Agriculture Technology as a Tool to Influence Youth Farming in Ghana ()
1. Introduction
Technology is gaining eminence in the agricultural industries [1]. According to Lin and Huang [2], users will accept technology that performs the user’s preferred task, vice versa. And this willingness to accept has revolutionized modern agricultural technology to increase the production of quality and quantity agricultural products whiles reducing loss and labor [3]. The world population comes with its predicaments in food insecurity issues, agricultural goods and services fluctuation, price escalation, hunger, poverty, and the like [4]. Agricultural technology stands to be the only solution to curb this canker [5].
Tang et al. [6] added that technology would take a significant role in agriculture in the coming decades, and farmers will become more informed and productive via smart farming with automated operations. Currently, in Ghana, every farmer in the country uses mobile connectivity in agricultural activities; in the research conducted by Verduyn et al. [7] indicated that billion people used smartphones, and it is estimated to go high in the mid-century. Some governments bring technology innovations into the farming industry to train the farmers about the use of farming equipment and machinery, electronic devices, and the like for them to be at par with the dynamic nature of agriculture farming [8].
Consequently, technology application has been a milestone in Ghana, especially in the Northern Region, where there are low per capita income and uppermost poverty rates [9]. Farmers can use Information and Communication Technology (ICT) devices to relay information to the agricultural stakeholders who significantly influence the production of the farm crops [1]. The study asks this question; what factors influence the youth to go into farming? This examines the factors that might affect the youth to adopt agricultural technology in Ghana, the challenges, and opportunities. Likewise, not only will this study helps fill the literature gap, but also gives a graphical assessment of other factors that influence the other toward youth farming.
The rest of the paper proceeds as follows; previous works relating to agricultural technology, followed by the systematic approach of the research model and its interpretation. Next, the paper focused on the results and discussion of discoveries during the investigation. The last part is the conclusion of the study.
2. Related Works
At present agriculture farming activities entail information accuracy, forecast, proficiency in farming operations [10] to sustain food production [4]. This has been the consistent activity that supplies food in developing countries [11]. Damba et al., [9] asserted that farming output mitigates the uncertainty in food production, livelihood, and poverty among the emerging economies. Technology has been a reliable instrument with diversified strategies that provide mass agriculture produce in developed nations. In the past decades, technology has changed breeding domestic animals and crop cultivation [12]. The application of technology for agricultural growth is an unavoidable issue facing today’s farmers [13]. Farmers now use technological tools and other appliances to improve cultivations [11] in the farmlands. Damba et al. [9] added technology in this century plays an essential role in agricultural production, especially in the area of smart farming [14], drone applications [15], decision making, sustainability, and productivity of food, [16]. Porter and Heppelmann [17], defines technology as the use of machinery and scientific knowledge to reduce intensive labor whiles increasing agricultural production. Walter et al. [18], added these types of machinery mitigates workloads, minimizes the footprint of farming, and enhances resource integrations.
Furthermore, weedicides and fertilizers have taken the place of the weeding and manure application practices among farmers in developing countries [19]. Likewise, precision farming [4], has enabled accurate soil moisture measurement [12], and swift planting of seedlings on the farmlands [6]. Furthermore, technology application such sensors usage such as CO2 concentration sensor, humidity sensor, etc., in the agrarian field nursing structure prevent excess materials such as water [14]. This has made huge impacts on the variations of fertilizer, workforce, fallow period, etc. [20]. Amankwah [21], asserted, technology utilization in the farming system has boosted biogas integration through raw materials such as agricultural waste, plant materials, food waste, manure, and the like. Farmers can also walk in the farm areas while tracking the farmland with Global Positioning System (GPS) device to capture the total area [19].
In 2005, the World Economic Forum announced 500 million peripheral devices are linked to the Internet, 8 billion are connected presently, and it is predicted to be 1 trillion in 2030 [22]. These technological devices have facilitated agriculture and the art of agriculture with a prediction of yield, enabling farmers to take appropriate storage measures [14]. Furthermore, agriculture technology is on its way to revolutionize [23] the farming industry, and farmers must prepare themselves to embrace the new future [8].
