ABSTRACT
The purpose of this research is to develop a methodology that combines the quantitative and the qualitative analysis to generate personas for products on social platforms. The user data on social platforms contain massive information relating to the lifestyle people have and the products people use or are interested. By analyzing the specific content generated by users on social platforms, e.g., content involving the term “tablet,” it is possible to reveal how the users consider or use the product, “tablet.” By analyzing the users’ homepages, the information relating to the users’ daily life can be found. We collected 276, 675 pieces of relevant data regarding the product, “tablet,” from 12, 965 online users on China’s widely used social media platforms. Then automatic user segments and the profiles of each group were generated and structured by natural language processing technology. The results of these quantitative analyses were then qualitatively examined by manual analyses, which provide additional insights and detailed descriptions on the automatically generated persona profiles. In this study, six personas representing distinct user types were created. The mixed method of combining the quantitative and qualitative methods makes the generation of personas faster and more insightful. The generated personas can represent real user behavior and characteristics and can provide insights into the products, which also can provide support on designing new products and optimizing existing products.
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No potential conflict of interest was reported by the author(s).
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Notes on contributors
Hao Tan
Hao Tan is currently a professor at School of Design, Hunan University, Changsha, China. His current research interests include user experience research based on big data and human-vehicle interaction.
Shenglan Peng
Shenglan Peng is currently a doctoral student at School of Design, Hunan University, Changsha, China. Her current research interests include user experience research based on big data and interaction design.
Jia-Xin Liu
Jia-Xin Liu is a user experience designer. Her research interests focused on artificial intelligence and big data. She received a M.E. degree at School of Design, Hunan University, Changsha, China, in 2020.
Chun-Peng Zhu
Chun-Peng Zhu is currently a postgraduate student at School of Design, Hunan University, Changsha, China. His current research interests include user experience research based on big data and interaction design.
Fan Zhou
Fan Zhou is a product manager. Her research interests focused on E-commerce platform. She received a M.E. degree at School of Design, Hunan University, Changsha, China, in 2019.