STATISTICS
(objectives)
Being able to produce, interpret and communicate data in a social science framework. Being able to able appropriately with data variability and uncertainty.
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Code
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21801562 |
Language
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ITA |
Type of certificate
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Profit certificate
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Credits
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9
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Scientific Disciplinary Sector Code
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SECS-S/01
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Contact Hours
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54
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Type of Activity
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Basic compulsory activities
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Group: A - L
Teacher
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MINGIONE MARCO
(syllabus)
The data matrix. Types of statistical variables: factor, ordered factor, discrete. Frequency distributions. Barplots. Continuous variables: classes, frequency distributions and histograms. Cumulative distribution function. Quantiles. Bivariate distributions. Marginal and conditional distributions. Chi square: independence and dependence. Mean and variance. Deviance decomposition. Linear transformations. Scatterplots. Covariance and linear correlation.
Least-squares and regression. Goodness of fit of a regression line.
Discrete random variables. Expectation and variance. Continuous random variables and probability density. Normal distribution, chi square, Student’s t, Fisher’s F.
Estimators and parameters. Sampling distribution of an estimator. Bias and efficiency. Punctual estimation of parameters: the mean and the variance. Confidence intervals. Confidence intervals of a single mean. Optimal sample size. Hypothesis test for a mean.
(reference books)
Alan Agresti, Christine A. Franklin and Bernhard Klingenberg (2017) Statistics: The Art and Science of Learning from Data (4th Edition) ISBN 978-0321997838
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Dates of beginning and end of teaching activities
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From to |
Delivery mode
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Traditional
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Attendance
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not mandatory
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Evaluation methods
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Written test
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Group: M - Z
Teacher
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CUCINA DOMENICO
(syllabus)
The data matrix. Types of statistical variables: factor, ordered factor, discrete. Frequency distributions. Barplots. Continuous variables: classes, frequency distributions and histograms. Entropy. Cumulative distribution function. Quantiles. Bivariate distributions. Marginal and conditional distributions. Chi square: independence and dependence. Mean and variance. Benjamin-Cebicev inequality. Variance decomposition. Linear transformations. Scatterplots. Covariance and linear correlation. Least-squares and regression. Goodness of fit of a regression line. Axioms of elementary probability. Elementary theorems of probability. Mutually exclusive events. Conditional probability. Independence. Bayes theorem. Discrete random variables. Expectation. Bernoulli distribution. Binomial distribution and random walk. Hypergeometric distribution. Poisson distribution. Continuous random variables. Probability density. Normal distribution. Normal tables. Normal approximation to the binomial distribution. Student's t. Estimators and parameters. Sampling distribution of an estimator. Bias and efficiency. Punctual estimation of parameters: the mean, the variance and the proportion. Confidence intervals. Confidence intervals of a single mean and of the difference between two means. Confidence interval of a proportion and of the difference between two proportions. Optimal sample size.
(reference books)
Freedman, Pisani, Purves, Statistics. Norton and Company: New York
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Dates of beginning and end of teaching activities
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From to |
Delivery mode
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Traditional
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Attendance
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not mandatory
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Evaluation methods
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Written test
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