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Could anyone please clarify the difference between input attribute and predictable attribute for decision tree algorithm in Data mining.

Thanks.

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These are concepts pertaining to Naive Bayesian models. Basically, an input attribute is an attribute that is given, i.e. something that you know as a fact from the outside, something you can observe. A predictable attribute is an attribute that cannot be observed directly but can be, hopefully, computed or somehow derived from a combination or relationship of various input attributes.

This is a decent explanation of a Naive Bayesian model implementation: http://technet.microsoft.com/en-us/library/ms174806.aspx

Hope it helps.

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Thanks for your help. –  kewl Nov 22 '09 at 17:05
    
What's special about naive Bayesian models? I think one might use the language of input attribute and predictable attribute when talking about all sorts of other models: decision trees, neural networks, random forests, etc. –  Michael McGowan Mar 5 '13 at 20:14

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