Bridging social network analysis and field theory through multidimensional data analysis: The case of the theatrical field

Poetics ◽  
2017 ◽  
Vol 62 ◽  
pp. 66-80 ◽  
Author(s):  
Marco Serino ◽  
Daniela D’Ambrosio ◽  
Giancarlo Ragozini
Author(s):  
Sheik Abdullah A. ◽  
Abiramie Shree T. G. R.

Each day, 2.5 quintillion bytes of data are generated due to our daily activity. It is due to the vast amount of use of the smart mobiles, Cloud data storage, and the Internet of Things. In earlier days, these technologies were utilized by large IT companies and the private sector, but now each person has a high-end smartphone along with the cloud and IoT for the easy storage of data and backup. The analysis of the data generated by social media is a tedious process and involves a lot of techniques. Some tools for social network analysis are: Gephi, Networkx, IGraph, Pajek, Node XL, and cytoscope. Apart from these tools there are various efficient social data analysis algorithms that are far more helpful in doing analytics. The need for and use of social network analysis is very helpful in our current problem of huge data generation. In this chapter, the need for the analysis of social data along with the tools that are needed for the analysis and the techniques that are to be implemented in the field of social data analysis are covered.


2019 ◽  
Vol 53 ◽  
pp. 4-4
Author(s):  
Katarzyna Czernek-Marszałek ◽  
Justyna Majewska

Purpose. Evaluation of the importance of spatial proximity for undertaking business cooperation in a tourist region. Method. Agglomeration economy analysis was combined with the network approach (i.e. Social Network Analysis). The method of case study was used – cooperation between various entities (actors) in five tourist municipalities united in the “Beskid Five” agreement. Semi-structured interviews were conducted with 225 entities selected in purposeful sampling. Additionally, using the appropriate software, based on postal address and data on GPS coordinates of the location of the interviewed entities, were obtained. To analyse the data, some parameters of network analysis were used (i.e. the degree centrality – i.e. in-out and out-degree) and multidimensional data analysis. In particular, the logistic regression method was used, i.e. binary logic regressions were carried out in order to determine the significance of spatial proximity for undertaking cooperation and its intensity in a tourist region. In addition, Moran Ii local statistics were determined in order to measure the occurrence and direction of spatial autocorrelation (spatial correlation coefficient within Local Indicators of Spatial Associations, LISA). Visualisation techniques were also implemented in the work. Findings. In the research, it has been shown that spatial proximity is an important factor affecting cooperation in a tourist region, because it increases the likelihood of cooperation, although this relationship is not linear. Research and conclusion limitations. The study did not cover all entities from the region, but only the so-called key actors in a network. The region selected for research is so specific that the obtained results cannot be considered as representative for other regions in Poland or in the world. In addition, cooperation was analysed without division into various forms, which may also have influence on the obtained results. Practical implications. Entrepreneurs wishing to gain economic benefits regarding cooperation should consider the location and spatial arrangement of connections between potential partners of this cooperation, taking its various forms into account. In addition, by stimulating cooperation between entrepreneurs, local authorities should look at their (municipality office) location in the tourist region and the resulting spatial and functional structure of links between entities, which may determine the scope, intensity and level of effectiveness of the cooperation undertaken. Originality. To show the importance of geographic proximity with reference to intensity of cooperation in a tourist region, analysis of the agglomeration economies and social networks was combined for the first time. Type of paper. An article presenting the results of empirical research.


2022 ◽  
Vol 14 (1) ◽  
pp. 477
Author(s):  
Sung-Un Park ◽  
Jung-Woo Jeon ◽  
Hyunkyun Ahn ◽  
Yoon-Kwon Yang ◽  
Wi-Young So

In the present study, we used big data analysis to examine the key attributes related to stress and mental health among Korean Taekwondo student-athletes. Keywords included “Taekwondo + Student athlete + Stress + Mental health”. Naver and Google databases were searched to identify research published between 1 January 2010 and 31 December 2019. Text-mining analysis was performed on unstructured texts using TEXTOM 4.5, with social network analysis performed using UCINET 6. In total, 3149 large databases (1.346 MB) were analyzed. Two types of text-mining analyses were performed, namely, frequency analysis and term frequency-inverse document frequency analysis. For the social network analysis, the degree centrality and convergence of iterated correlation analysis were used to deduce the node-linking degree in the network and to identify clusters. The top 10 most frequently used terms were “stress”, “Taekwondo”, “health”, “player”, “student”, “mental”, “exercise”, “mental health”, “relieve”, and “child.” The top 10 most frequently occurring results of the TF-IDF analysis were “Taekwondo”, “health”, “player”, “exercise”, “student”, “mental”, “stress”, “mental health”, “child” and “relieve”. The degree centrality analysis yielded similar results regarding the top 10 terms. The convergence of iterated correlation analysis identified six clusters: student, start of dream, diet, physical and mental, sports activity, and adult Taekwondo center. Our results emphasize the importance of designing interventions that attenuate stress and improve mental health among Korean Taekwondo student-athletes.


Author(s):  
Somya Jain ◽  
Adwitiya Sinha

Over the last decade, technology has thrived to provide better, quicker, and more effective platforms to help individuals connect and disseminate information to other individuals. The increasing popularity of these networks and its huge content in the form of text, images, and videos provides new opportunities for data analytics in the context of social networks. This motivates data mining experts and researchers to deploy various mining apparatus and application-specific tools for analysing the massive, intricate, and dynamic social media knowledge. The research detailed in this chapter would entail major social network concepts with data analysis techniques. Moreover, it gives insight to representation and modelling of social networks with research datasets and tools.


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