The generalized likelihood ratio (GLR) test is a widely used method for detecting abrupt changes in linear systems and signals. In this paper the marginalized likelihood ratio (MLR) test is introduced for eliminating three shortcomings of GLR while preserving its applicability and generality. First, the need for a user-chosen threshold is eliminated in MLR. Second, the noise levels need not be known exactly and may even change over time, which means that MLR is robust. Finally, a very efficient exact implementation with linear in time complexity for batch-wise data processing is developed. This should be compared to the quadratic in time complexity of the exact GLR
Maximum likelihood ratio test statistics may not exist in general in nonparametric function estimati...
The problem of detecting abrupt changes of the dynamics in linear systems is addressed. First the ge...
• Statistical testing can warn us of disturbances in measurements. • The generalized likelihood rati...
The generalized likelihood ratio (GLR) test is a widely used method for detecting abrupt changes in ...
The Generalized Likelihood Ratio (GLR) test for fault detection as derived by Willsky and Jones is a...
A design procedure for detecting additive changes in a state-space model is proposed. Since the mean...
We consider the problem of the non{sequential detection of a change in the drift coecient of a stoch...
This paper presents general formulae for the likelihood ratio (LR), Wald (W), Lagrange multiplier (L...
International audienceWe consider the problem of the non-sequential detection of a change in the dri...
International audienceWe consider the classical radar problem of detecting a target in Gaussian nois...
The generalized likelihood ratio test (GLRT) is invariant with respect to transformations for which ...
Varying-coefficient models are popular multivariate nonparametric fitting techniques. When all coeff...
A theory of testing under non-standard conditions is developed. By viewing the likelihood as a funct...
A deadbeat observer based generalized likelihood ratio (GLR) test is proposed for the detection and ...
The problem of detecting abrupt changes of the dynamics in linear systems is addressed. First the ge...
Maximum likelihood ratio test statistics may not exist in general in nonparametric function estimati...
The problem of detecting abrupt changes of the dynamics in linear systems is addressed. First the ge...
• Statistical testing can warn us of disturbances in measurements. • The generalized likelihood rati...
The generalized likelihood ratio (GLR) test is a widely used method for detecting abrupt changes in ...
The Generalized Likelihood Ratio (GLR) test for fault detection as derived by Willsky and Jones is a...
A design procedure for detecting additive changes in a state-space model is proposed. Since the mean...
We consider the problem of the non{sequential detection of a change in the drift coecient of a stoch...
This paper presents general formulae for the likelihood ratio (LR), Wald (W), Lagrange multiplier (L...
International audienceWe consider the problem of the non-sequential detection of a change in the dri...
International audienceWe consider the classical radar problem of detecting a target in Gaussian nois...
The generalized likelihood ratio test (GLRT) is invariant with respect to transformations for which ...
Varying-coefficient models are popular multivariate nonparametric fitting techniques. When all coeff...
A theory of testing under non-standard conditions is developed. By viewing the likelihood as a funct...
A deadbeat observer based generalized likelihood ratio (GLR) test is proposed for the detection and ...
The problem of detecting abrupt changes of the dynamics in linear systems is addressed. First the ge...
Maximum likelihood ratio test statistics may not exist in general in nonparametric function estimati...
The problem of detecting abrupt changes of the dynamics in linear systems is addressed. First the ge...
• Statistical testing can warn us of disturbances in measurements. • The generalized likelihood rati...