Using social media as a big data source for research

2017 ◽  
pp. 39-51
Author(s):  
Michael Bauder
Keyword(s):  
Big Data ◽  
Author(s):  
Jisoo Sim ◽  
Patrick Miller

To meet the needs of park users, planners and designers must know what park users want to do and how they want the park to offer different activities. Big data may help planners and designers gain this knowledge. This study examines how big data collected in an urban park could be used to identify meaningful implications for planning and design. While big data have emerged as a new data source, big data have not become an accepted source of data due to a lack of understanding of big data analytics. By comparing a survey as a traditional data source with big data, this study identifies the strengths and weaknesses of using big data analytics in park planning and design. There are two research questions: (1) what activities do park users want; and (2) how satisfied are users with different activities. The Gyeongui Line Forest Park, which was built on an abandoned railway, was selected as the study site. A total of 177 responses were collected through the onsite survey, and 3703 tweets mentioning the park were collected from Twitter. Results from the survey show that ordinary activities such as walking and taking a rest in the park were the most common. These findings also support existing studies. The results from social media analytics found notable things such as positive tweets about how the railway was turned into a park, and negative tweets about diseases that may occur in the park. Therefore, a survey as traditional data and social media analytics as big data can be complementary methods for the design and planning process.


2015 ◽  
Author(s):  
Evika Karamagioli

Background: As the use of social media creates huge amounts of data, the need for big data analysis has to synthesize the information and determine which actions is generated. Online communication channels such as Facebook, Twitter, Instagram etc provide a wealth of passively collected data that may be mined for public health purposes such as health surveillance, health crisis management, and last but not least health promotion and education. Objective: We explore international bibliography on the potential role and perceptive of use for social media as a big data source for public health purposes. Method: Systematic literature review. Data extraction and synthesis was performed with the use of thematic analysis. Results: Examples of those currently collecting and analyzing big data from generated social content include scientists who are working with the Centers for Disease Control and Prevention to track the spread of flu by analyzing what user searches, and the World Health Organization is working on disaster management relief. But what exactly do we do with this big social media data? We can track real-time trends and understand them quicker through the platforms and processing services. By processing this big social media data, it is possible to determine specific patterns in conversation topics, users behaviors, overall trends and influencers, sociodemographic characteristics, lifestyle behaviors, and social and cultural constructs. Conclusion: The key to fostering big data and social media converge is process and analyze the right data that may be mined for purposes of public health, so as to provide strategic insights for planning, execution and measurement of effective and efficient public health interventions. In this effort, political, economic and legal obstacles need to be seriously considered.


Author(s):  
Asmiar Reza Agustina ◽  
Tutik Rachmawati

This research aims at understanding how ICT as panopticon vision enable transparency, accountability, and Participation in Indonesia. The betterment of these three aspects is believed to be beneficial for the government in fighting corruption. In the transparency aspect, this research has eight indicators which are constructed from studies by Bhatmagar, Davies & Fumega, Park & Florida, Grimmelikhuijsen, Keuffer & Mabillard:  (1) the availability of laws and regulations, (2) the availability of government budget allocations and spending, (3) the availability  of  performance  reports, (4)  open  government  processes,  (5)  identification  of elected officials and civil servants under investigation for corruption and fraudulent activities, (6) disclosure of assets and investments of public officials, (7) provision of e-procurement, and (8) using file formats. In the accountability aspect, four indicators from studies of Lee & Kwak and Davies & Fumega are used. They are (1) the availability of social media presence, (2) using mainstream social media for interactive, on-going conversations, storytelling, and communications, (3) the availability of a platform for questions and answers, and (4) the availability of information about feedback from the public. Finally, for the aspect of Participation, three indicators by Lee & Kwak are employed. Those are (1) voting and polling for a decision-making process or a public organization assessment, (2) feedback and ideation platform, and (3) crowdsourcing to report corruption or grievances. This research uses a qualitative research approach. It is benefiting from the use of secondary data as a form of the big data source. Hence, this research is an initial attempt to exploit the availability of big data as a valid data source. To ensure the secondary data sources’ validity, the researchers employed a triangulation process of backgrounds and reference checking. The data analysis in this research is based on 2 ICT based initiatives; Government websites and apps. It is evident from this research finding that, first, there are 35 ICT based initiatives, 31 websites, and four apps. From these numbers, there are  only18 websites and four apps that are available. Second, in general, those websites and apps do enable transparency, accountability, and Participation. Another important highlight of the finding is that three unidentified websites and ten websites are unsuccessful in promoting those three aspects. However, most of the websites and apps had turned out a success. In the meanwhile, ICT as panopticon vision also results in new corruption opportunities. This study highlights three examples of new corruption opportunities. It is recommended that Indonesia continue to work on those ten unavailable websites and, more importantly, be cautious and aware of the new corruption modes. Only by doing those, the role of ICT to fight corruption can be more strengthened.  


