Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin
Investment in stock market is a way of generating extra money. Essentially, the objectives of investment are to reduce the risk, increase the return and better diversification of capital investment. However, investment involves risk and investment in stock market is risky. Wise investment decision h...
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2014
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Online Access: | https://ir.uitm.edu.my/id/eprint/16459/1/TM_SITI%20NAZIFAH%20ZAINOL%20ABIDIN%20CS%2014_5.pdf https://ir.uitm.edu.my/id/eprint/16459/ |
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my.uitm.ir.164592022-04-08T07:12:12Z https://ir.uitm.edu.my/id/eprint/16459/ Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin Zainol Abidin, Siti Nazifah Investment in stock market is a way of generating extra money. Essentially, the objectives of investment are to reduce the risk, increase the return and better diversification of capital investment. However, investment involves risk and investment in stock market is risky. Wise investment decision has to be made in order to prevent any loss of capital investment. As to help the investors, this study proposed four stages of investment framework which are selecting, forecasting, distributing and estimating profit. The proposed method can be used to select the right stocks, forecast the future prices, distributing the capital investment and estimating the profit gained. The mathematical models involved are cluster analysis, geometric Brownian motion and analytic hierarchy process. The effectiveness of the proposed method is tested on a real investment situation in Bursa Malaysia involving small size companies. Furthermore, methodology is build to group a large amount of stocks into several clusters based on their performance and selected the clusters that gave high return to proceed with forecasting future closing prices. Then, eight stocks from the higher percentage increase of forecasted return are selected to carry on with distribution proportion of capital investment. Profit estimation can be made after all the stages are analyzed. It is found this proposed method is able to reduce the risk of loss, increase the return and better diversification of capital investment. 2014-01 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/16459/1/TM_SITI%20NAZIFAH%20ZAINOL%20ABIDIN%20CS%2014_5.pdf (2014) Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin. Masters thesis, thesis, Universiti Teknologi MARA. |
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Investment in stock market is a way of generating extra money. Essentially, the objectives of investment are to reduce the risk, increase the return and better diversification of capital investment. However, investment involves risk and investment in stock market is risky. Wise investment decision has to be made in order to prevent any loss of capital investment. As to help the investors, this study proposed four stages of investment framework which are selecting, forecasting, distributing and estimating profit. The proposed method can be used to select the right stocks, forecast the future prices, distributing the capital investment and estimating the profit gained. The mathematical models involved are cluster analysis, geometric Brownian motion and analytic hierarchy process. The effectiveness of the proposed method is tested on a real investment situation in Bursa Malaysia involving small size companies. Furthermore, methodology is build to group a large amount of stocks into several clusters based on their performance and selected the clusters that gave high return to proceed with forecasting future closing prices. Then, eight stocks from the higher percentage increase of forecasted return are selected to carry on with distribution proportion of capital investment. Profit estimation can be made after all the stages are analyzed. It is found this proposed method is able to reduce the risk of loss, increase the return and better diversification of capital investment. |
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Zainol Abidin, Siti Nazifah |
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Zainol Abidin, Siti Nazifah Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin |
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Zainol Abidin, Siti Nazifah |
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Zainol Abidin, Siti Nazifah |
title |
Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin |
title_short |
Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin |
title_full |
Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin |
title_fullStr |
Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin |
title_full_unstemmed |
Integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / Siti Nazifah Zainol Abidin |
title_sort |
integrating cluster analysis, geometric brownian motion and analytic hierarchy process in capital allocation / siti nazifah zainol abidin |
publishDate |
2014 |
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https://ir.uitm.edu.my/id/eprint/16459/1/TM_SITI%20NAZIFAH%20ZAINOL%20ABIDIN%20CS%2014_5.pdf https://ir.uitm.edu.my/id/eprint/16459/ |
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