Knowledge Engineering for Very Large Decision-analytic Medical Models
نویسندگان
چکیده
Page 1 of 5 Knowledge Engineering for Very Large Decision-analytic Medical Models Marek J. Druzdzel, Ph.D., Agnieszka Onisko, M.S., Daniel Schwartz, M.D., John N. Dowling, M.D. and Hanna Wasyluk, M.D., Ph.D. 1 Decision Systems Laboratory, School of Information Sciences, Intelligent Systems Program, and Center for Biomedical Informatics, University of Pittsburgh, Pittsburgh, PA 15260, USA, [email protected], [email protected], [email protected], [email protected] 2 Institute of Computer Science, Bialystok University of Technology, Bialystok, 15-351, Poland, [email protected] 3 Medical Center of Postgraduate Education, Warsaw, 01-813, Marymoncka 99, Poland, [email protected]
منابع مشابه
In Working Notes of the Workshop on ‘ Fusion of Domain Knowledge with Data for Decision Support , ’
Building probabilistic and decision-analytic models requires a considerable knowledge engineering eeort in which obtaining numerical parameters is especially daunting. Often knowledge engineers combine various sources of information, such as information reported in textbooks and professional literature , available statistics, and data collected in practical settings. We show that combining prob...
متن کاملApplication of Rough Set Theory in Data Mining for Decision Support Systems (DSSs)
Decision support systems (DSSs) are prevalent information systems for decision making in many competitive business environments. In a DSS, decision making process is intimately related to some factors which determine the quality of information systems and their related products. Traditional approaches to data analysis usually cannot be implemented in sophisticated Companies, where managers ne...
متن کاملCriteria for Combining Knowledge from Di erent Sources
Building probabilistic and decision-analytic models requires a considerable knowledge engineering eeort in which obtaining numerical parameters is especially daunting. Often knowledge engineers combine various sources of information, such as information reported in textbooks and professional literature , available statistics, and data collected in practical settings. We show that combining prob...
متن کاملA New Approach for Knowledge Based Systems Reduction using Rough Sets Theory (RESEARCH NOTE)
Problem of knowledge analysis for decision support system is the most difficult task of information systems. This paper presents a new approach based on notions of mathematical theory of Rough Sets to solve this problem. Using these concepts a systematic approach has been developed to reduce the size of decision database and extract reduced rules set from vague and uncertain data. The method ha...
متن کاملDataflow Programming for Big Engineering
Nowadays, advanced sensing technologies are used in many scientific and engineering disciplines, e. g., in medical or industrial applications, enabling the usage of data-driven techniques to derive models. Measures are collected, filtered, aggregated, and processed in a complex analytic pipeline, joining them with static models to perform high-level tasks like machine learning. Final results ar...
متن کامل