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        <rdf:li rdf:resource="http://hdl.handle.net/2067/2116" />
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    <dc:date>2013-05-18T20:39:09Z</dc:date>
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    <title>Site quality evaluation by classification tree: an application to cork quality in Sardinia</title>
    <link>http://hdl.handle.net/2067/2116</link>
    <description>Title: Site quality evaluation by classification tree: an application to cork quality in Sardinia
Authors: Corona, Piermaria; Dettori, Sandro; Filigheddu, Maria Rosaria; Maetzke, Federico; Scotti, Roberto
Abstract: Cork harvesting and stopper production represent&#xD;
a major forest industry in Sardinia (Italy). The&#xD;
target of the present investigation was to evaluate the&#xD;
‘‘classification tree’’ as a tool to discover possible relationships&#xD;
between microsite characteristics and cork&#xD;
quality. Seven main cork oak (Quercus suber) producing&#xD;
areas have been identified in Sardinia, for a total of more&#xD;
than 122,000 ha. Sixty-three sample trees, distributed&#xD;
among different geographical locations and microsite&#xD;
conditions, were selected. A soil profile near each sample&#xD;
tree was described, soil samples were collected and&#xD;
analysed. After debarking, cork quality of each sample&#xD;
tree was graded by an independent panel of experts.&#xD;
Microsites where trees had more than 50% of the extracted&#xD;
cork graded in the best quality class, according&#xD;
to the official quality standard in Italy, were labelled as&#xD;
prime microsites, the others as nonprime microsites.&#xD;
Relationships between a binary dummy variable (0 for&#xD;
nonprime microsites, 1 for prime microsites) and site&#xD;
factors were investigated using classification tree analysis&#xD;
to select the relevant variables and to define the&#xD;
classification scheme. Prime quality microsites for cork&#xD;
production proved to be characterised by elevation, soil&#xD;
phosphorus content and sandiness. Results have been&#xD;
compared with those of the more conventional parametric&#xD;
approach by logistic regression. The work demonstrates&#xD;
the advantages of the classification tree&#xD;
method. The model may be appropriate for classifications&#xD;
at landscape and stand mapping levels, where it is&#xD;
possible to sample a number of microsites and to evaluate&#xD;
distributional characteristics of model output, while&#xD;
its precision is only indicative when estimating the prime&#xD;
quality of single microsites.
Description: L'articolo è disponibile sul sito dell'editore www.springerlink.com</description>
    <dc:date>2004-12-31T23:00:00Z</dc:date>
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