The Impact of Open Data Implementation on Entrepreneurship Ability in Sub-Saharan Africa

This article conducts an experimental investigation on the impact of national open data implementation (ODI) on entrepreneurship ability in sub-Saharan Africa based on epistemological predispositions. With the commitment of 150 countries and organization to open data, this study is founded on the theory of planned behavior that behavioral intention can be induced by background variable categorized as personal, social, and informational. In a bid to validate the informational impact, this study is aimed at determining how much of entrepreneurship ability (EAB) is explained by open data implementation (ODI) in sub-Saharan Africa. This study analyzes secondary data from 22 sub-Saharan African countries, using regression analysis. Result shows that open data implementation has a negative nonsigni ﬁ cant impact on entrepreneurship ability in the continent. It is no surprise that Open Data Barometer (ODB), which is the o ﬃ cial open data assessing body, posits that there is need for improved open data implementation in sub-Saharan Africa for economic development purposes. Therefore, this study recommends further research on open data implementation as a national data governance initiative to identify opportunities for entrepreneurial impact in sub-Saharan Africa similar to those observed in Europe and other parts of the world. The ﬁ ndings have implications for policymakers and stakeholders seeking leverage to improve entrepreneurship in sub-Saharan Africa through open data implementation.


Introduction
The debate surrounding whether entrepreneurs are "born" or "made" has long persisted in both professional and educational arenas. With the increasing recognition of entrepreneurship's impact on economic development, the argument warrants further examination. Entrepreneurs develop creative and innovative frameworks that offer solutions to challenges faced by a population segment [1]. They confront threats and opportunities in pursuit of financial rewards and economic contributions [2].
Some scholars argue that entrepreneurs are "born" because certain personal characteristics, such as attitudes and behaviors, are inherent [3]. Others posit that entrepreneurs "are made" due to environmental factors that shape new capabilities for entrepreneurial ventures [4]. Forbes [5] suggests that a combination of both inborn traits and acquired skills influences entrepreneurs' decisions regarding their entrepreneurial journey.
In sub-Saharan Africa and the rest of the world, entrepreneurship plays a crucial role in job creation and poverty alleviation. However, several factors play a role in shaping entrepreneur nuances in the region. This study poises to investigate one of such nuances-national open data implementation. On a national scale, open data implementation is output of the Open Data Barometer (ODB). ODB is a nongovernmental entity charged with the responsibility of tracking and evaluating global commitment to Open Data Charter (ODC) agreement signed by over 150 nations and organizations speared headed by the G7 nations [6]. The ODB tracking framework used a tri-subindex for their evaluation. They track and evaluate Open data readiness, Open benefits of open data as its national data governance initiative [7,8].
The existing literature has explored various aspects of open data and its potential effects on entrepreneurship, including theoretical frameworks, adoption predictors, benefits, challenges, and governance approaches [9][10][11]. The current study is aimed at building upon this literature by examining the impact of open data implementation on entrepreneurship ability in sub-Saharan Africa, using Ajzen's [12] theory of planned behavior as a guiding framework.
Open data implementation offers valuable resources for entrepreneurs, providing them with the information and insights needed to develop innovative solutions and foster economic growth [13]. However, further investigation is required to understand the specific implications of open data implementation-driven entrepreneurship in sub-Saharan Africa. By examining open data implementation in this context, stakeholder can investigate leveraging opportunity toward entrepreneurial and economic development as well as enabling policymakers and stakeholders to develop targeted interventions and initiatives [11].
Case studies, such as the Chicago open data project [14], have demonstrated the role of open data in fostering innovation and entrepreneurship. These findings offer valuable insights into strategies for promoting open data-driven entrepreneurship through effective governance approaches. Furthermore, studies investigating the broader context of digital technology and innovation ecosystems in sub-Saharan Africa [15] provide a foundation for understanding the role of technology in fostering entrepreneurial growth and innovation, which is relevant to the study of open data-driven entrepreneurship.
Entrepreneurs possess various abilities that enable them to deliver their creative ideas and innovation [16,17]. These abilities can be influenced by factors such as life balance [18] and leadership [19]. The Global Entrepreneurship Development Institute (GEDI) defines entrepreneurial ability as the characteristics of entrepreneurs and their businesses [20,21].
Open data implementation has been leveraged worldwide to drive innovation, improve transparency, and increase citizen participation in economic development activities [22]. The potential of open data to improve public service delivery, increase transparency, and drive innovation has been demonstrated through case studies, such as in Austria [23]. Despite its narrow scope, open data in the region is driven by a strong economic argument in line with the European Commission's ambitions. By building upon these existing studies, the current research is aimed at providing a comprehensive understanding of the impact of open data implementation on entrepreneurship ability in sub-Saharan Africa. The region presents a unique context, characterized by a growing entrepreneurial ecosystem and digital technology advancements and the potential for open data-driven entrepreneurship to contribute to inclusive economic growth.
Through the lens of the theory of planned behavior, this study will specifically explore the open data implementation and entrepreneurial ability nexus. By examining the relationship between open data implementation and entrepreneurial ability, the study will shed light on open data implementation and its impact on entrepreneurship ability development. This research will also contribute to the ongoing debate on whether entrepreneurs are born or made by investigating how open data implementation may shape entrepreneurial ability in sub-Saharan Africa. This exploration will provide insights into the role of environmental factors, such as access to open data, in fostering entrepreneurial skills and capabilities.
2. Background of the Problem 2.1. Open Data in Africa. The Open Data for Development Network (OD4D) report highlights the need to strengthen efforts on the provision and use of open data in Africa to achieve sustainable development goals (SDGs). The report references Tim Berners-Lee's five-star model of open data and posits that there has been appreciable effort in creating data portals that align with the requirements of the Open Data Charter (ODC). However, the report suggests that there is still a need for countries to make a giant stride toward data provision in open formats. OD4D cites Bello et al. [24] in its disposition that African countries' desire to open up to open data initiatives is motivated by the need for transparency and accountability. However, the OD4D report argues that open data will contribute to SDG objectives through sectors such as entrepreneurship.

