Classification procedures are some of the most widely used statistical methods in ecology. Random forests (RF) is a new and powerful statistical classifier that is well established in other disciplines but is relatively unknown in ecology. Advantages of RF compared to other statistical classifiers include (1) very high classification accuracy; (2) a novel method of determining variable importance; (3) ability to model complex interactions among predictor variables; (4) flexibility to perform several types of statistical data analysis, including regression, classification, survival analysis, and unsupervised learning; and (5) an algorithm for imputing missing values. We compared the accuracies of RF and four other commonly used statistical c...
Random Forests (RF) of tree classifiers are a popular ensemble method for classification. RF have sh...
Invasive species have largely negative impacts on the environment and the economy. The management an...
Random forests have been introduced by Leo Breiman (2001) as a new learning algorithm, extend-ing th...
Classification procedures are some of the most widely used statistical methods in ecology. Random fo...
Random Forests™ is reported to be one of the most accurate classification algorithms in complex data...
Statistical classification methods are among the most widely used statistical procedures in ecology....
Land cover monitoring using remotely sensed data requires robust classification methods which allow ...
Globalization and economic trade has change the scrutiny of facts from data to knowledge. For the sa...
Ensemble species distribution models combine the strengths of several species environmental matching...
Random Forest (RF) is a widely used algorithm for classification of remotely sensed data. Through a ...
A common problem in ecological studies is that of determining where to look for rare species. This p...
In decisions on nature conservation measures, we depend largely on knowledge of the relationship bet...
This book offers an application-oriented guide to random forests: a statistical learning method exte...
This book offers an application-oriented guide to random forests: a statistical learning method exte...
For both single probability estimation trees (PETs) and ensembles of such trees, commonly employed c...
Random Forests (RF) of tree classifiers are a popular ensemble method for classification. RF have sh...
Invasive species have largely negative impacts on the environment and the economy. The management an...
Random forests have been introduced by Leo Breiman (2001) as a new learning algorithm, extend-ing th...
Classification procedures are some of the most widely used statistical methods in ecology. Random fo...
Random Forests™ is reported to be one of the most accurate classification algorithms in complex data...
Statistical classification methods are among the most widely used statistical procedures in ecology....
Land cover monitoring using remotely sensed data requires robust classification methods which allow ...
Globalization and economic trade has change the scrutiny of facts from data to knowledge. For the sa...
Ensemble species distribution models combine the strengths of several species environmental matching...
Random Forest (RF) is a widely used algorithm for classification of remotely sensed data. Through a ...
A common problem in ecological studies is that of determining where to look for rare species. This p...
In decisions on nature conservation measures, we depend largely on knowledge of the relationship bet...
This book offers an application-oriented guide to random forests: a statistical learning method exte...
This book offers an application-oriented guide to random forests: a statistical learning method exte...
For both single probability estimation trees (PETs) and ensembles of such trees, commonly employed c...
Random Forests (RF) of tree classifiers are a popular ensemble method for classification. RF have sh...
Invasive species have largely negative impacts on the environment and the economy. The management an...
Random forests have been introduced by Leo Breiman (2001) as a new learning algorithm, extend-ing th...