Arnold Polanski
;
Evarist Stoja
;
Frank Windmeijer
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telling tales from the tails: high‐dimensional tail interdependence (replication data)

We propose a simple and flexible framework that allows for a comprehensive analysis of tail interdependence in high dimensions. We use co-exceedances to capture the structure of the dependence in the tails and, relying on the concept of multi-information, define the coefficient of tail interdependence. Within this framework, we develop statistical tests of (i) independence in the tails, (ii) goodness-of-fit of the tail interdependence structure of a hypothesized model with the one observed in the data, and (iii) dependence symmetry between any two tails. We present an analysis of tail interdependence among 250 constituents of the S&P 250 index.

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Suggested Citation

Polanski, Arnold; Stoja, Evarist; Windmeijer, Frank (2019): Telling tales from the tails: High‐dimensional tail interdependence (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/telling-tales-from-the-tails-highdimensional-tail-interdependence?activity_id=c28235dd-cd74-43f4-ad9d-86bbdf5ddf1a