
This mater thesis is focused on building predictive models. Their fundamental task is to provide an early-warning system, giving information about potential enterprise bankruptcy. The main essence and aim of the thesis is to create multivariate classification models by using discriminant analysis and logistic regression. Emphasis is put on their predictive accuracy, which is assessed for period of three years before bankruptcy declaration. Attempts to optimize classification thresholds in order to increase the initial accuracy are also made. Evaluating classification reliability of several existing models and performing profile analysis assessing predictive ability of univariate ratios were accomplished as well.
Predikční modely; Predictive models; Logistická regrese; Diskriminační analýza; Discriminant analysis; Logistic regression
Predikční modely; Predictive models; Logistická regrese; Diskriminační analýza; Discriminant analysis; Logistic regression
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