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David Han

Department of Management Science and Statistics, University of Texas at San Antonio, San Antonio, Texas, 78230, USA

Biography

David Han is an associate professor in the Department of Management Science & Statistics. Dr. Han earned a Master of Science and Doctor of Philosophy in statistics from McMaster University in Canada after completing an Honors Bachelor of Science degree in biochemistry and an Honors Bachelor of Science degree in computer science and statistics. His main research interests include statistical modeling, data analytics and operations research in the areas of reliability, survival analysis, failure and degradation analyses with applications to biomedicine, renewable energy and engineering.

Research Interest

His research interest includes the statistical inference for accelerated life testing in survival analysis, optimal censoring plans, and competing risk analysis.

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