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Determinants of Agribusiness Diversification Among Women Agri-Preneurs in Njoro and Molo Sub-Counties in Nakuru County, Kenya

Received: 20 January 2024    Accepted: 2 February 2024    Published: 10 May 2024
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Abstract

Participating in agribusiness value chains is significant for growth and development of an economy. Women have been noted to have low participation in agribusiness activities as compared to men because women face challenges such as inaccessibility and ownership of assets, social cultural hindrances, lower market innovativeness and versatility factors. To reduce these challenges faced by women agri-preneurs, there is need to adopt agribusiness diversification to ensure the success of agribusiness enterprises. The aim of this study was to determine the factors that influence the number of agribusiness lines that female agri-preneurs participate in. This study was carried out in Njoro and Molo Sub-counties in Nakuru County, Kenya between March and August 2023. A standard Poisson regression model was carried out to examine the number of agribusiness lines that female agri-preneurs have to maximize revenue and spread risks associated with post production agribusiness activities such as selling, distribution and value addition of agricultural products. The study sampled 267 female in agribusinesses, both group participants and non-participants. Data processing was done using SPSS and STATA software. The results showed that age, education level, Leadership position, size of agribusiness enterprise, time taken in the agribusiness activities and ability of the female agri-preneurs to borrow loans positively influence the number of agribusiness lines that women agri-preneurs have.

Published in International Journal of Agricultural Economics (Volume 9, Issue 3)
DOI 10.11648/j.ijae.20240903.12
Page(s) 148-157
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.

Copyright

Copyright © The Author(s), 2024. Published by Science Publishing Group

Keywords

Agribusiness Value Chains, Women Agri-Preneurs, Agribusiness Diversification, Agribusinesses Lines, Post Production Agribusiness Activities

1. Introduction
Agribusiness refers to interrelated practices needed to move an agricultural product through the various phases such as from input suppliers until the agricultural good or service reaches the final consumer . Agribusiness is important in economic growth and development in Kenya through; creation of employment to majority of women and youths, industrialization, food security, improved incomes, earns the country foreign exchange and enhances both local and international peace and harmony .
In getting the determinants of agribusiness value chain, participation factors such as diversification ensures efficiency and effectiveness in management of agribusiness value chain associated costs such as transaction costs. Agribusiness diversification refers to a business management strategy whereby a female agri-preneur decides to participate in selling, distribution and value- addition of more than one product (not the variations in the qualities of the same product) .
Women play an essential role in economic development through agribusinesses in the rural economy, especially growth in the Gross Domestic Product (GDP). However, women agri-preneurs face more challenges in starting, managing, and making decisions in post-production agri-value chains activities. These challenges include; inaccessibility and ownership of assets, social-cultural hindrances, versatility factors, and illiteracy in terms of innovation and market innovativeness .
These challenges faced by women agri-preneurs, therefore, call for agribusiness diversification. Agribusiness diversification plays a vital role in the operation and success of many firms and enterprises today. Participating in different agribusiness lines is essential for female agri-preneurs for it helps to attract new customers and also helps to bring past customers through creation of loyalty. According to , the major intention of participating in agribusiness diversification is to spread the risks associated with agribusiness related activities. also highlighted that different agribusiness lines attract different incomes and potential consumers hence necessary for the development and growth of agribusiness enterprises.
As more countries participate in agribusiness value chains, Global Agribusiness Value Chains (GAVC) are developed which enables satisfaction of the global demand for food and other agricultural materials . Global agribusiness value chains result in internationalization, leading to wealth and employment creation, foreign exchange, proper nutrition, poverty elimination, and food safety and security. It also expands on markets for the products . The Agribusiness value chain sector also ensures the fulfillment of the Millennium Development Goals (MDGs) and a food-secure society globally . This sector also fights global food insecurity and malnutrition by extending food shelf life .
Adoption of the 2030 Agenda for Sustainable Development (ASD) by the United Nations (UN) General Assembly that comprises 17 Sustainable Development Goals (SDGs) that need transformation changes in agribusiness value chains towards social, economic, and environmental sustainability . There have been notable shifts in global production, distribution, and consumption of food due to transformations in global agri-value chains .
Despite the various benefits linked to agribusiness diversification, there is still scanty literature to show the factors influencing agri-preneurs in participating in agribusiness diversification. Although majority of participants in post- production agri-value chains have been noted to be women . Based on the merits associated to agribusiness diversification, there is need for women involved in post-production agri-value chain activities to participate in different agribusiness lines for them to be able to compete favorably in price and market shares . Having different agribusiness lines also helps to solve common business problems such as reducing sales revenue and decreasing profits .
According to Nakuru County Integrated Development Plan, post-production agribusiness activities are the main source of revenue to the County government . However, there are more male participants in the listed post-production activities than women in the County, despite the fact that women play a significant role in the same activities informally and also dominate in the population of the county. Both small and medium size agribusiness enterprises exist in this county with a few large enterprises. Njoro and Molo Sub-counties have been classified as those regions that are very suitable for agricultural activities and most agribusiness activities. Women from these areas participate in groups and play a big role in ensuring that post-production agri-value chain activities remain effective. However, most of the micro and medium enterprises from there two sub-counties are unregistered only with a few registered Nakuru CIDP, 2018.
According to , if the market of an agribusiness product declines, the best way to respond is not cutting costs, but it is through desperately searching for a new agribusiness line to keep the agribusiness enterprise growing. The concept of agribusiness diversification has a long history from the Colonial period when cooperatives were developed with different objectives. There has been a rise in stakeholders championing group formation, (in particular women and youth groups) to respond to additional trading measures along the agribusiness value chain. Studies have shown that diversification participation has an effect on: economic value of a country , farm household welfare , achieving agricultural food security , on trade and diverse approaches of diversification .
Despite the many studies on the diversification in agribusinesses, there still exists scanty literature on the determinants of agribusiness diversification on women agri-preneurs. This study, therefore, sought to fill this knowledge gap by studying the determinants of agribusiness diversification among women agri-preneurs involved in post- production activities such as selling, distribution and value- addition of agricultural products.
2. Materials and Methods

