Language: | Slovenian |
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Year of publishing: | 2016 |
Typology: | 2.08 - Doctoral Dissertation |
Organization: | UM FERI - Faculty of Electrical Engineering and Computer Science |
Publisher: | [A. Černezel] |
UDC: | [004.8.021+519.23]:004.65(043.3) |
COBISS: | 19688214 |
Views: | 1138 |
Downloads: | 201 |
Average score: | 0 (0 votes) |
Metadata: |
Secondary language: | English |
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Secondary title: | Development of a classifier selection method |
Secondary abstract: | In this dissertation we present the development of a classifier selection method. The main contribution of the method is to obtain the most appropriate combinations of: method for measuring accuracy, classification algorithm, and size of the training set --- all in accordance with user-defined criteria. The method is general and therefore adjustable and expandable. The method's procedure is formally defined in the form of pseudo-code. For the purpose of providing theoretical background, several experiments were conducted and their results were analysed with a series of statistical tests. Results of the research yielded the following contributions to science. Formalising decisions and criteria for choosing the most appropriate method for measuring accuracy. Formalising decisions and criteria for choosing the most appropriate classification algorithm. Selecting a best-fit learning curve model. Formalising terminal criteria for selecting the most appropriate train set size. |
Secondary keywords: | machine learning;classification algorithm;algorithm comparison;cross-validation;approximation;terminal criteria;Strojno učenje;Disertacije;Klasifikatorji;Izbira; |
Type (COBISS): | Dissertation |
Thesis comment: | Univ. v Mariboru, Fak. za elektrotehniko, računalništvo in informatiko |
Pages: | XIV, 171 str. |
ID: | 9154386 |