January 2021 Download this article as a PDFAbstract

Opportunity identification is a continuous process in ecosystems. However, ambiguities and challenges associated with knowledge exploration and exploitation can retard opportunity recognition processes. This in turn may culminate in excessive expenditure of resources or loss of latent opportunities. The present study adopts an analytical approach and proposes a methodological roadmap that utilizes scientometric and text mining techniques. The roadmap uses data from Web of Science as input, and generates insights that support decision-making about resource saving, strategic planning, investment, and policymaking. Our roadmap extends methods used in studying ecosystems by combining existing and novel techniques in data analytics. Using Python and VOSViewer, we show an exemplary application of the new roadmap, framed in the context of the Nordic countries’ renewable energy ecosystem.

1. Introduction
Managers and policy-makers are increasingly attracted to ecosystems. Actors constantly seek opportunities in knowledge (Jarvi, 2018; Almpanopoulou et al., 2019), innovation (Valkokari, 2015; Valkokari et al., 2017; Ketonen-Oksi & Valkokari, 2019), and entrepreneurial (Autio et al., 2014; Stam, 2015; Thomas & Autio, 2020) ecosystems. However, ambiguities and challenges associated with knowledge exploration (for example, lack of resources) (Jarvi et al., 2018; Almpanopoulou et al., 2019) and exploitation (for example, actor engagement, governance) (Clarysse et al., 2014; Jarvenpaa & Välikangas, 2014, 2016) make opportunity recognition processes time-consuming, resource-intensive, and risky for ecosystem actors (Khademi, 2019). As no systematic way exists for mitigating the effects of these challenges, the present paper develops an analytics-driven roadmap for systematically identifying opportunities in spatially bounded ecosystems. The roadmap enables better decision-making with respect to strategic planning (collaboration, investment), promulgating innovation policy instruments, and saving resources (time and budget). 
 
Since James Moore used the metaphor “ecosystem” (Moore, 1993) to show similarities between technology-driven networks and natural ecologies in terms of their “co-evolution” process and the symbiotic interrelationships required, thousands of scholarly contributions have extended our understanding of ecosystems. Scholars have identified various types of ecosystems such as business, innovation, knowledge, entrepreneurial, and service ecosystems (see Scaringella & Radziwon, 2017; Valkokari, 2015 for distinctions between ecosystem types). This study mainly deals with knowledge, innovation, and entrepreneurial ecosystems. 
 
It is no secret that opportunity identification is of paramount importance for organizations. In business word, opportunity recognition is usually known as seizing those initiatives that are directly translated into financial value. Examples of such business opportunities include new market segmentation and diversification of solution portfolio. Given today’s competitive markets, businesses do not survive without exploiting new opportunities. 
 
As it pertains to ecosystems, opportunity identification is critical for survival. Research shows that more than 85% of ecosystems fail at some point, with lack of adequate problems and opportunities being among the major failure reasons (Pidun et al., 2020). In ecosystems, opportunities are different from merely gaining short-term financial value. Depending on the type of actor and ecosystem, actors seek different ways of contributing to the value co-creation process and coming up with final solutions. In knowledge ecosystems, actors (universities, research organizations, public sector, for-profit organizations) need to identify collaborative research partners, aim to win research grants, and seek external funding. Entrepreneurial ecosystem actors (tech start-ups, university spin-outs, investors) emerge around knowledge hubs to commercialize new knowledge and enhance their investment portfolio (Autio et al., 2014; Stam, 2015; Thomas & Autio, 2020). To facilitate knowledge exploration and exploitation, innovation ecosystem actors (policy-makers, funding agencies) support new knowledge creation (for example, financing, providing co-working spaces) and engage actors through incentivization (Valkokari, 2015; Ketonen-Oksi & Valkokari, 2019). 
 