2.1. Study Area

The study was carried out in Njoro and Molo Sub-counties of Nakuru County. Nakuru County covers an area of 7496.5 km² with an approximate population size of 2,162,202, according to the Kenya population and housing census (2019). The main agricultural products produced in this county are mainly maize, beans, Irish potatoes, wheat, and horticultural products such as vegetables, flowers, and fruits. Livestock reared includes cattle, sheep, goats, and poultry. Nakuru County receives rainfall throughout the year, with much rain experienced in April, May, and August. There is less rain in January and February received in Nakuru County; rainfall ranges between 22mm and 143mm. Njoro and Molo sub-counties cover approximately 713km² and 478.79km² respectively. Njoro Sub-county lies at 0.3305° S, 35.9434° E while Molo Sub-county lies at 0.2471° S, 35.7374° E. The population size of Njoro sub-county is 208,300, while that of Molo sub-county is 156732 (Census, 2019). The study also focused on two wards in every sub-county. In Njoro, Mau-Narok and Mauche wards were considered, and in Molo sub-county, Elburgon and Molo wards were considered. The study wards have women who predominantly depend on agribusiness activities. There also exist groups in the identified wards. The map of the study area is shown in Figure 1 below:
Figure 1. Map of the Study Area (Molo and Njoro Sub-Counties).

2.2. Sampling

This study was focused on women who participate in agribusiness activities. Female agri-preneurs participating in groups and non-participants made up the study's target population. Cochran's formula (1977) was applied in obtaining the sample size. This is because it calculates an ideal sample size given a desired level of precision, desired confidence level, and the estimated proportion of the attribute present in the population. Although there were other alternative methods of sample size determination Cochran’s for this case was suitable as shown below:
n=Z2 Pqe2(1)
where; n is the desired sample size from the target population; Z is the normal standard deviation at the required confidence level of 95% (Z=1.96); p is the proportion in the target population assumed to contain the desired characteristics (Female agri-preneurs who participate in either formal or informal groups) (p=0.5); q is the proportion in the target population assumed not to contain the characteristics (Female agri-preneurs who are non-participants of either formal or informal groups), q=(1-p)=0.5; and e is the acceptable margin error (e=0.06). A bigger error has been used for diversify in the women because the women to targeted in this study participate in many types of activities.
n=1.962 x0.5x0.50.062 =267(2)
To obtain impact estimates generalizable to the target population, comparison units were pooled to have a reasonable number of observations with features corresponding to those of the treated (group participants) units (Heinrich et al., 2010). Based on this argument, therefore, a higher sample size for untreated (group non-participants) 60% were used to avoid bias and to optimize estimation of treatment effects as shown in the table below based on the information given by agricultural officers from both sub-counties on women participating in agribusinesses:
Table 1. Proportionate Sample Distribution.

