Enhancing Algorithm Performance Understanding through tsMorph: Generating Semi-Synthetic Time Series for Robust Forecasting Evaluation
Time series forecasting is a subject of significant scientific and industrial importance. Despite the widespread utilization of forecasting methods, there is a dearth of research aimed at comprehending the conditions under which these methods yield favorable or unfavorable performances. Empirical st...
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
03.12.2023
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Subjects | |
Online Access | Get full text |
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Summary: | Time series forecasting is a subject of significant scientific and industrial
importance. Despite the widespread utilization of forecasting methods, there is
a dearth of research aimed at comprehending the conditions under which these
methods yield favorable or unfavorable performances. Empirical studies,
although common, are challenged by the limited availability of time series
datasets, restricting the extraction of reliable insights. To address this
limitation, we present tsMorph, a tool for generating semi-synthetic time
series through dataset morphing. tsMorph works by creating a sequence of
datasets from two original datasets. The characteristics of the generated
datasets progressively depart from those of one of the datasets and converge
toward the attributes of the other dataset. This method provides a valuable
alternative for obtaining substantial datasets. In this paper, we show the
benefits of tsMorph by assessing the predictive performance of the Long
Short-Term Memory Network and DeepAR forecasting algorithms. The time series
used for the experiments comes from the NN5 Competition. The experimental
results provide important insights. Notably, the performances of the two
algorithms improve proportionally with the frequency of the time series. These
experiments confirm that tsMorph can be an effective tool for better
understanding the behavior of forecasting algorithms, delivering a pathway to
overcoming the limitations posed by empirical studies and enabling more
extensive and reliable experiments. |
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DOI: | 10.48550/arxiv.2312.01344 |