BUDGET ALLOCATIONS IN OPERATIONAL RISK MANAGEMENT

投资(军事) 资源配置 数据库事务 交易成本 功能(生物学) 业务 单调函数 灵敏度(控制系统) 微观经济学 财务 经济 计算机科学 数学 进化生物学 电子工程 政治 政治学 法学 市场经济 生物 程序设计语言 工程类 数学分析
作者
Yuqian Xu,Jiawei Zhang,Michael Pinedo
出处
期刊:Probability in the Engineering and Informational Sciences [Cambridge University Press]
卷期号:32 (3): 434-459 被引量:7
标识
DOI:10.1017/s0269964817000250
摘要

We consider a resource allocation model to analyze investment strategies for financial services firms in order to minimize their operational risk losses. A firm has to decide how much to invest in human resources and in infrastructure (information technology). The operational risk losses are a function of the activity level of the firm, of the amounts invested in personnel and in infrastructure, and of interaction effects between the amounts invested in personnel and infrastructure. We first consider a deterministic setting and show certain monotonicity properties of the optimal investments assuming general loss functions that are convex. We find that because of the interaction effects “economies of scale" may not hold in our setting, in contrast to a typical manufacturing environment. We then consider a general polynomial loss function in a stochastic setting with the number of transactions at the firm being a random variable. We characterize the asymptotic behaviors of the optimal investments in both heavy and light trading environments. We show that when the market is very liquid, that is, it is subject to heavy transaction volumes, it is optimal for a financial firm that is highly risk sensitive to use a balanced investment strategy. Both a heavier right tail of the distribution of transaction volume and a firm's risk sensitivity necessitate larger investments; in a heavy trading environment these two factors reinforce one another. However, in a light trading environment with the transaction volume having a heavy left tail the investment will be independent of the firm's sensitivity to risk.
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