Wards

Populations

Treated (40%)

Untreated (60%)

Total

Njoro Sub-County

Mauche Ward

4999

30

45

75

Mau Narok Ward

5051

30

46

76

Molo Sub-county

Molo Ward

3900

23

35

58

Elburgon ward

3847

23

35

58

Total

17797

267

2.3. Data Collection

The study used primary data. The Primary data was collected using semi-structured administered questionnaire. A pilot study was conducted to test the validity of the questionnaire by interviewing 25 women agri-preneurs in Keringet ward in Kuresoi- South sub-county in Nakuru County. Well-trained enumerators did the data collection process. Semi-structured questionnaires were used because they gave room for more information for the study. The study also involved many respondents, making this method appropriate. The questionnaire consisted of general information about the female agri-preneurs, such as age, education level, size of the household, employment status, agribusiness experience, decision making, any leadership role, group perception, any past experience about group participation, type of the agribusiness enterprise, size of the enterprise in terms of income, number of business lines, source of funds for the enterprise, government’s role, credit accessibility, market and technology accessibility.
3. Results and Discussions
This objective was analyzed using Standard Poisson Regression Model because the dependent variable number of agribusiness lines for this case consists of count data in whole numbers or integers. The dependent variables used consisted of continuous, ordinal or nominal scale. The ordinal and nominal independent variables are broadly classified as categorical variables. The model information Table in the Appendix confirms that the dependent variable is “number of agribusiness lines”, the probability is the “Poisson” and the link function is natural logarithm (“Log”).
Looking into the goodness of fit Table 2 below, at the value/df column of the Pearson Chi-Square row, the value is 1.926 which is then interpreted as that the model does fit the data well hence the results can be interpreted (P=.05). Also the Pearson Chi-Square can be proves the assumption of equidispersion. A value of 1 indicates equidispersion assumption of the Poisson regression but a greater than 1 value (1.926) indicates over-dispersion but the most common violation of this assumption is over-dispersion.
Table 2. Goodness of fit.

Goodness of Fita

Value

Df

Value/df

Deviance

489.798

249

1.967

Scaled Deviance

489.798

249

Pearson Chi-Square

479.647**

249

1.926

Scaled Pearson Chi-Square

479.647

249

Log Likelihood

-757.324

Akaike's Information Criterion (AIC)

1564.648

Finite Sample Corrected AIC (AICC)

1569.89

Bayesian Information Criterion (BIC)

1654.977

Consistent AIC (CAIC)

1679.977

***, **, * =level of significance at 1%, 5% and 10% respectively.
The likelihood ratio Chi-square test indicates that the full model was a significant improvement in fit over a null (no predictors) model (p<.01) as shown in Table 3 below:
Table 3. Omnibus test.

Omnibus Testa

Likelihood Ratio Chi-Square

Df

Sig.

810.942***

24

.000

***, **, * =level of significance at 1%, 5% and 10% respectively
Age of the female agri-preneurs (P =.020), education level (P =.003), leadership position that women agri-preneurs hold in the community (P =.003), size of the agribusiness enterprise in terms of income (P =.000), time taken by the female agri-preneurs in the agribusiness activity (P =.000) and ability of the female agri-preneurs to access loans (P=.000) independent variables were statistically significant (P =.05). However, the independent variables such as employment status of the female agri-preneurs (P=.163), decision making in the agribusiness enterprise (P=.197), perception about group participation ( P =.287), availability of the business partner (P =.399), experience about group participation (P =.299), type of agribusiness enterprises (selling P =.549, value addition P =.391, and distribution P =.359), government support (P =.126), source of funds for the agribusiness enterprise (savings P=.296, credit P=.221 and donations and grants P =.635), size of the household (P =.367) and use and access to technology (P =.700) were not statistically significant. The market availability independent variable was not able to be computed hence (.) symbol way displayed as shown in Table 4 below.
Table 4. Tests of model effects.

Tests of Model Effects

Source

Type III

Df

Sig.

