<p><span>The book contains the newest advances related to research and development of complex intellectual systems of various nature, acting under conditions of uncertainty and multifactor risks, intelligent systems for decision-making, high performance computing, state-of-the-art information techno
Statistical Implicative Analysis: Theory and Applications (Studies in Computational Intelligence, 127)
β Scribed by RΓ©gis Gras (editor), Einoshin Suzuki (editor), Fabrice Guillet (editor), Filippo Spagnolo (editor)
- Publisher
- Springer
- Year
- 2008
- Tongue
- English
- Leaves
- 511
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Statistical implicative analysis is a data analysis method created by RΓ©gis Gras almost thirty years ago which has a significant impact on a variety of areas ranging from pedagogical and psychological research to data mining. Statistical implicative analysis (SIA) provides a framework for evaluating the strength of implications; such implications are formed through common knowledge acquisition techniques in any learning process, human or artificial. This new concept has developed into a unifying methodology, and has generated a powerful convergence of thought between mathematicians, statisticians, psychologists, specialists in pedagogy and last, but not least, computer scientists specialized in data mining.
This volume collects significant research contributions of several rather distinct disciplines that benefit from SIA. Contributions range from psychological and pedagogical research, bioinformatics, knowledge management, and data mining.
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