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An optimal design of collateralized mortgage obligation with PAC-companion structure using dynamic cash reserve

机译:动态现金储备的PAC-伴随结构抵押抵押债务的优化设计

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摘要

This paper presents a model for optimally designing a collateralized mortgage obligation (CMO) with a planned amortization class (PAC)-companion structure using dynamic cash reserve. In this structure, the mortgage pool's cash flow is allocated by rule to the two bond classes such that PAC bondholders receive substantial prepayment protection, that protection being provided by the companion bondholders. The structure we propose provides greater protection to the PAC bondholders than current structures during periods of rising interest rates when this class of bondholders faces greater extension risk. We do so by allowing a portion of the cash flow from the collateral to be reserved to meet the PAC's scheduled cash flow in subsequent periods. The greater protection is provided by the companion bondholders exposure to interest loss. To tackle this problem, we transform the problem of designing the optimal PAC-companion structure into a standard stochastic linear programming problem which can be solved efficiently. Moreover, we present an extended model by considering the quality of the companion bond and by relaxing the PAC bondholder shortfall constraint. Based on numerical experiments through Monte Carlo simulation, we show the utility of the proposed model. (c) 2006 Elsevier B.V. All rights reserved.
机译:本文提出了一种模型,该模型使用动态现金储备金来优化设计具有计划摊销类别(PAC)伴随结构的抵押抵押债务(CMO)。在这种结构中,按揭贷款池的现金流按规则分配给两个债券类别,以使PAC债券持有人获得大量的预付款保护,该保护由陪伴债券持有人提供。当此类债券持有人面临更大的扩展风险时,我们提出的结构在当前利率上升期间为PAC债券持有人提供了更好的保护。为此,我们允许保留来自抵押品的部分现金流量,以在后续期间满足PAC计划的现金流量。伴随债券持有人面临的利息损失风险提供了更大的保护。为了解决这个问题,我们将设计最佳PAC伴侣结构的问题转化为可以有效解决的标准随机线性规划问题。此外,我们通过考虑陪伴债券的质量并放宽PAC债券持有人的短缺约束条件,提出了扩展模型。在通过蒙特卡洛模拟进行的数值实验的基础上,我们证明了该模型的实用性。 (c)2006 Elsevier B.V.保留所有权利。

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