1. Introduction
The digital agricultural revolution is a transformative phenomenon with extensive implications for agricultural practices. Estimates suggest that the global population will reach nearly 10 billion by 2050 [
1]. This demographic surge will significantly increase the demand for essential resources, particularly food, requiring higher quantity and improved quality. Global food production must increase by approximately 60–70% to meet the needs of a growing population [
2,
3].
Meeting this demand poses challenges, including climate changes that will exacerbate existing risks and introduce new ones, compounded by the complex interplay between environmental and socio-economic factors [
4]. Climate change amplifies the vulnerability of traditional agricultural systems, directly impacting crop productivity, soil health, and the availability of critical resources such as water. Addressing these challenges requires adopting innovative solutions, such as advanced digital technologies, sustainable farming practices, and international collaboration to manage food resources [
5]. Agriculture can only evolve to meet present and future global demands through an integrated approach driven by collaboration and innovation.
Expanding agricultural production sustainably hinges mainly on advances in technology and innovation research [
6]. Digital technologies offer a promising strategy to enhance agricultural growth by increasing agricultural production processes’ scale, efficiency, and effectiveness. Precision agriculture, for instance, utilizes technologies such as artificial intelligence (AI), advanced sensors, and data-driven management systems to optimize inputs like water, fertilizers, and pesticides according to specific crop needs [
7].
Moreover, drones and remote sensing technologies provide detailed insights into crop conditions and environmental factors, enabling quick and informed decision-making. This approach improves agricultural yields and addresses soil erosion and biodiversity loss. Thus, digital agriculture becomes essential for modernizing the sector and ensuring a sustainable future that responsibly and efficiently addresses demographic and climate challenges.
This research aims to develop a robust analytical framework to evaluate the relationship between digitalization and agricultural efficiency while offering perspectives for integrating digital technologies into agricultural development strategies. The research deepens the understanding of interactions between economic and technological variables, including the DESI, labor productivity, agricultural output, and GDP per capita, by employing predictive models such as artificial neural networks, ARIMA, and exponential smoothing. This analysis provides a solid foundation to demonstrate the significant impact of digitalization on agriculture and underscores the urgency of adapting swiftly to new technological realities.
While the impact of digital technologies on other economic sectors is well-documented, agriculture still needs to be explored. Key challenges include the need for standardized methodologies for quantifying these technologies’ effects and the complexity of adapting them to the agricultural sector’s unique characteristics, such as high variability and dependence on natural factors. Furthermore, only some studies predictively analyze the influence of digitalization on agricultural production and productivity to ensure the food system’s sustainability. The originality of this study lies in integrating advanced predictive models to examine the influence of the DESI on agricultural output and productivity. The findings contribute significantly to the literature by highlighting the importance of digital transformation for modernizing agriculture.
The paper has six sections: introduction, literature review and hypothesis formulation, materials and methods, results, discussions, and conclusions. Together, these sections provide a comprehensive perspective on the influence of digital technologies on agriculture.
4. Results
Examining hypothesis H1 involved leveraging artificial neural network analysis to establish relationships among the model variables. The input layer comprises independent variables that feed into the model: DESI (digital economy and society index) and RGDPpc (real gross domestic product per capita). These variables connect to the hidden layer units through weights adjusted during training. The input layer also includes a bias term, enabling the network to capture more complex relationships.
The hidden layer contains two units (neurons): H(1:1) and H(1:2). These units are responsible for capturing nonlinear relationships between inputs and outputs. H(1:1) may represent the direct effects of digitalization on labor productivity and agricultural output, while H(1:2) might reflect indirect influences, such as improved agricultural infrastructure. The output layer features two dependent variables: RLPpp (real labor productivity per person) and AGROUT (agricultural output). The model summary shows that the training and testing phases of MLP exhibit robust performance (
Table 2).
Figure 1 illustrates the relationships within the MLP model, while
Table 3 presents the estimated parameters of the model.