Figure 1 shows interacting and integrating mechanisms between the three types of ecosystems. Table 1 shows examples of existing ecosystems, actors, objectives, and opportunities for the three ecosystem types. 
Figure 1. Interacting and integrating mechanisms between ecosystems
Table 1. Ecosystem structures, objectives, opportunities and examples
 
However, opportunity identification is a sophisticated process because of ambiguities and challenges associated with knowledge exploration, knowledge exploitation, and integration mechanisms. In knowledge ecosystems, actors face issues such as resourcing, absence of consensus involving knowledge domains and participating actors (Jarvi et al., 2018), lack of prior knowledge of other actors (Lindkvist, 2005), and policy and cognitive constraints (Almpanopoulou et al., 2019). Governments face challenges when integrating knowledge exploration and exploitation with respect to selecting areas of excellence in research for the region, making valid decisions to provide research grants, and organizing for collaborative research partnerships, which requires facilities and governance (Valkokari, 2015; Ketonen-Oksi & Valkokari, 2019). Industry players and private-sector investors should decide whether and to what extent investing in knowledge exploration and exploitation is profitable. Tech start-ups should find ways to persuade public and private sectors to fund their ideas or prototypes. Otherwise, potential opportunities may remain latent, or their untimely exploration can pose noticeable expenses to actors.
 
Previously, scholars have studied these challenges mainly using inductive approaches. They have suggested practices such as open innovation, selective and interactive revealing and governing, collective action and orchestration, and knowledge formalization through virtual collaboration (Rohrbeck et al., 2009; Perry et al., 2010; Pellinen et al., 2012; Alexy et al., 2013; Jarvenpaa & Välikangas, 2014, 2016; Jarvi et al., 2018) in specific contexts. Yet, no systematic method for accelerating opportunity recognition in ecosystems currently prevails.
 
Within this content, the objective of the present study is to bridge the above-mentioned research gap by adopting an analytical approach and proposing a roadmap for systematic opportunity identification in ecosystems. Specifically, we aim to develop a roadmap that inputs data from Web of Science (WoS), utilizing scientometric and text mining techniques, and enables actors of different ecosystem types to systematically identify opportunities. To show how the roadmap operates in practice, we demonstrate its application using bulk scientific data collected on renewable energy from the Nordic region (Finland, Sweden, Norway, Denmark, and Iceland). The main research question navigating our paper is as follows: How can opportunity recognition processes in ecosystems be accelerated and enhanced systematically and parsimoniously?
 
We begin by delineating the details of the proposed roadmap. Next, we describe the methods used for an example application of the roadmap. Subsequently, we present findings of the exemplar. Finally, we discuss contributions of the study, and conclude by outlining limitations as well as potential future research avenues. 
 
2. A Roadmap for Systematic Opportunity Identification in Ecosystems
The roadmap enables actors of a region to systematically identify opportunities in a specific knowledge domain using data derived from Web of Science (WoS). It can be applied to different settings in terms of domain, region, and timeframe. Figure 2 illustrates the ten sequential steps used when implementing the roadmap, which we elaborate on below.
Figure 2. Methodological roadmap for systematic opportunity identification in ecosystems
2.1 Boundary Definition
The first step is to make decisions regarding the knowledge domain (for example, renewable energy), regional boundaries (for example, the Nordic region), and time span for analysing bibliographic data (for example, 1999-2019). Such decisions depend on the project in hand and the value creation rationale for actors. 
 
2.2 Question Formulation
Step 2 involves formulating questions that can be answered by implementing the roadmap. A non-exhaustive list of the example questions that can be formulated and answered using this roadmap is shown in Table 2. 
Table 2. Example questions to be answered by using the roadmap
2.3 Journal Selection
The third step is to select highly ranked journals in the ecosystem’s field. In so doing, one can use Scimago Journal & Country Rank (SJR) or national ranking systems. SJR is a well-known source, which assigns each academic journal to a “quartile” (Q), with Q1s as the most respected journals.
 
2.4 Database Selection
The fourth step is to select a database for data extraction. We recommend selecting WoS when using this roadmap because in comparison with SCOPUS it provides a longer time span and wider coverage of citations, more comprehensive metadata for funding agencies, and harmonized names for research organizations and universities.  
 
2.5 Sampling and Information Retrieval 
The fifth step is to prepare a thorough list of keywords and terms to search for the relevant publication records. Sampling strategies for scientific publications are implemented with the continuous involvement of field experts to optimize percentages of recall and precision.
 
