3,160 research outputs found
Gossip Dual Averaging for Decentralized Optimization of Pairwise Functions
In decentralized networks (of sensors, connected objects, etc.), there is an
important need for efficient algorithms to optimize a global cost function, for
instance to learn a global model from the local data collected by each
computing unit. In this paper, we address the problem of decentralized
minimization of pairwise functions of the data points, where these points are
distributed over the nodes of a graph defining the communication topology of
the network. This general problem finds applications in ranking, distance
metric learning and graph inference, among others. We propose new gossip
algorithms based on dual averaging which aims at solving such problems both in
synchronous and asynchronous settings. The proposed framework is flexible
enough to deal with constrained and regularized variants of the optimization
problem. Our theoretical analysis reveals that the proposed algorithms preserve
the convergence rate of centralized dual averaging up to an additive bias term.
We present numerical simulations on Area Under the ROC Curve (AUC) maximization
and metric learning problems which illustrate the practical interest of our
approach
The Extended Regularized Dual Averaging Method for Composite Optimization
We present a new algorithm, extended regularized dual averaging (XRDA), for
solving composite optimization problems, which are a generalization of the
regularized dual averaging (RDA) method. The main novelty of the method is that
it allows more flexible control of the backward step size. For instance, the
backward step size for RDA grows without bound, while XRDA the backward step
size can be kept bounded
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