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Using Neural Network to Weight the Partial  (Make Corrections)  
Rules: Application to Classification of Dopamine Antagonist Molecules Sukree...



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Abstract: In this paper, we propose an approach which can help Inductive Logic Programming (ILP) in multiclass domains and also its application to a real world domain, Classification of Dopamine Antagonist Molecules. When we classify an example by using the unordered rules constructed by standard ILP systems in multiclass domains, an example may match with the rules from di#erent classes or may match with no rule in the rule set. Thus, using the rules alone is insu#cient. We present the approach... (Update)

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BibTeX entry:   (Update)

@misc{ to-using,
  author = "Rules Application To",
  title = "Using Neural Network to Weight the Partial",
  url = "citeseer.ist.psu.edu/715246.html" }
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Improving Multiclass ILP by Combining Partial - Rules With Winnow (2004)   (Correct)

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