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Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 Review of Social Sciences, 01(05), 1-17 Vol. 01, No. 05 : May (2016) Review of Social Sciences Open access available at http://socialsciencejournal.org Social Network Analysis as an Analytical Archetype of R&D National Networks: Case Study in Culture Collections of Brazil and Japan Fabius Abrahão Torreão Estevesa, Claude Pirmezb, Manuela da Silvab, Carla Torreão Estevesc, Andréa Torreão Estevesc, Roberto Pierre Chagnona, Elton Fernandesd* a Oswaldo Cruz Foundation – Fiocruz, Brazil. b Instituto Oswaldo Cruz – IOC/Fiocruz, Brazil. c Escola Nacional de Saúde Pública – ENSP/Fiocruz, Brazil. d Federal University of Rio de Janeiro - COPPE/UFRJ, Brazil. *Corresponding author’s email address: [email protected] A R T I C L E I N F O A B S T R A C T Received: 18-04-2016 The lack of analytical mechanisms of R&D national networks is a significant problem Accepted: 16-05-2016 for policy makers. This paper presents an analytical archetype for performance Available online: 26-05-2016 evaluation of national co-authoring networks based on Social Network Analysis parameters. The model evaluates paper co-authoring data of professionals responsible for culture collections in Brazil and Japan. Were identified professionals from the World Keywords: Federation for Culture Collections data bank and co-authoring identified from Analytical archetype; Brazil; international bibliographic databases. The Brazilian network is the focus of the analysis Culture Collections; and the Japanese is the reference network. The Research and Development networks in R&D National Network; culture collections are fundamental to the performance of the biotechnological Social network analysis. innovation chain in areas such as health, agriculture and industry, and thus fundamental to emerging countries such as Brazil. This country has the fifth largest JEL Classification: I19 population in the world, being most of this population user of public health services and it has in the agribusiness one of its main sources of wealth. The model allows a performance evaluation of the networks and identifies improvement paths for the Brazilian network. SNA parameters combined with a reference network showed meaningful elements to the understanding of a R&D networks. This proved helpful for the strategic analysis of the network weaknesses and strengths. The model also Page 1 proposes policy implications for the three analysis of sub-levels, namely cohesion, subgroups and centralization. © 2016 The Authors. This is an open access article under the terms of the Creative Commons Attribution License 4.0, which allows use, distribution and reproduction in any medium, provided the original work is properly cited. DOI: http://dx.doi.org/10.18533/rss.v1i5.35. 1.0 Introduction Management researchers as Peter Drucker and W. Edwards Deming are often quoted as relating management, measurement and improvement. Although this idea is quite consolidated, the mechanisms to materialize these relations, mainly in R&D area, still face huge challenges. The Social Network Analysis (SNA) of Scientific and Technological (S&T) institutions has shown to be a powerful tool to evaluate the performance of the Research, Development and Innovation actors (Balconi et al., 2004). Using the SNA principles and tools, this study analyses the Brazilian paper co-authoring network in culture collections, having the Japanese network as a parameter. In the field of biotechnology, universities and S&T Institutes are Research and Development (R&D) centres that support innovation. Through alliances and collaboration, these centres play an important role in socio-economic Review of Social Sciences Page 1 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 development of the countries. The scientific collaboration networks within and between organizations have been, in Brazil and in the rest of the world, the leading model to organize Research, Development and Innovation (RD&I). The World Federation for Culture Collections (WFCC) database , called World Data Centre for Microorganisms (WDCM), includes culture collections and not networks of collections (WFCC/WDCM, 2014). Thus, the networks of co-authoring, derived from collections, are to be interpreted as “serendipitous networks”, i.e. without network governance. Alvarez et al. (2002) identify the network governance elements as: configuration or network infrastructure (e.g. actors, goals, resources, and connections); network proposal (e.g. strategy, services architecture, resources priorities, premises for decision and relevant knowledge); and network operation model (e.g. organization of network processes, nodes and resources coordination model, governance counselling, IT solutions, compliance and monitoring of the network). In the microbial area, both the Brazilian collections scientists as well as the Japanese have external co-authoring networks which are more intense than the internal ones. The global insertion is a constant and an essential search for scientists in the biotechnology area. However, when the internal R&D networks are not robust, the benefits of knowledge creation weaken and may never happen. This is an important point of networks analysis, mainly for the formulation of public policies for S&T financing. The Brazilian and Japanese paper co-authoring network in cultures collections area has not been, up to here, object of study from the light of their performance and their contribution to the knowledge improvement in industry. Considering the results for R&D, knowledge generation networks need to be evaluated and restructured periodically, under penalty of losing their effectiveness. To evaluate the performance of these networks structure measures and logical analysis are necessary. From an academic point of view, the assessments of R&D networks do not address the performance of the network itself, but