Poor Numbers: The Politics of Improving GDP Statistics in Africa – By
Morten Jerven
Posted on September 26,
2013<http://africanarguments.org/2013/09/26/poor-numbers-the-politics-of-improving-gdp-statistics-in-africa-by-morten-jerven/>by
AfricanArgumentsEditor<http://africanarguments.org/author/africanargumentseditor/>

*Last week African Arguments published a
story<http://africanarguments.org/2013/09/19/poor-numbers-why-is-morten-jerven-being-prevented-from-presenting-his-research-at-uneca-by-magnus-taylor/>
** that Prof Morten Jerven, author of ‘Poor Numbers: How We Are Misled by
African Development Statistics and What to Do about
It’<http://www.cornellpress.cornell.edu/book/?gcoi=80140100939320>,
** had been blocked from presenting his research on African statistical
capacity at the UNECA. This was due to opposition to his ideas from,
notably, the South African Statistician General, Pali Lehohla. The speech
Jerven intended to give to the UNECA can be read
here<http://africanarguments.org/2013/09/26/why-we-need-to-invest-in-african-development-statistics-from-a-diagnosis-of-africas-statistical-tragedy-towards-a-statistical-renaissance-by-morten-jerven/>.
Morten Jerven responds below.
*

Discussing economic statistics and GDP estimates of African economies is
clearly important, but it’s also sensitive. Pali Lehohla and his
self-proclaimed union of ‘African Statisticians’ are allied in a
self-defeating 
campaign<http://africanarguments.org/2013/09/19/poor-numbers-why-is-morten-jerven-being-prevented-from-presenting-his-research-at-uneca-by-magnus-taylor/>
.

My book *Poor Numbers *has created an unprecedented argument for investing
in the statistical capacity of African countries. Why would Lehohla and his
silent supporters go against this? The answer is simple. Pali Lehohla and
his counterparts are doing well in the current system. Any change to the
status quo in the political economy of statistics in Africa is considered a
threat.

The allegations that I am a ‘hired gun’ or ‘that I have not done my
research’ are of course ridiculous and entirely false. With Lehohla putting
his emphasis on “stopping Jerven in his
tracks<http://africanarguments.org/2013/09/19/poor-numbers-why-is-morten-jerven-being-prevented-from-presenting-his-research-at-uneca-by-magnus-taylor/>”
before he “hijacks the African statistical agenda” the immediate danger is
that good initiatives will be suspended and cancelled. In the long term,
statistical offices in the region may struggle for survival.

Any observer of this debate is likely to draw two conclusions: The quality
of the statistics are probably not very good and some of the leaders seem
to react very aggressively rather than doing something about it.

When Bill Gates read *Poor
Numbers*<http://www.project-syndicate.org/commentary/poor-countries-need-more-accurate-gdp-data-by-bill-gates>he
concluded that it was time to invest in better GDP statistics. If he
or
other stakeholders read this particular debate, I don’t think their next
logical step is going to be – ‘And I am going to put my money on the angry
guy in who is trying to censor public debate’. I fear that the public
statements made by Lehola and his supporters seem to observers that
statistical offices are part of the problem and not the solution.

I still think any agenda that attempts to provide the public with better
statistics must engage with statistical offices and their interests. As I
describe below, these are not the only conditions that make it hard to have
an objective and open debate on African statistics.

***

When I first set out to investigate African GDP estimates in 2007, I didn’t
think the work would get much of a reception. As I document in *Poor Numbers
*, actual practitioners of national accounts were surprised that a
researcher would take interest in their work. Actual data users in the
countries concerned, such as Central Banks, were happy that such concerns
were being raised, and the consultants were relieved to talk about some of
their long-standing worries and the problems they experience.

Data disseminators, on the other hand, were usually quite reluctant to
share information, and did not (sometimes understandably) always want to
provide information on the methods used to produce the numbers. This was
generally justified on the basis of ‘ownership’ of the data and a belief
that they shouldn’t share the processes surrounding the production of the
final data because of ‘confidentiality’ (which can be frustrating, or as
one reviewer put it “[Jerven] relates chilling tales of how his attempts to
access raw data behind international institutions’ statistics met with
evasion <http://www.nature.com/nature/journal/v499/n7457/full/499150a.html>
.”

The initial response from many economists working on Africa varied between,
‘so what?…we already know this’, ‘we don’t trust or use official statistics
on Africa anyhow’ and ‘I know but what is the alternative?’ Many more
scholars in African studies and development studies, who were generally
concerned with the long-standing use of numbers on Africa as ‘facts’, were
relieved that there was finally someone who sought, not only to unveil the
real state of affairs, but genuinely wanted to answer some of the problems
that users face when trying to use the data to test their scholarly
questions.

