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Glossary
Semester (Sem)
1First Semester
2Second Semester
AAnnual course
Educational activities
CSimilar or integrative activities
ABasic activities
Language
Course completely offered in italian
Course completely offered in english
--Not available
Innovative teaching
The credits shown next to this symbol indicate the part of the course CFUs provided with Innovative teaching.
These CFUs include:
  • Subject taught jointly with companies or organizations
  • Blended Learning & Flipped Classroom
  • Massive Open Online Courses (MOOC)
  • Soft Skills
Course Details
Context
Academic Year 2019/2020
School School of Industrial and Information Engineering
Name (Bachelor of Science degree)(ord. 270) - PC (354) Mechanical Engineering
Track VA1 - Propedeutico
Programme Year 3

Course Details
ID Code 086449
Course Title STATISTICS
Course Type Mono-Disciplinary Course
Credits (CFU / ECTS) 5.0
Semester Second Semester
Course Description Descriptive statistics. Frequency distributions, histograms, box-plots. Mean, median, mode. Variance. Chebichev's inequality. Percentiles, InterQuartile Range. Random variables and probability. Continuous r.v.'s. Uniform, Normal and exponential distributions. Discrete r.v.'s. Binomial and Poisson distributions. Independence. Central Limit Theorem. Point estimation and test. Unbiased estimators. Mean square error. Tests. Type I error. z-test for the mean of a Normal. P-value. Sample size and type II error. CI for the mean of a Normal: variance known. t-test and confidence intervals for the mean of a Normal distribution: variance unknown. Tests and confidence intervals for two means. Chi-squared test for the variance of a Normal. t-test for paired data. Linear models.Simple linear regression and multiple regression. Least square estimators. Tests and confidence intervals for the parameters of a linear model. Prediction of a new observation. Diagnostics and model choice.
Scientific-Disciplinary Sector (SSD)
Educational activities SSD Code SSD Description CFU
A
MAT/06
PROBABILITY AND STATISTICS
2.5
C
SECS-S/01
STATISTICS
2.5

Schedule, add and removeAlphabetical groupProfessorLanguageCourse details
From (included)To (excluded)
--AZZZZBoella Marco Ugo Claudio
manifesti v. 3.4.3 / 3.4.3
Area Servizi ICT
22/10/2020