Entrepreneurial Abilities in Africa.
To develop entrepreneurial skills in Africa, Mmbengwa et al. [25] suggest that perseverance, personal motivation, creativity, and a positive attitude are key determinants that can enhance youth entrepreneurial success. Mamabolo et al. [26] identify human resource management, start-up, social and interpersonal capacity, leadership, financial management, personality, marketing, technical, and business management skills as the abilities required for entrepreneurial success in countries like South Africa.

Open Data, Entrepreneurship, and Economic
Development. The use and deployment of open data, according to Ekundayo [27], provide an opportunity that could have otherwise been ignored. The findings conclude that the 12% of economic development measured in GDP is explained by open data. In a working paper, Ekundayo's [28] regression analysis of cross-sectional data based on epistemological assumptions indicates that open data implementation (ODI) impacts entrepreneurial attitude by 32% in Europe and Central Asia. Human Behavior and Emerging Technologies Therefore, there is a need to investigate variables that could potentially induce the development of the right entrepreneurial skills for the growth of the African continent, and the use of open data can be an effective tool to achieve this goal. 2.5. Significance of the Study. This study on the impact of open data implementation (ODI) on entrepreneurial ability (EAB) in sub-Saharan Africa is significant for several reasons. Firstly, the study addresses a critical gap in the literature regarding the role of open data in developing entrepreneurial abilities in sub-Saharan Africa. Investigating this topic is essential as the entrepreneurial sector is vital for the economic development of the continent. Secondly, the study's findings will provide insight into the determinants of entrepreneurship abilities in sub-Saharan Africa, which can be used to inform policies aimed at promoting entrepreneurship in the continent. Thirdly, the study's findings on the potential contribution of open data implementation to developing entrepreneurial abilities can provide policymakers and stakeholders with valuable information on the benefits of investing in open data initiatives.
Lastly, the study's findings can contribute to the broader debate on the role of open data in achieving sustainable development goals and economic goals, providing insights on the effectiveness of open data initiatives in promoting economic growth and development in sub-Saharan Africa. Based on the problem statement and the significance of the study, a research question that could guide this investigation is the following. What is the impact of open data implementation on entrepreneurial abilities and economic development in sub-Saharan Africa, with a focus on the development of entrepreneurship ability with open data implementation as the inducing element? 2.7. Assumptions, Limitations, and Delimitation. This study assumes that the deployment of secondary data, namely, open data implementation (ODI), captures the true open data implementation initiatives within each country, as depicted by its index. It is also assumed that the entrepreneurial ability index captures the ability of entrepreneurs within the respective country. This study is limited by its cross-sectional data collection and analysis compared to the alternative of a longitudinal time horizon. To delimit these limitations, this study proposes opportunities for future research, using a more recent dataset and variable indexing. As such, dynamics of the relationship between both sets of variables will be captured, updated, and optimized.

