2023
DOI: 10.17586/2226-1494-2023-23-1-105-111
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Probabilistic criteria for time-series predictability estimation

Abstract: Assessing the time series predictability is necessary for forecasting models validating, for classifying series to optimize the choice of the model and its parameters, and for analyzing the results. The difficulties in assessing predictability occur due to large heteroscedasticity of errors obtained when predicting several series of different nature and characteristics. In this work, the internal predictability of predictive modeling objects is investigated. Using the example of time series forecasting, we exp… Show more

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“…The results can be seen in Table 1, where the forecast quality was measured with the help of MAPE and hit probability, which were proposed in ref. [17] and measure the fraction of values in a given range. For easier interpretation, the forecasting error distribution for all experiments is presented in Figure 5.…”
Section: Forecast Errors For the Same Class On Meso-and Macro-levelmentioning
confidence: 99%
“…The results can be seen in Table 1, where the forecast quality was measured with the help of MAPE and hit probability, which were proposed in ref. [17] and measure the fraction of values in a given range. For easier interpretation, the forecasting error distribution for all experiments is presented in Figure 5.…”
Section: Forecast Errors For the Same Class On Meso-and Macro-levelmentioning
confidence: 99%