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dc.contributor.author郑博文en_US
dc.contributor.authorCheng, Bo-Wenen_US
dc.contributor.author陈安斌en_US
dc.contributor.authorChen, An-Pinen_US
dc.date.accessioned2014-12-12T02:33:24Z-
dc.date.available2014-12-12T02:33:24Z-
dc.date.issued2012en_US
dc.identifier.urihttp://140.113.39.130/cdrfb3/record/nctu/#GT070063428en_US
dc.identifier.urihttp://hdl.handle.net/11536/71786-
dc.description.abstract本研究尝试利用市场逻辑理论所提出的市场轮廓原理,并加入交易量变化的考量,作为倒传递类神经网路的输入变数,以期能建构一优于单纯随机交易之模型,并比较加入交易量变化的考量,是否能有效提升投资绩效,进而从中发掘市场逻辑规则与知识。
为使倒传递类神经网路能学习市场趋势变化的关键,本研究透过市场轮廓价格偏离值、摆荡因子及价值区间变化指标的计算,再加入交易量的考量,试图比较以市场轮廓为出发点所建立的指标,是否能较随机交易具有较佳的预测能力,并比较包含交易量变化考量的市场轮廓模型是否较未加入交易量变化考量的市场轮廓模型,更能准确预测股价的涨跌。
实验结果显示,不论有无加入交易量变化的考量,以市场轮廓为出发点所建立的模型均较随机交易之绩效为佳,且以预测区间为5日的绩效为最佳,显见市场轮廓为一有效的投资评估工具。另外,实验结果亦显示,加入交易量变化的考量后,并未显着提升系统预测的准确率,原因可能在于本研究仅以交易量变化情形作为指标,而未将相对应的价格变化关系纳入考量所致,爰建议后续研究者可建构一综合价量关系的指标,以有效提升投资绩效。
zh_TW
dc.description.abstractThis research applies market profile, which is mentioned by the theory of market logic, and considers the change in trade volume to establish parameters to back propagation neural network to construct a better model than random trading behavior. This research also checks whether the model has a better investment performance with considering the change in trade volume and eventually extrapolates market logic and knowledge.
To let back propagation neural network learn the key to market trend changes, this study uses the indicators of price biases in market profile, rotation factor, the change in value area and the change in trade volume to see if the model constructed with the indicators derived from market profile has better predicting ability than random trading behavior does. This study also tests if the market profile model with considering the change in trade volume predicts the stock price more accurately than the model without considering the change in trade volume does.
Experimental results show that the model based on market profile has a better performance than random trading does no matter whether the change in trade volume is considered, especially the 5-day prediction. Therefore, market profile is an effective instrument for making investing decisions. Moreover, experimental results also show that the model that includes the parameter of the change in trade volume does not significantly predict the market trend better. The reason may be that the indicator of the change in trade volume does not include the relating price variation. As a result, the subsequent researchers can establish an indicator which contains both price and volume information and experiment its effectiveness on investment performance.
en_US
dc.language.isozh_TWen_US
dc.subject市场轮廓zh_TW
dc.subject摆荡因子zh_TW
dc.subject倒传递类神经网路zh_TW
dc.subject台湾指数期货zh_TW
dc.subjectMarket Profileen_US
dc.subjectRotation Factoren_US
dc.subjectBack Propagation Neural Networken_US
dc.subjectTAIEX Futuresen_US
dc.title以考虑交易量之市场轮廓预测台指期市场之行为zh_TW
dc.titlePredicting the Behavior of Taiwan Index Futures Market by Using Market Profile with Volumeen_US
dc.typeThesisen_US
dc.contributor.department管理学院资讯管理学程zh_TW
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