jinghua wu | Behavior science | Women Researcher Award

Assoc Prof Dr. jinghua wu | Behavior science | Women Researcher Award

Assoc Prof Dr. jinghua wu, sichuan Agricultural University, China

Dr. Wu Jinghua is an associate professor at the College of Information Engineering, Sichuan Agricultural University, a key university under China’s “Project 211.” She holds a Ph.D. in Information Management System from South-West Financial University. With research interests in information management systems, e-commerce, and e-finance, she has authored numerous papers and publications. Previously, she worked at Leshan Gas Company and has undertaken significant roles in research projects focusing on digital agriculture and financial technologies. Dr. Wu is known for her analytical skills and dedication to advancing information technology applications. πŸ“Š

 

Publication profile

Scopus

Education Experience

Dr. Wu Jinghua holds a Ph.D. in Information Management System from South-West Financial University (2012), an M.S. in Computer Science from Southwest University (2005), and a B.S. in Computing Science from China West Normal University (1999).

 

Professional Experience

She has been an associate professor at Sichuan Agricultural University since 2012, teaching courses on E-commerce, Java Programming, and more.

Dr. Wu Jinghua’s research focuses on several key areas within information engineering and agricultural economics. Her work primarily centers around data mining, machine learning applications such as natural language processing and sentiment analysis, and the digital transformation of agriculture. She has contributed significantly to fields like e-commerce, e-finance, and digital agriculture, emphasizing innovations in information management systems and software engineering. Dr. Wu’s research also extends to agricultural price prediction models and the spatial-temporal factors influencing agricultural economics. Her interdisciplinary approach integrates technology with agricultural practices, aiming to enhance efficiency and decision-making processes in farming communities. πŸŒΎπŸ’»

Research Focus

Dr. Wu Jinghua’s research focuses on several key areas within information engineering and agricultural economics. Her work primarily centers around data mining, machine learning applications such as natural language processing and sentiment analysis, and the digital transformation of agriculture. She has contributed significantly to fields like e-commerce, e-finance, and digital agriculture, emphasizing innovations in information management systems and software engineering. Dr. Wu’s research also extends to agricultural price prediction models and the spatial-temporal factors influencing agricultural economics. Her interdisciplinary approach integrates technology with agricultural practices, aiming to enhance efficiency and decision-making processes in farming communities. πŸŒΎπŸ’»

 

Publication Top Notes

πŸ“„ Agricultural price prediction based on data mining and attention-based gated recurrent unit: a case study on China’s hog, Journal of Intelligent and Fuzzy Systems, 2024

πŸ“„ Exploring the Chinese public’s affective attitudes towards digital transformation in agriculture: A social media-based analysis, Applied Psychology: Health and Well-Being, 2024

πŸ“„ Agricultural price forecasting based on the spatial and temporal influences factors under spillover effects, Kybernetes, 2023 (cited by 1)

πŸ“„ Student classroom behavior recognition and evaluation system based on YOLOX, Proceedings of SPIE – The International Society for Optical Engineering, 2022 (cited by 1)

πŸ“„ A Comparative Study of Image Dehazing Based on Attention-Net and U-Net Atmospheric Light Estimation, 2020 IEEE 6th International Conference on Computer and Communications, 2020

πŸ“„ Image restoration of agricultural history based on neural patch synthesis, 2019 IEEE 11th International Conference on Communication Software and Networks, 2019

πŸ“„ Automatic classification and detection of oranges based on computer vision, 2018 IEEE 4th International Conference on Computer and Communications, 2018

 

 

Decision Sciences

Introduction of Decision Sciences

 

Decision Sciences research serves as a compass for informed decision-making across various industries and domains. This multidisciplinary field combines elements of mathematics, economics, psychology, and management to tackle complex problems, optimize choices, and enhance the quality of decisions. Decision Sciences researchers employ data analysis, modeling, and behavioral insights to help organizations and individuals make more effective and strategic decisions.

Operations Research:

Operations research, often called OR, involves the application of mathematical and analytical methods to optimize decision-making in areas like logistics, supply chain management, and resource allocation. Researchers use mathematical modeling and algorithms to find the best solutions to complex problems.

Risk Management and Decision Analysis:

This subfield focuses on assessing and mitigating risks in decision-making. Researchers employ probability theory, statistics, and decision trees to evaluate uncertain outcomes and make decisions under uncertainty.

Behavioral Decision Making:

Behavioral decision-making research delves into the psychology of decision-making. Researchers investigate cognitive biases, heuristics, and how individuals and groups make decisions, providing insights into improving the quality of choices.

Business Analytics and Big Data:

With the advent of big data, researchers in this subtopic explore data-driven decision-making. They use advanced analytics, data mining, and machine learning to extract valuable insights from vast datasets, aiding in strategic planning and forecasting.

Healthcare Decision Sciences:

This subfield applies decision science techniques to healthcare settings. Researchers work on optimizing healthcare delivery, resource allocation, and patient care decisions to improve the quality, efficiency, and effectiveness of healthcare systems.

 

Introduction of Agricultural and Biological Sciences Agricultural and Biological Sciences research plays a pivotal role in addressing the multifaceted challenges of our ever-evolving world. This field encompasses a wide array
Introduction of Arts and Humanities Arts and Humanities research represents the intellectual and creative exploration of the human experience, culture, and society. This broad field encompasses a rich tapestry of
Introduction of Biochemistry Biochemistry is a captivating scientific discipline that delves into the intricate world of molecules and processes within living organisms. It serves as the bridge between biology and
Introduction of Genetics and Molecular Biology Genetics and Molecular Biology are at the forefront of understanding the intricate machinery that governs life itself. This dynamic field investigates the genetic material
Introduction of Business Business research is the driving force behind informed decision-making in the corporate world. It encompasses an array of methodologies and disciplines that aim to understand and improve
Introduction of Management and Accounting Management and Accounting research is the backbone of effective decision-making in organizations, spanning from the corporate world to the public sector. It encompasses the systematic
Introduction of Chemical Engineering   Chemical Engineering research plays a pivotal role in transforming raw materials into valuable products, advancing environmental sustainability, and developing innovative solutions across various industries. It
Introduction of ChemistryΒ    Chemistry research lies at the heart of our understanding of matter and its interactions, and it's a cornerstone of scientific progress. Researchers in this dynamic field
Introduction of Computer Science   Computer Science research forms the backbone of the digital age, driving innovation and shaping the future of technology. This dynamic field explores the design, development,
Introduction of Decision Sciences   Decision Sciences research serves as a compass for informed decision-making across various industries and domains. This multidisciplinary field combines elements of mathematics, economics, psychology, and