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negative lambda and others #3

@funfwo

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@funfwo

This is a great package. And I have some questions.
Recently I come across the KM perspective to estimate levy triplet by virtue of the book of Mr Tabar published in 2019. Statisticians, especially French scholars, have done a lot on it. However, real time series are traces of dynamic processes ruled by some unknown laws. Methods that lack the support of some natural law governance yet only focus on data may not be the right road. And the KM perspective shows me a direction.
I tried your package last night with some real time series, but many of them are negative lambda. Besides, I want to use the estimated lambda and xi to generate surrogate process to compare with the original time series (I also want to get drift and diffusion from the moments but moments are not scalar,thus I calculated from the original), but the generated X has many nan. Could you give some guidance?
And the KM perspective is a nonparametric method, which may have some similarities with the statistical methods worked by, e.g. Fabienne Comte or Jean Jacod. Could you show some details on them?
Finally neural network is nonparametric method to approximate the unknown distribution by stacked neural layers, do you have some plan to try them?

Many thanks

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