Training and Research

PhD Programme Courses/classes

Lezioni Dottorandi

Credits: 50

Language: Italian

Teacher:  Valeria Franceschi, Catia Scricciolo

Behavioral and Experimental Economics

Credits: 5

Language: Italian

Teacher:  Maria Vittoria Levati, Chiara Nardi, Luca Zarri

Corporate governance

Credits: 4

Language: Italian

Teacher:  Alessandro Lai

Development Economics

Credits: 4

Language: Italian

Teacher:  Federico Perali

Econometrics for management

Credits: 4

Language: Italian

Teacher:  Francesca Rossi, Laura Magazzini

Energy Economics

Credits: 2.5

Language: Italian

Teacher:  Luigi Grossi

Game Theory

Credits: 4

Language: Italian

Teacher:  Francesco De Sinopoli

Inequality

Credits: 5

Language: Italian

Teacher:  Francesco Andreoli, Claudio Zoli

Macro economics

Credits: 2.5

Language: Italian

Teacher:  Alessia Campolmi

Macroeconomics I

Credits: 10

Language: Italian

Teacher:  Claudio Zoli, Angelo Zago, Martina Menon

Mathematics

Credits: 7.5

Language: Italian

Teacher:  Alberto Peretti, Athena Picarelli, Letizia Pellegrini

Organization Theory

Credits: 4

Language: Italian

Teacher:  Cecilia Rossignoli, Alessandro Zardini, Lapo Mola

Political economy

Credits: 5

Language: Italian

Teacher:  Emanuele Bracco, Roberto Ricciuti, Marcella Veronesi

Probability

Credits: 7.5

Language: Italian

Teacher:  Marco Minozzo

Metodi quantitativi per la gestione aziendale

Credits: 5

Language: Italian

Teacher:  Riccardo Scarpa

Statistica

Credits: 7.5

Language: Italian

Supply Chain Management

Credits: 4

Language: Italian

Teacher:  Barbara Gaudenzi

Credits

2.5

Language

Italian

Class attendance

Free Choice

Location

VERONA

Learning outcomes

Energy Markets analysis could be carried out from different perspectives. The main idea behind this course would be to focus on the economics of energy markets and on related quantitative models based on linear and nonlinear processes for measuring and forecasting volumes and prices. The focus of the course will be on electricity markets, although reference will also be made to natural gas markets.
Some recent developments about the introduction of renewable sources on the electricity grid and to the economic feasibility of electricity storage will conclude the course.
The main goal of the course will be to illustrate methods and approaches with detailed examples using real data and to provide PhD students with a set of economic models and econometric-statistical tools to perform reliable and original analyses.

Prerequisites
PhD students should be familiar with basic notions of time series analysis and stochastic processes in discrete time and with elementary notions of industrial economics.
Basic knowledge from statistics and econometrics plus rudimentary experiences with data and numerical calculations will be helpful. Quantitative analysis will be performed by the freeware software R (http://cran.r-project.org/).

Program

1. Stylized facts of electricity prices
Price spikes: what determines spikes. Case studies.
Seasonality: determinants. Autocorrelation structure and frequency domain analysis.
Seasonal decomposition: moving average technique, spectral decomposition, rolling volatility technique.
Mean reversion: detrended fluctuation analysis, periodogram regression
Volatility clustering and leverage effect

2. Modelling electricity loads and prices
Factors affecting load patterns (demand side): time factors and weathers conditions. Analysis of weather variables.
Factors affecting prices (supply side): generation factors. The impact of renewables electricity sources.
ARIMA-type models
Regression models with exogenous regressors
GARCH models
Switching models

3. Forecasting and evaluation of forecasting performances
Forecasting loads and prices: selection of the best model
Assessing forecasting performances of alternative models: MAPE, MPE, Theil’s index, Diebold and Mariano test.
The rolling windows technique
Case studies

4. Further topics
Energy storage: the case of gas and electricity
Robust methods for energy prices and loads: implications on forecasting performances
Shift-share analysis of energy demand

Reference texts
Author Title Publishing house Year ISBN Notes
Bee M., Santi F. Finanza Quantitativa con R Apogeo 2013

Examination Methods

Written assignment

Students with disabilities or specific learning disorders (SLD), who intend to request the adaptation of the exam, must follow the instructions given HERE