2.6 Data Extraction
The roadmap’s inputs consist of two types of data: WoS Reports and bibliographic records. The Reports consist of descriptive statistics from the sample, as well as citation reports on the sample. It is necessary when extracting bibliographic data to consider in advance the tools employed for data munging, analysis, and visualization. Since employing programming languages increases the accuracy of analysis, we recommend extracting tabular datasets (for example, tab-delimited text files) to maximize accuracy.
 
2.7 Data Wrangling
Downloaded data usually requires “wrangling” prior to analysis. The main tasks are filling in missing values, entity (funding agencies and journals) name harmonization, pre-processing abstracts, and preparing new datasets for data analysis. Separate datasets are generated for each unit of analysis with a column related to the year of publication for each record. In addition to publication year, funding agency dataset should include a column related to country names, while abstracts should include the number of publication citations (see 2.8).
 
2.8 Data Analysis 
Except for network clustering, data is analyzed both statically and dynamically. In static measurement, the entire timeframe T is taken into account, whereas in dynamic analyses, T is divided by the number of years. 
 
Productivity 
Static productivity of research departments is measured via four metrics: the h-index, share of departments in the total number of records, share of departments from all citations received by the sample, and percentage of self-citations for each department. Dynamic analysis of the number of publications and citations provides rigorous insights regarding business productivity over time. 
 
Clustering 
Departments are clustered based on research similarity and collaboration using bibliographic coupling and co-authorship analysis, respectively. We recommend using VOSViewer (van Eck & Waltman, 2009), as it provides specific features and configurations for clustering and visualization. 
 
Analysis of funding agencies
The absolute number of high-quality publications in a specific domain positively correlates with the size of research grants (Gralka et al., 2019). Accordingly, more papers get published in prestigious journals by grantees from funding agencies, while research output within a specific field positively correlates with larger sizes of grants allocated by funding agencies for that knowledge domain. As a novel measure, we rank funding organizations statically based on their share in the total pair number of paper-sponsor records. A dynamic analysis calculates the yearly frequency of support for each agency. 
 
Journal analysis
Journals in the sample are analyzed statically via their publishing share. The share of each journal is calculated via the frequency of published outputs in that journal divided by the total number of records in the sample. Dynamic analyses calculate the yearly number of papers published by each journal. 
 
Topic modelling
For a static analysis, latent Dirichlet allocation (LDA) is employed for theme exploration by analyzing abstracts over the timeframe T. Dynamic analyses of abstracts are divided into two types of analysis: popularity and impact. For the former analysis, theme transitions are based on the yearly frequency of terms used in the abstracts. The results indicate themes that have been more popular over time in the region, where emphasis on recent years can be helpful for forecasting. For the latter analysis, the same method is employed by using only a slice of data that contains the most cited papers for each year. The analysis output shows the most impactful research themes conducted in the region on a yearly basis. 
 
2.9 Visualization
To report the results in an informative way, roadmap users should employ different types of visuals for each type of analysis. For static representation of analyses involving productivity, funding agencies, and journals, bar charts are often the best options. To visualize outputs related to dynamic analyses, line charts can be employed. Network visualizations provided by VOSViewer demonstrate clusters of research departments based on similarity and collaboration. Word clouds report the output of static topic models.  
 
2.10 Interpretation
At this stage, the outputs of all descriptive and predictive insights are used collectively to discover prescriptive implications for different actors and ecosystems. Table 3 is a non-exhaustive list of implications depending on the types of ecosystem and actor.
Table 3. Prescriptive implications of the roadmap
3. Example
In this section, we discuss the relevance of the Nordic renewable energy ecosystem and delineate multiple methods used to test the roadmap. Note that this example does not refer to any specific existing ecosystem within the Nordic region. Rather, we show how a hypothetical application of the proposed roadmap can support decision-making for those who may would like to consider forming a new ecosystem, expanding an existing one, or joining an existing one.
 