According to Verspagen [24], technology is of no use to agriculture economic development if it is unknown to the people. The knowledge of the technology used must be properly circulated [25] to influence farmers in its operation. Channels such as the extension officers [26], Community farm associations, Farmer-to-Farmer interactions [27], agriculture institutions in the country, etc., must be operational in the dissemination of technical information.
Conley et al. [28] stated new users might also learn the technological features from others while other factors such as education, farm size, etc. also play an essential role in technology enactment [25]. Also, the outline of agricultural policies and provisions made for a particular technology defines its acceptance [5]. Moreover, many perceive technology usage as a decree to their freedom [29], while others refrain from it due to cultural or religious beliefs. Yet, the millennial farmers feel easy in this virtual agricultural environment [8], while long-standing farmers can accept technological innovations if productivity increases whereas labor reduce [30].
Technology inclusion in the agriculture industry is a milestone in affirming food security, [31]. In the research conducted by Kansanga et al. [19] on “Traditional agriculture in transition: examining the impacts of agricultural modernization on smallholder farming in Ghana under the new Green Revolution,” the study confirmed the significance of using technology to enhance modern-day agriculture productivities.
3. Methodology
With careful consideration of identifying technology as a tool to influence youth into farming, the researchers designed a questionnaire containing demography questions and the remaining items grouped into 5 constructs measuring the factors outlined in research hypotheses. The research questionnaire was subjected to scrutiny by researchers who have expertise in the field. This implies that the face validity of the questions was justified. Nevertheless, the content validity was measured using the Content Validity Ratio (CVR) for each index. The threshold of CVR for considering the content validity as satisfactory at a 95% confidence level is 0.75 [32]. The reliability of the research questionnaire was tested using Cronbach’s Alpha. The test result reveals that the research questionnaire is reliable to be used as a measuring tool for the research, given that the Cronbach’s Alpha is at least 0.7.
In Table 1, the scales depict an acceptable Cronbach’s Alpha > 0.7, showing good reliability. To establish convergent validity, each factor was measure at the threshold of 0.6 following input from [33] for research of this nature [34]. Comrey and Lee (1992) back our guide for selecting the sample size of just over three hundred participants in [35] who gives the scales as follows: 100 = Poor; 200 = Fair; 300 = Good; 500 = Very Good; 1000 or more = Excellent. Participants comprised a sample of 70% males and 30% females. Our sample participants are youth from Ghana who willingly responded to the questionnaires with an age range from 18 to 34 years old and educated with at least a High School Diploma. The majority of them have either a Bachelor’s degree (36.5%) or a Master’s degree (38%), with a handful of them holding a Ph.D. (9.4%). The data collected was assessed for missing values and outliers using RStudio; no missing data was found, and no outliers meaning normality assumption, are assured. Below in Table 2 is the display of the mean and standard deviation of the measure items for each of the constructs in the questionnaire where N is the number of respondents for that particular item (in this case, the same number of responses for each item).
The data analysis for this paper was generated using RStudio Statistical Software, SPSS (and AMOS), and the Real Statistics Resource Pack software (XRealStats v 7.6). The IBM Statistics Package for Social Science (SPSS v 24) was used to conduct the Explanatory Factor Analysis (EFA) of the constructs, with principal axis factoring. The results justified using Confirmatory Factor Analysis (CFA) in AMOS and R. We employed PCA in CFA model fitting and evaluated the effects with Root Mean Square Error of Approximation (RMSEA), PCLOSE, Comparative Fit Index (CFI), Tucker-Lewis Index (TLI), Goodness of Fit Index (GFI), Adjusted GFI (AGFI), Relative Chi-Square of the discrepancy (CMIN/DF), Akaike Information Criterion (AIC), Bayesian Information Criterion (BIC) and Comparative Fit Index (CFI). It should be wealth noted that the thresholds of the aforementioned indices can be found in Table 3 to be considered as good fit, [36]. In the case of AIC and BIC values, the smaller, the better.
Source: authors’ computations.
Table 2. Descriptive statistics of the questionnaire (measurement item).
Source: author’s computation.
Table 3. Factor loadings (loading > 0.2 eigen value are in bold)a.
Extraction Method: Principal Component Analysis. Rotation Method: varimax with Kaiser Normalization. a. Bolded loadings are arranged by size. Rotation converged in 5 iterations. Source: authors’ computation.
