Online social network analysis has attracted great attention with a vast
number of users sharing information and availability of APIs that help to crawl
online social network data. In this paper, we study the research studies that
are helpful for user characterization as online users may not always reveal
their true identity or attributes. We especially focused on user attribute
determination such as gender, age, etc.; user behavior analysis such as motives
for deception; mental models that are indicators of user behavior; user
categorization such as bots vs. humans; and entity matching on different social
networks. We believe our summary of analysis of user characterization will
provide important insights to researchers and better services to online users