Wald Chi-Square

(Intercept)

32.749

1

0.000

Education level of female agri-preneurs

13.813**

3

0.003

Employment status of Female Agri-preneur

1.951

1

0.163

Who makes decisions about agribusiness

4.682

3

0.197

Hold leadership position

8.703**

1

0.003

Perception of group perception

1.134

1

0.287

Do you have any business partner

0.712

1

0.399

Experience about group membership

1.079

1

0.299

Selling

0.359

1

0.549

Value addition

0.735

1

0.391

Distribution

0.841

1

0.359

The size of agribusiness enterprise in terms of income per month

131.934**

1

0.000

Savings as a source of fund

1.092

1

0.296

Credit as a source of fund

1.496

1

0.221

Donations and Grants as a source of fund

0.226

1

0.635

Government support to group participation

2.339

1

0.126

Able to borrow a loan

27.294**

1

0.000

Is the market for your agribusiness available

.a

.

.

Are you able to use and access technology

0.148

1

0.700

Age of the Female Agri-preneurs

5.406**

1

0.020

Size of the house hold

0.815

1

0.367

Time in agribusiness activity

12.233**

1

0.000

***, **, * =level of significance at 1%, 5% and 10% respectively.
The dot (.) means that the value could not be computed. It is often used for statistics of redundant parameters. In this case probably the variable “market availability” is constant, and then the corresponding parameter is redundant, as the intercept is there too.
A Poisson regression was run to predict the number of agribusiness lines that a female agri-preneurs has based on age of the female agri-preneurs, education level of the female agri-preneurs, the female agri-preneur’s household size, employment status of the female agri-preneurs, who makes decisions about the agribusiness enterprise, the leadership position that the female agri-preneurs holds in the community, the perception of the female agri-preneurs towards group participation, presence of the business partner in the enterprise, the past experience of the female agri-preneurs on group participation, time taken by the female agri-preneurs in operating agribusiness activities, the type of business, size of business in terms of monthly income, the source of funds that a female agri-preneurs used as capital, government support on women group participation, ability of the women agri-preneurs to access loans, market and ability to use and access technology.
To determine and explain the interactions of the various independent variables with the dependent variable “number of agribusiness lines, the parameter estimates has to show the coefficient estimate (the “B” column) and the exponentiated values of the coefficients (the “Exp (B)” column) of the standard Poisson regression model. Exp (B) column explains the interpretations 1 being the constant as discussed below and shown in Appendix IV:

3.1. Age

There is a positive relationship between age of female agri-preneur and the number of agribusiness lines owned. This is statistically significant at 5% significance level (Wald Chi-square =5.406, df=1, P =.05). Results indicate that an increase in age by 1 unit (year), increases the number of agribusiness lines by 0.995 times. This could be attributed to the reasoning that the older the female agri-preneur gets the more experience they get within the agribusiness sector and the benefits and the risks associated with various agribusiness lines. Similar results were reported by , in developing countries like Kenya there is a positive and statistically significant association between the age of agri-preneurs and the performance of the enterprise. However, this study contradicts the study by , that states that young agri-preneurs are innovative, easily to adapt changes and risk takers. This can be attributed to the fact that young entrepreneurs participate more on agribusiness enterprise’s performance than old entrepreneurs.

3.2. Education Level

There is a positive relationship between education level of female agri-preneur and the number of agribusiness lines owned. This is statistically significant at 5% significance level (Wald Chi-square =13.813, df=1, P =.05). Results show that the number of agribusiness lines will be more for a female agri-preneur with a higher education level. The number of agribusiness lines will be 0.700 times less for a female agri-preneurs who has no formal education, 0.805 times less for female agri-preneurs who have studied up to primary level and 0.749 times more for female agri-preneurs whose level of education is secondary level. Education level of female agri-preneurs is relatively related to skills, knowledge, motivation, self-confidence, commitment, problem solving skills and discipline that agri-preneurs have towards owning and running an agribusiness enterprise . This study is consistent with the study done by , shows that it is expected that higher education level increases the ability to cope with weaknesses and threats of the enterprise. It also enables agri-preneurs to seize through the strengths and the opportunities. in the business enterprise. According to , higher education level is also associated with better decision making to manage an enterprise to reduce the possibility of business failure. A study by indicated that entrepreneurs with higher education level succeed in running their enterprises than those with formal education.

