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Discovery and Prediction of Stock Index Pattern via Three-Stage Architecture of TICC, TPA-LSTM and Multivariate LSTM-FCNs
In this study, we attempt to discover and predict stock index patterns through analysis of multivariate time series. Our motivation is based on the notion that financial planning guided by pattern discovery and prediction of stock index prices maybe more realistic and effective than traditional appr...
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Published in: | IEEE access 2020, Vol.8, p.123683-123700 |
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description | In this study, we attempt to discover and predict stock index patterns through analysis of multivariate time series. Our motivation is based on the notion that financial planning guided by pattern discovery and prediction of stock index prices maybe more realistic and effective than traditional approaches, such as Autoregressive Integrated Moving Average (ARIMA) model. A three-stage architecture constructed by combining Toeplitz Inverse Covariance-Based Clustering (TICC), Temporal Pattern Attention and Long- Short-Term Memory (TPA-LSTM) and Multivariate LSTM-FCNs (MLSTM-FCN and MALSTM-FCN) is applied for pattern discovery and prediction of stock index. In the first stage, we use TICC to discover repeated patterns of stock index. Then, in the second stage, TPA-LSTM that considers weak periodic patterns and long short-term information is used to predict multivariate stock indices. Finally, in the third stage, MALSTM-FCN is applied to predict stock index price pattern. The Hangseng Stock Index and eleven industrial sub-indices are used in the experiment. Empirical results show that the three-stage architecture achieves satisfactory and better performance than traditional methods, such as Naive Bayes Classifier (NB), Support Vector Machine Classifier (SVM), Random Forest (RF), etc. Moreover, we construct equal proportion portfolios based on the bullish trading rules to further analyze the feasibility of the proposed three-stage architecture. Seven comprehensive stock indices are used in the experiment. Empirical results show that the portfolio based on the proposed three-stage architecture presents better performance than the market-based portfolio. These findings may provide new direction for the portfolio construction and risk aversion. |
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Our motivation is based on the notion that financial planning guided by pattern discovery and prediction of stock index prices maybe more realistic and effective than traditional approaches, such as Autoregressive Integrated Moving Average (ARIMA) model. A three-stage architecture constructed by combining Toeplitz Inverse Covariance-Based Clustering (TICC), Temporal Pattern Attention and Long- Short-Term Memory (TPA-LSTM) and Multivariate LSTM-FCNs (MLSTM-FCN and MALSTM-FCN) is applied for pattern discovery and prediction of stock index. In the first stage, we use TICC to discover repeated patterns of stock index. Then, in the second stage, TPA-LSTM that considers weak periodic patterns and long short-term information is used to predict multivariate stock indices. Finally, in the third stage, MALSTM-FCN is applied to predict stock index price pattern. The Hangseng Stock Index and eleven industrial sub-indices are used in the experiment. Empirical results show that the three-stage architecture achieves satisfactory and better performance than traditional methods, such as Naive Bayes Classifier (NB), Support Vector Machine Classifier (SVM), Random Forest (RF), etc. Moreover, we construct equal proportion portfolios based on the bullish trading rules to further analyze the feasibility of the proposed three-stage architecture. Seven comprehensive stock indices are used in the experiment. Empirical results show that the portfolio based on the proposed three-stage architecture presents better performance than the market-based portfolio. These findings may provide new direction for the portfolio construction and risk aversion.</description><identifier>ISSN: 2169-3536</identifier><identifier>EISSN: 2169-3536</identifier><identifier>DOI: 10.1109/ACCESS.2020.3005994</identifier><identifier>CODEN: IAECCG</identifier><language>eng</language><publisher>Piscataway: IEEE</publisher><subject>Architecture ; Autoregressive models ; Classifiers ; Clustering ; Covariance ; Empirical analysis ; Financial planning ; Forecasting ; Indexes ; Industries ; Multivariate analysis ; multivariate time series ; Neural networks ; pattern discovery ; pattern prediction ; Portfolios ; Predictive models ; Stock index pattern ; Support vector machines ; Time series analysis</subject><ispartof>IEEE access, 2020, Vol.8, p.123683-123700</ispartof><rights>Copyright The Institute of Electrical and Electronics Engineers, Inc. 