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Analysing Forecast Adjustment Behaviour

Research Grants GR/60181/01 and GR/60198/01. Analysing Forecast Adjustment Behaviour. Michael Lawrence UNSW, Sydney, Australia Robert Fildes University of Lancaster, UK Paul Goodwin University of Bath UK. An EPSRC Research Project

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Analysing Forecast Adjustment Behaviour

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  1. Research Grants GR/60181/01 and GR/60198/01 Analysing Forecast Adjustment Behaviour Michael Lawrence UNSW, Sydney, Australia Robert Fildes University of Lancaster, UK Paul Goodwin University of Bath UK An EPSRC Research Project A collaboration between Lancaster Centre for Forecasting,, and 10+ companies, including McBride, Interbrew, Heinz

  2. Promotion: 2 for 1 Economic factors Customers £ Sales EPOS info Retailer Orders Shipments Manufacturer Information affecting the supply chain Forecast object The basic model: Forecast of Orders = f(past orders) + judgemental estimates of promotions etc. = computer forecast + judgemental adjustment

  3. Background theory • Influence of biases and heuristics • Tversky and Kahneman – Many lab & field studies • Anchor and adjustment heuristic implies anchoring on the statistical forecast and a too small adjustment • Lawrence and O’Connor – Lab studies • In time series forecasting adjustment generally too small not too large. • Hypothesis: Adjustment too big so biased high (up adjust) or low (down adjust).

  4. Mathews & Diamantopolous • Studied large warehouse operation where forecasts routinely adjusted. Found adjustments beneficial (altho often only marginal) but biased. • Lawrence, O’Connor and Edmundson • Studied forecasting practice in 13 large multinationals all using only judgement. • Forecasts biased and inefficient – some organisations worse accuracy than naïve forecast, others good. • Optimism Bias • Most widely studied and observed bias • Benefits overestimated and costs underestimated. • Hypothesis: Positive benefits (e.g. promotion) over-estimated negative impacts underestimated. • Forecasts biased and inefficient.

  5. Database of forecasts by company

  6. Analysis Methodology • Analyse by up and down adjustments • Error measures • Absolute Percentage Error: • APE = |act – fcst|/act • Forecast improvement: • FCIMP = (|act - systfc| - |act – finalfc|)/act • Note: When FCIMP is +ve adjustment has improved the forecast. • Measures of adjustment impact on accuracy • 1. Comparison of median PE’s and APE’s • 2. Forecast improvement - FCIMP

  7. Analysis Methodology 3. Validity of decision to adjust. • Conjectured steps in adjustment. (From observations of currency forecasting.) • (a) Decide if statistical computer forecast is too low or too high. • This results in a decision to adjust and a direction for the adjustment. • (b) Decide by how much to adjust the forecast. • Hence most basic adjustment measure: • How often is the direction for the adjustment correct? • Pool companies A-C as statistical properties similar.

  8. Results

  9. Observations • System forecasts much better than naïve and so form good anchor point for adjustments. • Overall, the groups selected for adjustment need it (indicated by bias of system forecast. • UP adjustments biased and make little difference to accuracy. (validated by t-test) • DOWN adjustments unbiased and make considerable improvement to accuracy.

  10. Impact of wrong side adjustment

  11. What percent of adjustments are in the right or wrong direction?

  12. Why is wrong direction picked so often? • Alternatives: • 1. No valid basis for adjustment – just an “illusion of control” affect. (Note that if the direction is picked at random, 50% will be wrong.) • 2. Timing effect. E.g. influence of promotion anticipated too soon. • Assume timing effect (or possibly learning effect?): If an adjustment is made in the period following a wrong sided adjustment, it should be more accurate.

  13. % WRONG FCIMP 45% WRONG -4.0% __ __ 33% WRONG +2.2% Wrong up adjustment (34%) 53% UP 17% NO 30% DOWN Period t t+1 After a wrong sided adjustment the accuracy of judgement is worse.

  14. % WRONG FCIMP 39% -0.13% _ _ 36% +1.6% 35% UP Wrong down adjustment (29%) 13%NO 51% DOWN Period t t+1

  15. Conclusions on wrong direction. • In period following a wrong adjustment: • Over 80% of forecasts adjusted • An UP adjustment worsens forecast. • A DOWN adjustment improves forecast. • Direction error rates generally show increase. • Timing effect does not appear responsible for wrong direction. • Illusion of control seems best explanation for increasing error rates on adjustment. • Evidence for optimism bias. • After two wrong adjustments the following period shows a similar pattern.

  16. How to improve adjustments • Incorporate restrictiveness, guidance and better feedback into software • Prevent small adjustments to system forecasts. • Prevent an UP adjustment following a wrong sided adjustment unless special reason is given. • Provide systematic feedback on results of adjustment activity. • Schedule periodic meetings to review impact of adjustments on accuracy and chart progress. • While the software can play a role, the major changes needed are organisational.

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