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The quality
of statistics can be defined with reference to several criteria:
-
relevance
of statistical concepts
-
accuracy
-
timeliness
-
accessibility
and clarity of information
-
comparability
of statistics
-
coherence
-
completeness/coverage
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The above elements are
those most frequently considered in Eurostat and are also widely acknowledged.
Although not measures
of quality, the resources available for the production of statistics
and the burden of form-filling placed on respondents act as constraints
on quality. When assessing the ability of a Statistical Office to comply
with quality guidelines, it is necessary to take these into account.
In the following
analysis the general description of each quality criterion (in italics)
is followed by a more specific comment relating particularly to the Oil
Data Exercise.
1. Relevance
Relevance in
statistics is assured when statistical concepts meet users' needs. The
identification of users and their expectations is therefore necessary.
In the case of
the joint oil data exercise the relevance of statistical concepts and
users’ expectations is assured, as the questionnaire was drafted
in close collaboration with users (Bangkok, 2001). It contains the minimum
and most important (relevant) data on oil supply, taking into account
resources available and burden on respondents (see above).
2. Accuracy
Accuracy is defined
as the closeness between the estimated value and the (unknown) true population
value. Assessing the accuracy of an estimate involves analysing the total
error associated with the estimate.
The accuracy of
the information supplied can be assessed at two levels.
First, at an international
organisations’ level, time series’ revisions may be
evaluated comparing m-2 data with m-1 data provided during the previous
month. The number and size of revisions can measure data accuracy
at m-1. Data collected as a result of this exercise can also be compared
with other data sources. In the EU and OECD Member States the use of
the Monthly Oil Statistics system provides a basis for error evaluation.
OPEC Member States also collect monthly oil statistics on a regular
basis. Other organisations, however, do not have such a reference system
(APEC collects quarterly oil statistics) and in such cases the evaluation
of the accuracy of estimates is more difficult. Finally, internal questionnaire
checks of information supplied could be performed to ensure coherency
(production + imports – exports +/- stock change for up/down data).
However, information collected by means of the questionnaire cannot
fully relate upstream and downstream data in order to obtain a balance,
as in the case of MOS, because of a lack of detail (NGL transfers, rebrands
across products, refinery fuelling, etc.)
Second, at country
level, data submitted monthly contain both reported information (hard
data) and estimates. Knowing the split (%) between the two is helpful
in assessing the accuracy of the overall data supplied. The method or
assumption on which these estimates, when required, are based, in each
country and for each entry, is also very useful for assessing accuracy.
A task of international organisations could be an exchange of information
on estimation practices between Member States.
3. Timeliness
Most users want
up-to-date figures that are published frequently and on time (according
to users’ needs) at pre-established dates.
Timeliness depends
on data availability at national level. The whole process of data collection,
editing, consolidation and dissemination has to be kept under control
in order to minimise the processing period. There is a trade-off between
timeliness and accuracy that must be optimised for obtaining the best
possible results.
The aim of the
Joint Oil Data Exercise is to provide timely data. Many countries are
able to report m-2 data for most flows and products, with some difficulty
for trade data. Apart from OECD countries, only a few countries, albeit
large ones (e.g. Saudi Arabia, Russia and Brazil), are currently in a
position to report m-1 data. Information at m-1 is available in all EU/OECD
Member States. The value of this exercise, however, is to have all
Organisations’ Member States’ data available at m-1 in order
to provide data users with timely oil market information.
A useful step
in improving timeliness is the lifting of administrative and communication
burdens for data transmission, where such a burden exists.
4. Accessibility
and clarity of information
Statistical data
have most value when they are easily accessible by users, are available
in the form users desire and are adequately documented. Assistance in
using and interpreting the statistics should also be forthcoming from
the providers.
As agreed at the
meeting in Vienna last year a mechanism would be put in place to enable
exchanges of responses and data received from the countries. However
it is acknowledged that a rule of confidentiality should be established
and data should not be disclosed for any other purpose or to any
other party. There is no particular problem to report in the exchanging
of data between international organisations. Eurostat is, however, examining
the possibility of disseminating data for EU countries together with
other short-term economic indicators in the near future.
5. Comparability
of statistics
Statistics for
a given characteristic have the greatest usefulness when they enable
reliable comparisons of values across space and over time.
The harmonisation
of definitions and conversion factors for collecting harmonised and comparable
statistics was achieved. The methods and definitions used by each international
organisation were compared and documented extensively. On this basis
common definitions were agreed and proposed for the data collected with
the oil questionnaire for this exercise. To assure comparability of statistics,
however, international organisations must be sure that Member States
understand, respect and apply these definitions when filling-in the questionnaire.
