Spatial risk measures: Local specification and boundary risk

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Abstract

We study a mathematical consistency problem motivated by the interplay between local and global risk assessment in a large financial network. In analogy to the theory ofGibbs measures in Statistical Mechanics,we focus on the structure of global convex risk measures which are consistent with a given family of local conditional risk measures. Going beyond the locally law-invariant (and hence entropic) case studied in [11], we show that a global risk measure can be characterized by its behavior on a suitable boundary field. In particular, a global risk measure may not be uniquely determined by its local specification, and this can be seen as a source of “systemic risk”, in analogy to the appearance of phase transitions in the theory of Gibbs measures. The proof combines the spatial version [10] of Dynkin’s method for constructing the entrance boundary of a Markov process with the non-linear extension [14] of backwards martingale convergence.

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Föllmer, H., & Klüppelberg, C. (2014). Spatial risk measures: Local specification and boundary risk. In Springer Proceedings in Mathematics and Statistics (Vol. 100, pp. 307–326). Springer New York LLC. https://doi.org/10.1007/978-3-319-11292-3_11

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