• DocumentCode
    228469
  • Title

    Multiple Kernel Learning for stock price direction prediction

  • Author

    Sirohi, Amit Kumar ; Mahato, Pradeep Kumar ; Attar, Vahida

  • Author_Institution
    Dept. of Comput. Eng. & IT, Coll. of Eng. Pune, Pune, India
  • fYear
    2014
  • fDate
    1-2 Aug. 2014
  • Firstpage
    1
  • Lastpage
    4
  • Abstract
    Unstable and assumptive aspects of the securities makes it hard to predict the next day stock prices. There is no absolute indicator for financial forecasting but there are many technical indicators like simple moving average, exponential moving average, stochastic fast and slow, on balance volume for better accomplishment. It is important to have a significant and well-constructed set of features to elaborate stock trends. In this paper, we have proposed a Multiple Kernel Learning Model which predicts the daily trend of stock prices such as up or down, it comprises of 2-tier framework. In first tier, we extracted some technical indicators based on five raw elements- opening price, daily high price, daily low price, closing price and trading volume. In second tier, we built different base kernels on the extracted feature set and then combined these base kernels through Multiple Kernel learning, we have trained the model through walk forward method and predicted the movement of daily stock trend such as up or down, and then evaluated its performance. Experiment results shows that our proposed solution performs well consistently than baseline methods (Support Vector Machine) in terms of prediction accuracy for two commodities in stock market.
  • Keywords
    economic forecasting; learning (artificial intelligence); moving average processes; optimisation; pricing; stock markets; 2-tier framework; balance volume; closing price; daily stock trend movement prediction; daily-high price; daily-low price; down-trend; exponential-moving average method; feature extraction; financial forecasting; multiple kernel learning model; opening price; performance evaluation; prediction accuracy; raw elements; simple-moving average method; stochastic-fast method; stochastic-slow method; stock price direction prediction; stock trends; technical indicators; trading volume; up-trend; walk forward method; Accuracy; Conferences; Feature extraction; Kernel; Stock markets; Support vector machines; Training; Multiple Kernel Learning; Stock Price Prediction; Time Series Data;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Advances in Engineering and Technology Research (ICAETR), 2014 International Conference on
  • Conference_Location
    Unnao
  • ISSN
    2347-9337
  • Type

    conf

  • DOI
    10.1109/ICAETR.2014.7012901
  • Filename
    7012901