Applying k‐nearest neighbors to time series forecasting: Two new approaches

Author:

Tajmouati Samya1ORCID,Wahbi Bouazza E. L.2,Bedoui Adel3ORCID,Abarda Abdallah4,Dakkon Mohamed5

Affiliation:

1. Mohammed V University in Rabat Rabat Morocco

2. Department of Mathematics, Faculty of Sciences Ibn Tofail University Kenitra Morocco

3. Department of Statistics University of Georgia Athens Georgia USA

4. LM2CE, Faculty of Economy and Management Hassan First University of Settat Settat Morocco

5. Research Team: Digitization, Economics, and Applied Statistics, FSJES Abdelmalek Essaâdi University Tetouan Morocco

Abstract

AbstractThe k‐nearest neighbors algorithm is one of the prominent techniques used in classification and regression. Despite its simplicity, the k‐nearest neighbors has been successfully applied in time series forecasting. However, the selection of the number of neighbors and feature selection is a daunting task. In this paper, we introduce two methodologies for forecasting time series that we refer to as Classical Parameters Tuning in Weighted Nearest Neighbors and Fast Parameters Tuning in Weighted Nearest Neighbors. The first approach uses classical parameters tuning that compares the most recent subsequence with every possible subsequence from the past of the same length. The second approach reduces the neighbors' search set, which leads to significantly reduced grid size and hence a lower computational time. To tune the models' parameters, both methods implement an approach inspired by cross‐validation for weighted nearest neighbors. We evaluate the forecasting performance and accuracy of our models. Then, we compare them to other approaches, especially, Seasonal Autoregressive Integrated Moving Average, Holt Winters, and Exponential Smoothing State Space Model. Real data examples on retail and food services sales in the United States and milk production in the United Kingdom are analyzed to demonstrate the application and efficiency of the proposed approaches.

Publisher

Wiley

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