Literature Review
The rarity of literature on the intersection of open data implementation and entrepreneurial ability is a testament of little or no attention that is attributed to this sphere of entrepreneurial development. However, the search produces three papers that pose some relevance to sub-Saharan Africa. This is specifically important since this study experimentally investigates the nexus in a sub-Saharan African context. Asongu and Nwachukwu [29] in a study, titled "Openness, ICT and Entrepreneurship in Sub-Saharan Africa," explore the relationship between openness, information and communication technology (ICT), and entrepreneurship in sub-Saharan Africa. The article argues that greater openness, particularly in terms of trade and financial flows, can facilitate the growth of ICT and entrepreneurship, which in turn can promote economic development. The authors draw on a wide range of studies to support their argument, providing a nuanced and well-supported analysis of the topic and providing practical recommendations for policymakers looking to promote entrepreneurship and economic development in sub-Saharan Africa. One of the recommendations by the authors is that policymakers should focus on promoting greater openness in trade and financial flows, as well as investing in ICT infrastructure and education. A key weakness of the article is that it is somewhat limited in scope. The article focuses specifically on sub-Saharan Africa, and while this may allow a detailed analysis of the region, it limits the generalisability of the findings to other contexts. The study did not address some of the potential challenges associated with greater openness, such as concerns about the impact of globalisation on local industries or the potential for greater economic inequality. Asongu and Nwachukwu [29] provide a useful analysis of the relationship between openness, ICT, and entrepreneurship in the context of sub-Saharan Africa.
Corrales-Garay et al. [30] in an article themed "Entrepreneurship Through Open Data: An Opportunity for Sustainable Development" discuss the potential of open data to spur entrepreneurship and sustainable development. The article cites increased transparency, innovation, and economic growth as key benefits of deploying open data initiatives. The article acknowledges the challenges that come with the use of open data, such as issues related to privacy Park [31] in a study themed "How to Improve Government Openness for Sustainable Development: The Interaction of Four Factors in African Countries" explores the factors that contribute to government openness in African countries and how this openness can promote sustainable development. The article identifies four key factors that contribute to government openness as political institutions, civil society, the media, and international organizations. The study provides a detailed analysis of the interactions between these four factors and how they influence government transparency. According to the study, this could lead to improved governance, increased transparency and accountability, and enhanced citizen participation. A weakness of the study is that it does not provide a comprehensive analysis of the factors that hinder government openness in African countries. The analysis does not provide a detailed analysis of these issues or how they interact with the four factors identified in the article. It is also noted that the study analysis is limited in scope, as it focuses only on government openness in African countries. Although this focus allows for a detailed analysis of the specific context of African countries, it may limit the generalisability of the findings to other regions or contexts. Overall, Park [31] provides a useful analysis of the factors that contribute to government openness and its potential benefits for sustainable development.
Lindman et al. [32] in a study themed "Industrial Open The authors analyzed the interview data using content analysis to identify themes and patterns related to their research questions. The study found that open data entrepreneurship is still in its infancy, but there is potential for creating novel services and sustainable value networks based on government-released datasets. The authors identified several actors in the emerging value network, including data publishers, service providers, and end users. They also identified various business and revenue models utilized by the early open data entrepreneurs, such as freemium models, subscription-based models, and advertising-based models. The study highlights the importance of addressing legal restrictions and privacy concerns associated with opening data. Overall, the findings suggest that open data entrepreneurship has the potential to create significant economic and social value if properly supported. However, the research is based on a small sample of Finnish organizations, which may not be representative of open data entrepreneurship in other national contexts.  [29] explore the relationship between openness, ICT, and entrepreneurship in sub-Saharan Africa and argue that greater openness, particularly in terms of trade and financial flows, can facilitate the growth of ICT and entrepreneurship, which in turn can promote economic development. Park [31] focuses on the factors that contribute to government openness in African countries and how this openness can promote sustainable development using factors like political institutions, civil society, the media, and international organizations in African countries. Lindman et al.'s [32] literature review contributes to this current study by providing empirical evidence of early open data entrepreneurship, offering insights into the emerging value network structure, and highlighting various business and revenue models used by open data entrepreneurs.

