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tsensembler (version 0.0.5)

EMASE: Weighting Base Models by their Moving Average Squared Error

Description

This function computes the weights of the learning models using the Moving Average Squared Error (MASE) function This method provides a simple way to quantify the recent performance of each base learner and adapt the combined model accordingly.

Usage

EMASE(loss, lambda, pre_weights)

Arguments

loss

Squared error of the models at each test point;

lambda

Number of periods to average over when computing MASE;

pre_weights

pre-weights of the base models computed in the train set.

Value

The weights of the models in test time.

See Also

Other weighting base models: build_committee, get_top_models, model_recent_performance, model_weighting, select_best