Marine ecologists commonly use discriminant function analysis (DFA) to evaluate the similarity of distinct populations and to classify individuals of unknown origin to known populations. However, investigators using DFA must account for (1) the possibility of correct classification due to chance alone, and (2) the influence of prior probabilities of group membership on classification results. A search of the recent otolith chemistry literature showed that these two concerns are sometimes ignored, so we used simulated data sets to explore the potential pitfalls of such oversights. We found that when estimating reclassification success for a training data set, small sample sizes or unbalanced sampling designs can produce remarkably high recla...
Samples of sea water contain phytoplankton taxa in varying amounts, and marine scientists are intere...
Discriminant function analysis (DFA) was used to classify the freshness quality of lean fish, fatty ...
This dissertation considers the estimation of the chance of misclassification when a new observation...
Classification method performance was evaluated using otolith chemistry of juvenile Atlantic menhade...
1. The predictive modelling approach to bioassessment estimates the macroinvertebrate assemblage exp...
Identifying the natal sources of fish is an important step in understanding its population dynamics....
Selecting an appropriate variable subset in linear multivariate methods is an important methodologic...
An observation assumed to have come from one of two populations, (PI)(,1) and (PI)(,2), is to be cla...
<div><h3>Background</h3><p>Ecologists are collecting extensive data concerning movements of animals ...
We develop a new perspective on the uncertainties affecting the predictions of coastal species distr...
Background: Ecologists are collecting extensive data concerning movements of animals in marine ecosy...
Species distribution model (SDM) is a crucial tool for forecasting ranges of species and mirroring h...
Data are the foundation of empirical research, yet all too often the datasets underlying published p...
The application of the \u27ecosystem approach\u27 to marine conservation management demands knowledg...
14 pages, 4 tables, 4 figuresNon-parametric asymptotic estimators rely on the assumption that rare s...
Samples of sea water contain phytoplankton taxa in varying amounts, and marine scientists are intere...
Discriminant function analysis (DFA) was used to classify the freshness quality of lean fish, fatty ...
This dissertation considers the estimation of the chance of misclassification when a new observation...
Classification method performance was evaluated using otolith chemistry of juvenile Atlantic menhade...
1. The predictive modelling approach to bioassessment estimates the macroinvertebrate assemblage exp...
Identifying the natal sources of fish is an important step in understanding its population dynamics....
Selecting an appropriate variable subset in linear multivariate methods is an important methodologic...
An observation assumed to have come from one of two populations, (PI)(,1) and (PI)(,2), is to be cla...
<div><h3>Background</h3><p>Ecologists are collecting extensive data concerning movements of animals ...
We develop a new perspective on the uncertainties affecting the predictions of coastal species distr...
Background: Ecologists are collecting extensive data concerning movements of animals in marine ecosy...
Species distribution model (SDM) is a crucial tool for forecasting ranges of species and mirroring h...
Data are the foundation of empirical research, yet all too often the datasets underlying published p...
The application of the \u27ecosystem approach\u27 to marine conservation management demands knowledg...
14 pages, 4 tables, 4 figuresNon-parametric asymptotic estimators rely on the assumption that rare s...
Samples of sea water contain phytoplankton taxa in varying amounts, and marine scientists are intere...
Discriminant function analysis (DFA) was used to classify the freshness quality of lean fish, fatty ...
This dissertation considers the estimation of the chance of misclassification when a new observation...