从噪声数据中学习生物调控和信号网络的过渡模型

Deepika Vatsa, Sumeet Agarwal, A. Srinivasan
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引用次数: 1

摘要

在本文中,我们提出了一个扩展的2步概率LGTS (PLGTS)转移系统,该系统旨在利用时间序列数据识别生物过程的网络结构和随机性。这项工作是向使用转换系统在噪声环境中进行系统识别迈出的一步。这里的噪声指的是观测数据中状态间转换的噪声。有趣的是,数据中的噪声有助于辅助系统识别。在合成数据上的实验结果表明,噪声不仅有助于理解系统动力学,而且约束了解空间;从而帮助识别给定数据集最可能的网络结构。
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Learning transition models of biological regulatory and signaling networks from noisy data
In this paper, we present an extended 2-step probabilistic LGTS (PLGTS) transition system which aims to identify the network structure and stochastic nature of biological processes using time series data. This work is a step towards system identification in a noisy environment using transition systems. Here, the noise implies noise in transitions between states in the observed data. Interestingly, noise in the data helps in assisting system identification. Experimental results on synthetic data show that noise actually helps in understanding the system dynamics as well as constraining the solution space; thus helping to identify the most probable network structure for a given data set.
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