Input terms with weights of 1.353 influence the H(1:1) unit for the DESI and 0.323 for RGDPpc and a bias contribution of −0.175. Similarly, H(1:2) receives inputs weighted at 2.136 for the DESI and 0.856 for RGDPpc, with a bias of 0.671. RLPpp is affected by the hidden units with weights of 1.100 for H(1:1) and 1.715 for H(1:2), accompanied by a bias of 0.723. These values indicate that both hidden units play a significant role in determining labor productivity. AGROUT is similarly influenced by H(1:1) and H(1:2), with weights of 0.784 and 1.730, respectively, and a bias of −0.506. These values underscore the significant contribution of the hidden layer to estimating agricultural output.
The model structure reveals how the complex relationships among digitalization, economic growth, labor productivity, and agricultural output are captured and processed within the neural network layers. The results highlight a positive relationship between the DESI and the output variables AGROUT and RLPpp, suggesting that digitalization drives productivity and agricultural output. Farmers can more effectively monitor crops, optimize resource use, and reduce losses by adopting AI, IoT, agricultural drones, and crop management software. Furthermore, economic growth, measured through RGDPpc, facilitates access to these technologies, creating a conducive environment for sustainable agricultural development.
Hypothesis H1 asserts that the evolution of digitalization, as measured using the DESI, exerts a significant positive influence on the future trajectory of agricultural output. Validating this hypothesis carries important implications for both research and public policy. On the one hand, it emphasizes how important digitalization is for promoting sustainable agriculture and economic prosperity, setting the stage for more research into the precise mechanisms in which it works. However, to optimize the benefits of digitization for agriculture, it highlights the necessity of funding rural digital infrastructure and enhancing farmers’ digital literacy.
Investigating hypothesis H2 required the application of predictive models (Brown and ARIMA) to forecast trends in the study variables over future periods. The first step involved identifying variable trends based on past developments.
The predictive models using Brown’s exponential smoothing approach revealed a consistent upward trend for RGDPpc and RLPpp. This analysis used historical data from 2001 to 2022 and provided projections for 2023–2028, highlighting economic growth stability and sustained productivity improvements.
For RLPpp, the smoothing coefficient Alpha (0.461) was statistically significant (
p < 0.001), demonstrating that the model balanced the influence of recent and older data points. Similarly, the Alpha coefficient for RGDPpc (0.427) was also statistically significant (
p < 0.001), reflecting an equally distributed impact of historical and recent trends on the forecasted trajectory. The fit statistics underline the robustness and reliability of the Brown model in capturing trends and providing accurate predictions for the variables analyzed (
Table 4).
Both the stationary R-squared and R-squared values average of 0.930 indicate high explanatory power and a strong ability of the model to capture the variation in the data. The RMSE (root mean square error) and MAE (mean absolute error) values highlight the precision of the model’s predictions, with relatively low average error measures. The MAPE (mean absolute percentage error) value of 2.013% confirms the model’s accuracy in predicting outcomes, reflecting minimal deviation from actual values. While MaxAPE and MaxAE values show some higher extremes, these are likely outliers and do not diminish the overall model reliability. The normalized BIC value suggests that the model balances fit quality and complexity well.
RLPpp forecasts indicate steady growth from 116.96 in 2023 to 125.10 in 2028, signaling continuous improvements in labor productivity. Technological advancements, enhanced human resource efficiency, and modernized economic practices will likely drive these improvements. This upward dynamic suggests a favorable framework for long-term economic growth.
Projections for RGDPpc demonstrate consistent growth, from 29452 euro per capita in 2023 to 31605 euro per capita in 2028. These values reflect sustained economic expansion, implying a robust macroeconomic environment with strong adaptability to evolving factors. RGDPpc growth underscores a macroeconomic context where investments and public policies support steady development.
These forecasts emphasize the ongoing importance of investing in technology and human capital development as key drivers of economic performance and productivity. Furthermore, they highlight the necessity of balancing stability with innovation to support sustainable and competitive growth.
