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      A Hybrid Method Based on Extreme Learning Machine and Wavelet Transform Denoising for Stock Prediction

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      , * ,
      Entropy
      MDPI
      stock prediction, extreme learning machine, wavelet transform, deep learning

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          Abstract

          The trend prediction of the stock is a main challenge. Accidental factors often lead to short-term sharp fluctuations in stock markets, deviating from the original normal trend. The short-term fluctuation of stock price has high noise, which is not conducive to the prediction of stock trends. Therefore, we used discrete wavelet transform (DWT)-based denoising to denoise stock data. Denoising the stock data assisted us to eliminate the influences of short-term random events on the continuous trend of the stock. The denoised data showed more stable trend characteristics and smoothness. Extreme learning machine (ELM) is one of the effective training algorithms for fully connected single-hidden-layer feedforward neural networks (SLFNs), which possesses the advantages of fast convergence, unique results, and it does not converge to a local minimum. Therefore, this paper proposed a combination of ELM- and DWT-based denoising to predict the trend of stocks. The proposed method was used to predict the trend of 400 stocks in China. The prediction results of the proposed method are a good proof of the efficacy of DWT-based denoising for stock trends, and showed an excellent performance compared to 12 machine learning algorithms (e.g., recurrent neural network (RNN) and long short-term memory (LSTM)).

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          Learning representations by back-propagating errors

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            Extreme learning machine: Theory and applications

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              The advantages of the Matthews correlation coefficient (MCC) over F1 score and accuracy in binary classification evaluation

              Background To evaluate binary classifications and their confusion matrices, scientific researchers can employ several statistical rates, accordingly to the goal of the experiment they are investigating. Despite being a crucial issue in machine learning, no widespread consensus has been reached on a unified elective chosen measure yet. Accuracy and F1 score computed on confusion matrices have been (and still are) among the most popular adopted metrics in binary classification tasks. However, these statistical measures can dangerously show overoptimistic inflated results, especially on imbalanced datasets. Results The Matthews correlation coefficient (MCC), instead, is a more reliable statistical rate which produces a high score only if the prediction obtained good results in all of the four confusion matrix categories (true positives, false negatives, true negatives, and false positives), proportionally both to the size of positive elements and the size of negative elements in the dataset. Conclusions In this article, we show how MCC produces a more informative and truthful score in evaluating binary classifications than accuracy and F1 score, by first explaining the mathematical properties, and then the asset of MCC in six synthetic use cases and in a real genomics scenario. We believe that the Matthews correlation coefficient should be preferred to accuracy and F1 score in evaluating binary classification tasks by all scientific communities.
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                Author and article information

                Journal
                Entropy (Basel)
                Entropy (Basel)
                entropy
                Entropy
                MDPI
                1099-4300
                09 April 2021
                April 2021
                : 23
                : 4
                : 440
                Affiliations
                College of Computer Science and Technology, Harbin Institute of Technology, Shenzhen 518055, China; hitsz_wudingming@ 123456outlook.com (D.W.); wushaocong2013@ 123456gmail.com (S.W.)
                Author notes
                [* ]Correspondence: xlwangsz@ 123456hit.edu.cn
                Author information
                https://orcid.org/0000-0001-9003-4252
                Article
                entropy-23-00440
                10.3390/e23040440
                8070264
                d5e24f51-12f1-4416-9352-06c5f0b6b2c2
                © 2021 by the authors.

                Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license ( https://creativecommons.org/licenses/by/4.0/).

                History
                : 08 March 2021
                : 07 April 2021
                Categories
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                stock prediction,extreme learning machine,wavelet transform,deep learning

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