rather the evaluation of their actors. In general, they also do not present logic of comparative analysis, as a reference network. This is important because some measures do not have meaning by itself; they need a reference to be analysed. The methodology examines the overall network configuration, including its general characteristics, the relative amount of internal and external links, institutional links and the qualitative nature of these links. In addition, parametric analysis is made from the categories and strategic considerations of strengths and weakenesses. The central issue in the article is how to structure the diagnostic performance of an R&D network, in the case of the coauthoring network of microbiological collections of Brazil, from the SNA parameters, and comparison with a reference network of same object. This finding allows us to infer possible configuration changes and definition of structural network policies, in order to qualify their productivity both in R&D as well as the provision of technological services. In this paper, networks are considered “serendipitous networks" and although the SNA does not address all aspects of the network governance provided by Alvarez et al. (2002), this approach provides a significant set of governance related indicators. Thus, a set of weaknesses and strengths can be identified in order to support guideline proposals for the Brazilian network, aiming to become a R&D network with a high biotechnological potential. The findings allow the inference of possible configuration changes and definition of improvement paths for network policies, in order to qualify networks productivity, in both R&D as well as the provision of technological services. The setting of these networks is analysed at the macro level and in three sub-levels: cohesion, subgroups and Page 2 centralization. This paper case study is an empirical exploration of the model advocated by Van der Valk et al. (2010), but applied in distinct knowledge areas and in which there is no analysis of network performance from the SNA. The model developed allows a performance evaluation of the networks and proposes structural policies, identifying improvement paths for the Brazilian network. This policies refers to the three sub-levels. The proposed analytical archetype introduces new measures, generating a comprehensive evaluation of the R&D networks. A new feature of the model is the definition of parameters by categories of analysis in its maximum and minimum limits and internal and external interrelations of categories. Thus, the main question is how the comparative analysis seeks the parameters balance point for the assessment of the networks performance. This paper is structured in six sections following this introduction: section two presents a review of the literature concerning the parameters most commonly used for networks evaluation; section 3 describes the methodology to establish the networks and the construction of the analysis framework; section 4 presents the case study consisting of two networks in analysis; section 5 discusses the results and finally, section 6 presents the conclusion pointing out the actions that may drive the generation of structural network policies. Review of Social Sciences Page 2 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 2.0 Literature review The collaborative scientific knowledge generation, involving scientists from different countries, is observed since the 19th century (Beaver and Rosen, 1979). Scientific collaboration networks contribute to enlarge and qualify scientific production. Authors such as Callon (1991) and Håkansson and Lundgren (1995) have shown a strong and direct relationship between RD&I and inter-organizational interaction networks. S&T knowledge is created and disseminated via knowledge networks nodes such as universities, research institutes and companies (Maggioni et al., 2007; Maggioni and Uberti, 2009) and, from an innovation policy view, developed countries have been changing the strategies of promoting and funding their R&D by encouraging the creation of cross-sector RD&I networks (Corley et al., 2006). Authors such as Callon (1992) and Orsenigo et al. (2001) show that the networks have been used in the fields of social, organizational and economic sciences to analyse institutional relationships. Hanneman and Riddle (2005) analyze the overall performance of networks through calculations of general cohesion and other calculations of more specific efficiency. However, Van der Valk et al. (2010) warn that the performance analysis has not been explored in studies of lato sensu networks. In the health area, there are studies of research networks such as Morel et al. (2009). Morel study aims to generating insights for R&D programs, describing how organizations and authors individually act in knowledge networks, their areas of expertise, and indicates the effects on scientist performance in joining the network, but it does not make use of network parameters to evaluate performance. Coulon (2005) defines a combination of parameters for the networks performance evaluation as: (i) robustness related to fragmentation with removal of links or nodes (clustering), (ii) efficiency in terms of the distance between not redundant nodes (the nodes reach other nodes with not redundant links) and their not redundant size, (iii) effectiveness in terms of the benefits of the information being centred in nodes cluster and (iv) diversity of history of each node. Glanzel and Schubert (2004) argue that patterns of cooperation between individuals and organizations observed in networks of co-authoring of S&T are useful to understand and evaluate the patterns of scientific collaboration and to generate S&T policies oriented to the strengthening of research networks in strategic areas, generating relevant effects on the dynamics of innovation. Therefore, it is necessary to analyse research co- authoring networks