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Our motivation is based on the notion that financial planning guided by pattern discovery and prediction of stock index prices maybe more realistic and effective than traditional approaches, such as Autoregressive Integrated Moving Average (ARIMA) model. A three-stage architecture constructed by combining Toeplitz Inverse Covariance-Based Clustering (TICC), Temporal Pattern Attention and Long- Short-Term Memory (TPA-LSTM) and Multivariate LSTM-FCNs (MLSTM-FCN and MALSTM-FCN) is applied for pattern discovery and prediction of stock index. In the first stage, we use TICC to discover repeated patterns of stock index. Then, in the second stage, TPA-LSTM that considers weak periodic patterns and long short-term information is used to predict multivariate stock indices. Finally, in the third stage, MALSTM-FCN is applied to predict stock index price pattern. The Hangseng Stock Index and eleven industrial sub-indices are used in the experiment. Empirical results show that the three-stage architecture achieves satisfactory and better performance than traditional methods, such as Naive Bayes Classifier (NB), Support Vector Machine Classifier (SVM), Random Forest (RF), etc. Moreover, we construct equal proportion portfolios based on the bullish trading rules to further analyze the feasibility of the proposed three-stage architecture. Seven comprehensive stock indices are used in the experiment. Empirical results show that the portfolio based on the proposed three-stage architecture presents better performance than the market-based portfolio. These findings may provide new direction for the portfolio construction and risk aversion.</description><subject>Architecture</subject><subject>Autoregressive models</subject><subject>Classifiers</subject><subject>Clustering</subject><subject>Covariance</subject><subject>Empirical analysis</subject><subject>Financial planning</subject><subject>Forecasting</subject><subject>Indexes</subject><subject>Industries</subject><subject>Multivariate analysis</subject><subject>multivariate time series</subject><subject>Neural networks</subject><subject>pattern discovery</subject><subject>pattern prediction</subject><subject>Portfolios</subject><subject>Predictive models</subject><subject>Stock index pattern</subject><subject>Support vector machines</subject><subject>Time series analysis</subject><issn>2169-3536</issn><issn>2169-3536</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2020</creationdate><recordtype>article</recordtype><sourceid>ESBDL</sourceid><sourceid>DOA</sourceid><recordid>eNpNUV1v2zAMNIoNWNH1F_RFQF_njPqwHT0GbrsFSLsA9p4FhWJaZanVyUqw_PvZdVGULyQOvDuCl2VXHGacg_6-qOvbppkJEDCTAIXW6iw7F7zUuSxk-enD_CW77PsdDDUfoKI6z043vsdwpHhitnNsHcl5TD50LGxZkwL-YcvO0T-2tilR7NjRW9Y-RaK8SfaR2CLik0-E6RBp5LTLuv7G2vUiXzXt_avo_WGf_NFGbxOxEc3v6of-a_Z5a_c9Xb71i-z33W1b_8xXv34s68UqRwXzlBeKgyLBVcUtuVJVJCtdEZImpQiqObrtRiMgKShBOKcLAZZobisBKLm8yJaTrgt2Z16if7bxZIL15hUI8dHYmDzuyVRcFA4VaomorMMNL4eHyoI23GknYdC6nrReYvh7oD6ZXTjEbjjfCFWoUkmhR0c5bWEMfR9p--7KwYyRmSkyM0Zm3iIbWFcTyxPRO0NzoUst5H_T3JBT</recordid><startdate>2020</startdate><enddate>2020</enddate><creator>Ouyang, Hongbing</creator><creator>Wei, Xiaolu</creator><creator>Wu, Qiufeng</creator><general>IEEE</general><general>The Institute of Electrical and Electronics Engineers, Inc. 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Our motivation is based on the notion that financial planning guided by pattern discovery and prediction of stock index prices maybe more realistic and effective than traditional approaches, such as Autoregressive Integrated Moving Average (ARIMA) model. A three-stage architecture constructed by combining Toeplitz Inverse Covariance-Based Clustering (TICC), Temporal Pattern Attention and Long- Short-Term Memory (TPA-LSTM) and Multivariate LSTM-FCNs (MLSTM-FCN and MALSTM-FCN) is applied for pattern discovery and prediction of stock index. In the first stage, we use TICC to discover repeated patterns of stock index. Then, in the second stage, TPA-LSTM that considers weak periodic patterns and long short-term information is used to predict multivariate stock indices. Finally, in the third stage, MALSTM-FCN is applied to predict stock index price pattern. The Hangseng Stock Index and eleven industrial sub-indices are used in the experiment. Empirical results show that the three-stage architecture achieves satisfactory and better performance than traditional methods, such as Naive Bayes Classifier (NB), Support Vector Machine Classifier (SVM), Random Forest (RF), etc. Moreover, we construct equal proportion portfolios based on the bullish trading rules to further analyze the feasibility of the proposed three-stage architecture. Seven comprehensive stock indices are used in the experiment. Empirical results show that the portfolio based on the proposed three-stage architecture presents better performance than the market-based portfolio. These findings may provide new direction for the portfolio construction and risk aversion.</abstract><cop>Piscataway</cop><pub>IEEE</pub><doi>10.1109/ACCESS.2020.3005994</doi><tpages>18</tpages><orcidid>https://orcid.org/0000-0002-5740-8889</orcidid><orcidid>https://orcid.org/0000-0002-4787-2549</orcidid><oa>free_for_read</oa></addata></record> |
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subjects | Architecture Autoregressive models Classifiers Clustering Covariance Empirical analysis Financial planning Forecasting Indexes Industries Multivariate analysis multivariate time series Neural networks pattern discovery pattern prediction Portfolios Predictive models Stock index pattern Support vector machines Time series analysis |
title | Discovery and Prediction of Stock Index Pattern via Three-Stage Architecture of TICC, TPA-LSTM and Multivariate LSTM-FCNs |
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