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Random Hypergraph Models of Learning and Memory in Biomolecular Networks: Shorter-Term Adaptability vs. Longer-Term Persistency

机译:生物分子网络中学习和记忆的随机超图模型:短期适应性与长期持久性

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Recent progress in genomics and proteomics makes it possible to understand the biological networks at the systems level. We aim to develop computational models of learning and memory inspired by the biomolecular networks embedded in their environment. One fundamental question is how the systems rapidly adapt to their changing environment in a short period (learning) while performing persistently through the longer time span (memory). We study this issue in a probabilistic hypergraph model called the hypernetworks. The hypernetwork architecture consists of a huge number of randomly sampled hyperedges, each corresponding to higher-order micromodules in the input. We find that a system consisting of a large number of a wide range of heterogeneous low-dimensional components has a fairly competitive chance of long-term survival (memory, persistency) and short-term performance (learning, adaptability) as opposed to a system consisting of a small number of high-dimensional, fine-tuned, complex components. Empirical evidence is offered to support these findings and theoretical explanations are given
机译:最近的基因组和蛋白质组学的进展使得可以了解系统水平的生物网络。我们的目标是开发由嵌入在其环境中的生物分子网络的学习和记忆的计算模型。一个基本问题是系统如何在短时间内快速适应其变化的环境(学习),同时持久地通过较长的时间跨度(内存)进行持久性。我们在称为HyperNetworks的概率高编程模型中研究了这个问题。 Hypernetwork架构由大量随机采样的超高度组成,每个随机采样的超高度对应于输入中的高阶微模芯片。我们发现,由大量广泛的异构低维组件组成的系统具有相当竞争的长期生存(内存,持久性)和短期性能(学习,适应性)而不是系统的相当竞争力由少量的高维,微调,复杂的组件组成。提供了支持这些发现的经验证据,并提供理论解释

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