My original intent was never to write a book about this. Initially I was
genuinely puzzled by some of the discrepancies in GDP data on Africa and,
after some deliberation, decided that I should try to systematically
collect information on how some African economies are being measured. I
conducted the research between 2007 and 2010, and wrote up the manuscript
in 2011.

As is documented in the book, my research methodology has been to combine
archival work and secondary literature with broad surveys and in-depth
interviews. As I document in the book, there is simply no way you can just
walk in the door and demand: ‘How poor are your numbers?’ Moreover, one of
the key problems is a complete lack of documentation of methods and sources
– theoretical manuals do not always match up with the practical process at
the office. It has however been possible to collect the information needed
by using a combination of methods – evaluating documents like an historian,
reading numbers like an economist and collecting metadata through personal
observations, triangulation and conversations (like a good journalist
would.)  In the introduction of *Poor Numbers* I describe these methods as
an attempt to do a ‘political ethnography’ of African economic statistics.

I had an invitation and introduction to all the offices I visited. Date and
place of interviews at statistical offices, central banks and donor
missions are documented. Between 2007 and 2011 I wrote letters, emails and
phoned all statistical offices in Sub-Saharan Africa repeatedly in order to
verify information, request access and set up interviews. As anyone who has
tried something similar can attest, the response rate is extremely low. For
all the places I did go to I had a response, a contact and an
invitation.[i]<http://africanarguments.org/2013/09/26/poor-numbers-the-politics-of-improving-gdp-statistics-in-africa-by-morten-jerven/#_edn1>

Upon arrival at all these places I went through the dissemination office to
clarify my purpose and research. At all those offices I also requested an
interview with Directors and senior management and in every case these
requests were ignored. Moreover, as anyone who has done a similar project
can tell you, you cannot access these places without an invitation and a
name. When permission to enter is given your name is duly recorded in the
big book that sits at the front desk of official buildings. I have never
needed to sneak in through any backdoor. I was welcomed in at the main gate.

When Pali Lehohla claims ‘that I have not done my research’ it is not only
completely wrong, it also stands in striking contrast to the position of
the Director in Zambia, who penned a lengthy
reaction<http://africanarguments.org/?attachment_id=12884>to
*Poor Numbers* making exactly the opposite argument. His problem is that I *
have* done my research and that I have done it well. I am sure that in
retrospect the Director wishes that he had paid closer attention to
national account statistics in Zambia so that he might have noticed or
answered my responses.

Note that neither Pali Lehohla, nor the Zambian Director, nor any of the
other reports that replicated the study I conducted in *Poor Numbers*, has
found any cause for disagreeing with the diagnosis. To understand how
African statistical institutions find themselves in the current situation
we need to understand the interplay between states, donors and consultants
– and how the demand and funding for data affects the quality of data
supplied.

*From Poor Numbers to statistical tragedy and damned lies*

The potentially controversial content of the book and its material became
clear to me when I presented part of the work in South Africa in 2011. I
documented the upward revisions in Ghana and elsewhere and showed the very
uneven application of methods and data in the African region. In response
to the talk, Shanta Devarajan, Chief Economist for Africa at the World
Bank, declared Africa’s ‘Statistical
Tragedy<http://blogs.worldbank.org/africacan/africa-s-statistical-tragedy>’.
It was a bold statement, it was not entirely accurate, but I think it was
instrumental in bringing the debate forward.

This declaration, together with the news stories emerging about GDP
revisions in Ghana, and forthcoming revision in Nigeria, made it abundantly
clear that not only was the knowledge problem bigger than many had thought,
these numbers also really matter.

In 2012, I was asked by *African Arguments* to write a summary of my
argument <http://africanarguments.org/?attachment_id=12884>, and explain in
layman terms how one country, like Ghana could go ‘from being one of the
poorest countries in the world one day to an aspiring middle-income one the
next’. My intent with the piece was to demystify the process and to lay
bare the basic discrepancies between global standards of measurement and
local challenges of availability of data and resources.

That worked to some extent. However, when the Guardian reprinted the story,
they smacked the headline: Lies, damn lies and
GDP<http://www.guardian.co.uk/business/2012/nov/20/economics-ghana>on
it. As anyone who has read that piece or my book will know, I go to
some
lengths to dispel the beliefs that there was a hidden political agenda
behind this revision. Indeed, one of the things that has struck me in the
course of discussing my book during the past year is how data users manage
to maintain an inherent suspicion of any ‘official number’. Meanwhile,
critical skills often seem to fail when it comes to thinking about the
basic problems of converting a complex reality into simple numbers. A
similar misguided gut reaction exists among scholars, who may never trust a
number from Sudan, Ghana or South Africa, but would not hesitate to use the
same number if the World Bank had recycled it.

