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A broad concept concerning lack of knowledge, especially the absence or imprecision of quantitative information about a process or population of interest.
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Giving uncertainties to interpolated values in time series: application to mass balance reco...
I guess that the further from measured data, the higher the uncertainty should be, but how to quantify it from the base uncertainty? Is there a rule of thumb ? …
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Giving uncertainties to interpolated values in time series: application to mass balance reco...
As Yrieix suggested, Kalman is indeed a nice way to answer that problem. In python, there is a library available: pykalman.
There are already post on how to handle missing values with pykalman.
I to …