Class SimulatedAnealingMinimizer
java.lang.Object
org.elasticsearch.search.aggregations.pipeline.SimulatedAnealingMinimizer
A cost minimizer which will fit a MovAvgModel to the data.
This optimizer uses naive simulated annealing. Random solutions in the problem space
are generated, compared against the last period of data, and the least absolute deviation
is recorded as a cost.
If the new cost is better than the old cost, the new coefficients are chosen. If the new
solution is worse, there is a temperature-dependent probability it will be randomly selected
anyway. This allows the algo to sample the problem space widely. As iterations progress,
the temperature decreases and the algorithm rejects poor solutions more regularly,
theoretically honing in on a global minimum.
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Constructor Summary
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Method Summary
Modifier and TypeMethodDescriptionstatic MovAvgModel
minimize(MovAvgModel model, EvictingQueue<Double> train, double[] test)
Runs the simulated annealing algorithm and produces a model with new coefficients that, theoretically fit the data better and generalizes to future forecasts without overfitting.
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Constructor Details
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SimulatedAnealingMinimizer
public SimulatedAnealingMinimizer()
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Method Details
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minimize
Runs the simulated annealing algorithm and produces a model with new coefficients that, theoretically fit the data better and generalizes to future forecasts without overfitting.- Parameters:
model
- The MovAvgModel to be optimized fortrain
- A training set provided to the model, which predictions will be generated fromtest
- A test set of data to compare the predictions against and derive a cost for the model- Returns:
- A new, minimized model that (theoretically) better fits the data
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