2015 ◽  
Author(s):  
Evika Karamagioli

Background: As the use of social media creates huge amounts of data, the need for big data analysis has to synthesize the information and determine which actions is generated. Online communication channels such as Facebook, Twitter, Instagram etc provide a wealth of passively collected data that may be mined for public health purposes such as health surveillance, health crisis management, and last but not least health promotion and education. Objective: We explore international bibliography on the potential role and perceptive of use for social media as a big data source for public health purposes. Method: Systematic literature review. Data extraction and synthesis was performed with the use of thematic analysis. Results: Examples of those currently collecting and analyzing big data from generated social content include scientists who are working with the Centers for Disease Control and Prevention to track the spread of flu by analyzing what user searches, and the World Health Organization is working on disaster management relief. But what exactly do we do with this big social media data? We can track real-time trends and understand them quicker through the platforms and processing services. By processing this big social media data, it is possible to determine specific patterns in conversation topics, users behaviors, overall trends and influencers, sociodemographic characteristics, lifestyle behaviors, and social and cultural constructs. Conclusion: The key to fostering big data and social media converge is process and analyze the right data that may be mined for purposes of public health, so as to provide strategic insights for planning, execution and measurement of effective and efficient public health interventions. In this effort, political, economic and legal obstacles need to be seriously considered.


Author(s):  
Hichem Dabbèchi ◽  
Nahla Zaaboub Haddar ◽  
Haytham Elghazel ◽  
Kais Haddar
Keyword(s):  
Big Data ◽  

2020 ◽  
Vol 9 (6) ◽  
pp. 3703-3711
Author(s):  
N. Oberoi ◽  
S. Sachdeva ◽  
P. Garg ◽  
R. Walia

Author(s):  
Philip Habel ◽  
Yannis Theocharis

In the last decade, big data, and social media in particular, have seen increased popularity among citizens, organizations, politicians, and other elites—which in turn has created new and promising avenues for scholars studying long-standing questions of communication flows and influence. Studies of social media play a prominent role in our evolving understanding of the supply and demand sides of the political process, including the novel strategies adopted by elites to persuade and mobilize publics, as well as the ways in which citizens react, interact with elites and others, and utilize platforms to persuade audiences. While recognizing some challenges, this chapter speaks to the myriad of opportunities that social media data afford for evaluating questions of mobilization and persuasion, ultimately bringing us closer to a more complete understanding Lasswell’s (1948) famous maxim: “who, says what, in which channel, to whom, [and] with what effect.”


2021 ◽  
Vol 11 (13) ◽  
pp. 6047
Author(s):  
Soheil Rezaee ◽  
Abolghasem Sadeghi-Niaraki ◽  
Maryam Shakeri ◽  
Soo-Mi Choi

A lack of required data resources is one of the challenges of accepting the Augmented Reality (AR) to provide the right services to the users, whereas the amount of spatial information produced by people is increasing daily. This research aims to design a personalized AR that is based on a tourist system that retrieves the big data according to the users’ demographic contexts in order to enrich the AR data source in tourism. This research is conducted in two main steps. First, the type of the tourist attraction where the users interest is predicted according to the user demographic contexts, which include age, gender, and education level, by using a machine learning method. Second, the correct data for the user are extracted from the big data by considering time, distance, popularity, and the neighborhood of the tourist places, by using the VIKOR and SWAR decision making methods. By about 6%, the results show better performance of the decision tree by predicting the type of tourist attraction, when compared to the SVM method. In addition, the results of the user study of the system show the overall satisfaction of the participants in terms of the ease-of-use, which is about 55%, and in terms of the systems usefulness, about 56%.


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