Study Hypothesis Using Each Construct
The use of technological activities enables youth farmers to analyze and store data, deploy sensors and perform other functions that enhance productivity [37].
H1. Technology implementation has a positive influence on youth farming activities.
The rate at which technology application improves production motivation motivates youth farming [9].
H2. Participants are intrinsically motivated to go into farming.
Furthermore, the economic enhancement obtained from applying technology in farming activities enables youth farming [38].
H3. Economic development obtained from the application of technology has a positive influence on youth farming.
Moreover, other external activities such as policies, religion, culture, and implementation contribute to youth farming [29].
H4. Government Policies have a positive influence on youth farming.
H5. Knowledge moderate’s technology application effectively in youth farming.
The knowledge on the use and enhancement of technology in agricultural farming improves the application of technology in youth farming.
H6. The attitude of the youth positively correlates with their intrinsic motivation toward youth farming.
The youth viewing farming as high or low risk for income generation has a positive influence on their motivation to go into farming.
4. Result
The pre-data-preparation showed that the participants in this study were youth between age 17 and 35 years and are fairly educated, of which males are the majority. The adequacy of each variable to be included was assessed for its appropriateness in factor analysis using the Keiser-Meyer-Olkin test (KMO test). The observed value was 0.768, statistically significant, considering a threshold of 0.60 stated by [39]. To successfully classify the variables into five constructs, the researchers used Cattel’s scree plot and the percentage of variation criterion (PVR) described by [40]. Figure 1 below shows the scree plot having eigenvalues on the vertical (y-axis) and the number of constructs extracted on the horizontal (x-axis). The number of components with eigenvalues greater than 1 is selected (5 according to Figure 1). The 5 constructs extracted can explain 66.88% of the variance.
The measure internal consistency of the items was assessed Cronbach’s alpha, CR, and AVE and the outcome displayed in Table 1 above. All values reported are above the threshold, which established that the content validity and reliability of the items are satisfactory.
The factor loadings for the constructs give a statistically significant percentage of variation explained and describe that technology (T) implementation has the greatest of variance explained, 18.37%, followed by the economic development (Econ) with 16.85%; participants motivation (M) accounted for 12.69% and government policy (GP) having 10.56. Except for H2 and H3, all other hypotheses were significant at a 95% confidence level, as shown in Table 4. The inferential relationship between technology implementation and youth farming was positive, meaning that the ease of applying technology in agriculture tends to boost the youth to go into farming. Again, the positive relationships indicate that if appropriate governmental policies with incentives are laid down for farmers, young educated people will move into agricultural farming. Also, the negative
Figure 1. Scree plot of eigenvalues versus number of constructs. Source: authors’ plot.
Table 4. Path analysis of the model.
SE: Standard Error. p-value: *** < 0.0001. Source: author’s computation.
the moderating effect of knowledge on technology implementation in farming implies that when the youth have enough knowledge on the application and performance of the technology in farming, their attitude of risk perception on farming decreases.
In Figure 2, the latent variables are marked with oval shapes, whereas the rectangles are the measurement items, and the circles labeled e1 to e23 are the unobserved variations in the model. All the variances (e1 - e23) were statistically significant at 95% confidence level during the analysis. The factor loadings are labeled on arrows from the latent variables to their respective variables, whiles the path coefficients, β are on the paths from one latent variable to another. The model fit indices listed in Table 5 asserts that the observed research model’s goodness-of-fit was satisfactory.
5. Discussion
The purpose of the study was to examine the factors that encourage the youth to champion agricultural farming in Ghana. Using the Exploratory Factor Analysis (EFA), the study implemented factors such as motivation, technology, economics, and external government policies that presumed to have significant effects on youth farming. Figure 2 gives the graphical representation of these relationships. The study observed that among the hypotheses which were significant to the effective assessments of the factors toward youth farming, technology accounts for a greater portion of the variance explained. Thus, signifying technology as a major determining factor that influences youth farming. We observe that technology has a positive significant relationship with youth farming, which means that technology has a direct influence on youth going into farming which toes the line of initial expectation. Researchers such as Bacco et al., [37] and Yu et al., [41] also confirmed technology’s influence on youth and farming.