3.1 Relevance
The Nordic renewable energy ecosystem supplies a relevant exemplar for our roadmap application for three reasons. First, renewable energy is well-known for heterogeneity of actors and taking a collective approach to creating new knowledge (Dougherty & Dunne, 2011). Second, Nordic countries have consistently ranked among the top 15 countries worldwide in terms of percentage of gross domestic product (GDP) spent on research and development for the last two decades (OECD, 2018), which has enabled the extraction of rich bibliographic data resources. Third, an emphasis is placed  by Nordic countries on the need for identifying opportunities through empirical scientific energy research within the Nordic region (NEA). 
 
3.2 Data Extraction and Sampling 
SJR was the most suitable journal ranking system for this study with its category that designates “Renewable Energy, Sustainability and Environment” (SCImago). This made it reliable to filter our search of scholarly journals relevant to renewable energy. The choice of journals was limited to Q1 and Q2 journals to ensure a sample of the most scholarly research (79 journals). WoS has a subscription for 74 out of the 79 identified sources (94%), where all Q1 journals were covered. 
 
Data extraction and sampling processes were conducted in April 2020. We used the keyword “energ*” in the search field “Topic” in WoS to ensure extraction of a sample related to renewable energy. Our search strategy filtered the results to those papers published in English, with at least one author affiliated to a Nordic organization. We also limited the results to the timeframe T1 = (1999-2019) both because of the upward trend in funding greenhouse gas emissions reduction research (Overland & Sovacool, 2020), and a rise in renewable energy research outputs (Ziegler, 2011) since 1999. It is noteworthy that data from 2020 were excluded due to being incomplete. The final sample included N = 6,148 journal articles. Yearly number of publications, citations, self-citations and h-indices for the top 15 research departments were extracted from WoS Reports. Figure 3 illustrates the step-by-step sampling process. 
Figure 3. Step-by-step sampling process
3.3 Data Wrangling, Analysis and Visualization
We filled the missing values in the column containing publication years. Next, we created harmonized entity names using Python string manipulation techniques, regular expressions, a Fuzzywuzzy library, and human intervention. Also, we generated a VOSViewer thesaurus file containing disambiguated names of research departments. Subsequently, new datasets were formed according to the roadmap instructions. Finally, we conducted abstract pre-processing and topic modelling using the Python Spacy and genism LDA libraries, respectively. 
 
We took into account two timeframes T1 = (1999-2019) and T2 = (2014-2019) for the static and dynamic analyses, respectively. Selecting the last six years (T2) for a dynamic analysis provided the proper line plots for forecasting. We utilized Python (Matplotlib and Word Cloud modules) and VOSViwer to present the results.
 
4. Results 
Here we present the results of the roadmap application based on the types of analysis described in the roadmap. 
 
4.1 Productivity 
As we filtered the data to find renewable energy research only, we did not compare productivity of entire organizations. Rather, we limited the comparison to departmental research about renewable energy. We thus used the term “department” to refer to renewable energy research groups (or units) in universities and research organizations.
Table 4 illustrates the top 15 productive Nordic departments in renewable energy research. Arguably, the renewable energy department at DTU ranks first with an h-index of 86. Departments for KTH and Uppsala University are the laggers. Besides the renewable energy department for NTNU, all top 10 departments belong to Sweden and Denmark. Taking the number and share of papers associated with renewable energy departments of Uppsala University and Lund University into account, their number and share of citations were relatively high. In general, the percentage of self-citation is relatively low for all departments.
 
