Active Portfolio Rebalancing using Multi-objective Metaheuristics

G. Pai
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引用次数: 4

Abstract

Active Portfolio Rebalancing deals with devising a new asset allocation by buying and selling portions of the original portfolio invested in, as and when the need arises, so that the risk of the rebalanced portfolio reverts back to its original state. However, the problem of finding the optimal buy-sell weights to rebalance the portfolio can turn complex when the original portfolio invested in was already governed by multiple objectives and complex constraints defined by the investor, and the rebalancing of the portfolio adds more constraints and (or) objectives to the problem model.This paper discusses such an Active Portfolio Rebalancing model to obtain the optimal rebalanced portfolio, with the multi-objectives of maximizing its Diversification Ratio and its Expected Portfolio Return, subject to the non-linear constraints of Risk Budgeting and other investor preferential constraints stipulated for the original portfolio, besides the additional constraints involving transaction costs for rebalancing and the rebalanced portfolio risk. The portfolio rebalancing model, which is a multi-objective non-convex non-linear constrained fractional programming problem, turns difficult for direct solving using traditional methods and hence employs Multi-objective Metaheuristics to arrive at the optimal weights of assets to buy-sell to rebalance the portfolio. The experimental studies have been undertaken over high risk long-only equity portfolios of SP BSE 200 Index (Bombay Stock Exchange, India Period: March 1999-March 2009) and Nikkei 225 Index (Tokyo Stock Exchange, Japan, Period: March 1999-March 2009) over historical periods that included both upturns and downturns in the markets.
基于多目标元启发式的主动投资组合再平衡
主动投资组合再平衡是指在需要的时候,通过买卖投资组合的一部分来设计新的资产配置,从而使重新平衡的投资组合的风险恢复到原来的状态。然而,当投资者所投资的原始投资组合已经受到多个目标和复杂约束的约束时,寻找最优买卖权来重新平衡投资组合的问题会变得复杂,并且投资组合的重新平衡给问题模型增加了更多的约束和(或)目标。本文讨论了这种主动组合再平衡模型,以获得最优的再平衡组合,其多元化比率和投资组合预期收益最大化为多目标,除了再平衡的交易成本和再平衡的投资组合风险等附加约束外,还受到风险预算和其他投资者对原投资组合的偏好约束的非线性约束。投资组合再平衡模型是一个多目标非凸非线性约束分式规划问题,传统方法难以直接求解,因此采用多目标元启发式方法来确定最优的资产买卖权重,实现投资组合再平衡。实验研究是对SP BSE 200指数(印度孟买证券交易所,期间:1999年3月至2009年3月)和日经225指数(日本东京证券交易所,期间:1999年3月至2009年3月)的高风险多头股票投资组合进行的,这些历史时期包括市场的上涨和下跌。
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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