Hypothesis Development.
While each article provides useful insights into the potential benefits of openness for data for entrepreneurship and sustainable development, none of this study indicates or measures how open data implementation induces the ability of entrepreneurs that can be leveraged for entrepreneurial and economic developments. As such, this study hypothesizes as follows: H1. Open data implementation has a positive impact on entrepreneurial ability in sub-Saharan Africa 3.3. Theoretical and Conceptual Framework. The framework of this study is theoretically founded on the theory of planned behavior (TPB) by Ajzen [12]. This theory posits that behavioral intention is influenced by three factors: attitudes, subjective norms, and perceived behavioral control. 4 Human Behavior and Emerging Technologies Attitudes refer to an individual's positive or negative evaluation of the behavior, subjective norms refer to the perceived social pressure to engage in the behavior, and perceived behavioral control refers to the individual's perception of their ability to perform the behavior. The theory also posits that each of this factor is induced by background factor categorized as either personal, social, or informational [12]. Overall, the theory behavioral intentions can be induced if the inducing variable can be induced. The theory is represented in Figure 1.
The theory of planned behavior (TPB) by Ajzen [12] is highly relevant to the study of the impact of open data implementation on entrepreneurship ability in sub-Saharan Africa. By examining the three main components of TPB-attitudes, subjective norms, and perceived behavioral control-researchers can gain insights into the factors influencing an individual's intention to engage in entrepreneurial activities within the context of open data implementation. While the theory emphasizes on the influence of personal, social, and informational background factors, this study specifically investigates the role of information as an inducing factor in understanding how open data implementation and entrepreneurial attitude correlate in sub-Saharan Africa.
Conceptually, this study argues that open data implementation plays a role in formulating/developing attitudes, subjective norms, and perceived behavioral control toward entrepreneurial intentions and behavior, especially in in their decision-making processes. This model simply posits that entrepreneurial ability can be induced and open data can be the leverage for such inducement. The study conceptual framework is indicated in Figure 2