Table 4. Scientific productivity of Nordic renewable energy research departments
Figure 4 depicts the yearly number of publications by each of the top 10 most productive departments in T2. The yearly number of publications has been growing for most departments. The records for DTU’s renewable energy department have fluctuated over time, then spiked in 2019. Among the top 10 departments, the slope for yearly number of publications for Aalborg University, KTH, and NTNU is steep. The renewable energy department for Aalborg University shows the fastest recent publication rise, overtaking DTU’s renewable energy department in 2018. The number of published papers by the renewable energy departments of Uppsala University, Lund University, and Aarhus University increased significantly in 2016-2017, but have since fluctuated. 
Figure 4. Yearly number of publications for the top 10 productive departments
Figure 5 shows yearly number of citations received by the top 10 most productive departments in T2. Except for the renewable energy department at the Swedish University of Agricultural Sciences, the numbers for all top 10 departments have surged in recent years. The yearly citation slope for DTU’s renewable energy department is constant and with a dominant position, while the renewable energy departments for KTH, Aalborg University, Chalmers, and NTNU have been noticeably impactful. Uppsala University, Lund University, and Aarhus University show a significant research impact in renewable energy.
Figure 5. Yearly number of forward citations for the top 10 productive departments
We anticipate that DTU will keep its dominant position in renewable energy research. However, the competition will be tighter among DTU and other institutions. KTH, Aalborg University, and NTNU have been more productive than DTU in renewable energy research within T2. We expect that the renewable energy departments for these institutions will aim to publish more frequently. Renewable energy research affiliated to KTH, Aalborg University, Chalmers and NTNU has been noticeably impactful and we predict that the corresponding departments in these organizations will continue to be increasingly influential in the Nordic scientific community for renewable energy. Renewable energy departments for Uppsala University, Lund University, and Aarhus University have recently shown a significant rise in number of publications and research impact, and their productivity is also expected to rise.
 
4.2. Clustering
Figures 6 and 7 depict the clusters based on collaboration and research similarity, respectively. Nordic renewable energy research departments tend to collaborate with their parochial counterparts. Finnish and Norwegian departments have been particularly less interested in cross-border collaboration. Swedish and Danish departments, in contrast, have collaborated with renewable energy departments from the EU, USA, and China. International collaboration also contributes to higher levels of productivity.
Figure 6. Clusters of Nordic renewable energy departments based on collaborative behaviour
Although international collaboration between Nordic countries is not so common, their research outputs nevertheless share similarities (see Figure 7). For example, the clusters of Danish and Norwegian departments that were formed based on their research similarity (see the dark blue and purple clusters in Figure 7) are less distinct in comparison with their clusters based on their research collaboration propensity (see the purple and red clusters in Figure 6). The European organizations are more spread out between clusters in Figure 7, showing similarities in renewable energy research across European countries. 
Figure 7. Clusters of Nordic renewable energy departments based on research similarity
Research similarities cannot be solely justified by collaboration and potential remains open to form new partnerships. For example, while the similarity of research between Wageningen University & Research and VTT is high, no previous record of collaboration exists between these institutions in renewable energy research. The same pattern applies to the departments at the Helmholtz Association and Institute for Energy Technology. Note that although our analyses may assist with systematic identification of possible collaboration opportunities, actual partnership formation between institutions depends on other factors, such as availability of resources. 
 
4.3. Analysis of Funding Agencies 
Figure 8 shows the top 15 Nordic funding organizations with the biggest shares in the total number of funded research outputs. The Swedish Energy Agency and Swedish Research Council with 15.5% and 14% shares rank first and second, while the Research Council of Norway (11%) and Academy of Finland (8%) rank third and fourth. Business Finland (Tekes) occupies the fifth position with a share of 3.2%. Among other funding agencies, no single organization has a share larger than 3%. Figure 9 depicts the share of Nordic countries in funding renewable energy research.
Figure 8. Share of the top 15 Nordic funding agencies in supported publications
Figure 9. Share of Nordic countries in supported publications
Figure 10 depicts the yearly number of papers sponsored by the top 10 Nordic funding agencies over T2. The yearly number of publications sponsored by the Swedish Energy Agency, Swedish Research Council, Research Council of Norway, and the Academy of Finland has surged. In addition, the yearly number of outputs supported by Business Finland and Innovation Fund Denmark has increased noticeably.
Figure 10. Yearly number of sponsored papers for the top 10 Nordic funding agencies
Our analyses suggest that the Swedish Energy Agency will continue to be the top Nordic funding agency in support of renewable energy research. The slope for the number of publications authored by grantees of the Research Council of Norway was steeper than that the Swedish Research Council grantees over T2, hence it is likely that the Research Council of Norway will rank second. In a similar vein, the Academy of Finland is considered as a potential rival for the Swedish Research Council. The grantees of Innovation Fund Denmark published a higher number of papers than Business Finland in 2018-2019, and thus, Innovation Fund Denmark might overtake Business Finland. The Swedish Energy Agency, Research Council of Norway, Swedish Research Council, and the Academy of Finland will continue to sponsor renewable energy research more noticeably than other Nordic funding agencies.
 
