Data di Pubblicazione:
2001
Abstract:
The analysis of spatially distributed observations implies a number of
theoretical problems due to the multidirectional dependence among nearest sites.
The presence of such a dependence often causes the standard statistical method,
instead based on independence assumptions, to provide inefficient estimates or,
even, to fail badly. This paper concerns the problem of discrimination and
classification of spatial polytomous data. It extends the approach discussed by
Alfò and Postiglione (1999) for binary observations to polytomous data, presents a
discrimination function based on markovian automodels and suggests a natural
solution to the resulting allocation problem through a Gibbs sampler based
procedure.
The proposed approach is contrasted with standard logistic discrimination and
applied to a real data set consisting of a remote sensed image from Nebrodi
mountains (Italy).
theoretical problems due to the multidirectional dependence among nearest sites.
The presence of such a dependence often causes the standard statistical method,
instead based on independence assumptions, to provide inefficient estimates or,
even, to fail badly. This paper concerns the problem of discrimination and
classification of spatial polytomous data. It extends the approach discussed by
Alfò and Postiglione (1999) for binary observations to polytomous data, presents a
discrimination function based on markovian automodels and suggests a natural
solution to the resulting allocation problem through a Gibbs sampler based
procedure.
The proposed approach is contrasted with standard logistic discrimination and
applied to a real data set consisting of a remote sensed image from Nebrodi
mountains (Italy).
Tipologia CRIS:
2.1 Contributo in volume (Capitolo o Saggio)
Keywords:
Spatial discrimination, polytomous observations, Strauss automodel,
Gibbs sampler.
Elenco autori:
Alfo', Marco; Postiglione, Paolo
Link alla scheda completa:
Titolo del libro:
Advances in Classification and Data Analysis