• DocumentCode
    3007086
  • Title

    Point and Interval Estimation Method for Auto-regressive Model with Nonnormal Error

  • Author

    Bo Mi Lim ; Jongwoo Kim ; Sung-Shick Kim ; Jun-Geol Baek

  • Author_Institution
    Sch. of Ind. Manage. Eng., Korea Univ., Seoul, South Korea
  • fYear
    2013
  • fDate
    June 27 2013-July 2 2013
  • Firstpage
    379
  • Lastpage
    386
  • Abstract
    Estimation in time series analysis aids in making a reasonable decision by providing a value for point estimation and a range of interval estimation. An auto-regressive model is designed for the time series analysis. However, the auto-regressive model may cause decreasing accuracy and prediction in estimating parameters because it uses the assumption that the distribution of error term follows a normal distribution. In reality, there are plenty of data indicating that the distribution of error term does not follow the normal distribution. Thus, we propose a method for solving this problem by using a Pearson distribution system and maximum likelihood estimation. Compared with existing methods, the proposed method can be applied to various time series data requiring high accuracy and prediction.
  • Keywords
    autoregressive processes; maximum likelihood estimation; normal distribution; time series; Pearson distribution system; autoregressive model; error term distribution; interval estimation method; maximum likelihood estimation; nonnormal error; normal distribution; parameter estimation; point estimation method; time series analysis; Correlation; Data models; Gaussian distribution; Mathematical model; Maximum likelihood estimation; Time series analysis; Auto-Regressive Model; Interval Estimation; Maximum Likelihood Estimation; Nonnormal data; Pearson Distribution System; Point Estimation;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Big Data (BigData Congress), 2013 IEEE International Congress on
  • Conference_Location
    Santa Clara, CA
  • Print_ISBN
    978-0-7695-5006-0
  • Type

    conf

  • DOI
    10.1109/BigData.Congress.2013.57
  • Filename
    6597161