according to each performance: individual, collective and the resources shared. Several authors share the opinion that networks that are not structured, managed and governed with strategies, as a rule, do not have appreciable rates of knowledge development (R&D) of innovation and services (Raesfeld et al., 2012). Thus, the configuration of a network, defined by its players, relationships, resources and strategies, would be responsible for disseminating the knowledge, which in turn affects the innovative dynamics of the network as well as the possible services offered by it (e.g. education, supply of inputs etc.). In this context, the configuration analysis should focus on the network structure from the identification and connection between players, networks and should consider the information of social players. There is a long tradition of investigating the social networks of academic scientists based on the SNA, using co- authoring indicators of scientific papers (Balconi et al., 2004). Several studies show that the SNA methodology is suitable for the analysis of knowledge exchanges in scientific collaboration networks, in addition to generating indicators to define structural guidelines for the development of scientific collaboration networks. It can be said that the SNA has emerged in the area of operational research, with studies of graphs. This analysis based on mathematical approaches and statistics, searches to detect and interpret relation patterns between units either Page 3 individuals, institutions or nations (Wasserman and Faust, 1994). The SNA has been applied in various areas of knowledge such as health, history, information science, biology, medicine, and economics and in organizational studies. An important element that has made progress in the studies of SNA in the area of RD&I was the organization of major international co-authoring databases of public access such as Scopus, Web of Knowledge, Scielo, among others. These have been crucial to the design and analysis of scientific collaboration networks. The literature points to studies of specific measures of the SNA. Among them stands out the networks morphological analysis for examining the players (general cohesion and centrality) and subgroups (cohesion). Parameters such as density, brokerage, asymmetry, and kurtosis, which can have a direct influence on the formation and dissemination of knowledge of the network and, therefore, on innovation of the network should be examined. General cohesion Arranz and Arroyabe (2007) emphasize that the players’ cohesion is important in the development of R&D in network, whether in applied R&D or not. However, Gilsing and Duysters (2008) warn that the cohesion from a Review of Social Sciences Page 3 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 certain limit may reduce the individual and collective performance (subgroup) of the network players, since it creates a restrictive environment to the influence of new ideas and, therefore, the generation of new combinations of ideas, compromising the innovative dynamic. Thus, for both low levels of cohesion and high levels of cohesion the network performance may be compromised. It should be emphasized that there are on the market today many software programs that assists in the SNA, for example, the Ucinet software that works with multiple measures of cohesion as Average Degree, H-Index, Density, Components, Component Ratio, Connectedness, Fragmentation, Closure, Average Distance (SD Distance), Diameter, Breadth, Compactness, Krackhardt GTD and Geodesic Distance among others. Subgroups cohesion Hanneman and Riddle (2005) show that networks can be sectioned into regions expressed by components, bi- components and K-core and in subgroups such as clicks, n-clicks, n-clan, K-plex, factions and f-groups. Software programs such as Ucinet make this distinction. In addition, it is possible to generate another type of partition or subgroups in the network based on criteria such as institutional affiliation or type of research object (e.g. specific search strain of a culture collection). Girvan and Newman (2002) define the concept of communities such as the division of a network into groups, which internal connections are dense and the external connections are sparser, similar in concept to factions. It is known that subgroups sparsely connected or densely connected (cliquish effect) do not generate satisfactory performance with regard to the dissemination of knowledge. In other words, in the same way as the general cohesion, subgroups cohesion is not linear with respect to the dissemination of knowledge. According to Newman (2000, 2001 e 2004) and Wagner and Leydesdorff (2005), the best network configuration is the small world topology, since it combines the clustering of subgroups (intense knowledge sharing intra-subgroups and local trust) with the short distance between themselves (diversity and intensity of knowledge exchange inter- subgroups). There are other network topologies, also called complex networks models, which are mentioned in the literature and in network software programs (e.g. Pajek) such as scale free network (Albert and Barabási, 2002). Centrality The most frequently used concepts of players’ centrality are degree centrality, closeness centrality and betweenness centrality. Freeman (1979) shows that the networks with high degrees of centrality generally solve problems more efficiently because their leaders and team members understand with clarity their roles in the network, which favours the dissemination of knowledge in R&D and innovation in the network. Nambisan and Sawhney (2012), for models of RD&I focused on network, consider relevant two fundamental dimensions for the creative effort to generate innovation, which are the innovation space (continuum, from the defined to the emerging) and the leadership in the network (continuum, from the centralized to the diffuse). It should be noted that the differentiated networks in RD&I depend on many of their central players (“entrepreneur scientists”). Therefore, the strategic position of these players must be managed so that from any new relationships defined by them, the network is not changed greatly or, in the limit, does not generate network disruptions with their absences. The literature review indicated the contour of the methodological approach that is presented below with the Page 4 identification of the parameters that will be used for the performance evaluation of the paper networks. 