Abstract
We propose a model of inter-bank lending and borrowing which takes into account clearing debt obligations. The evolution of log-monetary reserves of banks is described by coupled diffusions driven by controls with delay in their drifts. Banks are minimizing their finite-horizon objective functions which take into account a quadratic cost for lending or borrowing and a linear incentive to borrow if the reserve is low or lend if the reserve is high relative to the average capitalization of the system. As such, our problem is a finite-player linear–quadratic stochastic differential game with delay. An open-loop Nash equilibrium is obtained using a system of fully coupled forward and advanced-backward stochastic differential equations. We then describe how the delay affects liquidity and systemic risk characterized by a large number of defaults. We also derive a closed-loop Nash equilibrium using a Hamilton–Jacobi–Bellman partial differential equation approach.
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Acknowledgements
The authors would like to thank Romuald Elie and Phillip Yam for conversations on this subject. We also thank an anonymous referee for his/her comments and suggestions which helped make the paper clearer. The work of the Jean-Pierre Fouque was supported by NSF Grant DMS-1409434. The work of the Li-Hsien Sun was supported by MOST-103-2118-M-008-006-MY2.
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Appendix: Proof of Lemma 4.1
Appendix: Proof of Lemma 4.1
Proof
Assuming that \((\check{X},\check{Y}, (\check{Z}^{k})_{k=1,\ldots ,N})\) is given as an input, we solve the system (29) for \(\lambda =\lambda _0\) and the processes \(\phi _t\), \(\psi ^k_t\), \(r_t\) and the random variable \(\zeta \) replaced according to the prescriptions:
and denote the solution by \(({X},{Y}, ({Z}^{k})_{k=1,\ldots ,N})\). In this way, we defined a mapping
and the proof consists in proving that the latter is a contraction for small enough \(\kappa >0\).
Consider \((\widehat{X},\widehat{Y},(\widehat{Z}^{k})_{k=1,\ldots ,N})=({X}-{X}^\prime ,{Y}-{Y}^\prime , (Z^{k}-{Z}^{k\prime })_{k=1,\ldots ,N})\) where \((X,Y,(Z^{k})_{k=1,\ldots ,N})\) and \(({X}^\prime ,Y^\prime ,({Z^{k}}^\prime )_{k=1,\ldots ,N})\) are the corresponding image using inputs \((\check{X},\check{Y},(\check{Z}^{k})_{k=1,\ldots ,N})\) and \(({\check{X}^{\prime }},{\check{Y}^{\prime }},(\check{Z}^{k\prime })_{k=1,\ldots ,N})\). We obtain
with initial condition \(\widehat{X}_0=0\) and terminal conditions \( \widehat{Y}_T=(1-\lambda _0)\widehat{X}_T+\lambda _0c\left( 1-\frac{1}{N}\right) \widehat{X}_T-\kappa \widehat{\check{X}}_T+\kappa c(1-\frac{1}{N})\widehat{\check{X}}_T\) and \(\widehat{Y}_t=0\) for \(t\in (T,T+\tau ]\) in the case of \(c >0\), and \(\widehat{Y}_T=0\) and \(\widehat{Y}_t=0\) for \(t\in (T,T+\tau ]\) in the case of \(c=0\). As we stated in the text, we only give the proof in the case \(c=0\) to simplify the notation. The proof of the case \(c>0\) is a easy modification. Using the form of the terminal condition and It\(\hat{\mathrm {o}}\)’s formula, we get
and rearranging the terms we find: and rearranging the terms we find:
Letting \(\mu = \epsilon (1-\frac{1}{N})-q^2(1-\frac{1}{2N})^2>0\), we obtain:
and a straightforward computation using repeatedly Cauchy–Schwarz and Jensen’s inequalities leads to the existence of a positive constant \(K_1\) such that
Referring to [27], applying It\(\hat{\mathrm {o}}\)’s formula to \(|\widehat{X}_t|^2\) and \(|\widehat{Y}_t|^2\), Gronwall’s inequality, and again Cauchy–Schwarz and Jensen’s inequalities, owing to \(0\le \lambda _0\le 1\), we obtain a constant \(K_2>0\) independent of \(\lambda _0\) so that
By using (64), there exists \(0<\mu '<\mu /{K_2}\) such that
Therefore, we have
Note that since \(\mu -K_2\mu '\) and \(\mu '\) stay in positive, we have \((1-\lambda _0+\lambda _0(\mu -K_2\mu '))\ge \mu ''\) and \((1-\lambda _0+\lambda _0\mu ')\ge \mu ''\) where for some \(\mu ''>0\). Combining the inequalities (64–66), we obtain
where the constant K depends upon \(\mu '\), \(\mu ''\), \(K_1\), \(K_2\), and T. Hence, \(\varPhi \) is a strict contraction for sufficiently small \(\kappa \). \(\square \)
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Carmona, R., Fouque, JP., Mousavi, S.M. et al. Systemic Risk and Stochastic Games with Delay. J Optim Theory Appl 179, 366–399 (2018). https://doi.org/10.1007/s10957-018-1267-8
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DOI: https://doi.org/10.1007/s10957-018-1267-8