1,741 research outputs found
On Primal-Dual Approach for Distributed Stochastic Convex Optimization over Networks
We introduce a primal-dual stochastic gradient oracle method for distributed
convex optimization problems over networks. We show that the proposed method is
optimal in terms of communication steps. Additionally, we propose a new
analysis method for the rate of convergence in terms of duality gap and
probability of large deviations. This analysis is based on a new technique that
allows to bound the distance between the iteration sequence and the optimal
point. By the proper choice of batch size, we can guarantee that this distance
equals (up to a constant) to the distance between the starting point and the
solution
Accelerating Incremental Gradient Optimization with Curvature Information
This paper studies an acceleration technique for incremental aggregated
gradient ({\sf IAG}) method through the use of \emph{curvature} information for
solving strongly convex finite sum optimization problems. These optimization
problems of interest arise in large-scale learning applications. Our technique
utilizes a curvature-aided gradient tracking step to produce accurate gradient
estimates incrementally using Hessian information. We propose and analyze two
methods utilizing the new technique, the curvature-aided IAG ({\sf CIAG})
method and the accelerated CIAG ({\sf A-CIAG}) method, which are analogous to
gradient method and Nesterov's accelerated gradient method, respectively.
Setting to be the condition number of the objective function, we prove
the linear convergence rates of for
the {\sf CIAG} method, and for the {\sf
A-CIAG} method, where are constants inversely proportional to
the distance between the initial point and the optimal solution. When the
initial iterate is close to the optimal solution, the linear convergence
rates match with the gradient and accelerated gradient method, albeit {\sf
CIAG} and {\sf A-CIAG} operate in an incremental setting with strictly lower
computation complexity. Numerical experiments confirm our findings. The source
codes used for this paper can be found on
\url{http://github.com/hoitowai/ciag/}.Comment: 22 pages, 3 figures, 3 tables. Accepted by Computational Optimization
and Applications, to appea
A Discrete-time Networked Competitive Bivirus SIS Model
The paper deals with the analysis of a discrete-time networked competitive
bivirus susceptible-infected-susceptible (SIS) model. More specifically, we
suppose that virus 1 and virus 2 are circulating in the population and are in
competition with each other. We show that the model is strongly monotone, and
that, under certain assumptions, it does not admit any periodic orbit. We
identify a sufficient condition for exponential convergence to the disease-free
equilibrium (DFE). Assuming only virus 1 (resp. virus 2) is alive, we establish
a condition for global asymptotic convergence to the single-virus endemic
equilibrium of virus 1 (resp. virus 2) -- our proof does not rely on the
construction of a Lyapunov function. Assuming both virus 1 and virus 2 are
alive, we establish a condition which ensures local exponential convergence to
the single-virus equilibrium of virus 1 (resp. virus 2). Finally, we provide a
sufficient (resp. necessary) condition for the existence of a coexistence
equilibrium
Towards Understanding the Endemic Behavior of a Competitive Tri-Virus SIS Networked Model
This paper studies the endemic behavior of a multi-competitive networked
susceptible-infected-susceptible (SIS) model. Specifically, the paper deals
with three competing virus systems (i.e., tri-virus systems). First, we show
that a tri-virus system, unlike a bi-virus system, is not a monotone dynamical
system. Using the Parametric Transversality Theorem, we show that, generically,
a tri-virus system has a finite number of equilibria and that the Jacobian
matrices associated with each equilibrium are nonsingular. The endemic
equilibria of this system can be classified as follows: a) single-virus endemic
equilibria (also referred to as the boundary equilibria), where precisely one
of the three viruses is alive; b) 2-coexistence equilibria, where exactly two
of the three viruses are alive; and c) 3-coexistence equilibria, where all
three viruses survive in the network. We provide a necessary and sufficient
condition that guarantees local exponential convergence to a boundary
equilibrium. Further, we secure conditions for the nonexistence of
3-coexistence equilibria (resp. for various forms of 2-coexistence equilibria).
We also identify sufficient conditions for the existence of a 2-coexistence
(resp. 3-coexistence) equilibrium. We identify conditions on the model
parameters that give rise to a continuum of coexistence equilibria. More
specifically, we establish i) a scenario that admits the existence and local
exponential attractivity of a line of coexistence equilibria; and ii) scenarios
that admit the existence of, and, in the case of one such scenario, global
convergence to, a plane of 3-coexistence equilibria.Comment: arXiv admin note: substantial text overlap with arXiv:2209.1182
Competitive Networked Bivirus SIS spread over Hypergraphs
The paper deals with the spread of two competing viruses over a network of
population nodes, accounting for pairwise interactions and higher-order
interactions (HOI) within and between the population nodes. We study the
competitive networked bivirus susceptible-infected-susceptible (SIS) model on a
hypergraph introduced in Cui et al. [1]. We show that the system has, in a
generic sense, a finite number of equilibria, and the Jacobian associated with
each equilibrium point is nonsingular; the key tool is the Parametric
Transversality Theorem of differential topology. Since the system is also
monotone, it turns out that the typical behavior of the system is convergence
to some equilibrium point. Thereafter, we exhibit a tri-stable domain with
three locally exponentially stable equilibria. For different parameter regimes,
we establish conditions for the existence of a coexistence equilibrium (both
viruses infect separate fractions of each population node)
Near-optimal tensor methods for minimizing gradient norm
Motivated by convex problems with linear constraints and, in particular, by entropy-regularized optimal transport, we consider the problem of finding approximate stationary points, i.e. points with the norm of the objective gradient less than small error, of convex functions with Lipschitz p-th order derivatives. Lower complexity bounds for this problem were recently proposed in [Grapiglia and Nesterov, arXiv:1907.07053]. However, the methods presented in the same paper do not have optimal complexity bounds. We propose two optimal up to logarithmic factors methods with complexity bounds with respect to the initial objective residual and the distance between the starting point and solution respectivel
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