Neuro-fuzzy techniques for financial engineering
Soft computing has been increasingly popular in many industrial and real-life applications. This project covers one aspect of soft computing; Neuro-Fuzzy techniques applied in financing engineering. Detailed research works and literature reviews are done in order to grasp Neuro-Fuzzy concepts an...
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sg-ntu-dr.10356-180142023-07-07T16:36:29Z Neuro-fuzzy techniques for financial engineering Chen, Yi. Wang Lipo School of Electrical and Electronic Engineering DRNTU::Engineering Soft computing has been increasingly popular in many industrial and real-life applications. This project covers one aspect of soft computing; Neuro-Fuzzy techniques applied in financing engineering. Detailed research works and literature reviews are done in order to grasp Neuro-Fuzzy concepts and its applications. A real-life problem has been derived to find out whether news impact on the Singapore stocks in the SGX market. The Factiva database is used to search for news data, Yahoo! Finance for stock prices and Matlab software for programming. Two stocks namely, OCBC and DBS are compiled and used to input and train the created Neuro-Fuzzy program. Two types of encoding are used which are Binary Coding Method and Penta Coding Method (BCM & PCM). RMSE of 0.2514 and 3.0761 are achieved from the output of program. From this result, it reflects mixed responses. The value 0.2514 reflects a reasonable level of accuracy and 3.0761 reflects a lower level of accuracy. One possible reason deduced for the discrepancy could be due to misinterpretation of news encoding into numerical values. Limitations mentioned in the report posed problems to complete this project. Suggestions like having a two people project to handle different tasks will not only improve the efficiency of the tasks completion but will also improve the consistency and accuracy of the data encoding of news headlines into numerical values for training values. Overall, it is relatively successful having to complete the objectives of the project despite discrepancies of the RMSE values of the two stocks. Bachelor of Engineering 2009-06-18T08:36:55Z 2009-06-18T08:36:55Z 2009 2009 Final Year Project (FYP) http://hdl.handle.net/10356/18014 en Nanyang Technological University 53 p. application/pdf |
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DRNTU::Engineering Chen, Yi. Neuro-fuzzy techniques for financial engineering |
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Soft computing has been increasingly popular in many industrial and real-life
applications. This project covers one aspect of soft computing; Neuro-Fuzzy
techniques applied in financing engineering.
Detailed research works and literature reviews are done in order to grasp Neuro-Fuzzy
concepts and its applications.
A real-life problem has been derived to find out whether news impact on the
Singapore stocks in the SGX market. The Factiva database is used to search for news
data, Yahoo! Finance for stock prices and Matlab software for programming. Two
stocks namely, OCBC and DBS are compiled and used to input and train the created
Neuro-Fuzzy program. Two types of encoding are used which are Binary Coding
Method and Penta Coding Method (BCM & PCM).
RMSE of 0.2514 and 3.0761 are achieved from the output of program. From this
result, it reflects mixed responses. The value 0.2514 reflects a reasonable level of
accuracy and 3.0761 reflects a lower level of accuracy. One possible reason deduced
for the discrepancy could be due to misinterpretation of news encoding into numerical
values.
Limitations mentioned in the report posed problems to complete this project.
Suggestions like having a two people project to handle different tasks will not only
improve the efficiency of the tasks completion but will also improve the consistency
and accuracy of the data encoding of news headlines into numerical values for
training values. Overall, it is relatively successful having to complete the objectives of
the project despite discrepancies of the RMSE values of the two stocks. |
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Wang Lipo |
author_facet |
Wang Lipo Chen, Yi. |
format |
Final Year Project |
author |
Chen, Yi. |
author_sort |
Chen, Yi. |
title |
Neuro-fuzzy techniques for financial engineering |
title_short |
Neuro-fuzzy techniques for financial engineering |
title_full |
Neuro-fuzzy techniques for financial engineering |
title_fullStr |
Neuro-fuzzy techniques for financial engineering |
title_full_unstemmed |
Neuro-fuzzy techniques for financial engineering |
title_sort |
neuro-fuzzy techniques for financial engineering |
publishDate |
2009 |
url |
http://hdl.handle.net/10356/18014 |
_version_ |
1772828987585724416 |