The Uncounted. Alex Cobham. Читать онлайн. Newlib. NEWLIB.NET

Автор: Alex Cobham
Издательство: John Wiley & Sons Limited
Серия:
Жанр произведения: Экономика
Год издания: 0
isbn: 9781509536030
Скачать книгу
from census data.

      Questions of power being complex, there are also cases when marginalized groups may seek to be uncounted precisely in order to exert some power. Any desire to be counted in order to provide a basis for curtailing inequalities will be remote, when the purpose of a state’s counting is to impose greater inequalities.8 Think of oppressed populations fighting to avoid being singled out – whether against the use of the Star of David to isolate Jews in Nazi Germany, for example, or against the use of ‘pass books’ as tools of racial discrimination in South Africa, from the eighteenth century up until the apartheid regime; or the resistance in certain cases to group identification in census surveys (the ‘I’m Spartacus’ response).9

      Hidden identity through collective pseudonyms has a long history as a tool of resistance also. Marco Deseriis tracks the use of ‘improper names’ in groups from the Luddites of the nineteenth century, to the modern-day Luther Blissett Project and the Anonymous hacker collective, and argues that they share three features:10

      1 Empowering a subaltern social group by providing a medium for identification and mutual recognition to their users.

      2 Enabling those who do not have a voice of their own to acquire a symbolic power outside the boundaries of an institutional practice.

      3 Expressing a process of subjectivation characterized by the proliferation of difference.

      Depending on the external conditions – the power faced, and its legitimacy to count or identify – the case for being uncounted, and the space to do so, will vary. There is a clear difference, however, between the ‘guerrilla’ tactics of the relatively powerless seeking to go uncounted in the face of a quantifying bureaucracy, and the exertion of power by those at the top to escape or circumvent counting.

      Inevitably, counting at the national level is imperfect. Survey and census data tend to have major flaws, as does the administrative data used for taxation and voting – and yet these are the basis for any number of crucial policy decisions about where and how to allocate resources.

      If the missing data were more or less random, any overall distortions would be limited. If, on the other hand, there were systematic patterns to the distortions, then we should be less sanguine. And, of course, it turns out that what goes uncounted is not random after all.

      Instead, the failure to count is directly related to the power of those involved. At the bottom, those who are excluded tend to be from already marginalized groups. The established weaknesses of these data include the almost universal absence of good statistics on lesbian, gay, bisexual and transgender (LGBT) populations and persons living with disabilities, as well as country-specific failures around indigenous populations and racial and ethnolinguistic groups. And the absence of good statistics can lead, in turn, to the absence of a profile for these groups in public policy discussions and prioritization decisions.

      There is important value to the process of testing and probing estimates, both to improve their quality and as part of the social legitimation of their construction. But this can also often provide cover for defenders of the status quo simply to raise doubts about the validity of the underlying concerns. In the tax justice space, this is typically expressed as the view that the big numbers are not robust, so there is no ‘pot of gold’ to be had from stopping multinationals’ tax avoidance. It is clearer now, when that view continues to be expressed despite a range of new data sources and research by independent academics and from international institutions, that much of the support for it is politically rather than technically motivated. But in the early stages of the tax justice movement, there was a genuine risk that the absence of better data could have provided the defenders of the status quo with a conclusive argument against progress.

      Or consider the ‘zombie stats’ around women’s inequality: in particular, the claims that women make up 70 per cent of the world’s (extreme income) poor, and that women own only 1 per cent of the world’s land.12 For the uncounted lobby, the fact that neither of these can be stood up by available data is evidence that supporters of women’s equality are misguided, extreme, talking about a problem that doesn’t exist, etc. For the rest of us, the fact that we (still) don’t have the data to know how extreme the income and wealth inequalities facing women are, is itself an obvious part of the problem.

      Being counted does not guarantee that inequalities will be addressed. But being uncounted certainly makes inequalities less visible, and progress less likely. James Baldwin put it better: ‘Not everything that is faced can be changed, but nothing can be changed until it is faced.’13

      At the top, inequality is hidden in three main ways. First, inequality is hidden through missing data: while the poorest groups are underrepresented in surveys, high-income households are much less likely to respond to surveys and are therefore omitted. This can be fixed by using data from tax authorities, where available, which has been seen to add significantly to observed inequality.

      Multinational companies use similar secrecy mechanisms, coupled with accounting opacity, to shift massive volumes of profits out of the tax jurisdictions where they arise. Together, individual and corporate tax abuses drain hundreds of billions of dollars in revenue from governments around the world each year, undermining the effectiveness of progressive, direct taxation – and broader attempts to hold accountable these largest of the world’s economic actors.

      The third way in which income inequality goes uncounted is more subtle, but perhaps equally poisonous. The Gini coefficient, the default measure for inequality, is inherently flawed – and in such a way that it is relatively insensitive to the tails of the distribution (the parts we care about most), and increasingly insensitive at higher levels of inequality (the times when we care most). So what is presented as a neutral,