3.3. Leadership Position in the Community

There is a positive relationship between leadership position of women agri-preneurs in the community and the number of agribusiness lines owned. This is statistically significant at 5% significance level (Wald Chi-square =8.703, df=1, P =.05). Results indicate that the number of agribusiness lines will be more for female agri-preneurs who hold leadership positions in the community. The number of agribusiness lines will be 0.847 times less when a female agri-preneurs does not hold any leadership position in the community, a statistically significant result, P=.003. Leadership among female agri-preneurs increases chances of exposure to more information, trainings and opportunities. These trainings may be related to markets, how to manage finances and businesses. Female agri-preneurs also who are leaders, get to access different market entry points and access to various technologies for transforming their products to more useful products. A study that was done by reported similar findings and stated that holding a leadership position in the community can be used as a measure of social capital because it gives the household formal and informal support and information dissemination.

3.4. Size of the Agribusiness Enterprise

There is a positive relationship between the size of the agribusiness enterprise and the number of agribusiness lines owned. This is statistically significant at 5% significance level (Wald Chi-square =131.934, df=1, P =.05). Results show that every female agri-preneur who owns a small agribusiness size, (<Ksh.15000) will have 0.470 times less agribusiness lines than those who own large enterprises (>Ksh.15000). A large agribusiness enterprise involves high capital and various lines of agribusinesses. Large agribusiness enterprises are characterized by high investment, huge profits, requires large markets and there is high use and adoption of new techniques. In most cases, large agribusiness enterprises adopt differentiation marketing strategy .

3.5. Time in Agribusiness Activity

There is a positive relationship between the time taken by female agri-preneur in running an agribusiness activity and the number of agribusiness lines owned. This is statistically significant at 5% significance level (Wald Chi-square =12.233, df=1, P=.05). Results indicate that the number of agribusiness lines will be 1.005 times more for every extra year that a female agri-preneurs takes in operating an agribusiness enterprise, a statistically significant result, P=.000. According to , it was concluded that the longer the time taken in entrepreneurial experience creates a positive impact on business performance. The experience one gains in running of a business for a longer period of time enables them to get knowledge and skills required to establish and exploit opportunities, assessing market trends and decisions pertaining customers’ needs and competitors’ moves . According to , it is concluded that the more the years an entrepreneur takes to operate an enterprise, the more profitability of the enterprises.

