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Friday, October 2, 2009

Was it Nominal or Real?

Scott Sumner has been arguing for some time that the current recession mutated from a mild downturn in early 2008 to a sharp contraction in late 2008 and early 2009 because of a nominal shock, not a real one. Specifically, he has been making the case that monetary policy effectively tightened in late 2008 and, as a result, nominal spending collapsed and pulled down an already weakened economy. According to this view, real shocks like the one coming from the financial crisis or the spike in oil prices, which were important in starting the recession, cannot explain the severity of the downturn that began in late 2008. As readers of this blog know, I have been sympathetic to this view as can be seen here and here. Many observers, however, do not buy it or if they do find it plausible refuse to endorse it due to the lack of empirical evidence. This post is my attempt to shed some light on this debate by using some rigorous (albeit imperfect) empirical methods to tease out what shocks drove the collapse in nominal spending. This essay is in some ways an extension of what I did earlier this week, but it is motivated more by the need for empirical evidence. I won't claim it is conclusive, but it is a start.

In order to uncover the shocks that drove the collapse in nominal spending, I turned to a vector autoregression that as a base line model included expected future inflation, nominal spending, and spreads on corporates yields. The expected future inflation data comes from the Philadelphia Fed's survey of economic forecasters, nominal spending is final sales to domestic purchasers, and corporate spreads are the difference between the yield on BAA and AAA corporate bonds. The reasons for using these variables is as follows. First, Scott has been arguing that the collapse of expected future inflation in late 2008 reflected an effective tightening of monetary policy that translated into reduction of current nominal spending. In other words, the market saw deflationary pressures on the horizon and immediately cut back on spending. Second, the corporate spreads provide a convenient measure of the financial crisis and should control for any collapse in nominal spending coming from a negative financial shock. The data for these variables run from 1971:Q1 thru 2009:Q2.

The VAR was specified and estimated in a conventional manner.* With the VAR estimated I then did a historical decomposition which decomposes or attributes the forecast error for a particular series--in this case the nominal spending growth rate--into shocks or non-forecasted movements in other series. In the baseline model, the other series are expected future inflation and the financial crisis. In other words, this exercise shows how much of the non-forecasted movements in nominal spending can be explained by non-forecasted movements in expected future inflation. The figure below graphs the results of this exercise. In this figure, the other series contribution to the forecast error--the difference the actual and forecasted nominal spending growth rate--is shown by the dashed lines. The closer a dashed line is to the solid red line the more of the forecast error is explained by that shock: (Click on figure to enlarge)


In this figure we see that both the expected inflation shock and financial system shock were important in the collapse of nominal spending. At its peak, the expected inflation shock explains 50% of the decline in the nominal spending shock during the time in question. This baseline model, however, ignores the oil shock and its potential contribution to the collapse in nominal spending. The VAR was reestimated, therefore, with oil prices and generated the following results: (Click on figure to enlarge)

Here the expected inflation shock is still important, but now only explains at most 31% of the decline in nominal spending. The financial shock becomes more important and oil itself is non-trivial in explaining the decline in nominal spending.

One problem with the above analysis is that it assumes the change in expected inflation is a good measure of the stance of monetary policy. I have argued elsewhere on this blog that a better measure is the difference between the nominal spending growth rate and the federal funds rates. I redid the model with this measure of the stance of monetary policy and this is what I found: (Click on figure to enlarge)


With this measure, monetary policy explains 95% of the decline in nominal spending for 2008:Q3, 78% in 2008:Q4, and 31% in 2009:Q1. This last figure confirms Scott's story. Of course, it assumes the monetary policy measure outlined above is actually measuring the stance of monetary policy. Note everyone will agree, but I certainly believe it is. To summarize the findings from the above figures the table below list the % contribution to the decline in nominal spending growth rate coming from the different measures representing monetary policy:


*The VAR had 5 lags to remove serial correlations and the variables were all in rate form so no unit root problem.

Update: Scott Sumner responds here.

6 comments:

  1. I think you should use total final sales rather than total sales to domestic purchasers. Well, maybe I should ask first. Why don't you want to count exports?

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  2. Maybe I should...I was thinking of stabilzing nominal spending in terms of domestic demand.

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  3. http://www.ashraflaidi.com/articles/choppy-dollar-rebound-ahead.asp

    Has a post showing Jun 2008, the oil peak, thereafter the down hill in oil price. Oct 2008, the ten year yield tracked oil, on the way down. So the ten year yield was four moths different.

    Looking at David's nominal spending, I see those two movements, but is the dashed line for oil forecast still predicting higher nominal prices in Q3 2008? I might be misreading the oil forecast from Dave's work, but it seems to continue pointing north, just based on general inflation expectations. By Oct 2008, The error term might be very large.

    A better question, does the Var predict a sudden deflation?

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  4. There's a fascinating look at the simultaneous crisis in the UK in Oct 2008 by Tim Congdon in Standpoint magazine (June 2009), in which he blames the crisis on the government's bank recapitalization program:

    The problem with last October's bank recapitalisation exercise was that it capsized the British economy. (The same comment is true of similar exercises in other economies, but there is no space here to go into details.) The warnings of a big recession were particularly foolish and counter-productive, since they caused an abrupt step downwards in business expectations. The shock to the banks was so sudden and severe that they reacted not by increasing the availability of credit, as officialdom had intended, but by restricting it further. (The Bank of England publishes a monthly series for "sterling unused credit facilities". It had started falling in mid-2007, but the pace of decline accelerated in the immediate aftermath of the bank recapitalisation exercise.)

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  5. However, while the autumn crisis of 08 is fascinating, ultimately what marks an economist as an economist is the knowledge that its real magnitudes that matter. And the root of America's national distress is the decline in America's potential GDP growth path and feeble job creation over the last decade. The lax monetary policy that laid the ground for the crisis was in response to that real weakness.

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  6. Professor,

    maybe I am a bit too late with the question, but here it goes:

    I see that the generated Variance decomposition is without the effect from the NGDP itself on the forecast errors; from my personal tries and usage of this feature, the program always includes the variable, whose forecast error is explained, as one of the factors affecting itself.

    So my question is: have you somehow inhibited this procedure, or is the forecasted variable included under the category "Other"? If the latter, from my personal experience the effect is bigger, although it depends on the ordering of variables.

    Thank You for the help.

    ReplyDelete