Social Network Analysis

From Sustainability Methods
Method categorization for Social Network Analysis


Method categorization
Quantitative Qualitative
Inductive Deductive
Individual System Global
Past Present Future



In short: Social Network Analysis visualises social interactions as a network and analyzes the quality and quantity of connections and structures within this network.

Background

SCOPUS hits per year for Social Network Analysis until 2019. Search terms: 'Social Network Analysis' in Title, Abstract, Keywords. Source: own.

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One of the originators of Network Analysis was German philosopher and sociologist Georg Simmel, whose work around the year 1900 highlighted the importance of social relations rather than focusing on individual units when understanding social systems. He argued "against understanding society as a mass of individuals who each react independently to circumstances based on their individual tastes, proclivities, and beliefs and who create new circumstances only by the simple aggregation of their actions. (...) we should focus instead on the emergent consequences of the interaction of individual actions." (Marin & Wellman 2010, p.6)

Moreno's original work on Social Networks. Source: Borgatti et al. 2009, p.892

"The first true formulations of social network analysis (...) took place in social psychology. In the 1930s Moreno began to develop what he called 'sociometry' as a way of conceptualizing the structures of small groups produced through friendship patterns and informal interaction." (Scott 1988, p.110). The work of Romanian-American psychosociologist Jacob Moreno was sparked by a case of runaways in the Hudson School for Girls in New York. His and his collaborator Helen Jennings' assumption was that the girls ran away because of the position they occupated in their social networks (see Diagram below).

Their work on 'sociometry' was subsequently taken up and furthered as the field of 'group dynamics', which was highly relevant in the US in the 1950s and 1960s. Simultaneously, sociologists and anthropologists further developed the approach in Britain. "The key element in both the American and the British research was a concern for the structural properties of networks of social relations, and the introduction of concepts to describe these properties." (Scott 1988, p.111). In the 1970s, Social Network Analysis gained even more traction through the increasing application in fields such as geography, economics and linguistics. Sociologists engaging with Social Network Analysis remained to come from different fields and topical backgrounds after that. Two major research areas are community studies and interorganisational relations (Scott 1988; Borgatti et al. 2009). However, since Social Network Analysis allows to assess many kinds of complex interaction between entities, it has also come to use in fields such as ecology to identify and analyze trophic networks, in computer science, as well as in epidemiology (Stattner & Vidot 2011, p.8).


What the method does

"Social network analysis is neither a theory nor a methodology. Rather, it is a perspective or a paradigm." (Marin & Wellman 2010, p.17) It subsumes a broad variety of methodological approaches; the fundamental ideas will be presented hereinafter.

Social Network Analysis is based on the idea that "(...) social life is created primarily and most importantly by relations and the patterns formed by these relations. Social networks are formally defined as a set of nodes (or network members) that are tied by one or more types of relations." (Marin & Wellman 2010, p.1; Scott 1988). These network members are also commonly referred to as "entitites", "actors", "vertices" or "agents" and are most commonly persons or organizations, but can in theory be anything (Marin & Wellman 2010). It is important to acknowledge that nodes are not equal to groups: any node (= network member) is not part of only one discrete group in which all members are the same; instead, each node has different relations to all nodes, spheres and levels of the network. The nodes are "(...) tied to one another through socially meaningful relations" (Prell et al. 2009, p.503), which can be "(...) collaborations, friendships, trade ties, web links, citations, resource flows, information flows (...) or any other possible connection" (Marin & Wellman 2010, p.2). Borgatti et al. (2009) refer to four types of relations in general: similarities, social relations, interactions, and flows.

Types of Ties in a Social Network. Source: Borgatti et al. 2009, p.894

The Social Network Analyst then analyzes these relations "(...) for structural patterns that emerge among these actors. Thus, an analyst of social networks looks beyond attributes of individuals to also examine the relations among actors, how actors are positioned within a network, and how relations are structured into overall network patterns." (Prell et al. 2009, p.503). Social Network Analysis is thus not the study of relations between individual pairs of nodes, which are referred to as "dyads", but rather the study of patterns within a network. The broader context of each connection is of relevance, and interactions are not seen independently but as influenced by the adjacent network surrounding the interaction. This is an important underlying assumption of Social Network Theory: the behavior of similar actors is based not primarily on independently shared characteristics between different actors within a network, but rather merely correlates with these attributes. Instead, it is assumed that the actors' behavior emerges from the interaction between them: "Their similar outcomes are caused by the constraints, opportunities, and perceptions created by these similar network positions." (Marin & Wellman 2010, p.3). Surrounding actors may provide leverage or influence that affect the agent's actions (Borgotti et al. 2009)

