4 resultados para Debt
em WestminsterResearch - UK
Resumo:
In this article I explore how the figure of debt illuminates the racial politics of welfare in neoliberal Britain. I begin by giving a reading of the simultaneous unfolding of post-war race politics and the Beveridgean welfare state, and then turn to consider the interpellative appeal of neoliberal debt to minoritiSed subjects who have, in certain respects, been de facto excluded from prevailing models of welfare citizenship. In particular, this article considers the ways in which household debt might, even as it increases social inequality, simultaneously produce ideas about equality and futurity, as well as gesture towards the possibility of post-national forms of identity and belonging. If we are to challenge the lowest-common-denominator logics of ‘capitalist realism’ it is necessary to develop orientations to the economic that are as convincing as the popular stories that circulate about the operations of the neoliberal marketplace, and which are as meaningful as the social relations they play a part in constituting. Rather than reproduce the racialized model of welfare citizenship that is implicit to the ‘defence’ of the postwar welfare state, I suggest that there are elements of prevailing neoliberal market relations that might themselves serve as a more substantial basis for expressions of racial equality. There is, in other words, something that we can learn from neoliberal debt regimes in order to develop a more egalitarian future-oriented politics of social welfare and economic redistribution.
Resumo:
The concept of guilt is seen here as debt beyond repayment. Following Derrida, the gesture of giving is placed in the economy of gift, an aneconomical gift that is not part of the exchange cycle. At the same time, guilt is linked to desire, the desire to give and to be free from guilt. Desire is described as the urge to cross over, to apprehend the non-identical and to give oneself away. In this reinforced crossing, where the improbability of giving conditions the improbability of reaching out, guilt and its impetus are found locked up in claustrophobic self-reference. For this reason, the author consults Kierkegaard and Luhmann whose contributions show that the gesture of giving acquires its relevance not so much on account of its recipient, but precisely because of the absence of such a recipient. The combination of an absent recipient and an absented giver fills the gift with an emptiness that can only be channelled back upon itself, in the autopoietics of guilt. This is exactly the fate of the law, which can deal with the guilty but never with guilt (in the above sense). In its attempt to give away guilt, the law attempts to become other than itself: justice. The improbability of crossing over becomes more obvious than ever.
Resumo:
Previous research on the prediction of fiscal aggregates has shown evidence that simple autoregressive models often provide better forecasts of fiscal variables than multivariate specifications. We argue that the multivariate models considered by previous studies are small-scale, probably burdened by overparameterization, and not robust to structural changes. Bayesian Vector Autoregressions (BVARs), on the other hand, allow the information contained in a large data set to be summarized efficiently, and can also allow for time variation in both the coefficients and the volatilities. In this paper we explore the performance of BVARs with constant and drifting coefficients for forecasting key fiscal variables such as government revenues, expenditures, and interest payments on the outstanding debt. We focus on both point and density forecasting, as assessments of a country’s fiscal stability and overall credit risk should typically be based on the specification of a whole probability distribution for the future state of the economy. Using data from the US and the largest European countries, we show that both the adoption of a large system and the introduction of time variation help in forecasting, with the former playing a relatively more important role in point forecasting, and the latter being more important for density forecasting.