Human Behavior and Emerging Technologies
This study adopts the epistemological branch of research philosophy, which examines existing knowledge and its acquisition. The study explores the relationship between open data implementation as a data governance initiative and entrepreneurship ability in sub-Saharan Africa. Utilizing a positivist approach, the research acknowledges that scientific processes generate scientific knowledge, which is considered valid and reliable [34]. Consequently, this study employs a scientific process to investigate the impact of open data implementation on entrepreneurial ability, generating insights that are deemed accurate and credible [33]. This approach aligns with the study's objective, as opposed to merely describing the phenomenon within the philosophical branch of ontology.
This study approach is deductive. The deductive research approach involves starting with a specific theory, developing a hypothesis, and conducting an experiment to test it, through selected observations/datasets. In this study, it is hypothesized that the implementation of open data positively impacts entrepreneurship ability to start up in a sub-Saharan Africa, based on the theory of planned behavior. Hence, an experiment is modelled to validate the hypothesis using 2016 dataset.
This study research strategy is an experiment. Saunders et al. [33] posit that experiment helps to test casual effect of a phenomenon or establish of relationship between multiple variables. More specifically, this study experiments on the casual effect of open data implementation on entrepreneurial ability in the context of sub-Saharan Africa.
Applicable research choice is quantitative. A quantitative study is a study that requires the use of numerals. The use of numbers allows for the use of inferential statistical tools [33].

For inferential analysis, this study utilizes secondary numeral indexes on open data implementation (ODI) from the Open Data Barometer (ODB) and the entrepreneurship ability indexed by Global Entrepreneurship Index (GEI).
Research time horizon for the study is 2016-cross sectional. It covers a period of 12 months instead of an indefinite period (longitudinal). The period is suitable for the study due to the simultaneous availability of indexes for both variables. It is also a key criterion for the deployment of inferential statistical tools like regression and correlation which are critical to this study [35][36][37].
Research data collection encompasses data from 22 countries in sub-Saharan Africa. Datasets are sourced from the website because both organizations practice open data policies. This means that data can be downloaded for reuse for analysis purpose. It is important to state that the method of the data collected by both institutions was reviewed to ensure scientific standard. Both ODB and GEI deploy the use of both primary and secondary data collection methods and analysis in their indexing, relative to respective indexing objectives. These indexes are used by countries all over the world by major credible international entities like the UN and the World Bank in pursuance of respective project aims. This study selects open data implementation since its objective is to determine and measure the impact on entrepreneurship ability in sub-Saharan Africa. The dependent variable (DV) is sourced from the Global Entrepreneurship Development Institute (GEDI) and Global Entrepreneurship Programme tagged Global Entrepreneurship Index (GEI) website. The GEI program also measures global entrepreneurship prowess in a tri-subindex format, namely, entrepreneurial aspiration, entrepreneurial ability, and entrepreneurial attitude. This study selects the entrepreneurship ability subindex, since it is aimed at assessing how open data implementation impacts entrepreneurship ability within a country. This period is selected because it is a period in which both variables are indexed.

Data
Secondly, to create a matching dataset for sub-Saharan Africa that will be suitable for inferential analysis, this study identified only reciprocating index for both open data and entrepreneurship nuance in the sub-Saharan African region. Sub-Saharan African nations with no reciprocating index were eliminated to create a balance set of data series for possible correlation and regression analysis [35][36][37][38]. This process represents 22 sub-Saharan African countries suitable for the experimental study.
The variables with their matching abbreviations used for this study are as follows: (i) Open data implementation (ODI)

(ii) Entrepreneurship ability (EAB)
More details on description of these variables are included in Table 1.
Thirdly, we precede with correlation analysis between ODI and EAB to establish a relationship, if any.
Fourthly, we conduct a regression analysis. This is to determine the cause-and-effect relationship that ODI has on EAB in 22 countries in sub-Saharan Africa. The study regression type is the ordinary least squares model.
To infer the relationship of national open data implementation and national entrepreneurship, the indexes must meet certain criteria [41].

