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A GLM approach to quantal response models for mixtures
C. Cox
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Article
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peer-review
3
Scopus citations
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Mathematics
Deviance
89%
Lack of Fit
46%
Logit Model
43%
Probit Model
43%
Model
42%
Statistical Software
40%
Likelihood Ratio Statistic
37%
Exponential Family
34%
Standard deviation
33%
Goodness of fit
33%
Outlier
31%
Maximum Likelihood Estimate
30%
Predictors
29%
Regression Model
26%
Testing
22%
Statistics
22%
Series
19%
Standards
17%
Medicine & Life Sciences
Statistics
100%
Likelihood Functions
98%
Datasets
51%
Software
48%
Logistic Models
42%
Agriculture & Biology
statistics
39%
logit analysis
25%
standard deviation
20%
testing
8%
Chemical Compounds
Mixture
56%
Engineering & Materials Science
Statistics
27%
Maximum likelihood
17%
Testing
9%