A Conceptual Paper on SERVQUAL-Framework for Assessing Quality of Internet of Things (IoT) Services
January 06, 2020 Β· Declared Dead Β· π International Journal of Financial Research
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Authors
Sheikh Muhammad Hizam, Waqas Ahmed
arXiv ID
2001.01840
Category
cs.HC: Human-Computer Interaction
Citations
25
Venue
International Journal of Financial Research
Last Checked
4 months ago
Abstract
Service quality possesses the vital prominence in usability of innovative products and services. As technological innovation has made the life synchronized and effective, Internet of Things (IoT) is matter of discussion everywhere. From users' perspective, IoT services are always embraced by various system characteristics of security and performance. A service quality model can better present the preference of such technology customers. the study intends to project theoretical model of service quality for internet of things (IoT). Based on the existing models of service quality and the literature in internet of things, a framework is proposed to conceptualize and measure service quality for internet of things.This study established the IoT-Servqual model with four dimensions (i.e., Privacy, Functionality, Efficiency, and Tangibility) of multiple service quality models. These dimensions are essential and inclined towards the users' leaning of IoT Services. This paper contributes to research on internet of things services by development of a comprehensive framework for customers' quality apprehension. This model will previse the expression of information secrecy of users related with internet of things (IoT). This research will advance understanding of service quality in modern day technology and assist firms to devise the fruitful service structure.
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