Rohini Kumar, Frederick "Forrest" Miller, Hussein Nasralah, Stephan Sturm
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Risk-indifference Pricing of American-style Contingent Claims
This paper studies the pricing of contingent claims of American style, using
indifference pricing by fully dynamic convex risk measures. We provide a
general definition of risk-indifference prices for buyers and sellers in
continuous time, in a setting where buyer and seller have potentially different
information, and show that these definitions are consistent with no-arbitrage
principles. Specifying to stochastic volatility models, we characterize
indifference prices via solutions of Backward Stochastic Differential Equations
reflected at Backward Stochastic Differential Equations and show that this
characterization provides a basis for the implementation of numerical methods
using deep learning.