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ARIMA Forecasting: Variables without a Cause

  • Michael Sack Elmaleh EMAIL logo
Published/Copyright: October 13, 2016

Abstract

ARIMA forecast methods offer short term accuracy but have severe limitations in the appraisal context. ARIMA forecasts fail to identify or model causal variables, require more data points than are usually available and are very difficult to explain to non-statisticians. Better forecast alternatives are available to appraisers.

Published Online: 2016-10-13
Published in Print: 2017-5-24

© 2017 Walter de Gruyter GmbH, Berlin/Boston

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