Utilizing Technical Indexes and Database to Construct the Online Prediction System of Stocks

碩士 === 元智大學 === 工業工程與管理學系 === 97 === The main point and spirit of the technical analysis are to utilize statistical and mathematical formulas to discover, analyze and identify the rhythm and context of price fluctuation. In general, if investors can totally follow technical indicators such as the KD...

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Main Authors: Chia-Hua Chang, 張嘉樺
Other Authors: 張百棧
Format: Others
Language:zh-TW
Published: 2009
Online Access:http://ndltd.ncl.edu.tw/handle/02333206479745035283
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spelling ndltd-TW-097YZU050310112016-05-04T04:17:08Z http://ndltd.ncl.edu.tw/handle/02333206479745035283 Utilizing Technical Indexes and Database to Construct the Online Prediction System of Stocks 應用技術指標與資料庫以建構股票線上預測系統 Chia-Hua Chang 張嘉樺 碩士 元智大學 工業工程與管理學系 97 The main point and spirit of the technical analysis are to utilize statistical and mathematical formulas to discover, analyze and identify the rhythm and context of price fluctuation. In general, if investors can totally follow technical indicators such as the KD Index and the MACD Index to operate, they will absolutely enjoy a good performance in the long run. For the purpose to enable investors to make immediate decisions of investment when the buy signals appear, this research has utilized Dynamic Time Warping (DTW) and Piecewise Linear Representation (PLR) integrating Back-propagation Neural Network (BPN) to construct a DTW-PLR model and form a technical index system for trade decision which helps investors to detect the appropriate trade point and effectively reduce investment risk as well as to increase the profits. Back-propagation Neural Network is mainly to learn the connection weights between input variables and output variables; then Genetic Algorithms is applied to evolve better representation values which are expected to identify the better trade point in the future. If the technical index system is available at any time for the check of latest prediction indexes and the operation of database, the prediction can therefore provide the most accurate figures instead of frequently changing its conditions of basic analysis with the time-space environment. This change is quite slow; investors may suffer the extreme impact when not being able to endure temporary waiting. If the prediction figures can be immediately known, the analysis regarding unstable data can therefore be improved, and further to predict the new return ratio of investment. Although it is difficult to establish a highly-efficient technical index online prediction system, yet investors and users can obtain more latest information from the system which is developed by Java program and Oracle database. 張百棧 2009 學位論文 ; thesis 75 zh-TW
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language zh-TW
format Others
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description 碩士 === 元智大學 === 工業工程與管理學系 === 97 === The main point and spirit of the technical analysis are to utilize statistical and mathematical formulas to discover, analyze and identify the rhythm and context of price fluctuation. In general, if investors can totally follow technical indicators such as the KD Index and the MACD Index to operate, they will absolutely enjoy a good performance in the long run. For the purpose to enable investors to make immediate decisions of investment when the buy signals appear, this research has utilized Dynamic Time Warping (DTW) and Piecewise Linear Representation (PLR) integrating Back-propagation Neural Network (BPN) to construct a DTW-PLR model and form a technical index system for trade decision which helps investors to detect the appropriate trade point and effectively reduce investment risk as well as to increase the profits. Back-propagation Neural Network is mainly to learn the connection weights between input variables and output variables; then Genetic Algorithms is applied to evolve better representation values which are expected to identify the better trade point in the future. If the technical index system is available at any time for the check of latest prediction indexes and the operation of database, the prediction can therefore provide the most accurate figures instead of frequently changing its conditions of basic analysis with the time-space environment. This change is quite slow; investors may suffer the extreme impact when not being able to endure temporary waiting. If the prediction figures can be immediately known, the analysis regarding unstable data can therefore be improved, and further to predict the new return ratio of investment. Although it is difficult to establish a highly-efficient technical index online prediction system, yet investors and users can obtain more latest information from the system which is developed by Java program and Oracle database.
author2 張百棧
author_facet 張百棧
Chia-Hua Chang
張嘉樺
author Chia-Hua Chang
張嘉樺
spellingShingle Chia-Hua Chang
張嘉樺
Utilizing Technical Indexes and Database to Construct the Online Prediction System of Stocks
author_sort Chia-Hua Chang
title Utilizing Technical Indexes and Database to Construct the Online Prediction System of Stocks
title_short Utilizing Technical Indexes and Database to Construct the Online Prediction System of Stocks
title_full Utilizing Technical Indexes and Database to Construct the Online Prediction System of Stocks
title_fullStr Utilizing Technical Indexes and Database to Construct the Online Prediction System of Stocks
title_full_unstemmed Utilizing Technical Indexes and Database to Construct the Online Prediction System of Stocks
title_sort utilizing technical indexes and database to construct the online prediction system of stocks
publishDate 2009
url http://ndltd.ncl.edu.tw/handle/02333206479745035283
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