Title: Recent work on revisions in the UK
1Recent work on revisions in the UK
- Robin Youll
- Director
- Short Term Output Indicators Division
- Office for National Statistics
- United Kingdom
2Overview
- Scene setting
- Why are we concerned with revisions?
- Will cover three recent developments in the UK
- Revisions triangles as a tool for identifying
causes of revision - News v . Noise debate
- Linking revised and historical series
3Why are we concerned with revisions?
- .after all they are a necessary part of the
statistical process - Two reasons to be interested
- 1. Systematic revisions
- Bias
- but beware of time dependency
- difference between tendency to revise up and
always revising up - Can benchmark annually, but may undermine purpose
of STS? - Variance
- increasing over time? news v noise (see later)
- 2. Dating the cycle
- false/missed turning points policy regret
- Credibility/reputation of NSIs
4Development 1.Taking a longitudinal view of
revisions the power of revisions triangles
- Typically, revisions analysis looks at point to
point revisions. - e.g. mean revision between time t and t12.
- Revisions triangles can be used to view the
history of particular revisions (see-SLIDE) - The longitudinal view can help us to understand
the causes of revision. - e.g. is there a tendency for first estimates (t)
to be close to previous estimates (t-1)? - In the UK we now monitor revisions using this
longitudinal approach. - Main reason for each significant revision is
recorded according to a typology (late data,
seasonal adjustment, revisions to trend
component, benchmarking, error correction, etc.) - The has allowed the identification of systematic
revisions arising from the compilation process
(rather than being data driven)
5Revisions Triangle (real time database)
6Recreation - New Data
Recreation New Data affecting SA
Education - Industry Review
Recreation - New Data
Government and other services 2002 Q2
Education - ACAs
Health Social Work - New Data Methodology
7Development 2. News v. Noise .
- So what can we do to reduce revisions?
- Our approach depends on our belief about the
underlying process which causes them. - Two schools of thought on this sometimes called
the News v. Noise debate - Broadly, later vintages become more accurate by
either - Eliminating noise
- Incorporating news
8News v. Noise Noise
- 1. Noise hypothesis
- Here, preliminary estimates are simply noisy
versions of the truth - and later vintages of data become more accurate
by eliminating measurement errors - Solution apply filtering techniques to
preliminary data to extract the truth from the
noisy series.
9Noise the theory
- 1. Noise Hypothesis
- Here preliminary estimate is equal to a later
vintage ( vintages later) plus a measurement
error ( ). -
-
- Revisions are uncorrelated with but
correlated with - i.e. there is information in the error term that
isnt in the current vintage. - Test using the regression
-
- Ho
- Also the variance of different vintages should
fall over time, so that -
-
- for all
10News v. Noise News
- 2. News hypotheses
- assumes early vintages do not reflect the fully
available information at that time. - Gains are potentially available by using this
information (e.g. external surveys). - Solution find and incorporate extra information
available at the time the preliminary estimate is
made
11News the theory
- 2. News, or efficient forecast hypothesis
- Here later vintages ( vintages later) equal
earlier vintage plus a measurement error (
). -
-
- Revisions ( ) are correlated
with but uncorrelated with - i.e. there isnt any information in the error
term that isnt already incorporated in the
current vintage. - Test using the regression
-
- Ho
- Also the variance of different vintages should
rise over time, so that -
- for all
12News v Noise results in the UK
- Standard Deviation of different data vintages
(1993q1-2002q4) - vintage GDP ISP IIP
- 25 days 0.251 0.211 0.856
- 8 weeks 0.267 0.211 0.902
- 12 weeks 0.251 0.229 0.902
- 1 year 0.296 0.266 0.913
- 2 years 0.309 0.290 0.814
- So, in the UK filtering is appropriate to the ISP
and GDP (since they conform to the News
hypothesis, and - seeking alternative data sources is appropriate
to the IIP, which conforms more closely to the
Noise hypothesis.
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14Development 3.Linking revised and historical
series
- ONS has fairly structured policy on when to
publish revisions. - This can often delay publication of known
revisions for years, because - Logistics of taking on revisions (particularly
for estimates linked to national accounts, e.g.
ISP) - Minor revisions irritate users
- But, approach to linking revised to historical
series can distort growth rates spanning the
link period - especially if growth into the link period has
been significantly revised - An example
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18Revisions policy linking on revisions
- For Monthly series this effect is most noticeable
for 3-month on 3-month growth rates based on
index levels which span the link period - For Quarterly series, quarter on same quarter a
year ago growth rates are most affected. - Solution adopted in the UK
- Identify the oldest revision to growth greater
than some value (say 0.2 points), and link growth
from that period on (Nov 05 in our example).
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21Recent work on revisions in the UK
- Robin Youll
- Director
- Short Term Output Indicators Division
- Office for National Statistics
- United Kingdom
22Example of News and Noise Hypotheses
- Examples of News v Noise.xls
23Example of News Hypothesis
24Example of Noise Hypothesis