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arxiv: 1811.08726 · v1 · pith:YX3I5SZBnew · submitted 2018-11-21 · 💱 q-fin.CP · q-fin.PR

Neural Network for CVA: Learning Future Values

classification 💱 q-fin.CP q-fin.PR
keywords futurevalueslearningmodelingneuralrecentadjustmentamerican
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A new challenge to quantitative finance after the recent financial crisis is the study of credit valuation adjustment (CVA), which requires modeling of the future values of a portfolio. In this paper, following recent work in [Weinan E(2017), Han(2017)], we apply deep learning to attack this problem. The future values are parameterized by neural networks, and the parameters are then determined through optimization. Two concrete products are studied: Bermudan swaption and Mark-to-Market cross-currency swap. We obtain their expected positive/negative exposures, and further study the resulting functional form of future values. Such an approach represents a new framework for modeling XVA, and it also sheds new lights on other methods like American Monte Carlo.

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