Publication:
Techniques for Estimating the Fiscal Costs and Risks of Long-Term Output-Based Payments

Loading...
Thumbnail Image
Files in English
English PDF (810.44 KB)
124 downloads
English Text (123.02 KB)
23 downloads
Published
2005-06
ISSN
Date
2016-01-27
Author(s)
Boyle, Glenn
Editor(s)
Abstract
Long-term commitments to make output-based payments for infrastructure can encourage private investors to provide socially valuable services. Making good decisions about such commitments is difficult, however, unless the government understands the fiscal costs and risks of possible commitments. Considering voucher schemes, shadow tolls, availability payments, and access, connection, and consumption subsidies, this paper considers measures of the fiscal risks of such commitments, including the excess-payment probability and cash-flow-at-risk. Then it illustrates techniques, based on modern finance theory, for valuing payment commitments by taking account of the timing of payments and their risk characteristics. Although the paper is inevitably mathematical, it focuses on practical applications and shows how the techniques can be implemented in spreadsheets.
Link to Data Set
Citation
Boyle, Glenn; Irwin, Timothy. 2005. Techniques for Estimating the Fiscal Costs and Risks of Long-Term Output-Based Payments. OBA working paper series;no. 5. © World Bank. http://hdl.handle.net/10986/23690 License: CC BY 3.0 IGO.
Digital Object Identifier
Associated URLs
Associated content
Report Series
Other publications in this report series
Journal
Journal Volume
Journal Issue
Collections

Related items

Showing items related by metadata.

  • Publication
    PPML Estimation of Dynamic Discrete Choice Models with Aggregate Shocks
    (World Bank, Washington, DC, 2013-06) Artuc, Erhan
    This paper introduces a computationally efficient method for estimating structural parameters of dynamic discrete choice models with large choice sets. The method is based on Poisson pseudo maximum likelihood (PPML) regression, which is widely used in the international trade and migration literature to estimate the gravity equation. Unlike most of the existing methods in the literature, it does not require strong parametric assumptions on agents' expectations, thus it can accommodate macroeconomic and policy shocks. The regression requires count data as opposed to choice probabilities; therefore it can handle sparse decision transition matrices caused by small sample sizes. As an example application, the paper estimates sectoral worker mobility in the United States.
  • Publication
    Estimation of Normal Mixtures in a Nested Error Model with an Application to Small Area Estimation of Poverty and Inequality
    (World Bank Group, Washington, DC, 2014-07) Elbers, Chris; van der Weide, Roy
    This paper proposes a method for estimating distribution functions that are associated with the nested errors in linear mixed models. The estimator incorporates Empirical Bayes prediction while making minimal assumptions about the shape of the error distributions. The application presented in this paper is the small area estimation of poverty and inequality, although this denotes by no means the only application. Monte-Carlo simulations show that estimates of poverty and inequality can be severely biased when the non-normality of the errors is ignored. The bias can be as high as 2 to 3 percent on a poverty rate of 20 to 30 percent. Most of this bias is resolved when using the proposed estimator. The approach is applicable to both survey-to-census and survey-to-survey prediction.
  • Publication
    Estimating the Gravity Model When Zero Trade Flows are Frequent and Economically Determined
    (World Bank, Washington, DC, 2015-06) Pham, Cong S.; Martin, Will
    This paper evaluates the performance of alternative estimators of the gravity equation when zero trade flows result from economically-based data-generating processes with heteroscedastic residuals and potentially-omitted variables. In a standard Monte Carlo analysis, the paper finds that this combination can create seriously biased estimates in gravity models with frequencies of zero frequently observed in real-world data, and that Poisson Pseudo-Maximum-Likelihood models can be important in solving this problem. Standard threshold–Tobit estimators perform well in a Tobit-based data-generating process only if the analysis deals with the heteroscedasticity problem. When the data are generated by a Heckman sample selection model, the Zero-Inflated Poisson model appears to have the lowest bias. When the data are generated by a Helpman, Melitz, and Rubinstein-type model with heterogeneous firms, a Zero-Inflated Poisson estimator including firm numbers appears to provide the best results. Testing on real-world data for total trade throws up additional puzzles with truncated Poisson Pseudo-Maximum-Likelihood and Poisson Pseudo-Maximum-Likelihood estimators being very similar, and Zero-Inflated Poisson and truncated Poisson Pseudo-Maximum-Likelihood identical. Repeating the Monte Carlo analysis taking into account the high frequency of very small predicted trade flows in real-world data reconciles these findings and leads to specific recommendations for estimators.
  • Publication
    Estimating the Fiscal Risks and Costs of Output-Based Payments : An Overview
    (World Bank, Washington, DC, 2005-07) Boyle, Glenn; Irwin, Timothy
    Output-based payments are an important tool of government policy. Sometimes governments offer "output-based aid" to subsidize services sold to households. Because output-based payments are tied to the delivery of outputs, they have an obvious advantage over input-based payments. In agreeing to make such payments, however, governments assume a liability not unlike that created by taking on debt. Moreover, in some cases the payment amounts are subject to considerable uncertainty. As a result governments may benefit from estimating both the costs of these commitments, and the new fiscal risks they create-and comparing these costs and risks with those of alternative policies. Output-based payments come in many forms, as do the risks they present. However, measuring the risks and costs of output-based schemes is feasible but also, inevitably, mathematical. Quantifying risk necessarily involves some knowledge, and application of probability and statistics; estimating the cost of uncertain payments that occur at different points in time, requires asset pricing techniques from modern finance theory. Nevertheless, most of the important issues are conceptual, rather than technical.
  • Publication
    Micro-Level Estimation of Welfare
    (World Bank, Washington, DC, 2002-10) Elbers, Chris; Lanjouw, Jean O.; Lanjouw, Peter
    The authors construct and derive the properties of estimators of welfare that take advantage of the detailed information about living standards available in small household surveys and the comprehensive coverage of a census or large sample. By combining the strengths of each, the estimators can be used at a remarkably disaggregated level. They have a clear interpretation, are mutually comparable, and can be assessed for reliability using standard statistical theory. Using data from Ecuador, the authors obtain estimates of welfare measures, some of which are quite reliable for populations as small as 15,000 households--a "town." They provide simple illustrations of their use. Such estimates open up the possibility of testing, at a more convincing intra-country level, the many recent models relating welfare distributions to growth and a variety of socioeconomic and political outcomes.