4.4. Journal Analysis
Table 5 lists the top 20 journals with publications authored by scholars based in the Nordic region in T1. 
 
Table 5. Top 20 journals of interest for Nordic organizations in renewable energy research
Figure 11 shows the yearly number of papers published by each of the top 10 journals in T2. The number of papers published in Energies and the Journal of Cleaner Production has risen dramatically, whereas the number of papers published in the International Journal of Hydrogen Energy has fluctuated over time, with the closing number in 2019 even lower than the initial number in 2014. Among other journals, scholars affiliated with the Nordic region have published more frequently in Renewable & Sustainable Energy Reviews as well as Sustainability. Recently, scholars based in the Nordic region have been less enthusiastic with publishing in Biomass & Bioenergy, and Renewable Energy.
Figure 11. Yearly number of papers published in the top 10 journals
A significant rise in the number of papers published in Energies and the Journal of Cleaner Production can thus be expected. Scholars affiliated with Nordic organizations are most likely to publish in Renewable & Sustainable Energy Reviews and Sustainability, but less often in Biomass & Bioenergy and Renewable Energy
 
4.5. Topic Modelling 
Figure 12 depicts the topic coherence (using c_v algorithm) for topics in the range K = (2-50). Although coherence was maximum in K = 14 (0.53 after hyperparameter tuning), we found the number of clusters inadequate. The topics did not encompass socio-techno-economic issues, energy storage and distribution, and renewable energy sources. Therefore, we repeated the analysis until we reached a conclusion that at K = 42, the above issues were addressed sufficiently (coherence of 0.48 after hyperparameter tuning). The word cloud in Figure 13 displays the output of the LDA model, while Table 6 details our subjective clustering of the word cloud.
Figure 12. Topic coherence measure for K = 2-50
Figure 13. Word cloud for 42 topics
Table 6. Clusters of renewable energy research in the Nordic region
Dynamic analyses show that the research intensity in all five clusters has risen over time. Growth of interest towards socio-techno-economic issues has been the highest, followed by energy production, storage and distribution. Among socio-techno-economic research themes, energy policy, energy efficiency, market demand, scenario analyses (supply cost and price), sustainable transition, supply chain and logistics, environmental impact, and lifecycle assessment are the most popular. Biomass and solar energy research received noticeable attention in 2018-2019. In contrast, despite a surge in 2019, wind energy research has been less popular. The rising popularity of bioenergy, biogas, biofuel, wave, geothermal, and hydropower sources is also evident. Hydrogen energy storage and power grids research has gained traction conspicuously since 2014. In energy consumption research, household consumption as well as applications of renewable energy sources in buildings, electric vehicles, and public lighting have been of the most interest. 
 
Dynamic analyses also show energy cost modelling is among the most impactful themes. In a similar vein, solar and biomass energy themes have consistently been among the most cited topics. The impact of hydrogen energy storage research has fluctuated, eventually reaching a peak in 2019. Energy efficiency research has been among the most cited themes since 2017. Despite a surge in 2016-2017, research on environmental issues has not been among the most impactful themes. 
 
5. Discussion and Conclusion
Our study addressed the theoretical debate on challenges in knowledge exploration (Lindkvist, 2005; Jarvenpaa & Välikangas, 2014, 2016; Jarvi et al., 2018; Almpanopoulou et al., 2019) and exploitation (Clarysse et al., 2014) in ecosystems. In contrast to the previous inductive approaches (Rohrbeck et al., 2009; Perry et al., 2010; Pellinen et al., 2012; Alexy et al., 2013; Jarvenpaa & Välikangas, 2014, 2016; Jarvi et al., 2018), our proposed analytical approach resulted in a systematic methodology that saves resources (response to the research question) thanks to the availability of scientific publications data. 
 
5.1 Managerial and Policy Implications
In this paper, we showed a hypothetical exemplary application of the proposed roadmap used on the Nordic renewable energy ecosystem. Below, we show examples of implications for actors of each ecosystem type in the Nordic region. Note that when applying the roadmap to other contexts (with respect to knowledge domain and region) the prescriptive implications will be similar (see Table 3). 
 