The ARIMA models for the DESI and AGROUT variables, based on data from 2017 to 2022, provided significant insights into digitalization and agricultural performance over the 2023–2028 forecast period. For the DESI, the model suggested an average annual growth of approximately 3.62, supported by statistically significant trends, reflecting the steady progress of digitalization. The model’s negative constant (−7266.648) is an adjusted starting point, with the year coefficient indicating an upward trajectory.
AGROUT forecasts based on the ARIMA model showed an average annual growth of approximately €23,038 million, supported by statistically significant year coefficients. Although the model’s negative constant (−46,079,931.086) might appear counterintuitive, the positive long-term trend is far more relevant. The ARIMA models provide reliable results, effectively capturing temporal patterns and offering meaningful predictions for the DESI and AGROUT depending on the previous annual evolution. (
Table 5).
The ARIMA model fit statistics indicate a solid performance in capturing the data dynamics. The stationary R-squared and R-squared values average 0.824, demonstrating a substantial ability to explain variability within the dataset. The RMSE and MAE values show the model’s predictive precision, although higher than in some other models, reflecting variability in the data.
The MAPE value of 3.742% suggests that the ARIMA model maintains a reasonable level of accuracy in predictions, with deviations remaining within acceptable limits.
The DESI is projected to increase from 54.07 in 2023 to 72.16 in 2028, indicating accelerated digital transformation with potentially significant impacts across economic sectors, including agriculture. AGROUT forecasts predict growth from 525317 million euros in 2023 to 640506 million euros in 2028, reflecting gradual improvements in agricultural output. This growth may stem from modernized agricultural technologies and direct digitalization effects.
The DESI’s growth indicates widespread adoption of digital technologies, which optimize agricultural processes, reduce operational costs and improve yields.
ARIMA models exploring the influence of the DESI on AGROUT and RLPpp reveal positive impacts of digitalization on agricultural performance and labor productivity for the 2023–2028 forecast period. For AGROUT, the DESI coefficient (6911.650), statistically significant (p = 0.010), shows that each additional DESI unit correlates with an approximate 6912 million euros increase in agricultural output. These values underscore the substantial role of digital transformation in agriculture. The model constant (158,519.754) reflects a baseline level of agricultural output, adjusted for other variables.
For RLPpp, the DESI coefficient (0.460) indicates a statistically significant positive relationship (
p = 0.047), with each DESI unit contributing approximately 0.46 to RLPpp. This finding highlights how digitalization enhances economic activities and labor productivity in agriculture and related sectors. The constant (92.403) denotes the adjusted baseline for labor productivity. The ARIMA models provide reliable results, effectively capturing temporal patterns and offering meaningful predictions for AGROUT and RLPpp depending on the DESI’s evolution. (
Table 6).
The ARIMA model fit summary indicates a strong ability to capture data variability, as evidenced by the stationary R-squared and R-squared values averaging 0.754. These values reflect a high level of explanatory power and consistency across predictions. The RMSE and MAE values highlight the model’s accuracy, with moderate deviations in absolute terms, while the MAPE of 2.69% suggests that the model maintains a reliable degree of predictive precision relative to the magnitude of the data. The MaxAPE and MaxAE values point to occasional more significant deviations, which could arise from specific anomalies or high-variability observations. The normalized BIC score suggests a reasonable trade-off between model complexity and goodness-of-fit.
AGROUT forecasts show steady growth from approximately 532,226 million euros in 2023 to 657,283 million euros in 2028. This upward trend reflects ongoing improvements in agricultural output, mainly attributable to digital technology adoption. Digitalization improves production efficiency, optimizes resource use, and reduces losses, enabling the agricultural sector to meet market demands better.
For RLPpp, the forecasts show gradual growth in labor productivity, from 117.27 in 2023 to 125.59 in 2028. This trend reflects consistent progress supported by increasing levels of digitalization. Implementing digital technologies facilitates better use of labor and resources, enhancing efficiency and reducing the time required for various operations.
