Abstract
Smart home services are a new generation of consumer services. Supported by the Internet of Things (IoT) technology, they deliver security, comfort, entertainment, assisted living, and efficient management of the home to improve the quality of life of consumers. As the availability of smart home services expands, there is still a lack of understanding of what motivates their continuing use and how the penetration of smart devices and services in the home environment affects individual well-being. We develop a research model combining hedonic and eudaimonic motivations with the unified theory of acceptance and use of technology 2 (UTAUT 2) to evaluate the impacts on well-being. The model is estimated using partial least squares based on a sample of 260 survey responses. The results show that hedonic motivation associated with the adoption of some smart home services moderates continuing use. Additionally, the results suggest a positive relationship between the use of IoT smart home services and well-being. Furthermore, hedonic and eudaimonic motives have a substantial effect on the use behavior of smart home services and ultimately on well-being.
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Appendix – Survey items
Appendix – Survey items
Performance Expectancy adapted from Venkatesh et al. (2012).
PE1 I find IoT Smart Home service useful in my household.
PE2 Using IoT Smart Home service increases my chances of achieving things that are important to me.
PE3 Using IoT Smart Home service helps me to accomplish domestic tasks more quickly.
PE4 Using IoT Smart Home service increases my productivity.
Social Influence adapted from Venkatesh et al. (2012).
SI1 People who are important to me think that I should use the IoT smart home service.
SI2 People who influence my behavior think that I should use the IoT smart home service.
SI3 People whose opinions I value prefer that I use the IoT smart home service.
Facilitating Conditions adapted from Venkatesh et al. (2012).
FC1 I have the resources necessary to use the IoT smart home service.
FC2 I have the knowledge necessary to use the IoT smart home service.
FC3 The IoT smart home service is compatible with the technologies that I use.
FC4 I can get help from others when I have difficulties using the IoT smart home service.
Price Value adapted from Venkatesh et al. (2012).
PV1 The IoT smart home service is reasonably priced.
PV2 The IoT smart home service is a good value for the money.
PV3 At the current price, the IoT smart home service provides good value.
Habit adapted from Venkatesh et al. (2012).
Ha1 The use of the IoT smart home service has become a habit for me.
Ha2 I am addicted to using the IoT smart home service.
Ha3 I must use the IoT smart home service.
Ha4 Using the IoT smart home service has become natural to me.
Hedonic Motivation adapted from Huta and Waterman (2014).
I use the IoT smart home service in my home when I start an activity with the intention of:
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HM1 Seeking relaxation.
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HM2 Seeking pleasure.
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HM3 Seeking enjoyment.
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HM4 Seeking to take it easy.
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HM5 Seeking fun.
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HM6 Seeking to make things comfortable.
Eudaimonic Motivation adapted from Huta and Waterman (2014).
I use the IoT smart home service in my home activities when I am:
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EM1 Seeking to develop a skill, learn, or gain insight into something.
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EM2 Seeking to do what I believe in.
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EM3 Seeking to pursue excellence or a personal ideal.
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EM4 Seeking to use the best in myself.
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EM5 Seeking to contribute to others or the surrounding world.
Behavior Intention adapted from Venkatesh et al. (2012).
BI1 I intend to continue using the IoT smart home service in the future.
BI2 I will always try to use the IoT smart home service in my daily life.
BI3 I plan to continue to use the IoT smart home service frequently.
Use Behavior adapted from Venkatesh et al. (2012).
Please choose your usage frequency for each of the following features of the IoT smart home service at your home:
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a) ambiance control (temperature, lighting, sound, etc.)
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b) security and safety (video surveillance, presence detection, fire alarm, gas leak alarm, flood alarm, etc.)
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c) energy efficiency (reduce energy waste, schedule use of appliances outside tariff peak hours, etc.)
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d) automation (allow the service to learn my preferences by tracking my movements and activity schedules at home)
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f) e-health (collecting health data from wrist bands or other sensors to monitor health status or telemedicine purposes)
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g) assisted living (allow autonomy or independence at overcoming a disability or handicap in activities at home)
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h) media content consumption (distribute digital media through devices at home or access online music, movies, games, etc.)
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i) communications (establish a remote connection to home, connect to social platforms, shop or perform online transactions)
Note: Frequency ranged from “never” to “many times per day.”
Well-Being adapted from Huta and Waterman (2014).
All things considered, to which degree has the IoT Smart Home service been useful in your domestic routines when you’re:
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WB1 Seeking relaxation?
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WB2 Seeking to develop a skill, learn, or gain insight into something?
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WB3 Seeking to do what you believe in?
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WB4 Seeking pleasure?
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WB5 Seeking to pursue excellence or a personal ideal?
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WB6 Seeking enjoyment?
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WB7 Seeking to take it easy?
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WB8 Seeking to use the best in yourself?
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WB9 Seeking fun?
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WB10 Seeking to contribute to others or the surrounding world?
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WB11 Seeking to make things comfortable?
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Sequeiros, H., Oliveira, T. & Thomas, M.A. The Impact of IoT Smart Home Services on Psychological Well-Being. Inf Syst Front 24, 1009–1026 (2022). https://doi.org/10.1007/s10796-021-10118-8
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DOI: https://doi.org/10.1007/s10796-021-10118-8