2017
DOI: 10.1007/s00500-017-2822-1
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Evolving nearest neighbor time series forecasters

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Cited by 10 publications
(13 citation statements)
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“…Several methods are developed for multistep forecasting problems, where three main strategies are, 1) Direct Multi-step Forecast Strategy, 2) Recursive Multistep Forecast Strategy, 3) Multiple Output Forecast Strategy [14]. Different ML models have been used to implement the direct strategy for multi-step forecasting tasks, for instance, the nearest neighbors [15], DT and RF [16]. This direct method involves developing a separate model for each forecast time step.…”
Section: B Multi-step Forecasting Problemmentioning
confidence: 99%
“…Several methods are developed for multistep forecasting problems, where three main strategies are, 1) Direct Multi-step Forecast Strategy, 2) Recursive Multistep Forecast Strategy, 3) Multiple Output Forecast Strategy [14]. Different ML models have been used to implement the direct strategy for multi-step forecasting tasks, for instance, the nearest neighbors [15], DT and RF [16]. This direct method involves developing a separate model for each forecast time step.…”
Section: B Multi-step Forecasting Problemmentioning
confidence: 99%
“…This strategy is considered deterministic because it uses a fixed neighborhood radius of = 1 × 10 −3 and updating = 1.2 when no nearest neighbors are found. Researchers have used Differential Evolution (DE) to optimize parameters m, τ , and simultaneously; this strategy allows us to build accurate models for time series forecasting [10,11]. Even though DE is relatively simple, multiple parameters need to be defined, i.e., boundaries for m, τ and , population size, scale factor, recombination probability, the maximum number of itera-tions, and the number of executions.…”
Section: Knn Approachesmentioning
confidence: 99%
“…Previous experimental results with synthetic chaotic time series [49], indicate that using basic principles to reconstruct the non-linear time series in phase space, perform far better predictions than the basic statistic principles. They show that the prediction quality can be improved even more by using Differential Evolution.…”
Section: Related Workmentioning
confidence: 99%
“…Differential Evolution contributes to obtain the best parameters given an specific fitness function. This hybrid method that combines Nearest Neighbors with Differential Evolution is called NNDE [49].…”
Section: Nearest Neighbors With Differential Evolution Parameter Optimentioning
confidence: 99%