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result(s) for
"Zelenko, Ivan, author"
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A financing facility for low-carbon development
by
Ambrosi, Philippe
,
Zelenko, Ivan
,
World Bank
in
ABATEMENT COST
,
ABATEMENT COSTS
,
ABATEMENT EFFORT
2010
The reality of climate change associated with anthropogenic emissions is now widely acknowledged by the scientific community. Its potential devastating future harms are equally well perceived and as stated in the Copenhagen Accord major nations agree on the need to jointly and urgently combat climate change. The international community is also quite aware that stabilizing atmospheric concentrations of green-house gases (GHG) at supportable levels will require a drastic reduction in GHG emissions within a limited period of time. Undertaking such an enormous effort triggers several interlinked challenges: (1) technically mitigating GHG emissions to the required level; (2) implementing these solutions in countries where the required amount of emission reduction is most realistically and efficiently achievable in particular through involving and using in full the large potential of developing countries; and (3) mobilizing the large amount of financing needed to ensure that the corresponding projects and programs can be effectively implemented. Furthermore, these challenges must be simultaneously addressed in a way that is acceptable to all the parties involved. This means in particulars that any arrangement designed to meet the global GHG emission reduction challenge must be consistent with the principle of the common but differentiated responsibilities of developed and developing countries.
What determines U.S. swap spreads?
by
Shi, Lishan
,
Kobor, Adam
,
Zelenko, Ivan
in
FINANCIAL ANALYSIS; STATISTICS; MODELS; ERROR CORRECTION MODELS; COINTEGRATION; SWAP TRANSACTIONS; TREASURY BONDS; YIELD INCREASE; MORTGAGE-BACKED SECURITIES; ANALYTICAL METHODS
,
Interest rates
,
Interest rates -- Mathematical models
2005
This title examines the evolution of the U.S. interest swap market. It reviews the theory and past empirical studies on U.S. swap spreads and estimates an error correction model for maturities of 2-, 5- and 10-year over the period 19942004. Financial theory depicts swaps as contracts indexed on LIBOR rates, rendered almost free of counterparty default risk by mark-to-market and collateralization. Swap spreads reflect the LIBOR credit quality (credit component) and a liquidity convenience premium present in Treasury rates (liquidity component). Multifactor models which were estimated on observed swap rates highlighted the central role played by the liquidity component in explaining swap spread dynamics over the past fifteen years. They also found, however, some puzzling empirical results. Statistical models, on the other hand, mainly based on market analysis, faced technical difficulties, arising from the presence of regime changes, the non-stationarity in swap spreads, and the co-existence of long-term and shorter-term determinants. Against this background, the authors applied the error correction methodology based on the concept of cointegration. They find that U.S. dollar swap spreads and the supply of U.S. Treasury bonds are cointegrated, suggesting that the Treasury supply is a key determinant on a long-term horizon. They then estimate an error correction model which integrates this long-term relationship with the influence of four shorter-term determinants: the AA spread, the repo rate, the difference between on-the-run and off-the-run yields, and the duration of mortgage backed securities. The error correction model fits observed swap spreads quite well over the sample period. The authors then illustrate how the same model can be used to carry out scenario analysis.