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programma versione
DIPARTIMENTO di ECONOMIA - DIEC Scuola di Scienze Sociali SCUOLA DI SCI ENZE SOCI ALI Financial econometrics cod. 60528 Corso di studi: Economia degli Intermediari Finanziari Docente Malvina MARCHESE A.A. 2014/15 e-mail: [email protected] Anno di corso:II Sem:II Sede: Genova SSD:SECS-P/05 cfu:9 Ore lezione:72 General objectives: The course provides a survey of the theory and application of time series models in financial econometrics. Students are introduced to time series analysis of linear univariate and multivariate covariance stationary models with short and long memory parameterization. The course then employs linear time series knowledge to introduce students to time series financial econometrics models, particularly discrete- time parametric ARCH models. The main objective of this course is to develop the skills needed for modelling and forecasting assets volatilities and their co-movements in financial markets. The course aims to provide students with a strong theoretical understanding of volatility models and techniques for estimations, assessment and forecasting in financial markets under a variety of degree of shock persistence. Computer classes whose aim is to enable the students to develop computational skills in MATLAB for empirical research complement theoretical lectures. Syllabus: Topic I: LINEAR TIME SERIES ANALYSIS . *Stochastic processes, covariance stationarity, strict stationarity, unit root processes, fractionally integrated processes, Wold decomposition theorem. *Introduction to spectral analysis: Fourier transforms,Spectrum of a time series process, rate of decay of the spectrum for short and long memory processes. *ARMA,ARIMA,ARFIMA univariate models: estimation and principles of forecasting. *Unit root tests,long memory tests, cointegration,model diagnostic. TOPIC II: UNIVARIATE GARCH MODELS. *Stylized facts of asset returns *ARCH model: identification and covariance stationarity conditions ,order identification, estimation, evaluation *GARCH model: identification and covariance stationarity conditions ,order identification, estimation, evaluation and forecasting. *Asymmetric GARCH models and leverage effects:EGARCH,QGARCH,GJGARCH,TGARCH: identification and covariance stationarity conditions ,order identification, estimation, evaluation and forecasting. *Long memory in univariate GARCH models: testing for long memory in the time series domain, forecasting in presence of long memory. TOPIC III: MULTIVARIATE GARCH MODELS. *Co-movements of financial returns: empirical and theoretical examples. Introduction to MGARCH models and specific issues. *VEC and BEKK models: dimensionality issues, conditions for positive definiteness, iterative procedures for DIPARTIMENTO di ECONOMIA - DIEC Scuola di Scienze Sociali SCUOLA DI SCI ENZE SOCI ALI estimation. *FACTOR MODELS *CCC models: dimensionality issues, conditions for positive definiteness, iterative procedures for estimation. *NON PARAMETRIC models *Testing in MGARCH models TOPIC IV: APPLICATIONS *Option pricing *Asset allocation *Value at risk PREREQUISITES: No basic knowledge of time series econometrics is assumed. No basic knowledge of Matlab is required. A good knowledge of introductory econometrics with matrix algebra is strictly required ( Econometria I CLEC or equivalent ). Good knowledge of probability theory and statistical inference is strictly required (Statistical models exam, prof Lagazio) Good background in calculus and basic linear algebra. Specific Learning Objectives Theoretical skills: Students should develop a sounded theoretical understanding of time series processes with different degrees of memory persistence both in the time and in the spectral domain. They should develop awareness in modelling linear time series and then use this knowledge to appreciate the different volatility models in the literature and their ability to reproduce stylized facts of assets returns. Applied skills: Students must learn to apply their theoretical knowledge of time series models to actual time series data, implementing model detection and diagnostic on data sets. They should be able to test for unit roots, cointegration, long and short memory. They should be able to write simple Matlab codes for forecasting of volatilities. Awareness: Students will develop awareness of financial econometrics models and by the end of the course they should be able to employ such models also in the analysis of commodity prices ,such as oil prices ,gas prices and energy commodity prices in general. Communication skills: Students will develop a good knowledge of econometric terminology which will enable them to read most of the available literature on financial econometrics. Learning skills: Students will develop econometrics and statistical skills that will enable them to analyze financial markets data sets, and to understand autonomously most complex models available in the literature. Modalità didattiche, obblighi, testi e modalità di accertamento. Modalità didattiche Presente Aulaweb Lezioni frontali, analisi di casi, testimonianze aziendali, lavori di gruppo…. su Si ☒ No ☐ Obblighi Attendance is not compulsory but strongly recommended Testi di studio Hamilton, “Time Series Analysis”, Princeton University Press. Francq, Zakoian “GARCH Models”, Wiley. Modalità accertamento di Esame ☒ scritto ☐ orale ☐ altro: in the summer term only, 30% of the final mark can be obtained with a group applied project. DIPARTIMENTO di ECONOMIA - DIEC Scuola di Scienze Sociali SCUOLA DI SCI ENZE SOCI ALI Ripetizione dell’esame students can sit any exam during the exam session, however sitting an exam implies loosing any previous mark grade Informazioni aggiuntive per gli studenti non frequentanti Modalità didattiche Students who cannot attend the course must contact Doctor Marchese at the beginning of the term and set up an appointament. Obblighi Testi di studio Modalità accertamento di Esame ☒ scritto ☐ orale ☐ altro: Ripetizione dell’esame Italian Package students How to do it with Gli studenti hanno diritto a fare l’esame in lingua italiana, previo accordo con il docente. no panic Durante lo svolgimento delle lezioni gli studenti potranno beneficiare di orari di ricevimento in lingua italiana da parte del docente e di tutoraggio in lingua italiana fornito da un tutor didattico scelto dal docente. Inoltre uno dei testi sopraindicati è disponibile anche nelle traduzioni italiane: Hamilton : “Econometria delle serie storiche” Monduzzi editore Si consiglia agli studenti che temano per il loro livello di inglese di seguire le lezioni, di utilizzare il testo in italiano e confrontarlo con quello inglese e fare uso del servizio di tutoraggio in italiano. Gli studenti possono tentare tutti gli esami delle sessioni d'esame, tuttavia se si ripresentano a un esame perdono automaticamente qualunque voto ottenuto in precedenza Note Si invitano tutti gli studenti a consultare periodicamente la pagina di questo insegnamento sul portale dell’elearning AulaWeb (raggiungibile dal sito di Ateneo o all’indirizzo: economia.aulaweb.unige.it/). Tutte le informazioni e i materiali relativi a questo insegnamento sono pubblicate esclusivamente in tale sito.
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