Computational Intelligence for Decision Support
Zhengxin ChenBooks.org participates in affiliate programs including Bookshop.org and the Amazon Services LLC Associates Program. We may earn a commission from qualifying purchases made through links on this page, at no additional cost to you.
Synopsis
Intelligent decision support relies on techniques from a variety of disciplines, including artificial intelligence and database management systems. Most of the existing literature neglects the relationship between these disciplines. By integrating AI and DBMS, Computational Intelligence for Decision Support produces what other texts don't: an explanation of how to use AI and DBMS together to achieve high-level decision making.
Threading relevant disciplines from both science and industry, the author approaches computational intelligence as the science developed for decision support. The use of computational intelligence for reasoning and DBMS for retrieval brings about a more active role for computational intelligence in decision support, and merges computational intelligence and DBMS. The introductory chapter on technical aspects makes the material accessible, with or without a decision support background. The examples illustrate the large number of applications and an annotated bibliography allows you to easily delve into subjects of greater interest.
The integrated perspective creates a book that is, all at once, technical, comprehensible, and usable. Now, more than ever, it is important for science and business workers to creatively combine their knowledge to generate effective, fruitful decision support. Computational Intelligence for Decision Support makes this task manageable.
Booknews
Provides a holistic approach to high-level decision making that integrates artificial intelligence and database management systems (DBMS). Approaches computational intelligence as the science developed for decision support, and treats reasoning as extended retrieval. Offers a self-contained treatment including background material, and provides specific techniques from both worlds needed to support decision making, including those related to data mining and reasoning under uncertainty. Includes numerous examples, and chapter questions. Chen teaches at the University of Nebraska-Omaha. Annotation c. Book News, Inc., Portland, OR (booknews.com)