In finance, the portfolio is the set of investment in the assets. Meanwhile, its optimization leads towards the best selection and diversification of investments. Portfolio optimization involves the objectives (mean, variance or Sharp Ratio (SR)) and constraints (budget, short sell, outliers, cardinality, lot and transaction cost, liquidity), as well as some others which makes it more complex, dynamic and intractable. The SR function is considered to be the measuring tool for best portfolio selection and optimization. At present, the area of portfolio optimization lacks in having multiple constraints with the SR as the objective function. This research focuses on a two-stage portfolio selection, diversification, and optimization. The normal...
A well renowned problem in the world of finance is optimization of investment portfolios. An investo...
Portfolio optimization involves the optimal assignment of limited capital to different available fin...
Due to development of high-power computers, heuristic algorithms are applied broader at present, esp...
In finance, the portfolio is the set of investment in the assets. Meanwhile, its optimization leads ...
The selection criteria play an important role in the portfolio optimization using any ratio model. I...
Optimization is to find the best-performing solution under the constraints given. It can be somethin...
Portfolio optimization is a multi-objective optimization problem (MOOP) with risk and profit, or som...
The main objective of this study is to improve the extended Markowitz mean-variance portfolio select...
This thesis deals with design and implementation of an investment model, which applies methods of Po...
Objective: The main objective of this study is to improve the extended Markowitz mean-variance portf...
Solving the multi-stage portfolio optimization (MSPO) problem is very challenging due to nonlinearit...
The portfolio selection of assets for an investment by investors has remain a challenge in building ...
Abstract Markowitz optimization problem so determination of investment efficient set, while the numb...
While investors used to create their portfolios according to traditional portfolio theory in the pas...
One of the most studied problem in optimization world is portfolio selection problem which is based ...
A well renowned problem in the world of finance is optimization of investment portfolios. An investo...
Portfolio optimization involves the optimal assignment of limited capital to different available fin...
Due to development of high-power computers, heuristic algorithms are applied broader at present, esp...
In finance, the portfolio is the set of investment in the assets. Meanwhile, its optimization leads ...
The selection criteria play an important role in the portfolio optimization using any ratio model. I...
Optimization is to find the best-performing solution under the constraints given. It can be somethin...
Portfolio optimization is a multi-objective optimization problem (MOOP) with risk and profit, or som...
The main objective of this study is to improve the extended Markowitz mean-variance portfolio select...
This thesis deals with design and implementation of an investment model, which applies methods of Po...
Objective: The main objective of this study is to improve the extended Markowitz mean-variance portf...
Solving the multi-stage portfolio optimization (MSPO) problem is very challenging due to nonlinearit...
The portfolio selection of assets for an investment by investors has remain a challenge in building ...
Abstract Markowitz optimization problem so determination of investment efficient set, while the numb...
While investors used to create their portfolios according to traditional portfolio theory in the pas...
One of the most studied problem in optimization world is portfolio selection problem which is based ...
A well renowned problem in the world of finance is optimization of investment portfolios. An investo...
Portfolio optimization involves the optimal assignment of limited capital to different available fin...
Due to development of high-power computers, heuristic algorithms are applied broader at present, esp...