rather placed on a continuous spectrum according to the timings of their phone activities. High weights for the morning and night components strongly correlate with sleep and wake-up times. Our work points towards a data-driven way of characterizing people based on their full daily and weekly rhythms of activity and behavior, instead of only focusing on the timing of their sleeping periods.

U2 - 10.1038/s41598-022-09273-y

DO - 10.1038/s41598-022-09273-y

M3 - Journal article

C2 - 35365710

AN - SCOPUS:85127393420

VL - 12

JO - Scientific Reports

JF - Scientific Reports

SN - 2045-2322

IS - 1

M1 - 5544

ER -

ID: 347106441