Users also downloaded

Showing related downloaded files

  • Publication
    Costa Rica SCD Update (June 2023)
    (Washington, DC: World Bank, 2023-08-11) World Bank
    This note provides an update on the World Bank’s 2015 Systematic Country Diagnostic (SCD) of Costa Rica. The SCD is a core analytical product of the World Bank and a key input underlying the World Bank partnership framework with client countries. This SCD update is based on consultations with counterparts in Costa Rica and with World Bank sectoral leads and on data analysis and a literature review. The update examines the main development challenges in the country, and it describes high-level outcomes that, if achieved, will contribute sustainably to reducing poverty and promoting shared prosperity. Annex A provides background on the process of preparing this SCD update. Annex B offers a schematic overview of key developments since the publication of the original SCD, developments that underlay the narrative of the update. Annex C outlines some of the data and evidence gaps that the team encountered while drafting the SCD update.
  • Publication
    Commodity Markets Outlook, October 2023
    (Washington, DC: World Bank, 2023-10-30) World Bank
    The conflict in the Middle East—the latest of an extraordinary series of shocks in recent years—has heightened geopolitical risks for commodity markets, in an already uncertain global environment. Before the conflict began, voluntary oil supply withdrawals by OPEC+ producers pushed energy prices up 9 percent in the third quarter. As a result, the World Bank’s commodity price index rose 5 percent over that period and is now 45 percent above its 2015-19 average. For now, the war’s impact on commodity prices have been muted. Prices of oil and gold have risen moderately, but most other commodity prices have remained relatively stable. Nevertheless, history suggests that an escalation of the conflict represents a major risk that could lead to surging prices of oil and other commodities. A Special Focus section provides a preliminary assessment of the potential impact of the conflict on commodity prices. It finds that the effects of the conflict are likely to be limited, assuming the conflict does not widen. Under that assumption, the baseline forecast calls for commodity prices to decline slightly over the next two years. If the conflict does escalate, the assessment also includes what might happen under three risk scenarios, relying upon historical precedents to estimate the effects of small, moderate, and large disruptions to the global oil supply. The magnitude of the effects will depend on the duration and scale of the supply disruptions.
  • Publication
    Social Dimensions of Climate Change : Equity and Vulnerability in a Warming World
    (World Bank, 2010) Norton, Andrew; Mearns, Robin; Mearns, Robin; Norton, Andrew
    Climate change is widely acknowledged as foremost among the formidable challenges facing the international community in the 21st century. It poses challenges to fundamental elements of our understanding of appropriate goals for social and economic policy, such as the connection of prosperity, growth, equity, and sustainable development. This volume seeks to establish an agenda for research and action built on an enhanced understanding of the relationship between climate change and the key social dimensions of vulnerability, social justice, and equity. The volume is organized as follows. This introductory chapter first sets the scene by framing climate change as an issue of social justice at multiple levels, and by highlighting equity and vulnerability as the central organizing themes of an agenda on the social dimensions of climate change. Chapter two leads off with a review of existing theories and frameworks for understanding vulnerability, drawing out implications for pro-poor climate policy. Understanding the multilayered causal structure of vulnerability then can assist in identifying entry points for pro-poor climate policy at multiple levels. Building on such analytical approaches, chapters three and four, respectively, consider the implications of climate change for armed conflict and for migration. Those chapters are followed by a discussion of two of the most important social cleavages that characterize distinct forms of vulnerability to climate change and climate action: gender (chapter five) and ethnicity or indigenous identity (chapter six), in the latter case, focusing on the role of indigenous knowledge in crafting climate response measures in the Latin American and Caribbean region. Chapter seven highlights the important mediating role of local institutions in achieving more