3.0 Methodology SNA as a method for networks evaluation is the most used in the literature and was considered adequate for this paper. The specific elements to be analysed will be detailed and so theirs logical analysis. It will also be catalogued the additional elements that are part of the analysis process and limitations of scope for the research. The R&D networks need to be analysed from the view of the range of parameters to formulate a diagnosis of network dynamic. Thus, consideration should be given to the categories of general cohesion, cohesion of the regions/groups or subgroups and centrality of the network to analyse the strengths and weaknesses of the network. It is also noted the relevance of parameters of direct analysis of performance as presented in the efficiency analysis of the Krackhardt GTD (Ucinet software). The comparative performance analyses between networks that operate with the same object will also be used for purposes of networks evaluation, composing the assessment model in question. Review of Social Sciences Page 4 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 Thus, the study examines the overall network configuration, essentially, the macro morphological layout thereof, including its general characteristics, the relative amount of internal and external links, institutional links and the qualitative nature of these links. In addition, parametric analysis is made from the analysis categories (General cohesion, Subgroups cohesion and centrality). 3.1 Analysis method of the R&D network This research adopts the conceptual model of Van der Valk et al. (2010), for the purposes of co-authoring networks analysis in collections of microbiological resources (Brazil and Japan). This model assumes that there are no optimal values of the measures adopted for the R&D networks analysis. It evaluates the performance of the R&D networks in a comparative manner and, therefore, generates a diagnosis of strengths and weaknesses of these networks. It should be noted that the parameters/measures adopted in general cohesion, subgroups cohesion and centralization categories do not exhibit linear behaviour with the performance of the network. For example, the theoretical framework signals that for higher values of overall cohesion the network can benefit by the increment of synergy between players (strength), otherwise it can be undermined by the possibility of lock in (weakness). From the data point of view, we worked with international databases of scientists co-authoring. The method of addressing data consists in mapping, drawing, and discussing parametric network of R&D. Three software programs, in addition to the support of the analysis of the data in Microsoft Excel spreadsheets, were used in the analyses: Bibexcel, Pajek and Ucinet. The first step was to select the reference country (Japan), from which the Brazilian R&D co-authoring network would be compared. Having selected the two countries and identified the scientists from the WDCM, it was started the co-authoring networks construction working with recognized database (Scopus), identifying trustable identities (ID) of authors. Given the large amount of data, the last five years was assumed adequate for the analysis, in this case 2010-2014, and scientific papers were select as publication type. To delimit a meaningful and workable network, a cut-off of 3 papers per year was established. This cut-off point was defined from two criteria: (i) characterization of a network with a high standard of publication as referring to biotechnology sector with potential to generate technological development and (ii) that the cut-off would generate comparable networks and, therefore, with low percentage of difference of the number of players. For the interval of 5 years three possibilities were tested (3 papers/year, 2 papers/year and 1 paper/year) and the one that best met the two criteria was 3 papers/year. Finally, using the Pajek software, it was generated the drawing of the two networks and, therefore, an analysis of each network macro-conjuncture. The parametric analysis, operated with the aid of Ucinet software, grouped a set of parameters/measures into three categories - general cohesion, subgroups cohesion and centrality, for individual analysis and comparison of the two networks. For the comparative analysis, since there are no optimal values for the parameters, the referential of Van der Valk et al. (2010) was used. In addition, it was introduced new analysis measures, generating a more comprehensive evaluation of the R&D networks in relation to the theoretical framework adopted. It should be noted also about the method in question, that the authors define parameters by categories of analysis in its maximum and minimum limits and internal and external interrelations of adopted categories. Thus, the central point of the comparative performance assessment of the two networks is the way it operates the analysis of trade-off of the selected parameters, i.e., how the comparative analysis seeks the parameters balance point for the assessment of the networks performance. Page 5 3.2 Definition of network parameters by category and its meanings This item introduces the architecture of parameters/measures used in the evaluation of the R&D networks. Measures are presented by category, with its definitions, interval of values and the respective meaning to the high values of