Regular contacts with national statisticians as well as training may
ensure understanding of methodology and definitions to be used. Finally, time
series’ analysis is also a useful tool for comparability of some
of the data requested.
6. Coherence
Coherence is
the measure of the extent to which one set of statistical characteristics
agree with an other and can be used together (with each other) or as
an alternative (to each other). The messages that statistics convey to
users will then be coherent, or at least will not contradict each other.
To assess the
coherency of the statistics collected, comparisons with other statistics
relating to the Joint Oil Exercise data could be made, e.g. comparisons
with Monthly Oil Statistics and, at a later stage, Annual Oil Statistics
for EU/OECD Member States or monthly and quarterly statistics of other
international organisations (also described under 2. 'Accuracy').
7. Completeness/coverage
The component
of completeness reflects the extent to which the statistical system in
place answers the users’ needs and priorities by comparing all
user demands with the availability of statistics.
Two aspects of
completeness are considered here. On the one hand coverage or participation
of Member Countries in the exercise and on the other, completeness
in terms of filling-in data in the monthly questionnaire. Although the
aspect of coverage would, by definition, fall under the heading of accuracy,
it is examined here as this is considered more appropriate for this particular
exercise.
As far as coverage
is concerned, based on reports from the organisations, 55 countries have
already participated in the exercise. This represents over 70% of world
oil production and over 80% of world oil demand. Taking into account
that the exercise was only launched in June, this result is positive
and encouraging. However, the exercise will become of real value only
when over 90% of both production and consumption are covered. For APEC,
15out of 21 Member States participated in this exercise. Key consumer
and production countries like Russia and China joined the exercise; however,
Indonesia, Malaysia and Singapore have not yet participated. For Eurostat/IEA
all 29 Member States are now participating. For OLADE 10 out of 26 Latin
American Countries participated in the exercise. Although this is a relatively
low number, almost all the key OLADE countries participated (Mexico,
Brazil, Argentina, Chile). The only key country that has not yet participated
is Venezuela. For OPEC, five (Iran, Libya, Nigeria, Qatar, and Saudi
Arabia) out of 11 Member States participated, while six countries including
Venezuela and Indonesia have not yet participated. Finally, for
the UN, the Statistics Office of the United Nations is in charge
of collecting data for nine countries, which do not belong to any of
the five other organisations. Despite communication difficulties, the
UN was successful in ensuring some kind of involvement from Angola, Egypt,
Gabon, India, Syria, and South Africa.
Other than coverage, completeness could also be perceived
in terms of the number of entries filled-in in the questionnaires received.
If this is the case international organisations should examine particular
areas of non-availability of information and propose solutions (more clear
or precise definitions, training of statisticians, estimation methods, etc.).
Completeness of the questionnaire ranks from very good for many OECD and
other countries to poor for some of the UN countries.
8. The way forward
Transparency requires
not only availability but also reliability of data. In the first phase
of the Joint Oil Data Exercise, most efforts were concentrated on obtaining
the required information. Quality control of available data should be
the focus of the second phase.
The aim of assessing the quality of information collected
is twofold. On the one hand it will provide users with the information necessary
to evaluate and assess the certainty of the analysis and conclusions drawn
on the basis of the basic data. On the other hand, quality control by the
assessment of each quality component will identify specific and systematic
action to be undertaken for the improvement of the information collected.
A task for international organisations is to identify the areas where improvement
is required, propose solutions and assist the transfer of knowledge and methods
(e.g. methods for making estimations) between countries.
As an outcome of the examination of each quality component
some proposals for future actions are listed here:
Relevance:
No particular problems are identified here so no action is
proposed.
Accuracy:
The estimated part of each item of information (entry) reported
could be obtained from Member States. This could be a one-off exercise. As
production data (discrete sources of information fields, terminals, refineries)
are easier to obtain, this exercise could concentrate on stocks and trade.
The error involved in short-term estimates may be evaluated with revisions’ analyses
(m-1, m-2) as well as analyses of the size of statistical differences and
comparisons with other data sources. The exchange of information on national
methods for estimations may also be helpful.
Other points for discussion:
Timeliness
Additional
effort is required from some countries to respect the m-1 deadline.
Accessibility
and clarity of the information
Organisations
not disseminating data collected should examine how to do so.
Comparability
of statistics
Training
sessions may be organised
Coherence
Data comparison with
other statistics (MOS, Quarterly, etc.)
Completeness
All
flows need to be reported. The main problem is with the availability of
data on stocks.
Coverage
The remaining
key players need to be brought on board, particularly Malaysia
and Singapore for APEC; the six remaining OPEC countries; and a few Caribbean
countries where large storage capacities exist.
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