865 research outputs found

    Social networks: evolving graphs with memory dependent edges

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    The plethora, and mass take up, of digital communication tech- nologies has resulted in a wealth of interest in social network data collection and analysis in recent years. Within many such networks the interactions are transient: thus those networks evolve over time. In this paper we introduce a class of models for such networks using evolving graphs with memory dependent edges, which may appear and disappear according to their recent history. We consider time discrete and time continuous variants of the model. We consider the long term asymptotic behaviour as a function of parameters controlling the memory dependence. In particular we show that such networks may continue evolving forever, or else may quench and become static (containing immortal and/or extinct edges). This depends on the ex- istence or otherwise of certain inļ¬nite products and series involving age dependent model parameters. To test these ideas we show how model parameters may be calibrated based on limited samples of time dependent data, and we apply these concepts to three real networks: summary data on mobile phone use from a developing region; online social-business network data from China; and disaggregated mobile phone communications data from a reality mining experiment in the US. In each case we show that there is evidence for memory dependent dynamics, such as that embodied within the class of models proposed here

    A sulfate-rich model of Titan's interior 2: implications for possible explosive cryovolcanism

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    Dynamical Systems to Monitor Complex Networks in Continuous Time

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    In many settings it is appropriate to treat the evolution of pairwise interactions over continuous time. We show that new Katz-style centrality measures can be derived in this context via solutions to a nonautonomous ODE driven by the network dynamics. This allows us to identify and track, at any resolution, the most influential nodes in terms of broadcasting and receiving information through time dependent links. In addition to the classical notion of attenuation across edges used in the static Katz centrality measure, the ODE also allows for attenuation over time, so that real time "running measures" can be computed. With regard to computational efficiency, we explain why it is cheaper to track good receivers of information than good broadcasters. We illustrate the new measures on a large scale voice call network, where key features are discovered that are not evident from snapshots or aggregates

    A sulfate-rich model of Titan's interior 1: implications for the composition of cryomagmas

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    On the spectra of certain integro-differential-delay problems with applications in neurodynamics

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    We investigate the spectrum of certain integro-differential-delay equations (IDDEs) which arise naturally within spatially distributed, nonlocal, pattern formation problems. Our approach is based on the reformulation of the relevant dispersion relations with the use of the Lambert function. As a particular application of this approach, we consider the case of the Amari delay neural field equation which describes the local activity of a population of neurons taking into consideration the finite propagation speed of the electric signal. We show that if the kernel appearing in this equation is symmetric around some point a= 0 or consists of a sum of such terms, then the relevant dispersion relation yields spectra with an infinite number of branches, as opposed to finite sets of eigenvalues considered in previous works. Also, in earlier works the focus has been on the most rightward part of the spectrum and the possibility of an instability driven pattern formation. Here, we numerically survey the structure of the entire spectra and argue that a detailed knowledge of this structure is important within neurodynamical applications. Indeed, the Amari IDDE acts as a filter with the ability to recognise and respond whenever it is excited in such a way so as to resonate with one of its rightward modes, thereby amplifying such inputs and dampening others. Finally, we discuss how these results can be generalised to the case of systems of IDDEs

    Competing edge networks

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    We introduce a model for a pair of nonlinear evolving networks, deļ¬ned over a common set of vertices, sub ject to edgewise competition. Each network may grow new edges spontaneously or through triad closure. Both networks inhibit the otherā€™s growth and encourage the otherā€™s demise. These nonlinear stochastic competition equations yield to a mean ļ¬eld analysis resulting in a nonlinear deterministic system. There may be multiple equilibria; and bifurcations of diļ¬€erent types are shown to occur within a reduced parameter space. This situation models competitive peer-to-peer communication networks such as BlackBerry Messenger displacing SMS; or instant messaging displacing emails

    Bistability through triadic closure

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    We propose and analyse a class of evolving network models suitable for describing a dynamic topological structure. Applications include telecommunication, on-line social behaviour and information processing in neuroscience. We model the evolving network as a discrete time Markov chain, and study a very general framework where, conditioned on the current state, edges appear or disappear independently at the next timestep. We show how to exploit symmetries in the microscopic, localized rules in order to obtain conjugate classes of random graphs that simplify analysis and calibration of a model. Further, we develop a mean ļ¬eld theory for describing network evolution. For a simple but realistic scenario incorporating the triadic closure eļ¬€ect that has been empirically observed by social scientists (friends of friends tend to become friends), the mean ļ¬eld theory predicts bistable dynamics, and computational results conļ¬rm this prediction. We also discuss the calibration issue for a set of real cell phone data, and ļ¬nd support for a stratiļ¬ed model, where individuals are assigned to one of two distinct groups having diļ¬€erent within-group and across-group dynamics

    Depth, value, and context

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    In this paper, I will consider the repercussions that epistemic contextualism has on capturing the distinctive value of knowledge. I will argue that the way that contextualist views capture the value of knowledge depends on the depth of the contextualism involved. To do so, I distinguish between superficial and deep contextualism, and I show how the latter is forced to contextualist epistemic value in a way the former is not. However, I then argue that if the superficial contextualist view does not contextualise epistemic value, it would nevertheless fail to properly capture the value of knowledge. If epistemic contextualism is true, then epistemic value should be contextualised
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