The story travelled across to France, where an interview with me was
published with the headline
‘Le-Grand-Mensonge<http://economie.jeuneafrique.com/regions/international-panafricain/16056-statistiques-africaines-le-grand-mensonge.html>’.
At this stage it is perhaps not surprising that some actors started to
respond to this as a publicity problem. As I just stated, one problem of
providing statistics is that you always have to defend your numbers in
public – otherwise your institution might suffer a serious credibility
problem.

In the case of the African Development Bank, I think some individuals were
getting concerned that if too many questions were asked surrounding the
accuracy of the GDP numbers, then this might negatively affect the
decisions of investors. And rightly so – during this period I got frequent
calls from investment banks who wanted to know how big the Nigeria’s GDP
really was. In response to the review of *Poor Numbers* in the Financial
Times<http://www.ft.com/intl/cms/s/2/0168741a-7c4d-11e2-91d2-00144feabdc0.html#axzz2fieCV9p3>,
Mthuli Ncube, Chief Economist and Vice President, African Development Bank
Group, wrote to the newspaper that Africa’s rise was real, and despite the
uncertainty around the numbers “For investors, for visitors, for Africans
themselves, seeing is believing. The growth is tangible. Come and see for
yourself<http://www.ft.com/intl/cms/s/0/da7121ba-8802-11e2-8e3c-00144feabdc0.html#axzz2fieCV9p3>
.”

I am somewhat sympathetic to his position. However, the reason we produce
statistics is in order to be able to make informed decisions about the
magnitude and pace of economic growth. Without these statistics it is
impossible to properly analyse the distribution of income or the growth
effect on poverty.

It is not often that a book gets mention in the reports of international
organizations. *Poor Numbers* did not only make its way into the
references, but the IMF’s Regional Outlook Reports for
Africa<http://www.imf.org/external/pubs/ft/reo/2013/afr/eng/sreo0513.pdf>team,
 as well as
UNECA<http://mortenjerven.com/wp-content/uploads/2013/09/ProDoc-on-SNA_2013-09-03.pdf>and
AfDB<http://www.afdb.org/fileadmin/uploads/afdb/Documents/Publications/Economic%20Brief%20-%20Situational%20Analysis%20of%20the%20Reliability%20of%20Economic%20Statistics%20in%20Africa-%20Special%20Focus%20on%20GDP%20Measurement.pdf>,
actually carried out replication studies of my information on the
comparable statistics in African countries. The AfDB report spent most of
its time responding to the stories in the media, but also found
fundamentally the same patterns when it comes to painting a picture of the
current situation in provision of economic statistics.

The survey work done for *Poor Numbers* was undertaken in June 2011, and
double checked in November 2011. I spend 14 pages (pp. 123-137) detailing
the provenance of each and every observation in my table in Chapter 1. It
is remarkable to read the reports in the IMF and AfDB (published in May and
June 2013 respectively) and see the differences in information reported.
The AfDB has only managed to report information on base years in 34
countries (in the IMF report there is information on 45 countries) but the
information in the IMF table and the AfDB report does not cohere.

It is manifest to the knowledge problem on African development statistics
that such key disseminators of information cannot agree upon the simple
facts in the metadata on national accounts in Africa. However, these
reports, *Poor Numbers*, and even the otherwise so wildly defensive,
incorrect and paranoid statements from the directors of statistics in
Zambia and South Africa, do not actually at any point disagree with the
diagnosis. Their concern is who has delivered it and what implications it
will have for their own personal future.

*The politics of investing in statistical capacity*

When Bill Gates wrote a review of *Poor
Numbers*<http://www.project-syndicate.org/commentary/poor-countries-need-more-accurate-gdp-data-by-bill-gates>he
said: “[I]t is clear to me that we need to devote greater resources to
getting basic GDP numbers right. As Jerven argues, national statistics
offices across Africa need more support so that they can obtain and report
timelier and more accurate data.” This should be wonderful news, but the
road ahead is not that easy. It requires more than simply increased
resources – the main problem is the incentives and the political economy
surrounding the provision of statistics.

So while *Poor Numbers *launches the idea of improving the current
situation, it does point out that it is not only a question of funding – it
is about incentives and global governance of the demand for data. There is
a lot of diverging interest among international organizations. The World
Bank wants more credit for its new lending programme
STATCAP<http://web.worldbank.org/WBSITE/EXTERNAL/DATASTATISTICS/SCBEXTERNAL/0,,contentMDK:20100851%7EmenuPK:244214%7EpagePK:229544%7EpiPK:229605%7EtheSitePK:239427,00.html>.
Paris21 advocates National Statistical Development
Strategies<http://paris21.org/NSDS>.
The African Development Bank wants to find funding for a large round of
economic censuses, while UNECA wants to oversee the implementation of the
newest statistical methods for calculating GDP. These are just a few of the
programs out there, and these organizations have sought to engage *Poor
Numbers* to their benefit. Quite naturally, gaining support for ‘their’
program or ‘agenda’ sometimes comes before actually getting the job done:
improving measurements.

