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Cost-Effective Acquisition of First-Party Data for Business Analytics
发布日期:2024-06-20  来源:   查看次数:

报告时间:2024年07月09日(星期二)09:30-11:30

报告地点:管理学院新大楼925会议室

报告人:李晓白 教授

工作单位:美国马萨诸塞大学

举办单位:合肥工业大学管理学院

报告简介:

Data mining and sharing enable organizations to extract valuable knowledge from data, thereby gaining a competitive edge by better understanding and serving their customers. Customer data acquisition is an important task in data-driven business analytics. Recently, there has been a growing interest in the effective use of an organization’s internal customer data, also known as first-party data. This report will explore the acquisition of new data resources based on first-party data, discussing issues related to acquisition costs and data quality. The proposed models maximize the quality of the acquired data while satisfying budget constraints. By analyzing, deriving and discussing solutions to optimize models, management insights can also be provided from the solutions.

报告人简介:

Dr. Xiaobai Li is a Professor of Information Systems in the Department of Operations and Information Systems at the University of Massachusetts Lowell, USA. He received his Ph.D. in managementscience from the University of South Carolina. Dr. Li’s research focuses on machine learning, data science, data privacy, and business analytics. He has received funding for his research from National Institutes of Health (NIH) and National Science Foundation (NSF), USA. His work has appeared inManagement Science, Information Systems Research, MIS Quarterly, Operations Research, INFORMS Journal on Computing,Journal of the Association for Information Systems,IEEE Transactions(TKDE, TSMC, TAC),Decision Sciences,Decision Support Systems, Communications of the ACM,andEuropean Journal of Operational Research, among others. He currently serves as an associate editor forInformation Systems Research, Decision Support Systems,and other journals.

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