Simple and Population Local Search Approaches for Portfolio Design Problem

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Abstract

This chapter introduces a local search optimization technique for solving efficiently a ðnancial portfolio design problem that consists of assigning assets to portfolios, allowing a compromise between maximizing gains, and minimizing losses. This practical problem appears usually in ðnancial engineering, such as in the design of CDO-squared portfolios. This problem has been modeled by Flener et al., who proposed an exact method to solve it. It can be formulated as a quadratic program on the (0,1) domain. It is well known that exact solving approaches on difficult and large instances of quadratic integer programs are known inefficient. That is why the authors have adopted local search methods, namely simple local search and population local search. They propose neighborhood and evaluation functions specialized on this problem. To boost the local search process, they propose also a greedy algorithm to start the search with an optimized initial configuration. Experimental results on non-trivial instances of the problem show the effectiveness of the incomplete approach.
组合设计问题的简单和群体局部搜索方法
本章介绍了一种局部搜索优化技术,用于有效地解决一个金融投资组合设计问题,该问题包括将资产分配到投资组合中,允许在收益最大化和损失最小化之间进行折衷。这一实际问题通常出现在金融工程中,例如CDO-squared投资组合的设计。Flener等人对这个问题进行了建模,并提出了一种精确的解决方法。它可以表示为(0,1)域上的二次规划。众所周知,精确求解复杂和大型二次整数规划实例的方法是低效的。因此作者采用了局部搜索方法,即简单局部搜索和人口局部搜索。针对这一问题,提出了邻域函数和评价函数。为了提高局部搜索速度,他们还提出了一种贪婪算法,以优化的初始配置开始搜索。在该问题的非平凡实例上的实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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