variables. The meanings for the minimum values were not explained as they can be inferred, although some are mentioned in the data analysis. Chart 1 presents the overall cohesion measures. Chart 1: Overall cohesion measures used in the study Range of Meaning for high values of the Category Measurement Definition Values measures This means that the network General Average Degree Number of average links of players AD > 0 should have high amount of cohesion (AD) (nodes) connections Number of links divided by maximum This means that the network Density (De) 0 < De < 1 possible number of links should have high density Review of Social Sciences Page 5 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 Connectedness The network is not One less the fragmentation (number of (CN) and 0 < CN < 1 fragmented, having only one not reachable vertices/nodes) Components component Average Path Average geodetic distance between There is a significant distance APL > 0 Length (APL) reachable pairs between the players There is a significant distance Diameter (Di) Length of the longest geodetic distance Di > 0 between the players Average of all the reciprocal distances (0 Compactness - zero when the network is entirely 0 < CM < 1 (CM) (cohesion composed of isolate players and 1 - when Greater cohesiveness based on distance) the network is a click - all players are adjacent) Efficiency (EF) - The extent to which underlying networks This means that the network 0 < EF < 1 Krackhardt GTD have redundant links should have lower density These measures inform different views of a network overall cohesion. These views can be described as: (i) whether there is or not fragmentation and its dimension (connectedness and components); (ii) the average (average degree) and relative (density) number of links, and the extent to which these links effectively connect the network nodes (average path length and diameter); (iii) network compactness (cohesion measured by distance); and (iv) efficiency of the networks. Burt (1992) shows some inter-relations among cohesion measures, for example: (i) if the average number of links is low, the density is also low and the diameter is high; (ii) if the diameter is high, the average path length is also high and compactness tends to have a lower value, decreasing the probability of cliques; (iii) if there is fragmentation, the distance is infinite, which reduces the connectedness; and (iv) efficiency of the network, measured by the quantity of nodes that may directly access a great quantity of different nodes through a small number of links (non-redundant contacts), increases with the shortest average path and with the lowest number of redundant contacts. Chart 2 presents for the sub-groups cohesion category measurements with its definitions, range of values, and meanings for high values of the measures. Chart 2: Cohesion measures of sub-groups Range of Meaning for high values of Category Measurement Definition Values the measures Bicomponents Subgroups Many weak and rupture (Bi) (top-down Number of vulnerable blocks Bi> 0 cohesion players in the network analysis) Factions (Fa) Many factions in the (top-down Number of faction blocks Fa> 0 network analysis) Maximum group of players being all K-core (K-c) connected to K other players (connected Greater number of K-core (bottom-up K-c> 0 maximal induced subgraph which has groups Page 6 analysis) minimum degree greater than or equal to k) Assesses the internal and external relations – its application is considered for the population and each group, meaning, the The groups will have more EI Index (EI) network as a whole and its sub-groups can -1 < EI < 1 external relations than be characterized in terms of the internal boundedness and closure of its sub- population The groups will carry out Brokerage (Br) Type and number of intermediates by group Br> 0 more intermediations in quantity and in diversity Weighted The weighted average of players clusters, 0 < CC < The network has different clustering with the weight being the player's degree 100% clusters coefficient (CC) With these measures, it is possible to assess the cohesion of sub-groups on the following aspects: Review of Social Sciences Page 6 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 (i) whether there are cut-points players, and how many, that generate maximum number of vulnerable blocks; (ii) how many sub-groups are factions (internally dense and sparse in external relations); (iii) how many sub-groups there are for K-core; (iv) the behaviour of institutional groups from the internal and external relations standpoint; (v) the quantitative brokerage per group; and (vi) the result from comparing the global clustering coefficient with the network's global density, checking, if there are cohesive groups on the network when such relation assumes high values. In the same manner as for the overall cohesion, there are a certain number of possible relations among sub- groups measurements. The vulnerable blocks may have similarities with the factions’ blocks, which may also be formed by clicks, n-cliques or K-cores that have characteristics of more closed to the inside and less closed or boundary. The blocks that are closed more to the inside reinforce the thesis regarding the existence of cohesive groups on the network, which is verified because the clustering coefficient is higher than the density. The network brokerage analysis, which allows the network to be seen from the brokerage blocks standpoint, must have an inverse relation to the factions blocks, which are more oriented to the formation of internal clicks and less to brokerage. Partition of network into blocks (vulnerable, factions or other type) generates a standard for the network, which allows analysing the types of blocks comparatively. Furthermore, it allows generating conclusions on the risks and potentialities of the network under different cut-offs. Chart 3 presents the centrality measurements, its values