Statistical theory and mathematics
A.A. 2024/2025
Obiettivi formativi
The purpose of the course is that students learn the main mathematical, statistical and computational tools needed to approach a data science problem. The course serves mostly to refresh students' knowledge, and to ensure that all students have a common mathematical and statistical background.
Risultati apprendimento attesi
At the end of the course, students will be able to formalize real world problems in a mathematical way and to implement the appropriate statistical inference methods.
Periodo: Primo trimestre
Modalità di valutazione: Esame
Giudizio di valutazione: voto verbalizzato in trentesimi
Corso singolo
Questo insegnamento può essere seguito come corso singolo.
Programma e organizzazione didattica
Edizione unica
Responsabile
Periodo
Primo trimestre
In relazione alle modalità di erogazione delle attività formative per l'anno accademico 2024/25, verranno date indicazioni più specifiche nei prossimi mesi, in base all'evoluzione della situazione sanitaria.
Prerequisiti
The students are requested to have attended
a) a basic Calculus course and a basic Linear Algebra course.
b) an introductory course in probability and statistics, including the concepts of probability space, random variable, distribution and basic descriptive statistics.
a) a basic Calculus course and a basic Linear Algebra course.
b) an introductory course in probability and statistics, including the concepts of probability space, random variable, distribution and basic descriptive statistics.
Modalità di verifica dell’apprendimento e criteri di valutazione
The exam will consist in two written tests, one for the modulus Statistical Theory and one for the modulus Mathematics.
The tests will include open-ended and multiple answers questions, both theoretical and short exercises, with the aim of assessing the student's ability to solve simple problems in applied mathematics and/or in statistics.
The global exam is passed if the tests of the first and second module are passed, that is if in each test the student deserved at least 18/30.
Final marks are given using the numerical range 0-30 and are composed as the mean of the grades of the two modules.
It is mandatory to pass the exams of both modules by the end of the academic year. After this time, the tests of both modules must be taken and passed again.
The tests will include open-ended and multiple answers questions, both theoretical and short exercises, with the aim of assessing the student's ability to solve simple problems in applied mathematics and/or in statistics.
The global exam is passed if the tests of the first and second module are passed, that is if in each test the student deserved at least 18/30.
Final marks are given using the numerical range 0-30 and are composed as the mean of the grades of the two modules.
It is mandatory to pass the exams of both modules by the end of the academic year. After this time, the tests of both modules must be taken and passed again.
Module Statistical Theory
Programma
1. Background
a. Probability spaces, r.v.'s, p.d.f. and c.d.f., expectation, variance, covariance.
b. Law of large numbers and central limit theorems
2. Point estimation
a. Method of moments
b. Maximum likelihood estimators
3. Properties of the estimators
a. Unbiasedness, efficiency, asymptotic normality
b. Sufficiency and Fisher-Neyman factorisation
c. Completeness
d. UMVU estimators
e. Cramer-Rao inequality
f. efficient estimators and Fisher information
4. Confidence intervals
5. Hypothesis testing
a. Power of a test and UMP tests
b. Neyman-Pearson lemma
c. MLR method to find a test
d. Main classical parametric tests on one sample or two samples
e. Asymptotic tests based of likelihood function
a. Probability spaces, r.v.'s, p.d.f. and c.d.f., expectation, variance, covariance.
b. Law of large numbers and central limit theorems
2. Point estimation
a. Method of moments
b. Maximum likelihood estimators
3. Properties of the estimators
a. Unbiasedness, efficiency, asymptotic normality
b. Sufficiency and Fisher-Neyman factorisation
c. Completeness
d. UMVU estimators
e. Cramer-Rao inequality
f. efficient estimators and Fisher information
4. Confidence intervals
5. Hypothesis testing
a. Power of a test and UMP tests
b. Neyman-Pearson lemma
c. MLR method to find a test
d. Main classical parametric tests on one sample or two samples
e. Asymptotic tests based of likelihood function
Metodi didattici
Frontal lectures and exercises.
Materiale di riferimento
1. G. Casella and R.L. Berger, Statistical inference, second edition, Cengage ed.
2. R.W.Keener, Theoretical Statistics. Topics for a core course. Springer, 2010
3. A. Azzalini. Statistical Inference Based on the likelihood. Taylor & Francis
4. G.G.Roussas, A course in mathematical statistics, Academic Press, 1997
5. Trosset M.W., An introduction to statistical inference and its applications with R, CRC Press, 2009.
2. R.W.Keener, Theoretical Statistics. Topics for a core course. Springer, 2010
3. A. Azzalini. Statistical Inference Based on the likelihood. Taylor & Francis
4. G.G.Roussas, A course in mathematical statistics, Academic Press, 1997
5. Trosset M.W., An introduction to statistical inference and its applications with R, CRC Press, 2009.
Module Mathematics
Programma
Linear Algebra and applications. Real vector spaces. Linear combination, linear dependence and independence. Basis and dimension in Rn. Algebra of vectors, inner product and norm. Matrix algebra (inverse, rank, eigenvalues, singular value decomposition; linear systems).
Calculus (derivatives and Riemann integral). Real functions on Rn (continuity, differentiability, implicit function theorem, basic fixed point theorem, gradient).
Optimization. First and Second order conditions for unconstrained problems. Constrained optimization: equality constraints and Lagrange Multipliers. Inequality constraints. Linear programming.
Discrete and continuous dynamical systems with applications.
Examples and case studies in Matlab.
Calculus (derivatives and Riemann integral). Real functions on Rn (continuity, differentiability, implicit function theorem, basic fixed point theorem, gradient).
Optimization. First and Second order conditions for unconstrained problems. Constrained optimization: equality constraints and Lagrange Multipliers. Inequality constraints. Linear programming.
Discrete and continuous dynamical systems with applications.
Examples and case studies in Matlab.
Metodi didattici
Frontal lectures
Materiale di riferimento
David C. Lay, Steven R. Lay and Judi J. McDonald, Linear Algebra and Its Applications, Pearson, 2016
K. Sydsaeter, P. Hammond, A. Strom, A. Carvajal, Essential Mathematics for Economic Analysis, Pearson, 2016
E. Salinelli, F. Tomarelli, Discrete-Dynamical Models, Springer, 2014, ISBN: 978-3-319-02290-1
M.P. Deisenroth, A.A. Faisal, C. Soon Ong, Mathematics for Machine Learning,
Notes of the teachers
K. Sydsaeter, P. Hammond, A. Strom, A. Carvajal, Essential Mathematics for Economic Analysis, Pearson, 2016
E. Salinelli, F. Tomarelli, Discrete-Dynamical Models, Springer, 2014, ISBN: 978-3-319-02290-1
M.P. Deisenroth, A.A. Faisal, C. Soon Ong, Mathematics for Machine Learning,
Notes of the teachers
Moduli o unità didattiche
Module Mathematics
MAT/08 - ANALISI NUMERICA - CFU: 6
Lezioni: 40 ore
Docente:
Benfenati Alessandro
Module Statistical Theory
SECS-S/01 - STATISTICA - CFU: 6
Lezioni: 40 ore
Docente:
Leorato Samantha
Siti didattici
Docente/i
Ricevimento:
Orario primo trimestre, Giovedì: 12:15-13:45 e mercoledì 11:00-12:30. L'orario può subire variazioni, controllare il sito del corso per eventuali cambiamenti
Stanza 32 terzo piano