The findings illustrate that digitalization, measured using the DESI, is fundamental in determining agricultural output and labor productivity. The DESI’s growth signals not just technological modernization but also the creation of a more competitive and sustainable agricultural environment.
For the 2023–2028 period, agriculture and labor productivity are expected to show positive dynamics as digitalization continues to expand and transform traditional operational models. These results highlight the importance of policies supporting digital technology adoption, particularly in rural areas, to fully capitalize on their potential to drive economic development and agricultural sustainability.
ARIMA models based on RGDPpc as an independent variable reveal trends and demonstrate how economic growth influences agricultural output and labor productivity during the 2023–2028 forecast period.
For AGROUT-Model_1, the RGDPpc coefficient is positive (0.034) and marginally significant (p = 0.051). These values suggest a modest relationship between overall economic growth and agricultural output, indicating that improvements in per capita GDP contribute positively but not decisively to agricultural progress. The negative constant (−299.408) is insignificant.
RLPpp-Model_2’s RGDPpc coefficient is not statistically significant (
p = 0.311), suggesting a weaker link between GDP per capita and labor productivity. However, the constant (7.631) is significant (
p = 0.039), indicating an underlying influence on labor productivity potentially driven by additional unmodeled factors. ARIMA models provide a functional but not highly precise representation of the data, making it a suitable tool for capturing general patterns (
Table 7).
The ARIMA model fit summary reflects a moderate level of predictive accuracy. The stationary R-squared and R-squared values, averaging around 0.45, indicate that the model captures nearly half of the variability in the data, suggesting room for improvement in explanatory power. The MAPE value of 3.876% demonstrates acceptable predictive accuracy, while the MaxAPE and MaxAE highlight occasional more significant deviations, likely reflecting outliers or high variability within specific data points. The normalized BIC values suggest that the model maintains a balance between complexity and fit, though they imply that simpler models may also be explored.
For AGROUT, forecasts predict steady growth from approximately 512,020 million euros in 2023 to 623,569 million euros in 2028. This upward trend reflects the gradual consolidation of agricultural output, facilitated by digital technology integration and GDP per capita growth. RLPpp forecasts indicate slow but steady labor productivity growth, from 114.62 in 2023 to 119.48 in 2028. This modest increase likely stems from technological advancements and overall economic conditions.
Overall, the results suggest that GDP per capita plays a moderate role in influencing agricultural output, while its impact on labor productivity is less pronounced. For the 2023–2028 period, stable agricultural expansion and modest labor productivity growth are anticipated. These trends reveal untapped potential that could be unlocked through more targeted policies and increased investment in digitalization.
The analysis of RLPpp and AGROUT forecasts across three scenarios based on annual evolution, RGDPpc, and DESI trends reveals significant differences among these predictive models. These differences provide insights into the determinants and allow evaluation of hypothesis H2’s validity.
For RLPpp, consistent growth across all scenarios is evident (
Figure 6).
However, DESI-based projections systematically exceed those derived from RGDPpc or annual trends. For instance, in 2023, labor productivity per person projected using the DESI is 117.27, compared to 114.62 based on RGDPpc. This gap widens by 2028, with the DESI forecasting a productivity level of 125.59 versus 119.48 from the RGDPpc model. This discrepancy suggests that digitalization is central to enhancing labor productivity, supporting the hypothesis that the DESI has a significant positive influence.
For AGROUT, scenario differences are even more pronounced (
Figure 7).
DESI-driven projections indicate significantly higher total agricultural output than those based on RGDPpc or annual trends. For example, in 2023, the DESI-based projection estimates 532,225.79 million euros compared to 512,020.3 million euros using RGDPpc. By 2028, the DESI-based projection estimates agricultural output at 657,283.23 million euros, over 33,000 million euros higher than the RGDPpc-based projection.
