Review of automated time series forecasting pipelines
Stefan Meisenbacher, Marian Turowski, Kaleb Phipps, Martin R\"atz,, Dirk M\"uller, Veit Hagenmeyer, Ralf Mikut

TL;DR
This paper reviews existing methods for automating the entire time series forecasting pipeline, highlighting current limitations and emphasizing the need for holistic automation to enable large-scale applications.
Contribution
It provides a comprehensive comparison of automation techniques across all pipeline sections and discusses how to integrate them effectively.
Findings
Most studies cover only 2-3 pipeline sections
Holistic automation of all pipeline steps is lacking
Future research should focus on integrated automation approaches
Abstract
Time series forecasting is fundamental for various use cases in different domains such as energy systems and economics. Creating a forecasting model for a specific use case requires an iterative and complex design process. The typical design process includes the five sections (1) data pre-processing, (2) feature engineering, (3) hyperparameter optimization, (4) forecasting method selection, and (5) forecast ensembling, which are commonly organized in a pipeline structure. One promising approach to handle the ever-growing demand for time series forecasts is automating this design process. The present paper, thus, analyzes the existing literature on automated time series forecasting pipelines to investigate how to automate the design process of forecasting models. Thereby, we consider both Automated Machine Learning (AutoML) and automated statistical forecasting methods in a single…
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