Portfolio optimization using stochastic programming with market trend forecast

This 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...

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Main Author: Yang, Yutian, active 21st century
Format: Others
Language:en
Published: 2014
Subjects:
Online Access:http://hdl.handle.net/2152/26248
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spelling ndltd-UTEXAS-oai-repositories.lib.utexas.edu-2152-262482015-09-20T17:25:57ZPortfolio optimization using stochastic programming with market trend forecastYang, Yutian, active 21st centuryPortfolio optimizationStochastic programmingMarket trend predictionThis 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 incorrectly part of the time. A sensitivity analysis shows how risk control requirements affect the investor's decision on selecting stochastic strategies under the same prediction accuracy.text2014-10-02T21:10:44Z2014-082014-09-17August 20142014-10-02T21:10:44ZThesisapplication/pdfhttp://hdl.handle.net/2152/26248en
collection NDLTD
language en
format Others
sources NDLTD
topic Portfolio optimization
Stochastic programming
Market trend prediction
spellingShingle Portfolio optimization
Stochastic programming
Market trend prediction
Yang, Yutian, active 21st century
Portfolio optimization using stochastic programming with market trend forecast
description This 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 incorrectly part of the time. A sensitivity analysis shows how risk control requirements affect the investor's decision on selecting stochastic strategies under the same prediction accuracy. === text
author Yang, Yutian, active 21st century
author_facet Yang, Yutian, active 21st century
author_sort Yang, Yutian, active 21st century
title Portfolio optimization using stochastic programming with market trend forecast
title_short Portfolio optimization using stochastic programming with market trend forecast
title_full Portfolio optimization using stochastic programming with market trend forecast
title_fullStr Portfolio optimization using stochastic programming with market trend forecast
title_full_unstemmed Portfolio optimization using stochastic programming with market trend forecast
title_sort portfolio optimization using stochastic programming with market trend forecast
publishDate 2014
url http://hdl.handle.net/2152/26248
work_keys_str_mv AT yangyutianactive21stcentury portfoliooptimizationusingstochasticprogrammingwithmarkettrendforecast
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