• Title of article

    Machine Learning Algorithms for Time Series in Financial Markets

  • Author/Authors

    Ghasemzadeha ، Mohammad Computer Engineering Department - Yazd University , Mohammad-Karimi ، Naeimeh Computer Engineering Department - Yazd University , Ansari-Samani ، Habib Management and Economics Department - Faculty of Economics - Yazd University

  • From page
    479
  • To page
    490
  • Abstract
    This research is related to the usefulness of different machine learning methods in forecasting time series on financial markets. The main issue in this field is that economic managers and scientific society are still longing for more accurate fore-casting algorithms. Fulfilling this request leads to an increase in forecasting quali-ty and, therefore, more profitability and efficiency. In this paper, while we intro-duce the most efficient features, we will show how valuable results could be achieved by the use of a financial time series technical variables that exist on the Tehran stock market. The suggested method benefits from regression-based ma-chine learning algorithms with a focus on selecting the leading features to find the best technical variables of the inputs. The mentioned procedures were implement-ed using machine learning tools using the Python language. The dataset used in this paper was the stock information of two companies from the Tehran Stock Exchange, regarding 2008 to 2018 financial activities. Experimental results show that the selected technical features by the leading methods could find the best and most efficient values for the parameters of the algorithms. The use of those values results in forecasting with a minimum error rate for stock data.
  • Keywords
    Financial markets , Stock market , Machine Learning , Forecasting , Time series
  • Journal title
    Advances in Mathematical Finance and Applications
  • Journal title
    Advances in Mathematical Finance and Applications
  • Record number

    2523266