Journal of Trends in Computer Science and Smart Technology is accepted for inclusion in Scopus. click here
Home / Archives / Volume-7 / Issue-3 / Article-14

Volume - 7 | Issue - 3 | september 2025

Effectiveness of Farmers’ Professional Cooperatives in Helping Rural Revitalization Using Big Data Analysis Open Access
Ruiqi Zhang  , Wong Sing Yun, Siti Hajar Samsu  15
Pages: 568-589
Cite this article
Zhang, Ruiqi, Wong Sing Yun, and Siti Hajar Samsu. "Effectiveness of Farmers’ Professional Cooperatives in Helping Rural Revitalization Using Big Data Analysis." Journal of Trends in Computer Science and Smart Technology 7, no. 3 (2025): 568-589
Published
23 September, 2025
Abstract

Farmers' Professional Cooperatives have been increasingly recognized as organizational forms facilitating economic development, agricultural modernization, and rural social capital construction as part of China's national rural revitalization strategy. Based on a big data study method, the study estimates the performance trajectory of FPCs and their impacts on social capital construction, income increase, poverty alleviation, agricultural restructuring, and employment in urban-rural areas. A combined approach of the Back Propagation Neural Network and the Mayfly Optimization Algorithm was put forward in an attempt to promote feature selection and accuracy of prediction for the intricate and multi-layered socioeconomic case. Big data and the proposed predictive model will be compared by the proposed study using the data of 820 members in 14 cooperatives. The outcome reveals that the suggested model achieved a 93.4 % success rate, a 26.4 % increase in earnings, an 18.7 % rise in technology uptake, and a 31.2 % rise in training attendance and engagement. Among cooperative members, descriptive statistics demonstrated a significant improvement in household income, market access, training engagement, and the application of technology. To facilitate generalization, the model was trained on 70% of the dataset, tested on 15% of the dataset, and validated on the other 15% through the use of cross-validation methods. The proposed model was found to be more accurate than traditional models with a 93.4% correctness rate and an RMSE value of 2.13. Other significant factors determining performance in cooperatives, including farm size, years of experience, and education, were also discovered by the model. FPCs strategically facilitate resource concentration, implementation of policies, and rural institutional integration along with enhancing farmers' economic welfare, as revealed by the findings.

Keywords

Farmers’ Professional Cooperatives Bigdata Analysis Agricultural Modernization Rural Revitalization Cooperative Effectiveness

×
Article Processing Charges

Journal of Trends in Computer Science and Smart Technology (jtcsst) is an open access journal. When a paper is accepted for publication, authors are required to pay Article Processing Charges (APCs) to cover its editorial and production costs. The APC for each submission is 400 USD. There are no additional charges based on color, length, figures, or other elements.

Category Fee
Article Access Charge 30 USD
Article Processing Charge 400 USD
Annual Subscription Fee 200 USD
Payment Gateway
Paypal: click here
Townscript: click here
Razorpay: click here
After payment,
please send an email to irojournals.contact@gmail.com / journals@iroglobal.com requesting article access.
Subscription form: click here