989 research outputs found
Design of exponential state estimators for neural networks with mixed time delays
This is the post print version of the article. The official published version can be obtained from the link below - Copyright 2007 Elsevier Ltd.In this Letter, the state estimation problem is dealt with for a class of recurrent neural networks (RNNs) with mixed discrete and distributed delays. The activation functions are assumed to be neither monotonic, nor differentiable, nor bounded. We aim at designing a state estimator to estimate the neuron states, through available output measurements, such that the dynamics of the estimation error is globally exponentially stable in the presence of mixed time delays. By using the LaypunovāKrasovskii functional, a linear matrix inequality (LMI) approach is developed to establish sufficient conditions to guarantee the existence of the state estimators. We show that both the existence conditions and the explicit expression of the desired estimator can be characterized in terms of the solution to an LMI. A simulation example is exploited to show the usefulness of the derived LMI-based stability conditions.This work was supported in part by the Engineering and Physical Sciences Research Council (EPSRC) of the UK under Grant GR/S27658/01, the Nuffield Foundation of the UK under Grant NAL/00630/G, the Alexander von Humboldt Foundation of Germany, the Natural Science Foundation of Jiangsu Education Committee of China under Grants 05KJB110154 and BK2006064, and the National Natural Science Foundation of China under Grants 10471119 and 10671172
Prenatal inflammation exposure-programmed cardiovascular diseases and potential prevention
In recent years, the rapid development of medical and pharmacological interventions has led to a steady decline in certain noncommunicable chronic diseases (NCDs), such as cancer. However, the overall incidence of cardiovascular diseases (CVDs) has not seemed to decline. CVDs have become even more prevalent in many countries and represent a global health threat and financial burden. An increasing number of epidemiological and experimental studies have demonstrated that maternal insults not only can result in birth defects but also can cause developmental functional defects that contribute to adult NCDs. In the current review, we provide an overview of evidence from both epidemiological investigations and experimental animal studies supporting the concept of developmental reprogramming of adult CVDs in offspring that have experienced prenatal inflammation exposure (PIE) during fetal development (PIE-programmed CVDs), a disease-causing event that has not been effectively controlled. This review describes the epidemiological observations, data from animal models, and related mechanisms for the pathogenesis of PIE-programmed CVDs. In addition, the potential therapeutic interventions of PIE-programmed CVDs are discussed. Finally, we also deliberate the need for future mechanistic studies and biomarker screenings in this important field, which creates a great opportunity to combat the global increase in CVDs by managing the adverse effects of inflammation for prepregnant and pregnant individuals who are at risk for PIE-programmed CVDs
State estimation for discrete-time Markovian jumping neural networks with mixed mode-dependent delays
This is the post print version of the article. The official published version can be obtained from the link - Copyright 2008 Elsevier LtdIn this Letter, we investigate the state estimation problem for a new class of discrete-time neural networks with Markovian jumping parameters as well as mode-dependent mixed time-delays. The parameters of the discrete-time neural networks are subject to the switching from one mode to another at different times according to a Markov chain, and the mixed time-delays consist of both discrete and distributed delays that are dependent on the Markovian jumping mode. New techniques are developed to deal with the mixed time-delays in the discrete-time setting, and a novel LyapunovāKrasovskii functional is put forward to reflect the mode-dependent time-delays. Sufficient conditions are established in terms of linear matrix inequalities (LMIs) that guarantee the existence of the state estimators. We show that both the existence conditions and the explicit expression of the desired estimator can be characterized in terms of the solution to an LMI. A numerical example is exploited to show the usefulness of the derived LMI-based conditions.This work was supported in part by the Biotechnology and Biological Sciences Research Council (BBSRC) of the UK under Grants BB/C506264/1 and 100/EGM17735, the Engineering and Physical Sciences Research Council (EPSRC) of the UK under Grants GR/S27658/01 and EP/C524586/1, an International Joint Project sponsored by the Royal Society of the UK, the Natural Science Foundation of Jiangsu Province of China under Grant BK2007075, the National Natural Science Foundation of China under Grant 60774073, and the Alexander von Humboldt Foundation of Germany
Regional Homogeneity: Towards Learning Transferable Universal Adversarial Perturbations Against Defenses
This paper focuses on learning transferable adversarial examples specifically
against defense models (models to defense adversarial attacks). In particular,
we show that a simple universal perturbation can fool a series of
state-of-the-art defenses.
Adversarial examples generated by existing attacks are generally hard to
transfer to defense models. We observe the property of regional homogeneity in
adversarial perturbations and suggest that the defenses are less robust to
regionally homogeneous perturbations. Therefore, we propose an effective
transforming paradigm and a customized gradient transformer module to transform
existing perturbations into regionally homogeneous ones. Without explicitly
forcing the perturbations to be universal, we observe that a well-trained
gradient transformer module tends to output input-independent gradients (hence
universal) benefiting from the under-fitting phenomenon. Thorough experiments
demonstrate that our work significantly outperforms the prior art attacking
algorithms (either image-dependent or universal ones) by an average improvement
of 14.0% when attacking 9 defenses in the black-box setting. In addition to the
cross-model transferability, we also verify that regionally homogeneous
perturbations can well transfer across different vision tasks (attacking with
the semantic segmentation task and testing on the object detection task).Comment: The code is available here:
https://github.com/LiYingwei/Regional-Homogeneit
Stratified incomplete local simplex tests for curvature of nonparametric multiple regression
Principled nonparametric tests for regression curvature in
are often statistically and computationally challenging. This paper introduces
the stratified incomplete local simplex (SILS) tests for joint concavity of
nonparametric multiple regression. The SILS tests with suitable bootstrap
calibration are shown to achieve simultaneous guarantees on dimension-free
computational complexity, polynomial decay of the uniform error-in-size, and
power consistency for general (global and local) alternatives. To establish
these results, a general theory for incomplete -processes with stratified
random sparse weights is developed. Novel technical ingredients include maximal
inequalities for the supremum of multiple incomplete -processes
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