Fuzzy Prediction Intervals Using Credibility Distributions
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We present a new forecasting scheme based on the credibility distribution of fuzzy events. This approach allows us to build prediction intervals using the first differences of the time series data. Additionally, the credibility expected value enables us to estimate the k-step-ahead pointwise forecasts. We analyze the coverage of the prediction intervals and the accuracy of pointwise forecasts using different credibility approaches based on the upper differences. The comparative results were obtained working with yearly time series from the M4 Competition. The performance and computational cost of our proposal, compared with automatic forecasting procedures, are presented.
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2015 ◽
Vol 2015
◽
pp. 1-13
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2021 ◽
Vol ahead-of-print
(ahead-of-print)
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2020 ◽
Vol 9
(5)
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pp. 1268-1271
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2020 ◽
Vol 5
(10)
◽
1970 ◽
Vol 5
(1)
◽
pp. 2-8
◽
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