2019
DOI: 10.1109/access.2019.2901842
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Stock Market Trend Prediction Using High-Order Information of Time Series

Abstract: Given a financial time series such as S&P 500, or any historical data in stock markets, how can we obtain useful information from recent transaction data to predict the ups and downs at the next moment? Recent work on this issue shows initial evidence that machine learning techniques are capable of identifying (non-linear) dependency in the stock market price sequences. However, due to the high volatility and non-stationary nature of the stock market, forecasting the trend of a financial time series remains a … Show more

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Cited by 123 publications
(62 citation statements)
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“…M. Wen, P. Li, L. Zhang, and Y. Chen [7] developed a novel technique for predicting time series in the field of finance by reconstructing time series through higher order structures. The data set included in the proposed method are the Standard & Poor's 500 stock (S&P 500) index and the individual stocks like Google Inc. (GOOGL), International Business Machines Corporation (IBM), The Boeing Company (BA), etc.…”
Section: Literature Workmentioning
confidence: 99%
See 2 more Smart Citations
“…M. Wen, P. Li, L. Zhang, and Y. Chen [7] developed a novel technique for predicting time series in the field of finance by reconstructing time series through higher order structures. The data set included in the proposed method are the Standard & Poor's 500 stock (S&P 500) index and the individual stocks like Google Inc. (GOOGL), International Business Machines Corporation (IBM), The Boeing Company (BA), etc.…”
Section: Literature Workmentioning
confidence: 99%
“…The daily information of each sample includes high price, low price, close price, opening price, and trading volume. The stock price of apple generated each week from the first week of September 2007 to the end of August 2012 is extracted from the Yahoo finance website [12]. This data set contains the high, open, close, low and adjusted close prices of apple stock on every Monday throughout (2007)(2008)(2009)(2010)(2011)(2012).…”
Section: Datasetmentioning
confidence: 99%
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“…In the field of Machine Learning (ML), the most popular algorithm used is the Support Vector Machine (SVM), [1] the SVM has been widely used to predict the stock market trends since it is noise-tolerant and gives a decent accuracy. Other ML algorithm used is the K-Nearest Neighbour (KNN), [2] KNN has been used to predict stock market data to some extent but not with great accuracy. In the field of Deep Learning (DL), the most popular algorithms that have been used are the Artificial Neural Networks (ANN), [3] ANNs have been conventionally used to predict stock market trends but haven"t proved to be very efficient due to their limitation of data-overfitting.…”
Section: Related Workmentioning
confidence: 99%
“…The study aimed to solve two problems, using CNNs and optimizing them for stock market data. Wen et al [ 28 ] applied the CNN algorithm on noisy temporal series by frequent patterns as a new method. The results proved that the method was adequately effective and outperformed traditional signal process methods with a 4 to 7% accuracy improvement.…”
Section: Introductionmentioning
confidence: 99%