intervals and meanings to the high values regarding the centrality category. Chart 3: Centrality measurements used in the study Meaning for high values of the Category Measurement Definition Range of Values measures Direct influence measurement High quantity of players (central) Centrality Degree (DC) that a player has in relation to its 0 < DC < 100% on the network with significant contacts direct influence on their contacts High quantity of players (central) Related to the time that an on the network that are sufficiently Closeness information takes to be shared 0 < CLC < 100% close to other players shortening (CLC) with all players on the network, the time that an information takes considering the shortest paths to reach all High quantity of players (central) Considered as communication on the network that control the Betweenness control among all the other pairs communication via intermediation 0 < BC < 100% (BC) of players on the network, (positioning of the player on the considering the shortest paths shortest path between another two players) The highest number x so that Higher concentration of players H index (HI) there are x vertices of degree at HI > 0 with high degree least equal to x Assesses the distortion of a Several nodes with relatively high distribution (degree of Skewness (SK) SK = Any value degrees (Ass>0); several nodes asymmetry) around the average with relatively low degrees (Ass<0) Leptokurtic distribution - some Characterizes distribution in peal nodes with very high degrees Page 7 Kurtosis (K) or plane if compared to normal K = Any value (C>0). Platykurtic distribution - distribution several nodes with non-elevated degrees (C<0) The measurements in light allow analysing the centrality of the network result of the unbalance created by the centrality of its players, assessing: (i) the direct influence standard on the network while exposure index to which it is flowing; (ii) how distant players are from one another in relation to the time that information takes to reach everyone; (iii) the player's positioning frequency in the shortest path between two others; (iv) concentration of players degrees; and (v) characterization of network inequality comparing the degree distribution curve (assessing skewness and kurtosis) with the normal distribution curve - positive value for asymmetry indicates several nodes with relatively high degrees and negative value indicates distribution with several nodes with relatively low degrees. Positive kurtosis indicates a relatively peak distribution (a few nodes with very high degrees). Negative kurtosis indicates a relatively plane distribution (several nodes with not very high degrees). Review of Social Sciences Page 7 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 In the same manner as for overall cohesion and cohesion of sub-groups, there is a certain number of possible relations among the centrality measurements. Centralization in general holds direct relation with the H index, skewness and kurtosis of the network as these parameters indicate the concentration level of players. Ultimately, there are relations among the previously referred analysis blocks. For example, it may be stated that density (overall connection level of the network) and centrality (connection around focal players) are complementary measurements to define the network's performance. Abbasi and Altmann (2011) affirm that the scholars with strong co-authorship links and high centrality perform better than those with weak links and low centrality. Furthermore, the efficiency of a network or high performance of the co-authors is also expanded as these strongly relate with few co-authors of a high-cohesion group. This strengthens the importance of sub- groups and the ways through which sub-groups must relate each other to expand their performance. The network's brokerage blocks result from analysis of the brokerage centrality. The cut-points players (weakness points that may generate vulnerable blocks) are important as they signal the presence of key players for network integration. In general, networks with high density (low diameter) have low centralization and players are strongly connected. Highly connected players form groups or blocks that are more closed and less of boundary. 4.0 Case study The main motivation for this study was the Brazilian Government initiative to set up a Brazilian Biological Resource Centres Network (CRB-Br Network) in 2014, focused on microorganisms and cells. This proposal started with the need to consolidate a network of microbial collections, which was discussed for the first time at the Second International Collections Culture Congress held by the World Federation of Culture Collection (WFCC), carried out in São Paulo in 1973, with involvement of the Brazilian Microbiology Society (SBM). Since then, there have been several initiatives and investments to reach this network consolidation, culminating in the project “Consolidation of the Brazilian Biological Resources Centres Network” approved by the Brazilian Government Agency for Financing Studies and Projects (FINEP), in 2013. According to Da Silva et al. (2011), the CRB-Br Network is a government project that derives from the Global Network of CRBs, known by the abbreviation GBRCN and presented by OCDE (2001). The proposal of the Brazilian network of CRBs is structured on four sectors, which are associated with the following anchor institutions: Fundação Oswaldo Cruz (FIOCRUZ) for health; Empresa Brasileira de Pesquisa Agropecuária for agrobusiness; Universidade de Campinas (UNICAMP) for industry and environment. In addition to these core institutions, three other organizations take part of the network in a transversal manner, each one acting in a specific system: Instituto Nacional de Metrologia, Qualidade e Tecnologia (INMETRO), Instituto Nacional de Propriedade Intelectual (INPI) and Centro de Referência em Informação Ambiental (CRIA) were appointed