A Stylized Approach to Recession Forecasting

 | Mar 13, 2012 08:44AM ET

The traditional method for recession forecasting is to find an economic indicator or composite index that has a high correlation  and adequately responds in advance to economic expansion or contraction. One then de-trends this indicator by taking a growth rate (straight or smoothed) over x-months and plotting that on a chart. When this growth rate (also called the first derivative) falls below a specific threshold you call recession. The value used for x depends on many factors but is normally chosen to maximise the recession dating capability of the resulting signalling system. It is normally taken over 3, 6, 9 or 12 months to cater for any seasonality that may be inherent in the economic indicator.

In order to de-risk ourselves from “model risk”, where such an approach might yield a recession signalling system that fails to call a recession because its growth rate signal just misses a certain threshold or when the growth rate just falls under the threshold and calls recession when there is none, we sought out a stylized methodology that would not rely on traditional growth rates for signalling recession. Essentially, we wanted a system that would eliminate model risk brought about by the use of numerical thresholds that worked well in the past but just get missed or overshot in the future “out of sample” data, resulting in false positives or false negatives.

A stylized approach looks at behaviour of the indicator in a “pattern recognition” mode and assigns binary values to observed movements to determine if the indicator is in a rising or falling regime. When the indicator is identified to be in a falling regime, we call recession. The importance of the “pattern recognition” approach is to avoid looking at numerical levels of the economic indicator or its first derivative all-together and focus on directional movement only. In such an approach, the economic indicator moving up in one month may be allocated a “1″ and when it moves down it may be allocated a “-1″. The stylized approach would observe a series of 1′s, 0′s and -1′s to come to a conclusion as to whether we are in a rising or falling regime.

The binary nature of the discrete measurements of the economic indicators’ directional movement has several advantages.

Firstly, it is less subject to “marginal errors” whereby a growth rate would miss a threshold by 0.01 and erroneously make a recession or expansion call. Discrete movements “up” or “down” (+1 or -1) are less granular than a +1.032% rise or a 0.976% fall, but a threshold looking for 3 declines in an index is far less subject to marginal errors than a numerical growth rate that must fall below 0 to signal recession. In the latter case it is quite possible for the growth rate to fall to -0.05 and trip a recession signal, only for a data revision a month later to rise the growth rate to 0.1 meaning the prior month was actually not a recession! In this example, it is a lot easier for the numerical growth rate methodology to be revised upward by 0.15 (creating the dilemma we demonstrated in previous sentence) than for the prior month in the economic indicator to change from a down month to an up month (this would be one heck of a revision!)  Also, should the stylised approach be looking at a series of monthly movements to make a regime determination it is even less likely that revisions would alter the series substantially enough to reverse a regime call.

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Secondly, as we no longer rely on growth rate calculations, we are not subject to seasonality factors and assumptions  that could bedevil such approaches.

Finally, a stylized approach is not susceptible to large “spikes” that can occur in growth rates, specifically short term ones. It is quite common for short term growth rates to plunge below zero, tripping a threshold, only to zoom up again the following month. There are many reasons these spikes can occur, especially in some leading economic data that can tend to “jump about”. A binary count of movements such as deployed by the stylized approach would not be susceptible to these spikes in data since it does not take the size of the movement into account, it only measures the direction of the movement.

Simply put, if we could find a stylized approach that examined discreet binary directional movement in an economic indicator over a certain window period to make legitimate and reliable “pattern recognition” regime change calls, and it ignored growth rate calculations of the said economic indicator altogether, we would have a nice diversified approach to traditional recession forecasting. We could then deploy the traditional “growth rate” models alongside the stylised models to enhance the accuracy of our recession calls or build consensus models for recession dating.

A stylised approach to regime change detection at no point relies on levels, values or growth rates of the economic indicator– meaning it far less susceptible to optimisation and seasonality  risks.

The Economic Headwinds Recession Forecasting Model

All 9 of the composite economic indicators used by the SuperIndex were tested for suitability to the stylized approach for an advance recession warning system. The best results were observed from the Conference Board Leading Economic Indicator (US LEI) The subsequent system we developed for the US LEI has been named the “PowerStocks RecessionAlert Economic Headwinds” model.

This model uses the new Conference Board Leading Economic Index’s’ (LEI) directional behaviour  (looking only at if it rose or fell)  over a certain time period to derive how much “headwinds” the economy is accumulating  and produces  a “Headwinds index” that ranges from 0 (no headwinds) to 11 (extreme headwinds.) It  only considers directional movement of the LEI and does not look at levels or growth rates as is traditionally the norm. It then uses a regime-changing pattern-recognition probability model to determine implied probabilities of recession in 6 months based on the level and trend (rising or falling regime) of the headwinds indicator. The model is startlingly accurate and produces a phenomenal lead to recession of 6.85 months on average, with a 4 months standard deviation.