How it works

  • Type of Network: First, Social Network Analysts decide whether they intend to focus on a holistic view on the network (*whole networks)*, or focus on the network surrounding a specific node of interest (*ego networks*). They also decide for either *one-mode networks*, focusing on one type of node that could be connected with any other; or *two-mode networks* where there are two types of nodes, with each node unable to be connected with another node of the same type. (Marin & Wellman 2010, 13)
  • Network boundaries: Marin & Wellman (2010, p.2, referring to Laumann et al. (1983)) name three ways to define network boundaries, which are not mutually exclusive and may be combined:
    • position-based approach: considers those actors who are members of an organization or hold particular formally-defined positions to be network members, and all others would be excluded
    • event-based approach: those who had participated in key events are believed to define the population
    • relation-based approach: begins with a small set of nodes deemed to be within the population of interest and then expands to include others sharing particular types of relations with those seed nodes as well as with any nodes previously added.
    • Butts (2008) adds the *exogenously defined boundaries*, which are pre-determined based on the research intent or theory which provide clearly specified entities of interest.
  • Type of ties: There can be two forms of ties between network nodes: directed ties, which go from one node to another, and undirected ties, that connect two nodes without distinct direction. Both types can either be binary (they exist, or do not exist), or valued (they can be stronger or weaker than other ties): "For example, a friendship network can be represented using binary ties that indicate if two people are friends, or using valued ties that assign higher or lower scores based on how close people feel to one another, or how often they interact." (Marin & Wellman 2010, p.14; Borgatti et al. 2009).
  • Data Collection: The data necessary for Social Network Analysis can be gathered in Surveys or Interviews, through Observation, Content Analysis or similar forms of data gathering. Surveys and Interviews are most common, with the researchers inquiring on the existence and strength of connections between themselves and others actors, or within other actors, excluding themselves (Marin & Wellman 2010, p.14). There are two common approaches when surveying individuals about their own connections to others: In a prompted recall approach, they are asked which people they would think of with regards to a specific topic (e.g. "To whom would you go for advice at work?") while they are shown a pre-determined list of potentially relevant individuals. In the free list approach, they are asked to recall individuals without seeing a list (Butts 2008, p.20f).
  • Data Analysis: There are different network properties that researchers are interested in. The analysis can focus on the quantity and quality of ties of individual nodes, the similarity between different nodes, the structure of the network as a whole in terms of density, average connection length and strength or network composition. Each network may be analyzed in very different forms depending on the research purpose. The analysis may be qualitative as well as quantitative, focusing either on the structure and quality of connections or on their quantity and values. (Marin & Wellman 2010, p.16; Butts 2008, p.21f)
  • The visual representation of the network is in the hand of the researcher, "who will naturally seek the clearest visual arrangement, and all that matters is the pattern of connections." (Scott 1988, p.113) Distance between nodes is thus not equatable with physical distance in a visualisation, but rather to be measured based on the "number of lines which it is necessary to traverse in order to get from one point to another." (Scott 1988, p.114)
An exemplary network structure. The dyads BE and BF are equally long in this network although BF appears to be shorter, which is due to the visual representation of the network. Additionally, the central role of A becomes clear. Source: Scott 1988, p.114

Based on the structure of the ties, the network can take different forms, such as the Wheel, Y, Chain or Circle shape (see below).

Different network structures. Source: Borgatti et al. 2009, p.893


Strengths & Challenges

  • There is a range of challenges in the gathering of network data through Interviews and Surveys, which can become long and cumbersome, and in which the interviewees may differently understand and recall their relations with other actors, or misinterpret the connections between other actors. (Marin & Wellman 2010, p.15)
  • The definition of network boundaries is crucial, since "(...) the inappropriate inclusion or exclusion of a small number of entities can have ramifications which extend well beyond those entities themselves". Apart from the excluded entities and their relations, all relations between these entities and the rest of the network, and thus the network's structural properties, are affected. (Butts 2008). For more insights on the topic of System Boundaries, please refer to the respective article.


Normativity

  • The structure of any network and thus the conclusions that can be drawn in the analysis very much depend on the relation that is observed. A corporation may be differently structured in terms of their informal compared to their official communication structures, and an individual may not be part of one network but central in another one that focuses on a different relational quality (Butts 2008)
  • Further, the choice of network boundaries as well as the underlying research intent can have normative implications. Also, actors within the network may be characterized using specific attributes, which may be a normative decision (such as for attributes of ethnicity, violence, or others).
  • The method of social network analysis is connected to the methods of Stakeholder Analysis as well as Clustering. Further, as mentioned above, the data necessary for Social Network Analysis can be gathered in Surveys or Interviews, through Observation, Content Analysis or similar methods of data gathering.


Key publications

  • Scott, J. 1988. Trend Report Social Network Analysis. Sociology 22(1). 109-127.
  • Borgatti, S.P. et al. 2009. Network Analysis in the Social Sciences. Science 323. 892-895.
  • Rowley, TJ. 1997. Moving beyond dyadic ties: A network theory of stakeholder influences. Academy of Management Review 2284). 887-910.
  • Bodin, Ö., Crona, B., Ernstson, H. 2006. Social networks in natural resource management: What is there to learn from a structural perspective? Ecology and Society 11(2).
  • Wasserman, S., Faust, K. 1994. Social network analysis: Methods and applications (Vol. 8). Cambridge university press.
  • Prell, C. (2012): Social network analysis: History, theory and methodology, London.
  • Reed, M.S., Graves, A., Dandy, N., Posthumus, H., Hubacek, K., Morris, J., Prell, C., Quinn, C.H., Stringer, L.C. 2009. Who’s in and why? A typology of stakeholder analysis methods for natural resource management. Journal of Environmental Management 90, 1933-1949.

References

(1) Marin, A. Wellman, B. 2009. Social Network Analysis: An Introduction. In: SAGE Handbook of Social Network Analysis. 2010.

(2) Scott, J. 1988. Trend Report Social Network Analysis. Sociology 22(1). 109-127.

(3) Butts, C.T. 2008. Social network analysis: A methodological introduction. Asian Journal of Social Psychology 11. 13-41.

(4) Borgatti, S.P. et al. 2009. Network Analysis in the Social Sciences. Science 323. 892-895.

(5) Prell, C. Hubacek, K. Reed, M. 2009. Stakeholder Analysis and Social Network Analysis in Natural Resource Management. Society and Natural Resources 22. 501-518.

(6) Stattner, E. Vidot, N. 2011. Social network analysis in epidemiology Current trends and perspectives. Research Challenges in Information Science


Further Information


"The author of this entry is Christopher Franz".