Fabrizio Cipollini
;
Robert F. Engle
;
Giampiero M. Gallo
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semiparametric vector mem (replication data)

Financial time series are often non-negative-valued (volumes, trades, durations, realized volatility, daily range) and exhibit clustering. When joint dynamics is of interest, the vector multiplicative error model (vMEM; the element-by-element product of a vector of conditionally autoregressive scale factors and a multivariate i.i.d. innovation process) is a suitable strategy. Its parameters can be estimated by generalized method of moments, bypassing the problem of specifying a multivariate distribution for the errors. Simulated results show the gains in efficiency relative to an equation-by-equation approach. A vMEM on several measures of volatility justifies a joint approach revealing full interdependence.

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Suggested Citation

Cipollini, Fabrizio; Engle, Robert F.; Gallo, Giampiero M. (2013): SEMIPARAMETRIC VECTOR MEM (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/semiparametric-vector-mem?activity_id=d10f0797-6aed-4443-8a14-770ae7de2837