2,909 research outputs found
When Politicians Talk: Assessing Online Conversational Practices of Political Parties on Twitter
Assessing political conversations in social media requires a deeper
understanding of the underlying practices and styles that drive these
conversations. In this paper, we present a computational approach for assessing
online conversational practices of political parties. Following a deductive
approach, we devise a number of quantitative measures from a discussion of
theoretical constructs in sociological theory. The resulting measures make
different - mostly qualitative - aspects of online conversational practices
amenable to computation. We evaluate our computational approach by applying it
in a case study. In particular, we study online conversational practices of
German politicians on Twitter during the German federal election 2013. We find
that political parties share some interesting patterns of behavior, but also
exhibit some unique and interesting idiosyncrasies. Our work sheds light on (i)
how complex cultural phenomena such as online conversational practices are
amenable to quantification and (ii) the way social media such as Twitter are
utilized by political parties.Comment: 10 pages, 2 figures, 3 tables, Proc. 8th International AAAI
Conference on Weblogs and Social Media (ICWSM 2014
Partisan Asymmetries in Online Political Activity
We examine partisan differences in the behavior, communication patterns and
social interactions of more than 18,000 politically-active Twitter users to
produce evidence that points to changing levels of partisan engagement with the
American online political landscape. Analysis of a network defined by the
communication activity of these users in proximity to the 2010 midterm
congressional elections reveals a highly segregated, well clustered partisan
community structure. Using cluster membership as a high-fidelity (87% accuracy)
proxy for political affiliation, we characterize a wide range of differences in
the behavior, communication and social connectivity of left- and right-leaning
Twitter users. We find that in contrast to the online political dynamics of the
2008 campaign, right-leaning Twitter users exhibit greater levels of political
activity, a more tightly interconnected social structure, and a communication
network topology that facilitates the rapid and broad dissemination of
political information.Comment: 17 pages, 10 figures, 6 table
When Do Users Change Their Profile Information on Twitter?
We can see profile information such as name, description and location in
order to know the user on social media. However, this profile information is
not always fixed. If there is a change in the user's life, the profile
information will be changed. In this study, we focus on user's profile
information changes and analyze the timing and reasons for these changes on
Twitter. The results indicate that the peak of profile information change
occurs in April among Japanese users, but there was no such trend observed for
English users throughout the year. Our analysis also shows that English users
most frequently change their names on their birthdays, while Japanese users
change their names as their Twitter engagement and activities decrease over
time.Comment: IEEE BigData 2017 Workshop : The 2nd International Workshop on
Application of Big Data for Computational Social Science (accepted
Keystroke Biometrics in Response to Fake News Propagation in a Global Pandemic
This work proposes and analyzes the use of keystroke biometrics for content
de-anonymization. Fake news have become a powerful tool to manipulate public
opinion, especially during major events. In particular, the massive spread of
fake news during the COVID-19 pandemic has forced governments and companies to
fight against missinformation. In this context, the ability to link multiple
accounts or profiles that spread such malicious content on the Internet while
hiding in anonymity would enable proactive identification and blacklisting.
Behavioral biometrics can be powerful tools in this fight. In this work, we
have analyzed how the latest advances in keystroke biometric recognition can
help to link behavioral typing patterns in experiments involving 100,000 users
and more than 1 million typed sequences. Our proposed system is based on
Recurrent Neural Networks adapted to the context of content de-anonymization.
Assuming the challenge to link the typed content of a target user in a pool of
candidate profiles, our results show that keystroke recognition can be used to
reduce the list of candidate profiles by more than 90%. In addition, when
keystroke is combined with auxiliary data (such as location), our system
achieves a Rank-1 identification performance equal to 52.6% and 10.9% for a
background candidate list composed of 1K and 100K profiles, respectively.Comment: arXiv admin note: text overlap with arXiv:2004.0362
Structural onomatology for username generation: A partial account
The username hints for most of the on-line social networks are mostly unpleasant for human beings since they are mostly a simple name variation followed by numbers. This paper shows that it is possible to generate human likable usernames through heuristics guided by structural onomastics. The objective then is to conceive heuristics as such and check its availability in Twitter in order to verify if is it possible to generate a sufficiently big and available username data-set that is able to justify the transitions from unpleasant to a pleasant username suggestion. This paper finds that it is possible to generate 8281 handles on average through the proposed heuristics and their permutations, therefore, the number of various possibilities is comfortable. This is a partial account since not all possibilities were explored and some improvements are required, but suits for a proof of concept and to indicate paths.FCT Fundação para a Ciência e Tecnologia within the RD Units Project
Scope: UIDB/00319/202
Detecting the Influence of Spreading in Social Networks with Excitable Sensor Networks
Detecting spreading outbreaks in social networks with sensors is of great
significance in applications. Inspired by the formation mechanism of human's
physical sensations to external stimuli, we propose a new method to detect the
influence of spreading by constructing excitable sensor networks. Exploiting
the amplifying effect of excitable sensor networks, our method can better
detect small-scale spreading processes. At the same time, it can also
distinguish large-scale diffusion instances due to the self-inhibition effect
of excitable elements. Through simulations of diverse spreading dynamics on
typical real-world social networks (facebook, coauthor and email social
networks), we find that the excitable senor networks are capable of detecting
and ranking spreading processes in a much wider range of influence than other
commonly used sensor placement methods, such as random, targeted, acquaintance
and distance strategies. In addition, we validate the efficacy of our method
with diffusion data from a real-world online social system, Twitter. We find
that our method can detect more spreading topics in practice. Our approach
provides a new direction in spreading detection and should be useful for
designing effective detection methods
- …