respectively as quality, intellectual property and information managers for the CRB-Br network. The consolidation of a Brazilian network of CRBs was based initially on the estimates of the global market for products derived from genetic resources in the areas of drugs, pesticides, agriculture and other biotechnological applications, which were in the range of 500 to 800 billion dollars year (Vazoller and Canhos, 2005). In 2014, updated estimates of the Balkan Economic Forum (2015) pointed to values in the order of 16 trillion dollars for the pharmaceutical and foods and beverages industries. Regarding the microbiological collections, the microorganisms’ networks initiatives such as the Network of International Exchange Microbes under the Asian Consortium for the Conservation and Sustainable Use of Microbial Resources (NIEMA), in advance, focus on the conservation and sustainable use of microorganisms Page 8 (Ando et al., 2014). Meaning, prior to structuring a R&D and service network in microbiological collections, there is previous concern with setting up resources negotiation criteria that respect the Biological Diversity Convention (CDB) and the Nagoya Protocol (2011) regarding access to genetic resources and fair and equal distribution of benefits resulting from use of same. In the same manner, as per Holanda et al. (2012), the goal of the Brazilian Biological Resources Centres Network (CRB-Br) is to preserve and make sustainable use of the microbial biodiversity, via platform/network of culture collections, thus having to: (i) carry out excellence research; (ii) offer products and services certified for the scientific community and industrial complex (repositories and information); and (iii) promote the CDB, including matters relating to access and distribution of benefits established in the 2011 Nagoya Protocol. Canhos and Manfio (2000) showed that in Brazil microbial biodiversity research projects are carried out as of isolated initiatives from scientists, meaning that there is no structured network for researching microorganisms. Such reality is present to date, reason for which in 2013 the ongoing CRB-Br network project was released. In Brazil there are currently data on the microbial biodiversity integrated to data bases such as the SpeciesLink, Review of Social Sciences Page 8 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 Taxonline, and SiBBr. The data bases do not organize themselves as thematic networks sensu stricto, as conceived by Alvarez et al. (2002). In addition, the national program or network of biotechnology, does not account with structuring elements integrated as specialized laboratories (systematic, microbial ecology, biotechnology), CRBs, technology information centres and high-tech companies. There is a consensus within the Brazilian Government that the country needs to be prepared to contribute in the referred areas. Within the context of the CRB-Br Network set up remains the question regarding how robust the knowledge generation of Brazilian scientists that will grant support to the national networks of CRBs is. Accordingly, the array of scientists that comprise this study was set up. This paper analytical archetype shows the position of the Brazilian scientists’ network within the context of the CRB-Br Network. 4.1 Culture collections networks of Brazil and Japan The CRB-Br network has at the referred anchor institutions, inasmuch its locus of governance, collections of service, of reference, and of specialized/research (SBM, 2006). The main collections of these anchors institutions are registered with the WFCC. These collections curators and directors are the co-authoring network authors that compose the object of this study. In the same manner, the Japanese main culture collections are registered at the WFCC and the curators and directors are the players of the co-authorship network to be analysed. Referred collections are part of the biological resources centres that work with live material and house biological inputs for biotechnology development (Peixoto et al., 2006). The service collections represent relevant infrastructure in the conservation and distribution of genetic resources, they have R&D purpose in addition to providing products and services with high quality standards, one of the main objectives of the Brazilian and Global networks. WFCC 2014 records were used as base for definition of the collections. Thus, the researching scientists, of Brazil and Japan, were identified as of the records of the respective collections. The collection data were extracted from the WDCM, which in 2014, had records of 679 culture collections of 71 different countries (WFCC/WDCM, 2014). The services offered by the collections are, by common sense, of interest to national and international biotechnology companies. Therefore, directors and curators present in the WDCM data bases form the R&D co- authorship networks that represent the start of the biotechnological innovation chain, in general segmented from the commercial standpoint in the areas of health, agriculture, industry and environment. The option to compare the Brazilian network with the Japanese network was because Japan, among the developed countries, has GDP and population closer to that of Brazil and because the collections of Japan are reference in the Asian continent as well as throughout the world. The objectives of the collections of both countries are similar, according to the WFCC, as they render services in storage, distribution, identification, training, and consulting. The databases of the collections of these two countries also have similarities such as: (i) the largest contingent of the collections is of fungi and bacteria; (ii) protozoan collections have similar percentage representability; (iii) the contingent of yeast collections have approximate quantitative; and (iv) the presence of few collections of cells and algae. Thus, due to close conjuncture contexts and to