Thesis (Selection of subject)Thesis (Selection of subject)(version: 368)
Thesis details
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Shluková analýza ve finanční matematice
Thesis title in Czech: Shluková analýza ve finanční matematice
Thesis title in English: Cluster Analysis in Financial Mathematics
Academic year of topic announcement: 2012/2013
Thesis type: Bachelor's thesis
Thesis language: čeština
Department: Department of Probability and Mathematical Statistics (32-KPMS)
Supervisor: doc. RNDr. Jan Hurt, CSc.
Author: hidden - assigned and confirmed by the Study Dept.
Date of registration: 07.11.2012
Date of assignment: 09.11.2012
Confirmed by Study dept. on: 30.11.2012
Opponents: RNDr. Mgr. Marek Dvořák, Ph.D.
 
 
 
Guidelines
Student pojedná o metodách shlukové analýzy systému Mathematica a uvede ilustrace těchto metod ve finanční matematice.
References
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Preliminary scope of work
Shluková analýza ve financích
Preliminary scope of work in English
Cluster analysis in finance
 
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