These findings highlight digitalization’s more substantial and direct influence on agricultural performance. Comparing the two variables, digitalization’s impact is more pronounced for total agricultural output than labor productivity. Nonetheless, the DESI consistently demonstrates a significant positive effect, confirming that technological progress and digital integration yield substantial benefits.
This analysis validates hypothesis H2, reinforcing that digitalization stimulates production growth and enhances agricultural resource use efficiency. The results suggest that digitalization, as captured by the DESI, is a key catalyst for agricultural development, positively impacting output and productivity. In a context where sustainability and efficiency are increasingly indispensable, adopting digital technologies emerges as a fundamental strategy for the future of agriculture.
5. Discussion
Digital agriculture has emerged as a transformative approach to agricultural production, leveraging advanced technologies to optimize farming practices and enhance sustainability. By fostering knowledge sharing and promoting the exchange of best practices among farmers, digital agriculture addresses critical societal concerns such as ensuring food security, reducing inequalities in access to technology, and enhancing resource efficiency. This transformative potential, underpinned by integrating technologies like sensors, drones, and artificial intelligence (AI), redefines agricultural processes.
Research has extensively explored the role of data-driven decision-making and big data analytics in precision agriculture. These tools enable farmers to make informed and efficient choices, underpinned by the continuous monitoring and analysis of critical data on soil, climate, crop health, and resource use [
105,
106,
107,
108,
109]. Technologies like soil and air sensors allow real-time tracking of crop health and environmental conditions, enabling timely interventions. Concurrently, AI-driven software analyzes vast datasets, providing precise forecasts regarding fertilizer requirements, crop behavior, and water management [
110,
111,
112]. Such advancements illustrate the practical applications of digital agriculture, such as optimizing irrigation schedules or customizing nutrient applications, which directly enhance productivity and sustainability.
The study’s findings confirm hypothesis H1, demonstrating that digitalization significantly and positively impacts agricultural output. The relationships between the digital economy and society index (DESI), RGDPpc, and output variables such as labor productivity (RLPpp) and agricultural output (AGROUT) were explained using artificial neural networks. These findings align with existing literature, underscoring the transformative potential of Agriculture 4.0 in enhancing sustainability and efficiency within the agricultural sector [
50,
52]. Advanced technologies, including IoT, AI, and robotics, facilitate resource optimization, waste reduction, and improved resilience to climate change [
113,
114]. For example, IoT-based systems enable farmers to monitor soil moisture levels remotely, reducing water wastage while maintaining optimal crop conditions.
This study also highlights the synergistic effects of digitalization when combined with economic variables such as RGDPpc. These results resonate with other studies that emphasize the necessity of financial and technological resources for the widespread adoption of Agriculture 4.0 [
5,
61]. However, the literature also identifies significant challenges, including unequal access to technology, high costs, and potential ecological risks [
25,
115]. Addressing these barriers is crucial to realizing the full potential of digitalization. Implementing well-designed public policies that promote equitable access to digital technologies and prioritize ecological sustainability is essential for ensuring inclusive benefits across different regions and demographics.
The results of this study not only validate hypothesis H1 but also contribute to the broader discourse on leveraging Agriculture 4.0 as a strategic tool for agricultural transformation. Digitalization represents both an opportunity and a responsibility, offering a pathway to a more efficient, resilient, and accountable agricultural sector. For instance, programs like digital extension services can bridge the knowledge gap by providing farmers with customized advice and real-time solutions tailored to their contexts.
The findings related to hypothesis H2 further reinforce the transformative role of digitalization in contemporary agriculture. Recent studies corroborate the increasing influence of digital technologies on agricultural output and labor productivity, highlighting their capacity to optimize processes and deliver substantial economic benefits [
116]. These advancements improve operational efficiency and enhance production quality and quantity through minimized losses and more sustainable resource utilization. For example, Chandio [
117] illustrates the role of real-time meteorological data in enhancing cereal yields in China, while Weltin et al. [
118] and Symeonaki et al. [
119] document the economic advantages of digital technologies for farmers, showcasing both immediate and long-term benefits. These findings are consistent with the study’s results, which reveal that the impact of digitalization surpasses traditional determinants like economic growth and annual trends.
