Mobile Security: Threats and Best Practices

Author:

Weichbroth Paweł1ORCID,Łysik Łukasz2ORCID

Affiliation:

1. Gdansk University of Technology, Narutowicza 11/12, Gdansk, Poland

2. Wroclaw University of Economics, Komandorska 118/120, Wroclaw, Poland

Abstract

Communicating mobile security threats and best practices has become a central objective due to the ongoing discovery of new vulnerabilities of mobile devices. To cope with this overarching issue, the goal of this paper is to identify and analyze existing threats and best practices in the domain of mobile security. To this extent, we conducted a literature review based on a set of keywords. The obtained results concern recognizable threats and established best practices in the domain of mobile security. Afterwards, this outcome was put forward for consideration by mobile application users (n = 167) via a survey instrument. To this end, the results show high awareness of the threats and their countermeasures in the domain of mobile applications. While recognizing the risks associated with physical and social factors, the majority of respondents declared the use of built-in methods to mitigate the negative impact of malicious software and social-engineering scams. The study results contribute to the theory on mobile security through the identification and exploration of a variety of issues, regarding both threats and best practices. Besides this, this bulk of up-to-date knowledge has practical value which reflects in its applicability at both the individual and enterprise level. Moreover, at this point, we argue that understanding the factors affecting users’ intentions and motivations to accept and use particular technologies is crucial to leverage the security of mobile applications. Therefore, future work will cover identifying and modeling users’ perceptions of the security and usability of mobile applications.

Funder

Ministerstwo Nauki i Szkolnictwa Wyzszego

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Computer Science Applications

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