334 research outputs found
Sampling in Potts Model on Sparse Random Graphs
We study the problem of sampling almost uniform proper q-colorings in sparse Erdos-Renyi random graphs G(n,d/n), a research initiated by Dyer, Flaxman, Frieze and Vigoda [Dyer et al., RANDOM STRUCT ALGOR, 2006]. We obtain a fully polynomial time almost uniform sampler (FPAUS) for the problem provided q>3d+4, improving the current best bound q>5.5d [Efthymiou, SODA, 2014].
Our sampling algorithm works for more generalized models and broader family of sparse graphs. It is an efficient sampler (in the same sense of FPAUS) for anti-ferromagnetic Potts model with activity 03(1-b)d+4. We further identify a family of sparse graphs to which all these results can be extended. This family of graphs is characterized by the notion of contraction function, which is a new measure of the average degree in graphs
Approximate Counting via Correlation Decay on Planar Graphs
We show for a broad class of counting problems, correlation decay (strong
spatial mixing) implies FPTAS on planar graphs. The framework for the counting
problems considered by us is the Holant problems with arbitrary constant-size
domain and symmetric constraint functions. We define a notion of regularity on
the constraint functions, which covers a wide range of natural and important
counting problems, including all multi-state spin systems, counting graph
homomorphisms, counting weighted matchings or perfect matchings, the subgraphs
world problem transformed from the ferromagnetic Ising model, and all counting
CSPs and Holant problems with symmetric constraint functions of constant arity.
The core of our algorithm is a fixed-parameter tractable algorithm which
computes the exact values of the Holant problems with regular constraint
functions on graphs of bounded treewidth. By utilizing the locally tree-like
property of apex-minor-free families of graphs, the parameterized exact
algorithm implies an FPTAS for the Holant problem on these graph families
whenever the Gibbs measure defined by the problem exhibits strong spatial
mixing. We further extend the recursive coupling technique to Holant problems
and establish strong spatial mixing for the ferromagnetic Potts model and the
subgraphs world problem. As consequences, we have new deterministic
approximation algorithms on planar graphs and all apex-minor-free graphs for
several counting problems
A minimal model of peripheral clocks reveals differential circadian re-entrainment in aging
The mammalian circadian system comprises a network of cell-autonomous
oscillators, spanning from the central clock in the brain to peripheral clocks
in other organs. These clocks are tightly coordinated to orchestrate rhythmic
physiological and behavioral functions. Dysregulation of these rhythms is a
hallmark of aging, yet it remains unclear how age-related changes lead to more
easily disrupted circadian rhythms. Using a two-population model of coupled
oscillators that integrates the central clock and the peripheral clocks, we
derive simple mean-field equations that can capture many aspects of the rich
behavior found in the mammalian circadian system. We focus on three
age-associated effects which have been posited to contribute to circadian
misalignment: attenuated input from the sympathetic pathway, reduced
responsiveness to light, and a decline in the expression of neurotransmitters.
We find that the first two factors can significantly impede re-entrainment of
the clocks following a perturbation, while a weaker coupling within the central
clock does not affect the recovery rate. Moreover, using our minimal model, we
demonstrate the potential of using the feed-fast cycle as an effective
intervention to accelerate circadian re-entrainment. These results highlight
the importance of peripheral clocks in regulating the circadian rhythm and
provide fresh insights into the complex interplay between aging and the
resilience of the circadian system
Automated Integration of Infrastructure Component Status for Real-Time Restoration Progress Control: Case Study of Highway System in Hurricane Harvey
Following extreme events, efficient restoration of infrastructure systems is
critical to sustaining community lifelines. During the process, effective
monitoring and control of the infrastructure restoration progress is critical.
This research proposes a systematic approach that automatically integrates
component-level restoration status to achieve real-time forecasting of overall
infrastructure restoration progress. In this research, the approach is mainly
designed for transportation infrastructure restoration following Hurricane
Harvey. In detail, the component-level restoration status is linked to the
restoration progress forecasting through network modeling and earned value
method. Once the new component restoration status is collected, the information
is automatically integrated to update the overall restoration progress
forecasting. Academically, an approach is proposed to automatically transform
the component-level restoration information to overall restoration progress. In
practice, the approach expects to ease the communication and coordination
efforts between emergency managers, thereby facilitating timely identification
and resolution of issues for rapid infrastructure restoration
Complex Network Classification with Convolutional Neural Network
Classifying large scale networks into several categories and distinguishing
them according to their fine structures is of great importance with several
applications in real life. However, most studies of complex networks focus on
properties of a single network but seldom on classification, clustering, and
comparison between different networks, in which the network is treated as a
whole. Due to the non-Euclidean properties of the data, conventional methods
can hardly be applied on networks directly. In this paper, we propose a novel
framework of complex network classifier (CNC) by integrating network embedding
and convolutional neural network to tackle the problem of network
classification. By training the classifiers on synthetic complex network data
and real international trade network data, we show CNC can not only classify
networks in a high accuracy and robustness, it can also extract the features of
the networks automatically
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