Open data implementation (ODI)
Entrepreneurship ability (EAB) Figure 2: Conceptual framework for this study. 6 Human Behavior and Emerging Technologies (i) Indication of independent variables (IV) as X and dependent variable (DV) as Y (see Table 2) (ii) X and Y combination should show random pattern on a scattered plot (see Figures 3 and 4) (iii) Skewness of the Y-value falls between 3 and +3, and kurtosis falls −10 and +10 (see Table 3) (iv) The variable should be measured in continuous data type. They often carry decimal points, with the number stretching out as far as possible [37] (see Table 2) (v) Variables should also correlate to be eligible for regression analysis [37] (see Table 4) As such, the regression model is as follows: where Y is EAB representing the unknown intercept of any country (entrepreneurship ability), b are the coefficients for every independent variable obtained from the ODI index, X represents the level of ODI that guarantees a level of EAB, and a is the intercept. Due to the size of dataset, Microsoft Excel is used for correlation and regression analysis. Alternative inferential analysis tool is SPSS and Python programming software. Regardless of analysis software, the outcome remains unchanged. Table 3 shows that descriptive statistic indicates a mean of 12.95 with a standard deviation of 12.58 for open data     Empirical study of data nature supports dataset linearity for Pearson's correlation coefficient with a 95% confidence level indicating that if we select 100 different samples, we have a 95% confidence of arriving at the same mean. Standard error is the accuracy of a sample mean at 2.68 for open data implementation and 2.43 for entrepreneurship ability. By implication, if several samples of this same population are extracted to calculate a mean, it will produce a mean comparable to the true population mean. A small standard error indicates that sample and its analysis provide a more precise estimate for the value of population. Median is the midpoint at 9 for open data implementation and 20.9 for entrepreneurship ability. Kurtosis is the sharpness of a frequency-distribution curve. When a distribution is too peak, the number is greater than +1. For these datasets, it is at 7.37 for open data implementation and 11.35 for entrepreneurship ability. Skewness is a dataset's measure of symmetry (if the number is greater than +1 or lower than -1, the dataset has a substantially skewed distribution). Skewed distribution is when the data point clusters toward one side of the scale than the other, thereby creating a curve that is not symmetrical-that means both right and left sides are The graphic representation of the dataset to show the respective nature is as follows.

Results
Becker et al. [42] and A. Hess and J. Hess [36] indicate that the correlational standard for the result is within the range of -1 to +1, with 0 indicating no correlational significance. +1 indicates a positive correlation, and -1 indicates a negative correlation. Positive correlation indicates that an increase in IV (in this case ODI) would see a reciprocating increase in DV (in this case EAB), and -1 is vice versa. Zero as the correlation output indicates no relationship of sort between both variables. For this study, Pearson's correlation output value r = −0:06 for ODI and EAB in sub-Saharan Africa. This indicates a negative weak (nonsignificance) relationship between ODI and EAB for 2016 datasets. By implication, an increase in open data implementation will produce a nonsignificant decrease in entrepreneurship ability in sub-Saharan Africa in 2016, whereas a degree open data implementation will cause a nonsignificant increase in entrepreneurship ability with sub-Saharan African countries. Table 5 shows that the square value of R is 0.00 which indicates 0% of the dependent variable, and entrepreneurship ability is explained by the independent variables, open data implementation. However, the 0.06 correlation result is not to be ignored. The adjusted squared R value of -0.05 indicates that that model is not a good fit to determine entrepreneurial ability in sub-Saharan Africa [36]. Invariably, this indicates that 99.95% of the model is a function of other variables. The probability value of 0.77 indicates that the overall model is significant [37], and the Durbin Watson statistics (P value) of 1.19 indicates that the sourced data have no autocorrelation of any sort [35].
For the model, intercept is 24.7 and the beta coefficient value for ODI is -0.06 with an insignificant probability of 0.77. This indicates a negative impact of open data implementation on entrepreneurship ability in sub-Saharan Africa, but it is subject to 77% chance, which is insignificant. By implication, when the indexing score for ODI is decreasing, entrepreneurship ability increases and vice versa, but there is a greater than 0.05 (5%) chance as indicated by the P value that this impact is a function of only open data implementation. By extension, there are other factors that could contribute to such an outcome. However, finding supports the hypothesis of Ekundayo et al. [43] that the impact of open data on entrepreneurship is relative to region of the world. Therefore, to predict entrepreneurial ability, using open data implementation as leverage, in sub-Saharan Africa, the model is Y = 24:7 + ð−0:06Þ X.