3.6. Ability to Borrow Loans

There is a positive relationship between the ability of the female agri-preneur to borrow loans and the number of agribusiness lines owned. This is statistically significant at 5% significance level (Wald Chi-square =27.294, df=1, P=.05). Results indicate that the number of agribusiness lines will be 0.708 times less for female agri-preneurs who cannot be able to borrow loans for their agribusiness enterprises, a statistically significant result P=.000. Ability to borrow credits enables female agri-preneurs to access more incentives and resources to grow and meet their day to day agribusiness expenses. Ability to borrow loans also gives room for adoption of more modern technologies among female agri-preneurs . According to the study that was done by , indicated that friends and family are the most common source of credit for many Kenyans. Most business people relied on ROSCAS Rotating Savings and Credit Association), ASCAS (Accumulating Savings and Credit Association) and other investments groups for loans.
4. Conclusion
The age, education level, Leadership position, size of agribusiness enterprise, time taken in the agribusiness activities and ability of the female agri-preneurs to borrow loans positively influence the number of agribusiness lines that women agri-preneurs have. This can be based on more experience, skills, knowledge and attitude that female agri-preneurs get as they involve more in the post- production activities. Some of these experiences gained includes: proper customer service, risk management, financial literacy among others.
5. Recommendations
Based on the findings from this study, women agri-preneurs are still less empowered in technology use and access in Njoro and Molo sub-counties in Nakuru County. Women agri-preneurs need to have knowledge and skills on the innovations related to proper marketing of their agribusiness enterprises; how to learn from social medial on customers’ needs and outsmart their competitors. This will boost female agri-preneurs business growth and expansion through gaining support from participating in policy making and investors to make the right technologies available for women agri-preneurs. Also the findings reveal that government has less support on women groups especially the support benefits a few women and this was linked to most group leaders being corrupt and the support only benefiting them. The government should come up with better policies on how to ensure that every woman benefits from its support. The government can support women in groups through training, tax relaxation aid funds for because it has a greater benefit to women.
Abbreviations
ASD: Agenda for Sustainable Development
CIDP: County Integrated Development Plan
GAVC: Global Agri-Value Chains
GDP: Gross Domestic Product
MDGs: Millennium Development Goals
SPSS: Statistical Package for the Social Science
STATA: Statistics and Data
UN: United Nations
Acknowledgments
This paper is part of Master of Science research work for the corresponding author. We would wish to acknowledge the Transforming African Agricultural Universities to Meaningful contribute to Africa’s Growth and Development (TAGDev Program) for their contribution in giving the needed research funds. We are also very thankful to all the people (enumerators, contact persons and respondents) who made the research process successful.
Conflicts of Interests
The authors declare no conflicts of interests.
References
[1] Kafle, K., Songsermsawas, T., & Winters, P. (2022). Agricultural value chain development in Nepal: Understanding mechanisms for poverty reduction. Agric Econ, 1–18.
[2] Van Dijk, M. P., Limpens, G., Kariuki, J. G., & de Boer, D. (2022). Telephone farmers and an emerging ecosystem are unlocking the hidden middle of agricultural value chains in Kenya through innovation. Journal of Agribusiness in Developing and Emerging Economies.
[3] Muflikh, Y. N., Smith, C., Brown, C., & Aziz, A. A. (2021). Analysing price volatility in agricultural value chains using systems thinking: A case study of the Indonesian chilli value chain. Agricultural Systems, 192, 103179.
[4] Ma, W., Abdul‐Rahaman, A., & Issahaku, G. (2023). Welfare implications of participating in agri-value chains among vegetable farmers in Northern Ghana. Agribusiness, 39(3), 793-811.
[5] King’au, J. M. (2022) Making Youth a Leading Force for Promoting Agri-Food Systems, A Case of Rural Nakuru, Kenya.
[6] Ahairwe, P. E., & Bilal, S. (2022). AgrInvest-Food Systems Project–Leveraging private finance for sustainable agrifood value chains in Burkina Faso, Ethiopia, Kenya and Niger. Food & Agriculture Org.
[7] Deepak, R. K. A., & Jeyakumar, S. (2019). Marketing management. Educreation Publishing.
[8] Nedumaran, G. (2019). Agriculture Women Entrepreneurs: Problems and Delights. International Journal Of Research Culture Society ISSN, 2456-668.
