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The information on the author is retrieved from: Entity Facts (by DNB = German National Library data service), DBPedia and Wikidata

Rob J. Hyndman


Prof.

Alternative spellings:
Rob Hyndman
R. J. Hyndman

Profession

  • Statistiker
  • Affiliations

  • ARC Centre of Excellence for Mathematics and Statistical Frontiers
  • Monash University. Department of Econometrics and Business Statistics
  • University of Melbourne
  • External links

  • Gemeinsame Normdatei (GND) im Katalog der Deutschen Nationalbibliothek
  • Open Researcher and Contributor ID (ORCID)
  • Wikipedia (English)
  • Deutsche Digitale Bibliothek
  • NACO Authority File
  • Virtual International Authority File (VIAF)
  • Wikidata
  • International Standard Name Identifier (ISNI)

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    Robin John Hyndman FAA FASSA (born 2 May 1967) is an Australian statistician known for his work on forecasting and time series. He is Professor of Statistics at Monash University and was Editor-in-Chief of the International Journal of Forecasting from 2005–2018. In 2007 he won the Moran Medal from the Australian Academy of Science for his contributions to statistical research. In 2021 he won the from the Statistical Society of Australia. Hyndman is co-creator and proponent of the scale-independent forecast error measurement metric mean absolute scaled error (MASE). Common metrics of forecast error, such as mean absolute error, geometric mean absolute error, and mean squared error, have shortcomings related to dependence on scale of data and/or handling zeros and negative values within the data. Hyndman's MASE metric resolves these and can be used under any forecast generation method. It allows for comparison between models due to its scale-free property. Hyndman studied statistics and mathematics at the University of Melbourne, where he earned a Bachelor of Science with first class honours and a PhD. He was elected Fellow of the Academy of the Social Sciences in Australia in 2020, and Fellow of the Australian Academy of Science in 2021. (Source: DBPedia)

    Publishing years

    2
      2024
    11
      2023
    1
      2022
    7
      2021
    12
      2020
    15
      2019
    8
      2018
    6
      2017
    8
      2016
    5
      2015
    6
      2014
    1
      2013
    1
      2012
    6
      2011
    5
      2010
    5
      2009
    7
      2008
    6
      2007
    9
      2006
    9
      2005
    3
      2004
    5
      2003
    4
      2002
    4
      2001
    3
      2000
    4
      1998
    1
      1996
    1
      1995
    1
      1992

    Series

    1. Working paper / Department of Econometrics and Business Statistics, Monash University (101)
    2. Discussion paper / Tinbergen Institute (2)
    3. KOF working papers (1)
    4. CAMA working paper series (1)
    5. WIFO working papers (1)
    6. Working paper / La Trobe University, School of Economics and Finance (1)
    7. Springer series in statistics (1)
    8. International journal of forecasting (1)
    9. Working paper series (1)