The present paper presents the application of a finite mixture model (FMM) to analyze spatially explicit data on forest composition and environmental variables to produce a high-resolution map of their current potential distribution. FMM provides a convenient yet formal setting for model-based clustering. Within this framework, forest data are assumed to come from an underlying FMM, where each mixture component corresponds to a cluster and each cluster is characterized by a different composition of tree species. An important extension of this model is based on including a set of covariates to predict class membership. These covariates can be climatic and topographical parameters as well as geographical coordinates and the class membership o...
Clustering is a common and important issue, and finite mixture models based on the normal distributi...
The knowledge of tree species distribution at a national scale provides benefits for forest manageme...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
Aim: To propose a Finite Mixture Model (FMM) as an additional approach for classifying large dataset...
We propose design-based inference with finite mixture models (FMM) in settings where heterogeneity c...
In this paper we present the finite mixture models approach o clustering of high dimensional data. ...
In recent years, the scientific community has made significant efforts in order to create geo\uadref...
The creation and maintenance of complex forest structures has become an important forestry objective...
Spatial modelling is a fundamental tool to support forest management strategies. National Forest Inv...
In this thesis, new methods are proposed for using finite mixture models to analyse multi-species da...
Proactive forest conservation planning requires spatially accurate information about the potential d...
Mixture models occur in numerous settings including random and fixed effects models, clustering, dec...
A comparison of several statistical techniques common in species distribution modeling was developed...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...
In recent years, a surge of interest in biodiversity conservation have led to the development of new...
Clustering is a common and important issue, and finite mixture models based on the normal distributi...
The knowledge of tree species distribution at a national scale provides benefits for forest manageme...
The important role of finite mixture models in the statistical analysis of data is underscored by th...
Aim: To propose a Finite Mixture Model (FMM) as an additional approach for classifying large dataset...
We propose design-based inference with finite mixture models (FMM) in settings where heterogeneity c...
In this paper we present the finite mixture models approach o clustering of high dimensional data. ...
In recent years, the scientific community has made significant efforts in order to create geo\uadref...
The creation and maintenance of complex forest structures has become an important forestry objective...
Spatial modelling is a fundamental tool to support forest management strategies. National Forest Inv...
In this thesis, new methods are proposed for using finite mixture models to analyse multi-species da...
Proactive forest conservation planning requires spatially accurate information about the potential d...
Mixture models occur in numerous settings including random and fixed effects models, clustering, dec...
A comparison of several statistical techniques common in species distribution modeling was developed...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...
In recent years, a surge of interest in biodiversity conservation have led to the development of new...
Clustering is a common and important issue, and finite mixture models based on the normal distributi...
The knowledge of tree species distribution at a national scale provides benefits for forest manageme...
The important role of finite mixture models in the statistical analysis of data is underscored by th...