objectives and nature of the collections being similar, it is assumed that the collections network of both countries provide a reasonable base for comparison of their scientists networks. Page 9 5.0 Result and discussion The culture collections co-authorship networks of Brazil and of Japan for the 2010-2014 period with a 3 paper per year cut-off are shown in Figures 1 and 2. The networks were designed based on the players (scientists) related to their culture collections and respective institutions. There are a similar number of institutions involved in the two networks in question, 13 for Brazil and 12 for Japan. The Brazilian network is slightly broader, containing 34 scientists with 53 connections, while the Japanese network has 26 scientists with 67 connections. Thus, one first important aspect of the networks configuration is how much less connected the Brazilian network is in relation to the Japanese network. Figures 1 and 2 work with two types of information, one regards the citation frequency in the original network (without cut-off), represented by the author/institution circle diameter, and other shows the co-authorship information (with cut-off), revealed by the link width as well as by the number of links between authors/institutions. Names of institutions appear with two numbers, the first signals the author number in the institution and the second his or her total number of publications (proportional to the diameter). For example, Embrapa6-19 (Figure 1) means that this is the sixth author of Embrapa with a total of 19 papers (co- Review of Social Sciences Page 9 Social network analysis as an analytical archetype … Esteves et al., RSS (2016), 01(05), 1-17 authorships). Another important number is the one that comes associated to the links between institutions (authors), for example between Ufsc2-17 and Ufsc1-19 (Figure 1) in which there are 11 papers (co- authorships). The combination of these two information, total of co-authorships and number of links between authors/institutions, allows inferring how much the external relations of such base are larger than the internal. Considering the comparison of the diameter value (external and internal to the network) and the co-authorship amount of links (internal to the network), it is automatic to observe how much both, the Brazilian and the Japanese networks, have several players/institutions with more external than internal links. This means that these networks have other networks. As culture collections networks are a fresh subject, it is not know to what point these are networks planned and with strategy for services and development in technology and biotechnology innovation. Meaning, these can be “serendipitous networks” where the co-authors/institutions relate without a collective concern towards R&D results for innovation purposes. Chart 4 presents each network institutions of Figures 1 and 2 per country and per service area. This chart shows that there are a larger number of institutions/players per service area in the Japanese network in comparison to the Brazilian network, although there is a close number of research institutions associated to the collections, 12 and 13 respectively. It also can be observed in this chart that in Brazil some institutions, such as Fiocruz and IAL, only work with one service area, which is uncommon in Japan. While in Japan, only two institutions operate in a specific area, in Brazil there are eight institutions. Chart 4: Institutions of the study per service area and country1 and 2 Collections Service Brazil Japan Area Healthcare Fiocruz, Ufce, Ufrj, Ial 4 Nias, UnivTokyo, ChibaUniv, TeikyoUniv, 6 GifuUSchMe, Riken Agriculture Embrapa, Usp, Ceplac, Ufvç, Ufpe, 6 OsakaUniv, Nias, UnivTokyo, Nbrc, Riken, 6 Fepagro TokyoUAg Environment Ufce, Ufpe, Unesp, Ipt, Ufsc, Ufvç 6 MarineBI, Nias, UnivTokyo, ChibaUniv, 8 Nies, Nbrc, Riken, TokyoUAgT Industry Fepagro, Ufpe, Unesp, Ipt 4 OsakaUniv, MarineBI, Nias, Nies, Nbrc, 7 TokyoUAg, TokyoUAgT By a combining analysis of Chart 4 and Figures 1 and 2, it can be seen that Embrapa is the institution that established the largest contingent of inter-institutions connections (Maggioni et al., 2007) engaged in a single service area, while in Japan, Riken is the one with the largest amount of connections (49), although engaging in 3 service areas. Page 10 1 Brazilian institutions: Fiocruz – Fundação Oswaldo Cruz; Ufce – Universidade Federal do Ceará; Ufrj – Universidade Federal do Rio de Janeiro; Ial – Instituto Adolfo Lutz; Embrapa – Empresa Brasileira de Pesquisa Agropecuária; Usp – Unviversidade de São Paulo; Ceplac (MAPA) – Comissão Executiva do Plano da Lavoura Cacaueira; Ufvç – Universidade Federal de Viçosa; Ufpe – Universidade Federal de Pernambuco; Fepagro – Fundação Estadual de Pesquisa Agropecuária (RS); Unesp – Universidade Estadual Paulista; Ipt – Instituto de Pesquisas Tecnológicas; UFSC – Universidade Federal de Santa Catarina. 2 Japanese institutions: OsakaUniv - Osaka University; Nias – National Institute of Agrobiological Sciences; UnivTokyo – University of Tokyo; ChibaUniv - Chiba University; TeikyoUniv - Teikyo University; GifuUSchMe – Gifu University School of Medicine; Riken - Riken Biosource Center; Nbrc – Institution Biological Resource Center, National Institute of Technology and Evaluation; TokyoUAg - Tokyo University of Agriculture; MarineBI – Marine Biotechnology Institute; Nies – National Institute for Environmental Studies; TokyoUAgT - Tokyo University of Agriculture and Technology. Review of Social Sciences Page 10

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Social network analysis. JEL Classification: I19 . case study consisting of two networks in analysis; section 5 discusses the results and finally, section 6 presents the conclusion pointing . example, the Ucinet software that works with multiple measures of cohesion as Average Degree, H-Index,. Den
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