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arxiv: 1211.3010 · v1 · pith:6HTWOQICnew · submitted 2012-11-13 · 📊 stat.ML · cs.LG· stat.AP

Time-series Scenario Forecasting

classification 📊 stat.ML cs.LGstat.AP
keywords forecastsmethodtime-seriesalgorithmensembleforecastingphysics-basedscenario
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Many applications require the ability to judge uncertainty of time-series forecasts. Uncertainty is often specified as point-wise error bars around a mean or median forecast. Due to temporal dependencies, such a method obscures some information. We would ideally have a way to query the posterior probability of the entire time-series given the predictive variables, or at a minimum, be able to draw samples from this distribution. We use a Bayesian dictionary learning algorithm to statistically generate an ensemble of forecasts. We show that the algorithm performs as well as a physics-based ensemble method for temperature forecasts for Houston. We conclude that the method shows promise for scenario forecasting where physics-based methods are absent.

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