DS 2003: Discovery Science pp 470-477 | Cite as
Knowledge Discovery on Chemical Reactivity from Experimental Reaction Information
Abstract
A knowledge discovery approach from chemical information with focusing on negative information in positive data is described. Reported experimental chemical reactions are classified into some reaction groups according to similarities in physicochemical features with a self-organizing mapping (SOM) method. In one of the reaction groups, functional groups of reactants are divided into two categories according to the experimental results whether they reacted or not. The classes of the functional groups are used for derivation of knowledge on chemical reactivity and condition intensity. The approach is demonstrated with a model dataset.
Keywords
Knowledge Discovery Chemical Reactivity Condition Intensity Negative Information Positive DataPreview
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