Mobility timing for agent communities, a cue for advanced connectionist systems.

IEEE transactions on neural networks Pub Date : 2011-12-01 Epub Date: 2011-10-28 DOI:10.1109/TNN.2011.2168536
Bruno Apolloni, Simone Bassis, Elena Pagani, Gian Paolo Rossi, Lorenzo Valerio
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引用次数: 1

Abstract

We introduce a wait-and-chase scheme that models the contact times between moving agents within a connectionist construct. The idea that elementary processors move within a network to get a proper position is borne out both by biological neurons in the brain morphogenesis and by agents within social networks. From the former, we take inspiration to devise a medium-term project for new artificial neural network training procedures where mobile neurons exchange data only when they are close to one another in a proper space (are in contact). From the latter, we accumulate mobility tracks experience. We focus on the preliminary step of characterizing the elapsed time between neuron contacts, which results from a spatial process fitting in the family of random processes with memory, where chasing neurons are stochastically driven by the goal of hitting target neurons. Thus, we add an unprecedented mobility model to the literature in the field, introducing a distribution law of the intercontact times that merges features of both negative exponential and Pareto distribution laws. We give a constructive description and implementation of our model, as well as a short analytical form whose parameters are suitably estimated in terms of confidence intervals from experimental data. Numerical experiments show the model and related inference tools to be sufficiently robust to cope with two main requisites for its exploitation in a neural network: the nonindependence of the observed intercontact times and the feasibility of the model inversion problem to infer suitable mobility parameters.

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智能体社区的移动性时序,为高级连接主义系统提供线索。
我们引入了一种等待-追逐方案,该方案在连接主义结构中对移动代理之间的接触时间进行建模。初级处理器在网络中移动以获得适当位置的想法,既得到了大脑形态发生中的生物神经元的证实,也得到了社会网络中的代理的证实。从前者中,我们得到灵感,设计了一个新的人工神经网络训练程序的中期项目,其中移动神经元只有在适当的空间(接触)中彼此接近时才交换数据。从后者中,我们积累了移动轨迹的经验。我们将重点放在表征神经元接触时间的初步步骤上,这是由具有记忆的随机过程族中的空间过程拟合产生的,其中追逐神经元是由击中目标神经元的目标随机驱动的。因此,我们在该领域的文献中添加了一个前所未有的流动性模型,引入了一个融合了负指数和帕累托分布规律特征的相互接触时间分布规律。我们给出了一个建设性的描述和我们的模型的实现,以及一个简短的解析形式,其参数是根据实验数据的置信区间适当估计的。数值实验表明,该模型和相关的推理工具具有足够的鲁棒性,能够满足在神经网络中应用该模型的两个主要要求:观测到的接触时间的非独立性和模型反演问题推断合适迁移参数的可行性。
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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
发文量
2
审稿时长
8.7 months
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