Decision Trees for Classification of Repeated Measurements

Detta är en Kandidat-uppsats från Linköpings universitet/Tillämpad matematik; Linköpings universitet/Tekniska fakulteten

Sammanfattning: Classification of data from repeated measurements is useful in various disciplines, for example that of medicine. This thesis explores how classification trees (CART) can be used for classifying repeated measures data. The reader is introduced to variations of the CART algorithm which can be used for classifying the data set and tests the performance of these algorithms on a data set that can be modelled using bilinear regression. The performance is compared with that of a classification rule based on linear discriminant analysis. It is found that while the performance of the CART algorithm can be satisfactory, using linear discriminant analysis is more reliable for achieving good results.

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