Wybrane wyzwania statystyki przestrzennej dla ekonometryków przestrzennych

Autor

  • Daniel A. Griffith University of Texas at Dallas

DOI:

https://doi.org/10.2478/v10103-012-0027-5

Abstrakt

Artykuł prezentuje wybrane, niestandardowe statystyki przestrzenne oraz zagadnienia ekonometrii przestrzennej. Rozważania teoretyczne koncentrują się na wyzwaniach wynikających z autokorelacji przestrzennej, nawiązując do pojęć Gaussowskiej zmiennej losowej, topologicznych cech danych georeferencyjnych, wektorów własnych, filtrów przestrzennych, georeferencyjnych mechanizmów generowania danych oraz interpretacji efektów losowych.

Pobrania

Brak dostępnych danych do wyświetlenia.

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Opublikowane

2013-03-08

Jak cytować

Griffith, D. A. (2013). Wybrane wyzwania statystyki przestrzennej dla ekonometryków przestrzennych . Comparative Economic Research. Central and Eastern Europe, 15(4), 71–85. https://doi.org/10.2478/v10103-012-0027-5

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