textThis report discusses a multi-stage stochastic programming model that maximizes expected ending time profit assuming investors can forecast a bull or bear market trend. If an investor can always predict the market trend correctly and pick the optimal stochastic strategy that matches the real market trend, intuitively his return will beat the market performance. For investors with different levels of prediction accuracy, our analytical results support their decision of selecting the highest return strategy. Real stock prices of 154 stocks on 73 trading days are collected. The computational results verify that accurate prediction helps to exceed market return while portfolio profit drops if investors partially predict or forecast inco...
We investigate a multiperiod, stochastic portfolio optimization model for diversified funds choices ...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
It is widely recognized that when classical optimal strategies are applied with parameters estimated...
textThis report discusses a multi-stage stochastic programming model that maximizes expected ending ...
Momentum strategies based on continuation patterns in equity prices have attracted a wide following ...
Investing at the stock market is often considered as a way of gambling. That is because most people ...
As a fundamental problem in algorithmic trading, portfolio optimization aims to maximize the cumulat...
Abstract. Solutions of portfolio optimization problems are often in¯uenced by errors or misspeci®cat...
Portfolio construction and optimization is one of the most popular topics in the finance industry. I...
Portfolio management problems can be broadly divided into two classes of differing investing styles:...
Portfolio selection techniques must provide decision-makers with a dynamic model framework that inco...
We study a stochastic programming approach to multicriteria multi-period portfolio optimization prob...
We investigate a multiperiod, stochastic portfolio optimization model for diversified funds choices ...
Abstract: Problem statement: The most important character within optimization problem is the uncerta...
This paper presents a scenario-based multistage stochastic programming model to deal with multi-peri...
We investigate a multiperiod, stochastic portfolio optimization model for diversified funds choices ...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
It is widely recognized that when classical optimal strategies are applied with parameters estimated...
textThis report discusses a multi-stage stochastic programming model that maximizes expected ending ...
Momentum strategies based on continuation patterns in equity prices have attracted a wide following ...
Investing at the stock market is often considered as a way of gambling. That is because most people ...
As a fundamental problem in algorithmic trading, portfolio optimization aims to maximize the cumulat...
Abstract. Solutions of portfolio optimization problems are often in¯uenced by errors or misspeci®cat...
Portfolio construction and optimization is one of the most popular topics in the finance industry. I...
Portfolio management problems can be broadly divided into two classes of differing investing styles:...
Portfolio selection techniques must provide decision-makers with a dynamic model framework that inco...
We study a stochastic programming approach to multicriteria multi-period portfolio optimization prob...
We investigate a multiperiod, stochastic portfolio optimization model for diversified funds choices ...
Abstract: Problem statement: The most important character within optimization problem is the uncerta...
This paper presents a scenario-based multistage stochastic programming model to deal with multi-peri...
We investigate a multiperiod, stochastic portfolio optimization model for diversified funds choices ...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
It is widely recognized that when classical optimal strategies are applied with parameters estimated...