Aims
The objective of this course is to give a basic formation in measure theory and probability in order to have the tools to properly attack the main problems of statistical analysis and the future formation in stochastic processes.
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Main themes
1. Measure theory:
Measurable spaces and measurable functions - outer measures, construction and examples of measures - integrable functions, convergence theorems, Radon-Nikodym theorem, Lp spaces, Fubini theorem.
2. Probabilities:
Probability space - random variables - random variable XX - conditional XX - Independence of random variables - suite convergence of random variables (including the Cramer theorem) - Law of big numbers - characteristic function - central-limit theorem.
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Other credits in programs
MATH21/E
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Première licence en sciences mathématiques (Economie mathématique)
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(9 credits)
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Mandatory
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MATH21/G
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Première licence en sciences mathématiques (Général)
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(9 credits)
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Mandatory
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MATH21/S
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Première licence en sciences mathématiques (Statistique)
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(9 credits)
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Mandatory
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