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A Stochastic Processes Toolkit for Risk Management

Author

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  • Damiano Brigo
  • Antonio Dalessandro
  • Matthias Neugebauer
  • Fares Triki

Abstract

In risk management it is desirable to grasp the essential statistical features of a time series representing a risk factor. This tutorial aims to introduce a number of different stochastic processes that can help in grasping the essential features of risk factors describing different asset classes or behaviors. This paper does not aim at being exhaustive, but gives examples and a feeling for practically implementable models allowing for stylised features in the data. The reader may also use these models as building blocks to build more complex models, although for a number of risk management applications the models developed here suffice for the first step in the quantitative analysis. The broad qualitative features addressed here are {fat tails} and {mean reversion}. We give some orientation on the initial choice of a suitable stochastic process and then explain how the process parameters can be estimated based on historical data. Once the process has been calibrated, typically through maximum likelihood estimation, one may simulate the risk factor and build future scenarios for the risky portfolio. On the terminal simulated distribution of the portfolio one may then single out several risk measures, although here we focus on the stochastic processes estimation preceding the simulation of the risk factors Finally, this first survey report focuses on single time series. Correlation or more generally dependence across risk factors, leading to multivariate processes modeling, will be addressed in future work.

Suggested Citation

  • Damiano Brigo & Antonio Dalessandro & Matthias Neugebauer & Fares Triki, 2008. "A Stochastic Processes Toolkit for Risk Management," Papers 0812.4210, arXiv.org.
  • Handle: RePEc:arx:papers:0812.4210
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    Cited by:

    1. Di Cosmo, Valeria & Malaguzzi Valeri, Laura, 2014. "The incentive to invest in thermal plants in the presence of wind generation," Energy Economics, Elsevier, vol. 43(C), pages 306-315.
    2. Almendra Awerkin & Tiziano Vargiolu, 2021. "Optimal installation of renewable electricity sources: the case of Italy," Decisions in Economics and Finance, Springer;Associazione per la Matematica, vol. 44(2), pages 1179-1209, December.
    3. Chendi Ni & Yuying Li & Peter A. Forsyth, 2023. "Neural Network Approach to Portfolio Optimization with Leverage Constraints:a Case Study on High Inflation Investment," Papers 2304.05297, arXiv.org, revised May 2023.

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