Welcome to Francis Academic Press

The Frontiers of Society, Science and Technology, 2023, 5(13); doi: 10.25236/FSST.2023.051310.

Role of Big Data Based on Information System in Management of Agricultural Economy

Author(s)

Tingting Wang

Corresponding Author:
Tingting Wang
Affiliation(s)

Jiangxi Agricultural University, Nanchang, Jiangxi, 330006, China

Abstract

Agriculture is the foundation of the national economy, and Big Data (BD) and cloud computing technology play a vital role in the economic development of society. With the continuous advancement of social informatization, how to use efficient BD technology to obtain massive economic information and conduct reliable analysis and processing has become an important development direction in the current management of agricultural economy field. In order to solve the problems of low collection efficiency, incomplete information sources, insufficient coverage of information elements to determine economic trends, insufficient technical means to obtain and process information, and inability to cope with complex and diverse management of agricultural economy situations in traditional management of agricultural economy processes, this article analyzed the work structure and operational process of information processing in traditional management of agricultural economy processes. Starting from the aspects of information collection, processing, storage, and analysis, this paper summarized the shortcomings of information processing capabilities in traditional management of agricultural economy processes, and tentatively introduced BD technology to optimize the performance of traditional information systems. Finally, to verify the reliability of the optimized agricultural economic information management system with the introduction of BD technology, comparative experiments were conducted on the practical application effects. Based on experimental results, it was shown that optimizing agricultural information management systems required a shorter time for marketing decisions compared to traditional agricultural information management systems. This article evaluated the simplicity of the implementation plan (A), the rationality of resource allocation (B), the effectiveness of the plan practice (C), and the ability to respond to sudden risks (D), with an average improvement of about 10.6%. The optimized agricultural economic information management system in this article had richer data collection methods compared to traditional agricultural economic information management systems. The application of BD technology improved the work efficiency and processing speed of the information management system, which could greatly shorten the time required for information processing under cost control conditions and promote the intelligence level of agricultural economic information management.

Keywords

Management Information System, Agricultural Economy, Level of Management, Big Data Technology

Cite This Paper

Tingting Wang. Role of Big Data Based on Information System in Management of Agricultural Economy. The Frontiers of Society, Science and Technology (2023) Vol. 5, Issue 13: 56-62. https://doi.org/10.25236/FSST.2023.051310.

References

[1] Kazushi Takahashi, Rie Muraoka, Keijiro Otsuka.”Technology adoption, impact, and extension in developing countries’ agriculture: A review of the recent literature.” Agricultural Economics 51. 1 (2020): 31-45. 

[2] Douglas Gollin.”Conserving genetic resources for agriculture: Economic implications of emerging science.” Food Security 12. 5 (2020): 919-927. 

[3] Arne Henningsen, Tomasz Gerard Czekaj, Bjorn Forkman, Mogens Lund, Aske Schou Nielsen.”The relationship between animal welfare and economic performance at farm level: A quantitative study of Danish pig producers.” Journal of Agricultural Economics 69. 1 (2018): 142-162. 

[4] Kai Tang, Chunbo Ma.”The cost-effectiveness of agricultural greenhouse gas reduction under diverse carbon policies in China.” China Agricultural Economic Review 14. 4 (2022): 758-773. 

[5] Valerii Koliada, Pavel Nazarok.”Economic security of regions as a criterion for formation and development of agricultural clusters by means of innovative technologies.” Scientific Papers Series Management, Economic Engineering in Agriculture and Rural Development 18. 4 (2018): 431-439. 

[6] Dieisson Pivoto, Paulo Dabdab Waquil, Edson Talamini, Caroline Pauletto Spanhol Finocchio, Vitor Francisco Dalla Corte, Giana de Vargas Mores.”Scientific development of smart farming technologies and their application in Brazil.” Information processing in agriculture 5. 1 (2018): 21-32. 

[7] George W. Norton, Jeffrey Alwang.”Changes in agricultural extension and implications for farmer adoption of new practices.” Applied Economic Perspectives and Policy 42. 1 (2020): 8-20. 

[8] William A. Kerr.”The COVID‐19 pandemic and agriculture: Short‐and long‐run implications for international trade relations.” Canadian Journal of Agricultural Economics/Revue canadienne d'agroeconomie 68. 2 (2020): 225-229. 

[9] Zbigniew G.”Impact of working capital management on business profitability: Evidence from the Polish dairy industry.” Agricultural Economics 66. 6 (2020): 278-285. 

[10] Khudoynazarovich, Kuchimov Sobir.”Economic issues of ensuring economic efficiency in agricultural production and the use of innovative agricultural technologies.” SAARJ Journal on Banking & Insurance Research 10. 2 (2021): 16-22. 

[11] Jean-Paul Chavas, Giorgia Rivieccio, Salvatore Di Falco, Giovanni De Luca, Fabian Capitanio.”Agricultural diversification, productivity, and food security across time and space.” Agricultural Economics 53. S1 (2022): 41-58. 

[12] Keith H Coble, Ashok K Mishra, Shannon Ferrell, Terry Griffin.”Big data in agriculture: A challenge for the future.” Applied Economic Perspectives and Policy 40. 1 (2018): 79-96. 

[13] Oliver M, Maria Fay, Jan vom Brocke.”The effect of big data and analytics on firm performance: An econometric analysis considering industry characteristics.” Journal of Management Information Systems 35. 2 (2018): 488-509. 

[14] Kelvin Mashisia Shikuku, Janneke Pieters, Erwin Bulte, Peter L.”Incentives and the diffusion of agricultural knowledge: Experimental evidence from Northern Uganda.” American Journal of Agricultural Economics 101. 4 (2019): 1164-1180. 

[15] Hongyun Zheng, Wanglin Ma.”Smartphone-based information acquisition and wheat farm performance: insights from a doubly robust IPWRA estimator.” Electronic Commerce Research 23. 2 (2023): 633-658. 

[16] Yao Pan, Stephen C Smith, Munshi Sulaiman.”Agricultural extension and technology adoption for food security: Evidence from Uganda.” American Journal of Agricultural Economics 100. 4 (2018): 1012-1031. 

[17] Dario Frascari, Giulio Zanaroli, Mohamed Abdel Motaleb, Giorgio Annen, Khaoula Belguith, Sara Borin, et al.”Integrated technological and management solutions for wastewater treatment and efficient agricultural reuse in Egypt, Morocco, and Tunisia.” Integrated environmental assessment and management 14. 4 (2018): 447-462. 

[18] Hamid El Bilali, Mohammad Sadegh Allahyari.”Transition towards sustainability in agriculture and food systems: Role of information and communication technologies.” Information Processing in Agriculture 5. 4 (2018): 456-464. 

[19] L. O. Lomovskykh, O. V. Mandych, O. O. Kovalenko, N. A. Karasova, A. Orzel.”Тhе algorithm of analysis of agricultural risks under influence of incomplete information about their parameters.” Financial and credit activity problems of theory and practice 3. 30 (2019): 112-120. 

[20] Bruno Basso, John Antle.”Digital agriculture to design sustainable agricultural systems.” Nature Sustainability 3. 4 (2020): 254-256.