2001
DOI: 10.1111/1467-9884.00261
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Regression Diagnostics for Binomial Data from the Forward Search

Abstract: Summary. We suggest a simple robust method for the detection of atypical and influential observations in binomial data. Our technique is based on a forward search procedure which orders the observations from those most in agreement with a specified generalized linear model to those least in agreement with it. The effectiveness of the forward search estimator in detecting masked multiple outliers, and more generally in ordering binomial data, is shown by means of three data sets. Plots of diagnostic quantities … Show more

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Cited by 13 publications
(12 citation statements)
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“…According to his method, the objective function takes into account all observations, but model parameters are estimated from a subset of the data. Atkinson and Riani (2001) use a similar approach for extracting the initial subset for generalized models. Similarly here, we use a procedure for choosing the initial subset that resembles the Least Median of Squares Regression.…”
Section: Choosing the Initial Subset For The Forward Searchmentioning
confidence: 99%
“…According to his method, the objective function takes into account all observations, but model parameters are estimated from a subset of the data. Atkinson and Riani (2001) use a similar approach for extracting the initial subset for generalized models. Similarly here, we use a procedure for choosing the initial subset that resembles the Least Median of Squares Regression.…”
Section: Choosing the Initial Subset For The Forward Searchmentioning
confidence: 99%
“…The problem with these methods was that they can be misled by masking, where a set of observations are influential and hence could not be detected by individual-case deletions. Atkinson and Riani (2001) extended a method called the forward search (Atkinson 1994) to binomial regression models where the goal was first to identify a relatively small set of observations that does not contain outlier or influential data points and to sequentially add data points so that individual or sets of influential data points can be identified. In their approach, an initial subset of p observations was found by (typically) taking a sample of subsets of size p and selecting the subset such that median squared deviance residual was minimized.…”
Section: Assessment Of Stability Of the Cluster Groupingsmentioning
confidence: 99%
“…Motivated by the forward-search criterion of Atkinson and Riani (2001), we selected a subset size p and took a sample of subsets of this size. For each sampled subset, we recorded the median squared deviance residual for each model.…”
Section: Stability and Visualization Of The Idaho Landbird Cluster Grmentioning
confidence: 99%
“…Although methods and applications that take outliers into account are well known when the dependent variables are continuous [22,24] , few have conducted empirical studies when the dependent variable is binary. Atkinson and Riani [3] , Flores and Garrido [12] have developed the theoretical foundations as well as the algorithm to obtain consistent estimator in logit model with outliers, but they do not provide applied studies.…”
Section: Introductionmentioning
confidence: 99%
“…The second aim of this study is to predict bankruptcy probability with the consideration of outliers. We developed the method used by Atkinson and Riani [3] . According to literature, present study is the first one that using the Robust logit model for financial data and bankruptcy predictions.…”
Section: Introductionmentioning
confidence: 99%