CODE 60083 ACADEMIC YEAR 2021/2022 CREDITS 9 cfu anno 2 ECONOMIA AZIENDALE 8697 (L-18) - GENOVA 9 cfu anno 2 ECONOMIA E COMMERCIO 8699 (L-33) - GENOVA 9 cfu anno 2 ECONOMIA DELLE AZIENDE MARITTIME, LOGISTICA E TRASP. 8698 (L-18) - GENOVA SCIENTIFIC DISCIPLINARY SECTOR SECS-S/01 LANGUAGE Italian TEACHING LOCATION GENOVA SEMESTER 2° Semester SECTIONING Questo insegnamento è diviso nelle seguenti frazioni: A B C PREREQUISITES Propedeuticità in ingresso Per sostenere l'esame di questo insegnamento è necessario aver sostenuto i seguenti esami: Business Administration 8697 (coorte 2020/2021) CALCULUS FOR UNDERGRADUATED STUDENTS. 41138 2020 Maritime, Logistics and Transport Economics and Business 8698 (coorte 2020/2021) CALCULUS FOR UNDERGRADUATED STUDENTS. 41138 2020 Economics 8699 (coorte 2020/2021) CALCULUS FOR UNDERGRADUATED STUDENTS. 41138 2020 Propedeuticità in uscita Questo insegnamento è propedeutico per gli insegnamenti: Economics 8699 (coorte 2020/2021) ECONOMETRICS 24615 TEACHING MATERIALS AULAWEB OVERVIEW The course “Statistics 1” aims to provide students with the main tools for the quantitative analysis of economic and social phenomena, and to supply the basic statistical knowledge needed to face the other quantitative courses of the Degree Programme. AIMS AND CONTENT LEARNING OUTCOMES Introductory Statistics. In the course the main topics of descriptive statistics, probability and inferential statistics are discussed. AIMS AND LEARNING OUTCOMES Knowledge and understanding: Students will know the main tools used to summarize the information and for the generalization of the information observed through sample surveys. Ability to apply knowledge and understanding: Students will be able to reorganize data in univariate and bivariate frequency tables providing adequate graphical representation; carry out basic descriptive analyses for one-dimensional phenomena; analyze the relationships between two or more phenomena with particular emphasis on dependence and linear regression analysis. They will also be able to apply some statistical inference tools to solve simple problems. Making judgements: Students must be able to use the acquired knowledge both on a theoretical and operational level with autonomous assessment skills, in various applicative contexts. Communication skills: Students will acquire the technical language typical of the discipline to communicate clearly and without ambiguity with both statisticians and non-statisticians. Learning skills: Students will develop adequate learning skills that allow them to continue to study the subject independently. PREREQUISITES The course requires knowledge of the basic contents of a course of General Mathematics for Business and Economics. TEACHING METHODS Traditional lessons and exercises and through AulaWeb. Since the training objectives concern both theoretical and applicative skills, there will be both lessons focused on the methodological aspects of statistics and lessons based on exercises in which numerical problems are faced and examples of simple analyzes on real data are discussed. Due to the Covid19 pandemic, students will be informed via email and AulaWeb messages on the actual method of the lessons (in person or remotely). SYLLABUS/CONTENT Part I: Elements of descriptive statistics Introduction to data collection Distribution of a variable and its representation: Frequency distributions and diagrams Location indices: means, median, mode, percentiles Scale indices Measures of concentration Index numbers Association measures for two variables Statistical independence Association between qualitative variables. Correlation between quantitative variables Simple linear regression Part II: Probability Events and events sigma-field Kolmogorov axioms Conditional probability and independence Bayes theorem Discrete and continuous random variables: Bernoulli and Binomial r.v. Poisson r.v. Normal r.v. The Central Limit Theorem Part III: Introduction to statistical inference Sampling and sampling distributions Point estimation Estimators and their properties Interval estimation Confidence interval for a mean (variance unknown) Confidence interval for a proportion Theory of statistical Test for a mean, test for a proportion. Comparison of two means. RECOMMENDED READING/BIBLIOGRAPHY Foreign students are asked to contact the teachers to agree on the text book in English language. TEACHERS AND EXAM BOARD CORRADO LAGAZIO Ricevimento: Tuesday 16.30-18.00 Exam Board CORRADO LAGAZIO (President) MARTA NAI RUSCONE FABIO RAPALLO LESSONS LESSONS START Classes will start in the first week of the second semester according to the calendar of the Department of Economics. Class schedule STATISTICS 1 B EXAMS EXAM DESCRIPTION The . Because of the COVID 19 pandemics exam rules could change L'esame consiste in una prova scritta. A seguito della pandemia COVID 19 le modalità d'esame potrebbero cambiare in relazione ai regolamenti di Ateneo. Il regolamento d'esame è pubblicato sulla pagina Aulaweb del corso. ASSESSMENT METHODS The written examination consists of: 1) multiple-choice questions of a theoretical nature. 2) theoretical questions with open answers 3) exercises The questions and exercises are chosen to cover, as far as possible, all the topics of the program. The theoretical questions are used to assess the student's level of understanding, while the exercises are used to measure the ability to apply the acquired knowledge. Exam schedule Data appello Orario Luogo Degree type Note 17/01/2022 09:30 GENOVA Orale 07/02/2022 09:30 GENOVA Orale 04/05/2022 14:00 GENOVA Orale 06/06/2022 09:30 GENOVA Scritto 20/06/2022 09:30 GENOVA Scritto 11/07/2022 09:30 GENOVA Scritto 06/09/2022 09:30 GENOVA Scritto FURTHER INFORMATION Attendance Optional - 6 lecture hours/week in Italian