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Exploring Neural Network Models with Hierarchical Memories and Their Use in Modeling Biological Systems.

机译:探索具有分层记忆的神经网络模型及其在生物系统建模中的用途。

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摘要

Energy landscapes are often used as metaphors for phenomena in biology, social sciences and finance. Different methods have been implemented in the past for the construction of energy landscapes. Neural network models based on spin glass physics provide an excellent mathematical framework for the construction of energy landscapes. This framework uses a minimal number of parameters and constructs the landscape using data from the actual phenomena. In the past neural network models were used to mimic the storage and retrieval process of memories (patterns) in the brain. With advances in the field now, these models are being used in machine learning, deep learning and modeling of complex phenomena.;Most of the past literature focuses on increasing the storage capacity and stability of stored patterns in the network but does not study these models from a modeling perspective or an energy landscape perspective. This dissertation focuses on neural network models both from a modeling perspective and from an energy landscape perspective. I firstly show how the cellular interconversion phenomenon can be modeled as a transition between attractor states on an epigenetic landscape constructed using neural network models. The model allows the identification of a reaction coordinate of cellular interconversion by analyzing experimental and simulation time course data. Monte Carlo simulations of the model show that the initial phase of cellular interconversion is a Poisson process and the later phase of cellular interconversion is a deterministic process.;Secondly, I explore the static features of landscapes generated using neural network models, such as sizes of basins of attraction and densities of metastable states. The simulation results show that the static landscape features are strongly dependent on the correlation strength and correlation structure between patterns. Using different hierarchical structures of the correlation between patterns affects the landscape features. These results show how the static landscape features can be controlled by adjusting the correlations between patterns.;Finally, I explore the dynamical features of landscapes generated using neural network models such as the stability of minima and the transition rates between minima. The results from this project show that the stability depends on the correlations between patterns. It is also found that the transition rates between minima strongly depend on the type of bias applied and the correlation between patterns. The results from this part of the dissertation can be useful in engineering an energy landscape without even having the complete information about the associated minima of the landscape.
机译:能源景观通常被用作生物学,社会科学和金融学中现象的隐喻。过去已经采用了不同的方法来构建能源景观。基于自旋玻璃物理学的神经网络模型为构造能量景观提供了极好的数学框架。该框架使用最少数量的参数,并使用来自实际现象的数据构建景观。过去,神经网络模型用于模仿大脑中记忆(模式)的存储和检索过程。随着领域的发展,这些模型已用于机器学习,深度学习和复杂现象的建模中;;过去的大多数文献都致力于提高网络中存储模式的存储容量和稳定性,但并未研究这些模型从建模角度或能源格局角度来看。本文从建模的角度和从能源格局的角度着眼于神经网络模型。首先,我展示了如何将细胞互转换现象建模为使用神经网络模型构建的表观遗传景观上的吸引子状态之间的过渡。该模型可以通过分析实验和仿真时程数据来识别细胞互转换的反应坐标。该模型的蒙特卡洛模拟显示,细胞互转换的初始阶段是一个泊松过程,而细胞互转换的后期是确定性过程。其次,我探索了使用神经网络模型生成的景观的静态特征,例如吸引盆地和亚稳态密度。仿真结果表明,静态景观特征强烈依赖于图案之间的相关强度和相关结构。使用图案之间的相关性的不同层次结构会影响景观特征。这些结果说明了如何通过调整图案之间的相关性来控制静态景观特征。最后,我探索了使用神经网络模型生成的景观的动态特征,例如最小值的稳定性和最小值之间的转换率。该项目的结果表明,稳定性取决于模式之间的相关性。还发现最小值之间的过渡速率强烈取决于所施加的偏置的类型以及模式之间的相关性。论文这一部分的结果可能对工程能源景观很有用,甚至没有关于景观相关极小值的完整信息。

著录项

  • 作者

    Pusuluri, Sai Teja.;

  • 作者单位

    Ohio University.;

  • 授予单位 Ohio University.;
  • 学科 Physics.;Genetics.;Condensed matter physics.;Bioinformatics.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 142 p.
  • 总页数 142
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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