Likelihood Ratio Test
A Likelihood Ratio Test is a statistical hypothesis test based on the ratio of the likelihood function between the null and alternative hypotheses or models.
- AKA: LRT, LR Statistic.
- Example(s):
- a G-Test.
- …
- Counter-Example(s):
- See: Log Likelihood Ratio Test, Maximum Likelihood, Risk Ratio, LODS Score, Chi-Square Test.
References
2009
- http://en.wikipedia.org/wiki/Likelihood-ratio_test
- QUOTE:In statistics, a likelihood ratio test is a statistical test used to compare the fit of two models, one of which (the null model) is a special case of the other (the alternative model). The test is based on the likelihood ratio, which expresses how many times more likely the data are under one model than the other. This likelihood ratio, or equivalently its logarithm, can then be used to compute a p-value, or compared to a critical value to decide whether to reject the null model in favour of the alternative model. When the logarithm of the likelihood ratio is used, the statistic is known as a log-likelihood ratio statistic, and the probability distribution of this test statistic, assuming that the null model is true, can be approximated using Wilks' theorem.
In the case of distinguishing between two models, each of which has no unknown parameters, use of the likelihood ratio test can be justified by the Neyman–Pearson lemma, which demonstrates that such a test has the highest power among all competitors.
Each of the two competing models, the null model and the alternative model, is separately fitted to the data and the log-likelihood recorded. The test statistic (usually denoted D)[citation needed] is twice the difference in these log-likelihoods: :[math]\displaystyle{ \begin{align} D & = -2\ln\left( \frac{\text{likelihood for null model}}{\text{likelihood for alternative model}} \right) &= -2\ln(\text{likelihood for null model}) + 2\ln(\text{likelihood for alternative model})] \end{align} }[/math]
- QUOTE:In statistics, a likelihood ratio test is a statistical test used to compare the fit of two models, one of which (the null model) is a special case of the other (the alternative model). The test is based on the likelihood ratio, which expresses how many times more likely the data are under one model than the other. This likelihood ratio, or equivalently its logarithm, can then be used to compute a p-value, or compared to a critical value to decide whether to reject the null model in favour of the alternative model. When the logarithm of the likelihood ratio is used, the statistic is known as a log-likelihood ratio statistic, and the probability distribution of this test statistic, assuming that the null model is true, can be approximated using Wilks' theorem.
2009
- http://www.mcg.edu/som/fmfacdev/fd_ebmconcepts.htm
- … is the likelihood that a given test result would be expected in a patient with the target disorder compared to the likelihood that the same result …
2007
- http://www.statistics.com/resources/glossary/l/likert.php
- The likelihood ratio test is aimed at testing a simple null hypothesis against a simple alternative hypothesis. (See Hypothesis for an explanation of "simple hypothesis").
The likelihood ratio test is based on the likelihood ratio r as the test statistic:
[math]\displaystyle{ r }[/math] = P(X| H1) / P(X | H0)
where X is the observed data (sample), P(X | H) is the conditional probability of X provided the hypothesis H is true, H0 is the null hypothesis, H1 is the alternative hypothesis. See also Likelihood function.
According to the Neyman-Pearson lemma, the likelihood ratio test is the most powerful test for any significance level (probability of Type I error). See also Power of a Hypothesis Test.
- The likelihood ratio test is aimed at testing a simple null hypothesis against a simple alternative hypothesis. (See Hypothesis for an explanation of "simple hypothesis").
- (Shaparenko & Joachims, 2007) ⇒ Benyah Shaparenko, and Thorsten Joachims. (2007). “Information Geneology: Uncovering the flow of ideas in non-hyperlinked document databases.” In: Proceedings of the 13th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (KDD-2007). doi:10.1145/1281192.1281259
- QUOTE:... In particular, we propose a language-modeling approach and a likelihood ratio test to detect influence between documents in a statistically well-founded way.
2003
- (Johnson, 2003) ⇒ Don Johnson. (2003). “The Likelihood Ratio Test."
- QUOTE:In a binary hypothesis testing problem, four possible outcomes can result. Model M0 did in fact represent the best model for the data and the decision rule said it was (a correct decision) or said it wasn't (an erroneous decision). The other two outcomes arise when model M1 was in fact true with either a correct or incorrect decision made. The decision process operates by segmenting the range of observation values into two disjoint decision regions ℜ0 and ℜ1. All values of r fall into either ℜ0 or ℜ1. If a given r lies in ℜ0, for example, we will announce our decision "model ℳ0 was true"; if in ℜ1, model ℳ1 would be proclaimed. To derive a rational method of deciding which model best describes the observations, we need a criterion to assess the quality of the decision process. Optimizing this criterion will specify the decision regions. … The Bayes' decision criterion seeks to minimize a cost function associated with making a decision.
2003
- (Davison, 2003) ⇒ Anthony C. Davison. (2003). “Statistical Models." Cambridge University Press. ISBN:0521773393
2000
- (Hosmer & Lemeshow) ⇒ David W. Hosmer, and Stanley Lemeshow. (2000). “Applied Logistic Regression, 2nd edition." John Wiley and Sons. ISBN:0471356328
- QUOTE:The comparison of observed to predicted values using the likelihood function is based on the following expression
[math]\displaystyle{ D }[/math] = -2ln [(likelihood of the fitted model) / (likelihood of the saturated model) ]. (1.9).
The quantity inside the large brackets in the expression is called the likelihood ratio. Using minus twice its log is necessary to obtain a quantity whose distribution is known and can therefore be used for hypothesis testing purposes. Such a test is called the likelihood ratio test.
- QUOTE:The comparison of observed to predicted values using the likelihood function is based on the following expression
1992
- (Zeitouni et al., 1992) ⇒ Ofer Zeitouni, Jacob Ziv, and Neri Merhav. (1992). “When Is the Generalized Likelihood Ratio Test Optimal?.” In: IEEE Transactions on Information Theory, 38(5). doi:10.1109/18.149515
1978
- (Turnbull & Weiss, 1978) ⇒ B. W. Turnbull and L. Weiss. (1978). “A Likelihood Ratio Statistic for Testing Goodness of Fit with Randomly Censored Data.” In: Biometrics, 34(3). http://www.jstor.org/stable/2530599