Peacocks and Associated Martingales, with Explicit Constructions Peacocks and Associated Martingales, with Explicit Constructions
Bocconi & Springer Series

Peacocks and Associated Martingales, with Explicit Constructions

Francis Hirsch and Others
    • £77.99
    • £77.99

Publisher Description

We call peacock an integrable process which is increasing in the convex order; such a notion plays an important role in Mathematical Finance. A deep theorem due to Kellerer states that a process is a peacock if and only if it has the same one-dimensional marginals as a martingale. Such a martingale is then said to be associated to this peacock.

In this monograph, we exhibit numerous examples of peacocks and associated martingales with the help of different methods: construction of sheets, time reversal, time inversion, self-decomposability, SDE, Skorokhod embeddings… They are developed in eight chapters, with about a hundred of exercises.

GENRE
Science & Nature
RELEASED
2011
24 May
LANGUAGE
EN
English
LENGTH
420
Pages
PUBLISHER
Springer Milan
SIZE
16.3
MB

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