Published February 1, 2015
| Version v1
Journal article
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Online profiling and clustering of Facebook users
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Description
In a relatively short period of time, social media have acquired a prominent role in media and daily life. Although
this development brought about several academic endeavors, the literature concerning the analysis of social
media data to investigate one's customer base appears to be limited. In this paper, we show how data from the
social network site Facebook can be operationalized to gain insight into the individuals connected to a company's
Facebook site. In particular, we propose a data collection framework to obtain individual specific data and
propose methodology to explore user profiles and identify segments based on these profiles. The proposed
data collection framework can be used as an identification step in an analytical customer relationship management
implementation that specifically focuses on potential customers.We illustrate our methodology by applying it to
the Facebook page of an internationally well-known professional football (soccer) club. In our analysis,we identify
four clusters of users that differ with respect to their indicated "liking" profiles.
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