If you thought that there was a data revolution taking place, with the
world united towards achieving a better measurement of development, then I
am afraid you are misguided. Lack of firm facts leaves convenient room for
negotiation of the numbers when it is needed. Currently the data, if they
are available, are not timely or of the quality needed, and hamper any
serious agenda for economic governance or development planning. As any
reader of *Poor Numbers *will know, the big story in the book is governance
by ignorance.

As I have pointed out, this stands in striking contrast to the demand for
data in the development community. The most extreme version of ‘evidence
based policy’ comes from those who suggest that we tie financial rewards
directly to statistical evidence of
success.<http://international.cgdev.org/initiative/cash-delivery-aid>The
trend is that donors are increasingly demanding monitoring and data in
return for funding. In this situation, donors can ask states to provide the
data for them – with the huge gaps in data combined with blatant incentives
to distort it, the average outcome will be ‘policy driven evidence’ rather
than ‘evidence based policy’. Alternatively, donors disengage completely
from statistical offices and fund their own data collection, evaluation and
dissemination. There are marked moves in this latter direction. For
example, the USAID funded Demographic Health Surveys are increasingly being
viewed as the ‘gold standard’ and the data is increasingly used by
economists.

*Conclusion*

I am concerned about this trend.  I worry that while we demand evidence for
policy, we forego the opportunity to invest in accountability. I think it
is a mistake to think of data as a technocratic search for facts – it has
to be viewed as an exercise in building institutions. For all this talk of
‘institutions matter’ and ‘governance’ in development circles, there has
been a surprising gap in analysing the statistical office.

We need to rethink the demand for data and how we invest in data in Africa
and beyond. My focus has been on Africa because the problem is particularly
striking there. To fix the gaps we should first re-think the MDG and other
donor agendas for data and do a cost benefit analysis – what are the costs
of providing these data and what is the opportunity cost of providing these
data? The opportunity cost is often ignored. Local demand for data needs to
come into focus. A statistical office is only sustainable if it serves
local needs for information. Statistics is a public good, and we need a
good open debate on how to supply them.

It is in this light that I am so concerned about the reaction of Pali
Lehohla and his silent (or not-so-silent) allies. Ultimately, this may
undermine statistical offices in the region. What I am arguing is precisely
that we need to strengthen the statistical offices and connect them closer
to local needs for information. When one flies in a team of consultants
that hire local staff to fill in the questionnaire and the only lasting
legacy of the survey is the dataset. At that institution the staff will be
waiting for the next payday in the form of a new survey.  Maybe Lehohla and
other statisticians are worried that I am standing between them and another
payday. That is exactly what the Director of Statistics in Zambia is
accusing me of in his public letter – he worries that I am trying to
distort per diems provisions from him and his colleagues towards foreign
consultants.

I can assure him and others that I have no such agenda. My ‘agenda’ has
been to draw attention to the unevenness in statistical capacity, and open
up a discussion about how to invest in local statistical offices in a way
that is suited to local needs – designing incentives and institutions in a
manner that matches local institutions. Unfortunately, the recent events
may bring support to those who are pessimistic about the possibility of
bringing transparency and real reforms to bring better data for development
in the future. I accepted the invitation to present my work at PARIS21 in
May and at UNECA in September as a part of the public service a scholar can
contribute to the exchange of ideas. It is frustrating when other agendas
stand in the way of such an exchange. In the meantime, I take some comfort
from the many expressions of support that have been relayed to me. I hope,
when the dust settles, that we are ready for a free and open debate where
all parties feel able to take part.

*Morten Jerven is Associate Professor at the Simon Fraser University,
School for International Studies. His book **Poor
Numbers:*<http://www.cornellpress.cornell.edu/book/?GCOI=80140100939320&CFID=18764106&CFTOKEN=4f4e5eca80f4acd4-AEAD51BC-C29B-B0E5-3E59F22168A1A98D&jsessionid=843059c4d3c9127b597cc441356c12687d42>
* how we are misled by African development statistics and what to do about
it **is published by Cornell University Press.*
 ------------------------------

[i]<http://africanarguments.org/2013/09/26/poor-numbers-the-politics-of-improving-gdp-statistics-in-africa-by-morten-jerven/#_ednref1>These
countries are Ghana, Nigeria, Malawi, Uganda, Tanzania and Zambia –
in Botswana I had no invitation so my study on Botswana is based on
archival 
work<http://mortenjerven.com/wp-content/uploads/2013/02/Botswana-Jerven.pdf>.
My survey had responses from Burundi, Cameroon, Cape Verde, Guinea,
Lesotho, Mali, Mauritania, Mauritius, Morocco, Namibia, Mozambique, Niger,
Senegal, Seychelles and South Africa.

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