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Reducing Portfolio Quadratic Programming Problem into Regression Problem: Stepwise Algorithm

机译:将投资组合二次规划问题简化为回归问题:逐步算法

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Mathematical programming can be classified into linear and non linear programming. This study involved a literature knowledge of formal theory essential for understanding of optimization and investigation of algorithms used for solution of special case of non linear programming, namely quadratic programming. The solution of quadratic objective function has been found using numerical and statistical approaches. Numerical technique is based on Cholesky decomposition algorithm and statistical approach is based on Least squares technique. The selected model chosen for the purpose of solving quadratic programming problem is related to portfolio selection in presence of transaction costs. The objective is to minimize the sum of squares of error by estimating parameters. It was not the purpose of study to discuss all algorithms but an algorithm namely stepwise algorithm has been discussed in detail. Using stepwise technique, we have reduced quadratic programming problem into regression problem and found the values of estimated parameters. This approach has efficiently solved the quadratic programming problem and gave the optimum values of unknown parameters.
机译:数学编程可分为线性和非线性编程。这项研究涉及形式理论的文学知识,这对于理解优化和研究用于解决非线性规划的特殊情况(即二次规划)的算法至关重要。已经使用数值和统计方法找到了二次目标函数的解。数值技术基于Cholesky分解算法,而统计方法则基于最小二乘技术。为解决二次规划问题而选择的所选模型与存在交易成本时的投资组合选择有关。目的是通过估计参数来最小化误差平方和。讨论所有算法并不是研究的目的,而是详细讨论了一种算法,即逐步算法。使用逐步技术,我们已将二次规划问题简化为回归问题,并找到了估计参数的值。这种方法有效地解决了二次编程问题,并给出了未知参数的最佳值。

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