Название: Perturbation Methods in Credit Derivatives
Автор: Colin Turfus
Издательство: John Wiley & Sons Limited
Жанр: Ценные бумаги, инвестиции
isbn: 9781119609599
isbn:
Although the requirements of investment banks have historically been the main driver of innovation in pricing methodologies, banks' pricing libraries are, in general, in a fairly mature and stable state: there is relatively little happening in the way of new product or model development. New implementation of pricing routines is much less likely to be happening in the front office of investment banks than in small investment houses, hedge funds, consultancies or other service providers. Rather than developing high‐powered generic Monte Carlo engines in C++ code, they are more likely these days to be developing or buying‐in more bespoke risk and pricing models, increasingly in more flexible scripting languages such as Python rather than in C++, since rapid development, easy maintenance and transparency are more likely to be at a premium. Further, the availability for more than a decade now of the Boost.Python C++ library allows routines and software objects written in C++ to be seamlessly accessed from or integrated into Python scripts, allowing the advantages of both worlds potentially to be enjoyed. It is in relation to such usage that we see the type of easily implemented perturbation solutions presented in this book as being most relevant.
The great majority of work on derivatives pricing using perturbation expansions from the SABR model of Hagan et al. [2002] has been in the context of local and/or stochastic volatility (mainly the latter). Furthermore, relatively little attention has been paid to short‐rate models, either for interest rates or for credit. One might ask why this is the case. This is a surprisingly difficult question to answer definitively because no one tends to report the reasons why they did not do research in a given area. The bias may in part be a consequence of the fact that short‐rate models are considered to have been surpassed by other more flexible frameworks such as that of Heath et al. [1992] (HJM) and the LIBOR market model (LMM). There appears to be a sense that short‐rate models are “harder” than models of spot processes on account of the non‐linear interaction between the short rate appearing both in the payoff specification and in the discount factor. While this may limit considerably the scope for exact analytic solutions, it ought not to be considered overly problematic in relation to perturbation expansion approaches: the impact on the discount factor is invariably quite weak, which plays into a perturbation strategy. Much of the analysis in the present volume seeks to exploit precisely this fact, building rapidly convergent perturbation series in powers of the short rate(s). It remains unclear to the author why more advantage has not been taken of this possibility by other researchers.We shall, as indicated, focus on short‐rate models at the expense of consideration of the HJM framework and the related LIBOR market model (although some short‐rate models such as Hull–White can be derived from within a HJM framework). This is mainly because the latter do not lend themselves so well to analysis by the techniques we expound below. A word should be said in defence of this decision. In the first instance, as the book's title suggests, we are specifically interested in credit derivatives, and the HJM and LMM frameworks have far less utility in that space than do short‐rate models. Further, insofar as our focus in the interest rate modelling we do perform is mainly on hybrid derivatives pricing rather than the types of interest rate option that tend to be the main targets of HJM and LMM approaches, short‐rate modelling is what is likely already being used in practice in the contexts we address.
The main shortcoming of the argument that traditional pricing libraries are about to be replaced by machine-learned versions of the algorithms they embody is that it currently lacks any real evidential basis. The strong recent interest in machine learning in the financial engineering community can be attributed to its increasingly being used, evidently to good effect, in devising and improving trading strategies by detecting signals in market data and trading patterns which a human observer might miss; and of course in algorithmic trading where the speed of the algorithm is key to profitability and even the latency of internet connections can have a significant impact. This has led to an upsurge of interest in this area, not only from those who already have relevant domain knowledge but also from many researchers who have established credentials in other areas, including I should add perturbation methods. But the colonisation by machine learning of the space currently occupied by pricing libraries is currently more an aspiration than a defined programme of research.While it is probably too early to call how things will pan out in this area, we would venture that the future is best viewed not as a competition between analytic formulae and machine-learned alternatives but as an opportunity for mutually beneficial collaboration. For example, it is noteworthy that Horvath et al. [2019] in their highly influential paper target not option prices but Black-Scholes implied volatility in the learning process for a rough volatility model. So they are implicitly making use of the Black-Scholes pricing formula to provide an approximation for the rough volatility model price. Perhaps more interestingly, the recent work of Antonov et al. [2020] addresses the challenging problem of how to handle efficiently the outer limits of the (high-dimensional) phase space addressed by a machine-learned representation of a pricing algorithm, effectively by substituting in an asymptotic representation of the pricing algorithm for points outside a core region of the phase space which is sampled fairly exhaustively in the learning process. The utility of such an approach hinges crucially on the availability of an asymptotically valid approximate solution to the problem at hand, which can effectively be used as a control variate in the learning process.
Finally, although it is true that there is a dearth of unified presentations of perturbation methodologies in the literature, we seek to address this in what follows by demonstrating how the particular second generation approach we advocate is applicable across a wide range of financial products, market underlyings and modelling assumptions for numerous tasks ranging from straightforward valuation to scenario generation, XVA and model risk quantification. We also seek to present results in a form which is at the same time transparent, so as to facilitate implementation, and fully general to allow real market data to be used without any modification or re‐working of results.
NOTE
1 1 Approximate solutions are sometimes presented as being valid for short times to maturity, but this limitation usually serves to limit the magnitude of the term variance which by construction tends to be a monotonically increasing function of time to maturity.
CHAPTER 2 Some Representative Case Studies
Consider the following plausible scenarios where the methods set out in the remainder of this book are found to address the types of challenge faced by risk management groups, looking to capture risk more effectively and accurately under regulatory and other pressures without increasing computational overheads unduly or engaging in costly new model development.
2.1 QUANTO CDS PRICING
A Korean client of a US bank wishes to sell protection on KRW‐denominated sovereign Korean debt and/or that of some systemically important Korean corporation. Providing a KRW‐based CDS rate is available, this can be used to price the protection (in KRW) СКАЧАТЬ