Also, there was a statistically significant association between government policies and youth farming (p-value < 0.05). As presented in Figure 2; government policies equally have a direct influence on youth opting to farm. Tanko, (2020)
Figure 2. The structural equation model of the study.
confirmed that external activities such as government policies, religion, culture, and the like directly influence youth farming.
Furthermore, the relationship between motivation and youth farming was surprisingly not significant, in statistical terms. The authors discovered that the indicators for motivation were basically concerned about intrinsic motivation (where the youth have inner desire and passion to go into farming), other than the general motivation which would have given an unswerving influence on the youth farm, as was expected by the authors (see H2). It should be worth noticing that some indicators of government policy (GP) account for extrinsic kind of motivation which talks about incentive packages to entice the youth to engage in agricultural farming. Supported by Damba et al., [9] motivation influence people’s behavior, especially the youth, to go into the variable providing the source of motivation.
The result denotes that the relationship between economic and youth farming is not statistically significant, yet the interaction of economic factors with motivation increases the absolute total effect of motivation on youth farming. This means that when the youth is intrinsically motivated, their economic status will boost their interest in farming and researchers such as Saiz-rubio, [38] confirmed economic progress inspires the youth to practice agriculture. The youth are expected to be more inclined hence more likely when there is an ideal financial situation.
In addition, other variables such as attitude and knowledge though have no direct influence on youth farming; they moderate significantly on technology application in farming to drive the youth to have interest in agricultural farming.
Finally, besides the previously discussed factors, other indicators such as the number of family members engaged in farming (MEF1), predominant occupation of the locals (MEF2) [42], the level of education of the youth (MEF3) [43], and the availability of white-collar job or unemployment rate, among others have a great influence on the youth’s involvement in farming.
6. Conclusions
This contemporary study analyses four empirical factors such as technology, motivation, economic and government policies impact on youth farming. Literature divulges that it is technology application in agriculture that influences the youth to farm. Still, other factors such as motivation, economic and governmental policies equally have encouraged the youth. The application and integration of these factors have been extensively accepted as the key elements that inspired youth to go into farming efficiently and effectively. The main result of the analyses shows their integration roles cannot be underestimated.
Technology was identified as a universal modern approach for the current generation of youth, who can use technology to accomplish a greater solution to humanity’s food insecurity, especially on the African continent. The link between technology and youth farming was statistically significant, implying that the outcome in the sample can also be found in the general populace. Furthermore, the study observed that motivation guides the cognitive behavior of the youth towards farming and maintains them by establishing the driving force associated with the benefit of being a young farmer in the region. The analysis further denotes that motivation can also indirectly affect youth farming via economic factors allied with the youth.
Also, economic factor (material prosperity, transfer of goods and services, consumption and the like) was identified to have an optimal determinant on youth farming acceptance, although the data in this study proves otherwise at the 95% confidence level. Government Policies such as policy for better remuneration, a policy of stability of farming employment and retirement benefits, government subsidies on agricultural tools and machinery, and the like contributed to the statistically significant figures obtained during the analysis.
The study observed that government policies serve as a direct link to influence the youth towards farming while also providing the platform for technology application to achieve the same objective. The study advances our understanding of pertinent factors that influence the youth’s adoption of agriculture by establishing the direct theoretical link from these factors. The study recommends that government and stakeholders lay down efficient and effective policies to motivate the young generation of today toward youth farming for sustainability and economic development.
Finally, this present study as adding to literature has some limitations which provide the potential arena for future research. First, this research was conducted on youths in the West African region of Ghana, therefore, future research is encouraged to extend to other countries in the Sub-Saharan Africa with similar interest to boost agricultural farming among the youth. Second, the focus of this study only involved only participants at a youthful age. Extending the study to include participants of older generation may give more insight into understanding how the gap between the young and old generation keeps widening or closing in terms of the interest to go into agriculture farming is suggested for future research. Third, the present study is limited in volume and variety of data obtained from participants. A variety of factors have inherent attributes to agricultural farming, hence further study to incorporate big data and its analytics is desired. Including additional variables ad applying the right analytics will throw more light on youth involvement in agricultural farming and increase precision on information gathered.
Acknowledgements
Our gratitude goes to the anonymous reviewers.