Authors:
Rositsa Ivanova
1
;
Ema Kušen
2
and
Stefan Sobernig
1
Affiliations:
1
Institute of Information Systems and New Media, Vienna University of Economics and Business, Vienna, Austria
;
2
Faculty of Informatics, University of Vienna, Vienna, Austria
Keyword(s):
Data Analysis, Data Collection, Data Quality, Network Science, Social Networks, Twitter.
Abstract:
In this paper, we explore Twitter data samples collected from five different geographical locations. For each of these geographical locations, we compare variations occurring within samples collected simultaneously from two different machines running Twitter API clients. In addition, we split the collected data samples into “complete” and “incomplete” datasets. An incomplete dataset is a collection of Twitter messages where at least one machine received a smaller data sample due to some interruption. A complete dataset is one that includes all tweets that Twitter’s API delivers for a particular set of search parameters. Our findings indicate that 86% of the complete samples show some variations in the attribute values attached to extracted tweets. While the complete datasets show comparable attribute values and network characteristics, the incomplete data samples exhibit substantial differences. We arrive at recommendations for researchers on Online Social Networks on how to mine Twi
tter data while mitigating these risks.
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