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Forecasting the business cycle using survey data
Authors:Lars-Erik ller
Institution:Lars-Erik Öller
Abstract:Regular business survey data are published as percentages of firms predicting higher, equal or lower values of some reference variable. Time series of such percentages do not fit production data too well. Univariate models often produce forecasts which are just as accurarate. Still, surveys contain anticipative judgement which, when combined with univariate modeling and proper filtering, may produce a good indicator for business cycle turning points. The way survey data are transformed so as to fit statistics on production seems not to be of much importance. A case study of the Finnish forest industry is offered as an example.
Keywords:Turning point prediction  Carlson-Parking transform  Exponential smoothing  Combining forecasts
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