As it pertains to the knowledge ecosystem in Nordic renewable energy research, research scholars and department managers can use insights from the roadmap for strategic planning, identifying research partners for prospective projects, drafting publications and grant applications collaboratively, and recruiting new cohorts. C-suite industry managers can evaluate the productivity of their departments and academic allies for collaborative research, as well as discern research areas with noticeable financial and social value. Journal editors (across the world) can plan to publish special issues (or joint special issues with other journals), applicable to practical energy-related problems within the Nordic region. The knowledge gained about popular and impactful themes through topic modelling can provide opportunities to address grand challenges in the Nordic region. 
 
In innovation ecosystems, federal and state-level policymakers can intervene in research and relevant industry sectors with supportive and regulatory policies to improve  research departments’ productivity, optimize grant size for funding agencies, systematically organize university-industry-government collaborations, and direct private sector investments towards promising research themes. In addition, governments and research councils can change the direction of job creation programmes towards pertinent areas where research can potentially create financial and social value. Managers in Nordic funding agencies can illustrate their efficiency according to grant allocations. In large funding organizations, the larger share in the number of published papers by grantees in a specific domain can be associated with more efficient research outputs by the grantees, hence giving more validity for decision-making in grant allocation. Moreover, funding agency managers can collectively define new funding programs that focus on crucial research topics in the Nordic region. 
 
In entrepreneurial ecosystems, university graduates, academic entrepreneurs, university spin-offs, and tech start-ups can seek grants from the top funding agencies or private sector investors to servitize or productize their prototypes. In so doing, the focus on more relevant themes will increase the chance for entrepreneurs to persuade public funding agencies and private sector investors to financially support their proposed projects. Furthermore, private sector investors (business angels, venture capitalists) can make informed decisions when evaluating proposals to finance start-ups and university spin-offs, as well as to invest in collaborative research in various knowledge ecosystems.
 
5.2 Methodological Novelty
Our study’s methodological relevance is based on the need for developing new methods in technology and innovation management research (Ritala, Schneider, & Michailova, 2020), and particularly for analyzing ecosystems (Khademi, 2019, 2020), as has been accentuated recently. The proposed roadmap combines techniques in productivity measurement, network-based clustering, and text analytics. We applied four novel techniques when devising the roadmap: 1) simultaneous application of regional, dynamic, and domain-specific analyses, which can be beneficial for mitigating boundary-related challenges in ecosystem research design (Phillips & Ritala, 2019) by controlling for the boundaries of created scientific knowledge, 2) combining co-authorship analysis and bibliographic coupling, which is helpful for systematically identifying possible collaboration opportunities, 3) extracting insights from the metadata regarding funding agencies, which helps not only the agencies, but also governments, researchers, and practitioners, and 4) employing new techniques when identifying research themes in a geographically-bounded region, which creates value for public and private sectors for investments. 
 
5.3 Limitations and Potential Avenues for Future Research
Our study was subject to four limitations, which can be regarded as starting points for future research. First, our roadmap does not investigate diagnostic analytics. Although exploring causal relationships can be highly valuable for long-term predictions, the process is also highly context-specific and requires primary data collection. Second, we considered only scientific publications along with techniques of our choice to devise the roadmap, whereas other data sources and techniques could have culminated in alternate roadmaps. In the future, researchers can use other WoS metadata or sources (for example, patents and market reports) to devise new roadmaps. Third, we did not take into account the ranking of selected journals for analyzing funding agencies. Employing this strategy could have resulted in deeper knowledge about the impact of outputs per sponsor. Scholars can thus take this shortcoming into consideration for future research. Finally, it could be of interest to see the real financial and social values of the roadmap in experimental projects. For this, researchers can therefore employ the roadmap in projects and report the pros and cons of the roadmap. 
 
In conclusion, this study proposed a novel analytical approach for identifying opportunities in ecosystems. We also showed an example of how the application of our roadmap can benefit ecosystem actors. Data analytics, as this example indicates, can therefore open up several new windows for academics, managers, and policy-makers.

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Keywords: ecosystem, knowledge, opportunity, roadmap, scientometrics, text mining