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General Conclusions About Spatial Statistics

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Part of the book series: Advanced Studies in Theoretical and Applied Econometrics ((ASTA,volume 51))

Abstract

This chapter summarizes general findings gleaned from the nine chapters constituting the spatial statistics part of this book. It also introduces a second massively large remotely sensed image for which n exceeds 65 million.

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Notes

  1. 1.

    They also are known as design variables, Boolean indicators , categorical variables, binary variables, proxies, and qualitative variables.

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Griffith, D.A., Paelinck, J.H.P. (2018). General Conclusions About Spatial Statistics. In: Morphisms for Quantitative Spatial Analysis. Advanced Studies in Theoretical and Applied Econometrics, vol 51. Springer, Cham. https://doi.org/10.1007/978-3-319-72553-6_10

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