On improving the memorability of system-assigned recognition-based passwords
Mahdi Nasrullah Al-Ameen,
Sonali T. Marne,
Kanis Fatema,
Matthew Wright and
Shannon Scielzo
Behaviour and Information Technology, 2022, vol. 41, issue 5, 1115-1131
Abstract:
User-chosen passwords reflecting common strategies and patterns ease memorisation but offer uncertain and often weak security, while system-assigned passwords provide higher security guarantee but suffer from poor memorability. We thus examine the technique to enhance password memorability that incorporates a scientific understanding of long-term memory. In particular, we examine the efficacy of providing users with verbal cues—real-life facts corresponding to system-assigned keywords. We also explore the usability gain of including images related to the keywords along with verbal cues. In our multi-session lab study with 52 participants, textual recognition-based scheme offering verbal cues had a significantly higher login success rate (94.23%) compared to the control condition, i.e. textual recognition without verbal cues (61.54%). When users were provided with verbal cues, adding images contributed to faster recognition of the assigned keywords, and thus had an overall improvement in usability. So, we conducted a field study with 54 participants to further examine the usability of graphical recognition-based scheme offering verbal cues, which showed an average login success rate of 98% in a real-life setting and an overall improvement in login performance with more login sessions. These findings show a promising research direction to gain high memorability for system-assigned passwords.
Date: 2022
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Persistent link: https://EconPapers.repec.org/RePEc:taf:tbitxx:v:41:y:2022:i:5:p:1115-1131
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DOI: 10.1080/0144929X.2020.1858161
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