Nevertheless, the benefits of digitalization are not uniformly distributed. Many technologies are still in developmental stages and face significant challenges in application, particularly in regions with limited digital resources or technological expertise. Trujillo-Barrera et al. [
120] and Chinseu et al. [
121] emphasize the need for localized adaptations and continuous refinements of emerging technologies to ensure their effectiveness. Furthermore, Visser et al. [
122] highlight the risks associated with immature technologies, which may underperform or fail under specific conditions.
Adopting digital solutions also depends on effectively communicating their benefits to farmers. Studies by Murendo et al. [
123], Dinesh et al. [
124], and Kalfas et al. [
29] underscore the importance of efficient information dissemination and ongoing dialogue between farmers and experts. For example, farmer field schools and participatory training programs can enhance the understanding and adoption of digital tools, fostering confidence in their practical utility. Moreover, access to technical support and applicable knowledge facilitates the transition to modern digital practices [
125].
The findings related to hypothesis H2 validate the critical role of digitalization as a catalyst for agricultural development while highlighting the complexities involved in its implementation. The successful adoption of digital technologies hinges on factors such as government support, farmer education, and the development of appropriate infrastructure. Addressing these prerequisites is essential for ensuring that the advantages of digitalization are equitably accessible and that its long-term impact on agriculture is maximized. Investments in rural broadband connectivity can significantly reduce the digital divide, enabling farmers in remote areas to benefit from advanced technologies. These insights contribute to a more nuanced understanding of digitalization’s role in agriculture, emphasizing the need for a collaborative, inclusive, and forward-looking approach to harness its transformative potential.
The discussion of these results sets the stage for exploring the broader implications, particularly how digital transformation can be leveraged to improve agricultural productivity and sustainability.
6. Implications and Limitations
6.1. Theoretical Implications
This research offers valuable insights into the relationship between digitalization and agricultural performance, building on existing perspectives on the transformation of agricultural systems. By confirming the positive influence of digitalization, as measured using the DESI, on labor productivity and total agricultural output, this study highlights the importance of integrating digital technologies into theoretical models explaining modern agricultural dynamics. This study bridges theoretical constructs with practical applications by including real-world examples, such as the impact of IoT on resource optimization and AI on predictive analytics. This contribution adds a new dimension to the literature, emphasizing digitalization’s role as a key driver in creating a more resilient and sustainable agricultural system.
The research supports the European vision of agriculture transformed through digitalization, aligning with the European Green Deal and the Farm to Fork strategy. These political initiatives advocate for harmonizing economic, ecological, and social objectives. The findings demonstrate how digitalization can become a cornerstone in achieving this balance, providing a theoretical lens to understand how technology integration addresses global priorities such as environmental protection, inequality reduction, and food security assurance. This perspective underscores digitalization as a tool and a platform for systemic transformation.
This study also redefines traditional understandings of agricultural productivity and performance by proposing an approach where technological progress acts as a transformative force. By embedding digitalization into theoretical models of agriculture, the research creates an analytical framework that explains not only economic growth but also adaptation processes to climate change and global resource pressures. The theoretical implications extend beyond the conventional economic paradigms, providing an understanding of how digital innovations facilitate a more adaptive and resilient agricultural sector.
Therefore, this research contributes to expanding modern agricultural theory, foregrounding a paradigm where digitalization is both a driver of change and a necessary condition for shaping a sustainable, adaptable, and inclusive agricultural future. It encourages a reconfiguration of theoretical thinking, emphasizing the importance of a global perspective that integrates technology, policy, and sustainability into a unified vision for agricultural development.
6.2. Practical Implications
As the world faces rapid population growth and mounting pressures on natural resources, this paper provides valuable insights into reshaping agricultural practices through digitalization. The research findings underscore the significant influence of digital technologies on agricultural performance, particularly in labor productivity and output growth. These results highlight that digitalization is no longer an optional innovation but a strategic necessity for the future of agriculture.
