Abstrakt
Niniejsze opracowanie jest przeglądem wybranych zagadnień z zakresu modelowania matematyczno-statystycznego struktur i procesów przestrzennych. Ogólny charakter tego artykułu obejmuje dyskusję nad podstawowymi pojęciami, takimi jak: układ przestrzenny, struktura przestrzenna, proces przestrzenny, i ich wzajemnymi relacjami. Następnie definiowany jest w sposób ogólny (stochastyczny) proces przestrzenny i jego składniki, ze szczególnym uwzględnieniem reprezentacji struktury przestrzennej. Artykuł omawia sposób budowy modelu stochastycznego procesu przestrzennego, analizując jednocześnie najważniejsze problemy pojawiające się na etapie jego specyfikacji, estymacji i weryfikacji. Uwypuklono również wkład poznańskich geografów w rozwiązywanie problemów teoretycznych związanych z modelowaniem struktur i procesów przestrzennych.
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