Logistic regression is frequently used for classifying observations into two groups. Unfortunately there are often outlying observations in a data set and these might affect the estimated model and the associated classification error rate. In this paper, the authors study the effect of observations in the training sample on the error rate by deriving influence functions. They obtain a general expression for the influence function of the error rate, and they compute it for the maximum likelihood estimator as well as for several robust logistic discrimination procedures. Besides being of interest in their own right, the influence functions are also used to derive asymptotic classification efficiencies of different logistic discrimination rule...
Logistic regression is one of the most frequently used statistical methods as a standard method of d...
<div><p>The problem of discrimination and classification is central to much of epidemiology. Here we...
Logistic regression is estimated by maximizing the log-likelihood objective function formulated unde...
peer reviewedLogistic regression is frequently used for classifying observations into two groups. Un...
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
We first review briefly some basic approaches to robust inference and discuss the role and the place...
It sometimes occurs that one or more components of the data exert a disproportionate influence on th...
Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. Thi...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
Logistic discrimination is a well established method for allocating observations to one of two or mo...
The problem of discrimination and classification is central to much of epidemiology. Here we conside...
Logistic regression is one of the most frequently used statistical methods as a standard method of d...
<div><p>The problem of discrimination and classification is central to much of epidemiology. Here we...
Logistic regression is estimated by maximizing the log-likelihood objective function formulated unde...
peer reviewedLogistic regression is frequently used for classifying observations into two groups. Un...
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
We first review briefly some basic approaches to robust inference and discuss the role and the place...
It sometimes occurs that one or more components of the data exert a disproportionate influence on th...
Linear discriminant analysis for multiple groups is typically carried out using Fisher's method. Thi...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
Logistic discrimination is a well established method for allocating observations to one of two or mo...
The problem of discrimination and classification is central to much of epidemiology. Here we conside...
Logistic regression is one of the most frequently used statistical methods as a standard method of d...
<div><p>The problem of discrimination and classification is central to much of epidemiology. Here we...
Logistic regression is estimated by maximizing the log-likelihood objective function formulated unde...