Discussion, Conclusion, and Recommendation
Investigating the impact of open data implementation as part of the data government initiative in sub-Saharan Africa is not a common practice. According to Ekundayo et al. [43], this is due to the low popularity of open data on the African continent; hence, the insufficiency in it impacts investigation on economic sectors or subelements like entrepreneurs' nuances. Entrepreneurship ability also suffers the same faith since entrepreneurship is mostly reviewed in its holistic form   [8,44,45]. This is also supported by the preliminary findings of a working paper by Ekundayo et al. [43]. Ekundayo et al. [43]  These findings reveal that several interconnected factors contribute to the insignificant negative impact of open data implementation on entrepreneurial ability in sub-Saharan Africa. Addressing these challenges would require a multifaceted approach, including strengthening the innovation ecosystems, providing adequate resources and capacities, and fostering an enabling environment for entrepreneurship to thrive.
Based on the findings of this study, which indicate an insignificant negative impact of open data implementation on entrepreneurial ability in sub-Saharan Africa, the following recommendations are suggested to enhance the effectiveness of open data initiatives and promote entrepreneurship in the region: (1) Strengthen innovation ecosystems: policymakers and stakeholders should focus on developing a robust innovation ecosystem by fostering collaboration between governments, private sectors, academia, and civil society. This includes creating platforms for knowledge sharing, providing access to resources and expertise, and encouraging a culture of innovation (2) Address local context and needs: open data initiatives should be tailored to the local context and address the specific needs and capacities of the target communities. This includes involving local stakeholders in the planning and implementation process and providing relevant training and support to build local capacities (3) Improve data quality and trust: governments and data providers should ensure the quality, accuracy, and timeliness of the data being released. This can be achieved by implementing data quality assurance mechanisms and promoting transparency in data collection and management processes. Building trust in open data is crucial for its successful adoption and use by entrepreneurs (4) Enhance data accessibility and usability: open data platforms should be designed to be user-friendly and accessible to a wide range of users, including entrepreneurs, researchers, and the general public. This includes ensuring that the data is available in machine-readable formats, providing comprehensive metadata, and offering user support and guidance on data usage (5) Promote enabling environments for entrepreneurship: governments should create an enabling environment for entrepreneurship to thrive by implementing supportive policies and regulations, providing access to finance, and offering mentorship and networking opportunities for entrepreneurs (6) Monitor and evaluate open data initiatives: continuous monitoring and evaluation of open data initiatives are essential for identifying areas of improvement and measuring their impact on entrepreneurship. Regular assessments should be conducted to gather feedback from users and stakeholders and inform the design and implementation of future open data programs Implementing these recommendations can help mitigate the challenges identified in this study and maximize the potential of open data initiatives to positively impact entrepreneurial ability in sub-Saharan Africa.
This study seeks to the provide answers to question "What is the impact of open data implementation on entrepreneurial ability in sub-Saharan Africa?". Open data implementation has a negative impact (0.06) on entrepreneurial ability in sub-Saharan Africa. However, the impact is insignificant. As such, H1 is rejected. For open data implementation to induce entrepreneurial development in sub-Saharan Africa, likened to the global impact according to Ekundayo [27], it must improve its open data implementation practices.

Data Availability
The data that support the findings of this study are publicly available in Open Data Barometer at https:// opendatabarometer.org/doc/4thEdition/ODB-4thEdition-GlobalReport.pdf and Global Entrepreneurship Index at http://thegedi.org/downloads/ for 2016. The quantitative data used to support the findings of this study have been deposited in the Mendeley data repository (doi:10.17632/ yk5vfdvpxg.1).