Volume 4 , Issue 2 , PP: 99-110, 2021 | Cite this article as | XML | Html | PDF | Full Length Article
Mohammad Ali Tofigh 1 * , Zhendong Mu 2
Doi: https://doi.org/10.54216/JISIoT.040203
With the development of society, people pay more and more attention to the safety of food, and relevant laws and policies are gradually introduced and being improved. The research and development of agricultural product quality and safety system has become a research hot spot, and how to obtain the Web information of the system effectively and quickly is the focus of the research, so it is essential to carry out the intelligent extraction of Web information for agricultural product quality and safety system. The purpose of this paper is to solve the problem of how to efficiently extract the Web information of the agricultural product quality and safety system. By studying the Web information extraction methods of various systems, the paper makes a detailed analysis and research on how to realize the efficient and intelligent extraction of the Web information of the agricultural product quality and safety system. This paper analyzes in detail all kinds of template information extraction algorithms used at present, and systematically discusses a set of schemes that can automatically extract the Web information of agricultural product quality and safety system according to the template. The research results show that the proposed scheme is a dynamically extensible information extraction system, which can independently implement dynamic configuration templates according to different requirements without changing the code. Compared with the general way, the Web information extraction speed of agricultural product quality safety system is increased by 25%, the accuracy is increased by 12%, and the recall rate is increased by 30%.
Quality safety system, Web information, Information extraction, For agricultural products
[1] Chen Jinbo, Cao Xiangliang, Fu Han-Chi. (2018). “Agricultural Product Monitoring System Supported by Cloud Computing”, Cluster Computing, 5(3), pp.1-10.
[2] ZHANG Xiaoyun, LI Zhemin, XIAO Hongli. (2018). “Analysis of Security Level for Improving Quality Safety of Agricultural Products in China”, Journal of Agricultural Science & Technology, 12(5), pp.12-13.
[3] Mari Maeda-Yamamoto, Toshio Ohtani. (2018). “Development of Functional Agricultural Products Utilizing the New Health Claim Labeling System in Japan”, Bioscience Biotechnology & Biochemistry, 82(10), pp.1-10.
[4] Zheng C Y, Li X G, Zhang X S. (2018). “Problems in Constructing the Modern Circulation System of Agricultural Products in China and Countermeasures”, Cluster Computing, 8(1), pp.3-5.
[5] Guanghong ZHOU. (2018). “Highlights in Agri-Product Quality and Safety”, Frontiers of Agricultural Science & Engineering, 7(11), pp.6-7.
[6] WANG Qiang. (2018). “Agricultural Products Processing Characteristics and Quality Evaluation”, Journal of Integrative Agriculture, 17(5), pp.55-59.
[7] Han J, Lin-Gang L U, Qin Y C. (2018). “Investigation and Construction of Food and Agricultural Products' Quality and Safety Risk Assessment System”, Bioscience Biotechnology & Biochemistry, 2(10), pp.23-24.
[8] ZHAO Hai-xiang, DONG Zhao-feng, ZHANG Jian. (2017). “Current Situation of Agricultural Products Quality and Safety Inspection System in Zhen'an County”, Heilongjiang Agricultural Sciences, 15(7), pp.17-18.
[9] Pan Shouhui, Wang Kaiyi, Wang Zhibin. (2017). “Emergency Tracking Model of Agricultural Product Quality and Safety on Web Based on Incremental Clustering”, Journal of Intelligence, 17(4), pp.45-48.
[10] Mercedes Arguello Casteleiro, Dmitry Tsarkov, Bijan Parsia. (2017). “Using Semantic Web Technologies to Underpin the SNOMED CT Query Language”, Journal of Intelligence, 8(4), pp.16-18.
[11] Zhan, Mu Qing, Lu, Rong Hua. (2016). “Design and Implementation of Web Extraction System of Ceramic Products Information in the Business Website”, Advanced Materials Research, 6(14), pp.25-26.
[12] Lie H, Nayak R, Wyeth G. (2017). “Spatial Information Recognition in Web Documents Using a Semi-supervised Machine Learning Method”, Journal of Intelligence, 3(6), pp.36-37.