[9] Fernandez-Stark, K.; Gereffi, G. Global value chain analysis: A primer. In Handbook on Global Value Chains; Edward Elgar Publishing: Cheltenham, UK, 2019; pp. 54–76.
[10] Kiniaru, J. K. (2014). Challenges facing international agribusiness in Kenya (Doctoral dissertation, University of Nairobi).
[11] Mweberi, S. A. (2020). Food Insecurity in Africa-the Role of Agribusiness (Doctoral dissertation, University of Nairobi).
[12] Hinson, R., Lensink, R., & Mueller, A. (2019). Transforming agribusiness in developing countries: SDGs and the role of FinTech. Current Opinion in Environmental Sustainability, 41, 1-9.
[13] FAO, I., & UNICEF. (2019). WFP, WHO. The State of Food Security and Nutrition in the World. FAO, Rome.
[14] Maku, M., Kitambo, E., & Mugonola, B. (2023). Drivers of youth participation in maize value addition in Gulu district, Uganda. African Journal of Science, Technology, Innovation and Development, 15(1), 45-58.
[15] Fragapane, G., Ivanov, D., Peron, M., Sgarbossa, F., & Strandhagen, J. O. (2022). Increasing flexibility and productivity in Industry 4.0 production networks with autonomous mobile robots and smart intralogistics. Annals of operations research, 308(1-2), 125-143.
[16] Chernev, A. (2018). Strategic marketing management. Cerebellum Press.
[17] County, N (2018). Integrated Development Plan.
[18] Dore, R. (2018). Goodwill and the spirit of market capitalism. In The sociology of economic life (pp. 456-473). Routledge.
[19] Daulay, M. T. (2019). Effect of Diversification of Business and Economic Value on Poverty in Batubara Regency. KnE Social Sciences, 388-401.
[20] Akaakohol, M. A., & Aye, G. C. (2014). Diversification and farm household welfare in Makurdi, Benue State, Nigeria. Development Studies Research. An Open Access Journal, 1(1), 168-175.
[21] Waha, K., Van Wijk, M. T., Fritz, S., See, L., Thornton, P. K., Wichern, J., & Herrero, M. (2018). Agricultural diversification as an important strategy for achieving food security in Africa. Global change biology, 24(8), 3390-3400.
[22] Hufnagel, J., Reckling, M., & Ewert, F. (2020). Diverse approaches to crop diversification in agricultural research. A review. Agronomy for Sustainable Development, 40, 1-17.
[23] Caselli, F., Koren, M., Lisicky, M., & Tenreyro, S. (2020). Diversification through trade. The Quarterly Journal of Economics, 135(1), 449-502.
[24] Soomro, B. A., Abdelwahed, N. A. A., & Shah, N. (2019). The influence of demographic factors on the business success of entrepreneurs: An empirical study from the small and medium-sized enterprises context of Pakistan. International Journal of Entrepreneurship, 23(2), 1-12.
[25] Alene, E. T. (2020). Determinants that influence the performance of women entrepreneurs in micro and small enterprises in Ethiopia. Journal of Innovation and Entrepreneurship, 9, 1-20.
[26] Welsh, D. H. B., Kaciak, E., & Shamah, R. (2017). Determinants of women entrepreneurs’ firm performance in a hostile environment. Journal of Business Research, (December), 0–1.
[27] Saidi, N. A., Rashid, N. A., Zin, N. M., Ramlan, H., Johari, N., & Mohamad, M. R. (2017). Determinants of women entrepreneurs’ performance in SMEs. International Symposium & Exhibition on Business and Accounting 2017 (ISEBA 2017), (ISBN: 978-983-42982-9-6). Kula Lumpur: University Malaysia Kelantan.
[28] Mozumdar, L., Hagelaar, G., van der Velde, G., & Omta, S. W. F. (2020). Determinants of the business performance of women entrepreneurs in the developing world context. J, 3(2), 17.
[29] Wossen, T., Berger, T., & Di Falco, S. (2015). Social capital, risk preference and adoption of improved farm land management practices in Ethiopia. Agricultural Economics, 46(1), 81-97.
[30] Dewar, R., & Hage, J. (2018). Size, technology, complexity, and structural differentiation: Toward a theoretical synthesis. In Organizational Innovation (pp. 293-318). Routledge.
[31] Gold, S., Muthuri, J. N., & Reiner, G. (2018). Collective action for tackling “wicked” social problems: A system dynamics model for corporate community involvement. Journal of Cleaner Production, 179, 662-673.
[32] Carranza, E., Dhakal, C., & Love, I. (2018). Female entrepreneurs: How and why are they different? 1818 H Street NW, Washington, DC 20433, USA.
[33] Shakeel, M., Yaokuang, L., & Gohar, A. (2020). Identifying the entrepreneurial success factors and the performance of women-owned businesses in Pakistan: The moderating role of national culture. SAGE Open Journal, 1(1), 1–17.
[34] Maillu, J. N. (2018). Influence of Credit from Diverse Sources on the Performance of Smallholder Horticultural Agripreneurs in Kenya (Doctoral dissertation, JKUAT-COHRED). http://ir.jkuat.ac.ke/handle/123456789/4815
[35] Fromell, H. (2012). Does a Bigger Commercial Banking Sector Benefit the Poor_ A Minor Field Study in Kenya. Minor Field Study Series.
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  • APA Style

