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Modelowanie liczby wypadków drogowych z zastosowaniem pakietu LIMDEP

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Warianty tytułu
EN
Accident prediction analysis using LIMDEP package
Języki publikacji
PL
Abstrakty
PL
Problem modelowania (przewidywania) liczby wypadków drogowych na poszczególnych odcinkach dróg (sekcjach) pojawił się w rozważaniach naukowców około 30 lat temu. Przez ponad ćwierć wieku do przewidywania liczby wypadków drogowych w zależności od różnych czynników ruchu drogowego stosowano bardzo różne modele oraz sposoby estymacji. W pracy opisano procedurę modelowania wypadków drogowych z zastosowaniem pakietu LIMDEP w zakresie regresji Poissona i jego podstawowych modyfikacji.
EN
The relationship between traffic accidents and traffic conditions has been the subject of research for about 30 years, mainly in the last 20 years. Researchers have developed many different models, types, conditions and functional forms depending on available data, local conditions and purpose. Nowadays the models based on Poisson distribution or its modifications are most widely used. In the paper there have been presented accident analysis procedure using LIMDEP package.
Twórcy
autor
  • Uniwersytet Przyrodniczy we Wrocławiu, Katedra Matematyki
Bibliografia
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-AGHM-0037-0035
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