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    题名: 深度學習於台灣指數期貨之應用 : 經驗模態分解下之長短期記憶神經網路建模
    Application of Deep Learning in Taiwan Index Futures : Long-term and Short-term Memory Neural Network Modeling Based on Empirical Mode Decomposition
    作者: 莊彥哲
    Chuang, Yan-Che
    贡献者: 陳樹衡
    莊彥哲
    Chuang, Yan-Che
    关键词: 人工智慧
    深度學習
    神經網路
    長短期記憶模型
    遞迴神經網路
    機器學習
    K-近鄰演算法
    經驗模態分解
    日內資料
    金融時間序列趨勢預測
    當沖交易
    日期: 2019
    上传时间: 2019-09-05 17:07:54 (UTC+8)
    摘要: 本文中我們主要的目標是想要基於深度學習模型(Long Short Term Memory Network,縮寫LSTM),並結合經驗模態分解(Empirical Mode Decomposition,EMD分解)將期貨的分鐘頻率日內資料分解為有意義的頻率信號,將人工智慧應用於預測金融時間序列走勢,且實際用於期貨市場的當沖交易。預測金融時間序列走勢的一直都不是個簡單的任務,主要是因為金融時間序列的非定態,具有序列相關。於是我們想結合專門將時間序列分解成多個獨立且有頻率意義信號的經驗模態分解(EMD分解):以及具有長期記憶、寫入、清除、輸出,專門處理時間序列資料的長短期記憶神經網路模型(LSTM),並運用模型輸出結果實際在歷史資料上交易回測,然後計算模型效能、策略績效,最後與傳統的機器學習(本文中以具有隱藏層以及多神經元的深度學習區分傳統上統計學的機器學習方法)演算法K-近鄰演算法(K Nearest Neighbor. KNN)做比較。經過實驗我們成功找出EMD分解與LSTM、KNN的最佳預測區間長度,且經由實驗證明EMD分解確實能有效幫助中、短期的金融時間序列趨勢預測,以及深度學習模型LSTM的效能在相同資料處理方式下明顯優於傳統機器學習方法KNN。
    參考文獻: [1] Bengio, Yoshua, Patrice Simard, and Paolo Frasconi.(1994) “Learning long-term dependencies with gradient descent is difficult.” Neural Networks, IEEE Transactions on 5.2 (1994): 157-166.
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    doi: 10.1109/TIT.1967.1053964
    [3] Cox, D.R. (1958). “The Regression Analysis of Binary Sequences.” Journal of the Royal Statistical Society: Series B, 20, 215-242.
    [4] Diederik, Kingma & Ba, Jimmy. (2014). Adam: A Method for Stochastic Optimization. International Conference on Learning Representations.
    [5] Doering , Jonathan & Fairbank, Michael & Markose, Sheri. (2017). “Convolutional neural networks applied to high-frequency market microstructure forecasting.” 31-36. 10.1109/CEEC.2017.8101595.
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    [7] Gode, D. K., & Sunder, S. (1993). Alloca;ve efficiency of markets with zero-intelligence traders: Market as a par;al subs;tute for individual ra;onality. Journal of poli;cal economy, 101(1), 119–137
    [8]Hochreiter, Sepp, and Jürgen Schmidhuber(1997). “Long short-term memory.” Neural computation 9.8 (1997): 1735-1780.
    [9] Huang, Norden E.;Zheng Shen;Steven R. Long3(1998). “The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis” 454Proc. R. Soc. Lond. A
    [10] Krizhevsky, Alex & Sutskever, Ilya & E. Hinton, Geoffrey. (2012). “ImageNet Classification with Deep Convolutional Neural Networks.” Neural Information Processing Systems. 25. 10.1145/3065386.
    [11] Le, Quoc V. Navdeep Jaitly, Geoffrey E. Hinton(2015). “A Simple Way to Initialize Recurrent Networks of Rectified Linear Units”.arXiv:1504.00941v2 [cs.NE] 7 Apr 2015
    [12] Li, Edwin (2018). “LSTM Neural Network Models for Market Movement Prediction” (Dissertation). Retrieved from http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-231627
    [13] Lipton, Zachary C. John Berkowitz, Charles Elkan(2015). “A Critical Review of Recurrent Neural Networks for Sequence Learning.” arXiv:1506.00019v4 [cs.LG] 17 Oct 2015
    [14] Loffe, Sergey. Christian Szegedy(2015). “Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift.” arXiv:1502.03167v3 [cs.LG] 2 Mar 2015
    [15] McCulloch, Warren S.;Walter Pitts(1943). “A logical calculus of the ideas immanent in nervous activity.” Bulletin of Mathematical Biology, 52, 99-115.
    [16] Navon, Ariel Yosi Keller(Nov 2017). “Financial Time Series Prediction using Deep Learning.” arXiv:1711.04174v1 [eess.SP] 11 Nov 2017
    [17]Rosenblatt, F(1958). “The perceptron: A probabilistic model for information storage and organization in the brain.” _Psychological Review_ 65 (6):386-408.
    [18] Rumelhart, David E Geoffrey E. Hinton, Ronald J. Williams(1986). “Learning representations by back-propagating errors” . Nature. 323 (6088): 533–536. doi:10.1038/323533a0. ISSN 1476-4687.
    [19] SUBHA, M.V & Nambi, S.T.. (2012). “Classification of stock index movement using k-nearest neighbours (k-NN) algorithm.” WSEAS Transactions on Information Science and Applications. 9. 261-270.
    [20] Srivastava, Nitish, Geoffrey Hinton, Alex Krizhevsky, Ilya Sutskever, Ruslan Salakhutdinov(2014). “Dropout: A Simple Way to Prevent Neural Networks from Overfitting” Journal of Machine Learning Research 15 (2014) 1929-1958 Submitted 11/13; Published 6/14
    [21] Teixeira, LA & Oliveira, A.L. (2010). “A method for automatic stock trading combining technical analysis and nearest neighbor classification.” Expert Syst. Appl., 37, 6885-6890.
    [22]Williams, R. J. (1989). "Complexity of exact gradient computation algorithms for recurrent neural networks. Technical Report Technical Report NU-CCS-89-27". Boston: Northeastern University, College of Computer Science.
    [23]Zhang, Boning. (2018). Foreign exchange rates forecasting with an EMD-LSTM neural networks model. Journal of Physics: Conference Series. 1053. 012005. 10.1088/1742-6596/1053/1/012005.
    [24] Zheng, Huiting & Yuan, Jiabin & Chen, Long. (2017). “Short-Term Load Forecasting Using EMD-LSTM Neural Networks with a Xgboost Algorithm for Feature Importance Evaluation.” Energies. 10. 1168. 10.3390/en10081168.
    描述: 碩士
    國立政治大學
    經濟學系
    105258033
    資料來源: http://thesis.lib.nccu.edu.tw/record/#G0105258033
    数据类型: thesis
    DOI: 10.6814/NCCU201900955
    显示于类别:[經濟學系] 學位論文

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