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Density forecasting for weather derivative pricing.

Abstract:
Weather derivatives enable energy companies to protect themselves against weather risk. Weather ensemble predictions are generated from atmospheric models and consist of multiple future scenarios for a weather variable. They can be used to forecast the density of the payoff from a weather derivative. The mean of the density is the fair price of the derivative, and the distribution about the mean is important for risk management tools, such as value-at-risk models. In this empirical paper, we use 1- to 10-day-ahead temperature ensemble predictions to forecast the mean and quantiles of the density of the payoff from a 10-day heating degree day put option. The ensemble-based forecasts compare favourably with those based on a univariate time series GARCH model. Promising quantile forecasts are also produced using quantile autoregression to model the forecast error of an ensemble-based forecast for the expected payoff.

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Publisher copy:
10.1016/j.ijforecast.2005.05.004

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Publisher:
Elsevier
Journal:
International Journal of Forecasting More from this journal
Volume:
22
Issue:
1
Pages:
29 - 42
Publication date:
2006-01-01
DOI:
ISSN:
0169-2070


Language:
English
UUID:
uuid:4b9486f2-3a36-4b93-b11f-0eb4764b6ba2
Local pid:
oai:economics.ouls.ox.ac.uk:14871
Deposit date:
2011-08-16

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