    Engurat, I. J., Mutai, B., Owuor, G. (2024). Determinants of Agribusiness Diversification Among Women Agri-Preneurs in Njoro and Molo Sub-Counties in Nakuru County, Kenya. International Journal of Agricultural Economics, 9(3), 148-157. https://doi.org/10.11648/j.ijae.20240903.12

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    ACS Style

    Engurat, I. J.; Mutai, B.; Owuor, G. Determinants of Agribusiness Diversification Among Women Agri-Preneurs in Njoro and Molo Sub-Counties in Nakuru County, Kenya. Int. J. Agric. Econ. 2024, 9(3), 148-157. doi: 10.11648/j.ijae.20240903.12

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    AMA Style

    Engurat IJ, Mutai B, Owuor G. Determinants of Agribusiness Diversification Among Women Agri-Preneurs in Njoro and Molo Sub-Counties in Nakuru County, Kenya. Int J Agric Econ. 2024;9(3):148-157. doi: 10.11648/j.ijae.20240903.12

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  • @article{10.11648/j.ijae.20240903.12,
      author = {Ikonya Judith Engurat and Benjamin Mutai and George Owuor},
      title = {Determinants of Agribusiness Diversification Among Women Agri-Preneurs in Njoro and Molo Sub-Counties in Nakuru County, Kenya
    },
      journal = {International Journal of Agricultural Economics},
      volume = {9},
      number = {3},
      pages = {148-157},
      doi = {10.11648/j.ijae.20240903.12},
      url = {https://doi.org/10.11648/j.ijae.20240903.12},
      eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ijae.20240903.12},
      abstract = {Participating in agribusiness value chains is significant for growth and development of an economy. Women have been noted to have low participation in agribusiness activities as compared to men because women face challenges such as inaccessibility and ownership of assets, social cultural hindrances, lower market innovativeness and versatility factors. To reduce these challenges faced by women agri-preneurs, there is need to adopt agribusiness diversification to ensure the success of agribusiness enterprises. The aim of this study was to determine the factors that influence the number of agribusiness lines that female agri-preneurs participate in. This study was carried out in Njoro and Molo Sub-counties in Nakuru County, Kenya between March and August 2023. A standard Poisson regression model was carried out to examine the number of agribusiness lines that female agri-preneurs have to maximize revenue and spread risks associated with post production agribusiness activities such as selling, distribution and value addition of agricultural products. The study sampled 267 female in agribusinesses, both group participants and non-participants. Data processing was done using SPSS and STATA software. The results showed that age, education level, Leadership position, size of agribusiness enterprise, time taken in the agribusiness activities and ability of the female agri-preneurs to borrow loans positively influence the number of agribusiness lines that women agri-preneurs have.
    },
     year = {2024}
    }
    

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  • TY  - JOUR
    T1  - Determinants of Agribusiness Diversification Among Women Agri-Preneurs in Njoro and Molo Sub-Counties in Nakuru County, Kenya
    
    AU  - Ikonya Judith Engurat
    AU  - Benjamin Mutai
    AU  - George Owuor
    Y1  - 2024/05/10
    PY  - 2024
    N1  - https://doi.org/10.11648/j.ijae.20240903.12
    DO  - 10.11648/j.ijae.20240903.12
    T2  - International Journal of Agricultural Economics
    JF  - International Journal of Agricultural Economics
    JO  - International Journal of Agricultural Economics
    SP  - 148
    EP  - 157
    PB  - Science Publishing Group
    SN  - 2575-3843
    UR  - https://doi.org/10.11648/j.ijae.20240903.12
    AB  - Participating in agribusiness value chains is significant for growth and development of an economy. Women have been noted to have low participation in agribusiness activities as compared to men because women face challenges such as inaccessibility and ownership of assets, social cultural hindrances, lower market innovativeness and versatility factors. To reduce these challenges faced by women agri-preneurs, there is need to adopt agribusiness diversification to ensure the success of agribusiness enterprises. The aim of this study was to determine the factors that influence the number of agribusiness lines that female agri-preneurs participate in. This study was carried out in Njoro and Molo Sub-counties in Nakuru County, Kenya between March and August 2023. A standard Poisson regression model was carried out to examine the number of agribusiness lines that female agri-preneurs have to maximize revenue and spread risks associated with post production agribusiness activities such as selling, distribution and value addition of agricultural products. The study sampled 267 female in agribusinesses, both group participants and non-participants. Data processing was done using SPSS and STATA software. The results showed that age, education level, Leadership position, size of agribusiness enterprise, time taken in the agribusiness activities and ability of the female agri-preneurs to borrow loans positively influence the number of agribusiness lines that women agri-preneurs have.
    
    VL  - 9
    IS  - 3
    ER  - 

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Author Information
  • Department of Agricultural Economics and Agribusiness Management, Egerton University, Njoro, Kenya

  • Department of Agricultural Economics and Agribusiness Management, Egerton University, Njoro, Kenya

  • Department of Agricultural Economics and Agribusiness Management, Egerton University, Njoro, Kenya

  • Abstract
  • Keywords
  • Document Sections

    1. 1. Introduction
    2. 2. Materials and Methods
    3. 3. Results and Discussions
    4. 4. Conclusion
    5. 5. Recommendations
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  • Acknowledgments
  • Conflicts of Interests
  • References
  • Cite This Article
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