The study confirms that agricultural digitalization is a cornerstone of Agriculture 4.0, a concept that redefines agricultural production through integrated and sustainable solutions. For instance, real-time meteorological data and AI-based analytics enable farmers to optimize irrigation and fertilizer, leading to substantial productivity gains. This transformation enhances efficiency and productivity and revitalizes rural communities, yielding significant economic and social benefits. Furthermore, digital technologies facilitate better market access, transparency in supply chains, and reduced resource wastage, addressing some of the most pressing challenges in global agriculture.
Overall, engaging in the digitalization of agriculture represents an investment in the future, capable of redefining sustainability and food security globally. This strategic direction is decisive for addressing the growing demands for food production and building an agricultural system capable of withstanding economic and environmental uncertainties while offering sustainable solutions for future generations. Practical steps (expanding rural broadband infrastructure and providing digital education for farmers) are essential to ensure these benefits are accessible to all.
6.3. Limitations and Further Research
Although the results confirm the hypothesis that digitalization significantly influences agricultural performance, this study does not encompass all aspects or fully explain the interdependencies among the analyzed factors.
One limitation pertains to the data used, which, while relevant and current, do not capture the full spectrum of regional and national variability in digitalization levels and agricultural contexts. Each region has unique characteristics regarding available resources, digital infrastructure, and public policies, which can impact how digitalization contributes to agricultural performance. Expanding the analysis to include more regions and a broader range of contextual variables could provide more generalizable conclusions.
Furthermore, the dynamic nature of digital technologies poses methodological challenges. Rapid technological advancements can render some models outdated in a short time frame. The research utilized data available at the time from Eurostat and the European Commission’s DESI database.
Another limitation is the difficulty of isolating digitalization’s effects from other determinants of agricultural performance, such as agricultural policies, climate change, or global market dynamics. While the methodology attempts to account for these factors by identifying biases, their influences cannot be excluded. Developing more complex models that integrate a wider range of variables and account for their interactions could improve understanding of the mechanisms through which digitalization impacts agriculture.
The research focuses on temporal relationships and does not include a detailed causality test between digitalization, measured using the DESI, and agricultural indicators such as labor productivity or agricultural output. Although the models, such as the ARIMA model and artificial neural networks, allow for trend estimation and predictions, they cannot provide definitive evidence of causal relationships. Future research could benefit from complementary approaches, such as structural econometric models, to further explore the causal mechanisms between digitalization and agricultural performance.
A notable limitation of this study lies in its reliance on time series analysis, which, while effective for capturing temporal dynamics, does not account for potential cross-sectional heterogeneity across regions or countries. This approach may limit the generalizability of the findings to broader contexts, as it focuses solely on temporal relationships without exploring structural variations. Future research could address this limitation by incorporating panel data analysis into the methodological framework. By combining temporal and cross-sectional dimensions, such studies could provide a more nuanced understanding of how digitalization impacts agricultural performance across diverse regions or countries. This multidimensional perspective would enable more robust and comprehensive conclusions, enhancing the relevance and applicability of the results in varied contexts.
The analysis focuses on the general impact of digitalization on the agricultural sector without exploring in detail the effects of digital technologies on different agricultural sub-sectors, such as crop farming, livestock, or aquaculture. Future research can address these sub-sectors in greater detail, exploring the digital transformations across various areas of agriculture and providing a more comprehensive understanding of their impact on the agricultural sector. Furthermore, analyzing the relationship between digitalization and agricultural sustainability could provide significant insights, particularly in transitioning to more environmentally friendly farming practices.
The study emphasizes the need for interdisciplinary approaches that combine economic, technological, and social perspectives to create an integrated understanding of agricultural transformation. Such an approach promises to support the formulation of more effective policies tailored to the agricultural sector’s needs.