A template for data-driven personas: Analyzing 31 quantitatively oriented persona profiles




Joni Salminen, Kathleen Guan, Lene Nielsen, Soon-gyo Jung, Bernard J. Jansen

Sakae Yamamoto, Hirohiko Mori

International Conference on Human-Computer Interaction

PublisherSpringer

2020

International Conference on Human-Computer Interaction

HCII 2020: Human Interface and the Management of Information. Designing Information

Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)

Lecture Notes in Computer Science

12184

125

144

978-3-030-50019-1

978-3-030-50020-7

0302-9743

DOIhttps://doi.org/10.1007/978-3-030-50020-7_8



Following the proliferation of personified big data and data science algorithms, data-driven user personas (DDPs) are becoming more common in persona design. However, the DDP templates are seemingly diverse and fragmented, prompting a need for a synthesis of the information included in these personas. Analyzing 31 templates for DDPs, we find that DDPs vary greatly by their information richness, as the most informative layout has more than 300% more information categories than the least informative layout. We also find that graphical complexity and information richness do not necessarily correlate. Furthermore, the chosen persona development method may carry over to the information presentation, with quantitative data typically presented as scores, metrics, or tables and qualitative data as text-rich narratives. We did not find one “general template” for DDPs and defining this is difficult due to the variety of the outputs of different methods as well as different information needs of the persona users.



Last updated on 2024-26-11 at 21:36