Precis of “Reliable Reasoning: Induction and Statistical Learning Theory ” 5
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چکیده
A Linguagem, Mente e Ação
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? Review of ‘ Reliable Reasoning ’ by Gilbert Harman and Sanjeev Kulkarni
The aim of the book is to give a non-technical introduction to statistical learning theory at undergraduate level. Statistical learning theory is concerned with the reliability of rules for classifying a new case—e.g., diagnosing a disease in a new patient—on the basis of other features of the case and a large stock of past cases and their features and classifications. The book is based on a co...
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تاریخ انتشار 2009