equitable, pro-poor outcomes from efforts to support adaptation to climate change. Chapter eight examines the implications of climate change for agrarian societies living in dry-land areas of the developing world, and chapter nine does the same for those living in urban centers. Chapter ten considers the role of social policy instruments in supporting pro-poor adaptation to climate change; and it argues for a focus on 'no-regrets' options that integrate adaptation with existing development approaches, albeit with modifications to take better account of the ways in which climate variables interact with other drivers of vulnerability. Finally, chapter eleven turns to the implications of climate policy and action for forest areas and forest people.
  • Publication
    Designing a Multi-Stakeholder Results Framework : A Toolkit to Guide Participatory Diagnostics and Planning for Stronger Results and Effectiveness
    (World Bank, Washington, DC, 2013-11) World Bank Institute
    This toolkit provides guidance to strengthen the results and effectiveness of multi-stakeholder development planning, including practical tools and processes. The toolkit guides collaborative steps, such as setting goals, diagnosing institutional problems and monitoring outcomes, all to produce a multi-stakeholder, outcome-based results framework to prepare a development strategy or plan and to implement with a strong result focus. It also includes guidance to use the results framework to highlight potentially high-impact areas for strengthening multi-stakeholder activities and to integrate monitoring and budget planning to a common set of outcomes. The toolkit gives special attention to the fragile context for development practitioners working in this area. The toolkit modules provide customizable resources to create a multi-stakeholder, outcome-based results framework. The modules can be used together as a complete resource or separately, focusing on modules that are of immediate interest. Although WBI originally developed the modules to support strategy design at the national level, they can also guide multi-stakeholder planning for results in other settings or key sectors where actors have diverse perspectives, with appropriate adjustments.
  • Publication
    Digital Africa
    (Washington, DC: World Bank, 2023-03-13) Begazo, Tania; Dutz, Mark Andrew; Blimpo, Moussa
    All African countries need better and more jobs for their growing populations. "Digital Africa: Technological Transformation for Jobs" shows that broader use of productivity-enhancing, digital technologies by enterprises and households is imperative to generate such jobs, including for lower-skilled people. At the same time, it can support not only countries’ short-term objective of postpandemic economic recovery but also their vision of economic transformation with more inclusive growth. These outcomes are not automatic, however. Mobile internet availability has increased throughout the continent in recent years, but Africa’s uptake gap is the highest in the world. Areas with at least 3G mobile internet service now cover 84 percent of Africa’s population, but only 22 percent uses such services. And the average African business lags in the use of smartphones and computers as well as more sophisticated digital technologies that catalyze further productivity gains. Two issues explain the usage gap: affordability of these new technologies and willingness to use them. For the 40 percent of Africans below the extreme poverty line, mobile data plans alone would cost one-third of their incomes—in addition to the price of access devices, apps, and electricity. Data plans for small- and medium-size businesses are also more expensive than in other regions. Moreover, shortcomings in the quality of internet services—and in the supply of attractive, skills-appropriate apps that promote entrepreneurship and raise earnings—dampen people’s willingness to use them. For those countries already using these technologies, the development payoffs are significant. New empirical studies for this report add to the rapidly growing evidence that mobile internet availability directly raises enterprise productivity, increases jobs, and reduces poverty throughout Africa. To realize these and other benefits more widely, Africa’s countries must implement complementary and mutually reinforcing policies to strengthen both consumers’ ability to pay and willingness to use digital technologies. These interventions must prioritize productive use to generate large numbers of inclusive jobs in a region poised to benefit from a massive, youthful workforce—one projected to become the world’s largest by the end of this century.