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DTSTART;TZID=UTC+1:20180215T161500
DTEND;TZID=UTC+1:20180215T171500
DTSTAMP:20180717T022306
CREATED:20180201T073402Z
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UID:9079-1518711300-1518714900@crest.science
SUMMARY:Matteo BARIGOZZI (LSE\, UK) "Determining the Dimension of Factor Structures in Non-Stationary Large Dataset".
DESCRIPTION:\nFINANCIAL ECONOMETRICS SEMINAR \nTime: 16:15 pm – 17:15 pm\nDate: 15th of February 2018\nPlace: Room 3001. \nMatteo BARIGOZZI (LSE\, UK) “Determining the Dimension of Factor Structures in Non-Stationary Large Dataset”. \nAbstract: We propose a sequential\, randomised testing procedure to determine the dimension of the common factor space in a large\, possibly non-stationary\, dataset. Our procedure is designed to determine\, separately: (i) whether there are common factors with linear trends; (ii) whether there are common factors with stochastic trends (and how many there are); (iii) how many stationary common factors (if any) there are. As an ancillary result\, our procedure can therefore also be used as a test for the stationarity or cointegration of a large dataset. The building block of the analysis is the fact that the first eigenvalues of the suitably scaled covariance matrix of the data (corresponding to the common factor part) diverge\, whilst the others stay bounded. On the grounds of this\, we propose a test for the null that the i-th eigenvalue diverges\, using a randomised test statistic based directly on the estimated eigenvalue. The tests only requires minimal assumptions on the data\, and no assumptions are required on factors\, loadings or idiosyncratic errors; the randomised tests are then employed in a sequential procedure to determine the total number of factors. Monte Carlo evidence shows that our procedure has very good finite sample properties\, clearly dominating competing approaches when no common factors are present. We illustrate our methodology through an application to US bond yields with different maturities observed over the last 30 years. A common linear trend and two common stochastic trends are found and identified as the level\, slope and curvature factors driving the dynamics of the yield curve \n \nOrganizers:\nJean-Michel ZAKOIAN (CREST ) \nSponsors:\nCREST and ILB \nLocation:\nAddress : ENSAE ParisTech\n5\, avenue Henry Le Chatelier\n91120 Palaiseau\nHow to come? \n \n\n
URL:http://crest.science/event/francisco-blasques-vu-university-amsterdam-tinbergen-institute-transformed-polynomials-for-semi-nonparametric-conditional-volatility-models-2-3
CATEGORIES:Econometrics of Finance,Finance
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