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引用次数: 4
摘要
基于马科维茨西拉资产组合理论,建立了考虑摩擦因素的中国证券市场组合投资多因素最优模型。采用粒子群算法和蚁群优化算法相结合的混合方法PSACO (particle swarm ant colony optimization)对模型进行求解。粒子群优化(PSO)和蚁群优化(ACO)都是基于群体的协同全局搜索群智能元启发式算法。PSO的灵感来自于鸟群或鱼群的社会行为,而蚁群算法则模仿了现实生活中蚂蚁的觅食行为。在本研究中,我们采用信息素引导机制来提高粒子群算法的性能。并将该模型应用于指数30指数股票的实证研究,结果可为证券投资提供科学依据。
Study of Security Investment Optimizing Combination Based on PSACO
Based on Markowitzpsila theory of asset portfolio, a multi-factor and optimal model for portfolio investment in the condition of considering friction factors in China security market is established. A hybrid methodology PSACO (particle swarm ant colony optimization) combining particle swarm optimization with ant colony optimization algorithm is applied to solve the model. Both particle swarm optimization (PSO) and ant colony optimization (ACO) are co-operative, population-based global search swarm intelligence meta-heuristics. PSO is inspired by social behavior of bird flocking or fish schooling, while ACO imitates foraging behavior of real life ants. In this study, we employ a pheromone-guided mechanism to improve the performance of PSO method. Additionally, the model is implemented on the demonstrated research of the index stock of index 30, the result could provide scientific foundation for security investment.