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Semantic variation operators for multidimensional genetic programming. 多维遗传规划的语义变异算子。
William La Cava, Jason H Moore

Multidimensional genetic programming represents candidate solutions as sets of programs, and thereby provides an interesting framework for exploiting building block identification. Towards this goal, we investigate the use of machine learning as a way to bias which components of programs are promoted, and propose two semantic operators to choose where useful building blocks are placed during crossover. A forward stagewise crossover operator we propose leads to significant improvements on a set of regression problems, and produces state-of-the-art results in a large benchmark study. We discuss this architecture and others in terms of their propensity for allowing heuristic search to utilize information during the evolutionary process. Finally, we look at the collinearity and complexity of the data representations that result from these architectures, with a view towards disentangling factors of variation in application.

多维遗传规划将候选解决方案表示为程序集,从而为开发构建块识别提供了一个有趣的框架。为了实现这一目标,我们研究了机器学习的使用,作为一种偏向于哪些程序组件被提升的方法,并提出了两个语义算子来选择在交叉过程中放置有用的构建块的位置。我们提出的前向阶段交叉算子可以显著改善一系列回归问题,并在大型基准研究中产生最先进的结果。我们将讨论这种架构和其他架构,因为它们倾向于允许启发式搜索在进化过程中利用信息。最后,我们着眼于从这些体系结构中产生的数据表示的共线性和复杂性,以期解开应用中变化的因素。
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引用次数: 15
GA-Based Selection of Vaginal Microbiome Features Associated with Bacterial Vaginosis. 与细菌性阴道病相关的基于ga的阴道微生物组特征选择。
Joi Carter, Daniel Beck, Henry Williams, James Foster, Gerry Dozier

In this paper, we successfully apply GEFeS (Genetic & Evolutionary Feature Selection) to identify the key features in the human vaginal microbiome and in patient meta-data that are associated with bacterial vaginosis (BV). The vaginal microbiome is the community of bacteria found in a patient, and meta-data include behavioral practices and demographic information. Bacterial vaginosis is a disease that afflicts nearly one third of all women, but the current diagnostics are crude at best. We describe two types of classifies for BV diagnosis, and show that each is associated with one of two treatments. Our results show that the classifiers associated with the 'Treat Any Symptom' version have better performances that the classifier associated with the 'Treat Based on N-Score Value'. Our long term objective is to develop a more accurate and objective diagnosis and treatment of BV.

在本文中,我们成功地应用GEFeS(遗传和进化特征选择)来识别人类阴道微生物组和患者元数据中与细菌性阴道病(BV)相关的关键特征。阴道微生物群是在患者体内发现的细菌群落,元数据包括行为习惯和人口统计信息。细菌性阴道病是一种折磨着近三分之一女性的疾病,但目前的诊断充其量是粗略的。我们描述了细菌性阴道炎诊断的两种类型,并表明每种类型都与两种治疗方法中的一种相关。我们的结果表明,与“治疗任何症状”版本相关的分类器比与“基于N-Score值治疗”相关的分类器具有更好的性能。我们的长期目标是开发更准确和客观的细菌性阴道炎诊断和治疗方法。
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引用次数: 7
Initialization Parameter Sweep in ATHENA: Optimizing Neural Networks for Detecting Gene-Gene Interactions in the Presence of Small Main Effects. 雅典娜初始化参数扫描:优化神经网络检测基因-基因相互作用的存在小主效应。
Emily R Holzinger, Carrie C Buchanan, Scott M Dudek, Eric C Torstenson, Stephen D Turner, Marylyn D Ritchie

Recent advances in genotyping technology have led to the generation of an enormous quantity of genetic data. Traditional methods of statistical analysis have proved insufficient in extracting all of the information about the genetic components of common, complex human diseases. A contributing factor to the problem of analysis is that amongst the small main effects of each single gene on disease susceptibility, there are non-linear, gene-gene interactions that can be difficult for traditional, parametric analyses to detect. In addition, exhaustively searching all multi-locus combinations has proved computationally impractical. Novel strategies for analysis have been developed to address these issues. The Analysis Tool for Heritable and Environmental Network Associations (ATHENA) is an analytical tool that incorporates grammatical evolution neural networks (GENN) to detect interactions among genetic factors. Initial parameters define how the evolutionary process will be implemented. This research addresses how different parameter settings affect detection of disease models involving interactions. In the current study, we iterate over multiple parameter values to determine which combinations appear optimal for detecting interactions in simulated data for multiple genetic models. Our results indicate that the factors that have the greatest influence on detection are: input variable encoding, population size, and parallel computation.

基因分型技术的最新进展导致了大量遗传数据的产生。传统的统计分析方法已被证明不足以提取有关常见、复杂的人类疾病的遗传成分的所有信息。造成分析问题的一个因素是,在每个单一基因对疾病易感性的微小主要影响中,存在非线性的基因-基因相互作用,这对于传统的参数分析来说很难检测到。此外,穷举搜索所有多位点组合已被证明在计算上是不切实际的。为了解决这些问题,已经开发了新的分析策略。遗传与环境网络关联分析工具(ATHENA)是一种结合语法进化神经网络(GENN)来检测遗传因素之间相互作用的分析工具。初始参数定义了进化过程将如何实现。这项研究解决了不同的参数设置如何影响涉及相互作用的疾病模型的检测。在目前的研究中,我们对多个参数值进行迭代,以确定在多个遗传模型的模拟数据中,哪种组合最适合检测相互作用。我们的研究结果表明,对检测影响最大的因素是:输入变量编码、人口规模和并行计算。
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引用次数: 22
Sensible Initialization Using Expert Knowledge for Genome-Wide Analysis of Epistasis Using Genetic Programming. 利用专家知识进行上位性全基因组分析的合理初始化。
Casey S Greene, Bill C White, Jason H Moore

In human genetics it is now possible to measure large numbers of DNA sequence variations across the human genome. Given current knowledge about biological networks and disease processes it seems likely that disease risk can best be modeled by interactions between biological components, which may be examined as interacting DNA sequence variations. The machine learning challenge is to effectively explore interactions in these datasets to identify combinations of variations which are predictive of common human diseases. Genetic programming is a promising approach to this problem. The goal of this study is to examine the role that an expert knowledge aware initializer can play in the framework of genetic programming. We show that this expert knowledge aware initializer outperforms both a random initializer and an enumerative initializer.

在人类遗传学中,现在可以测量人类基因组中大量的DNA序列变化。鉴于目前关于生物网络和疾病过程的知识,疾病风险似乎可以通过生物成分之间的相互作用来最好地建模,这种相互作用可以作为相互作用的DNA序列变化进行检查。机器学习的挑战是有效地探索这些数据集中的相互作用,以识别预测常见人类疾病的变异组合。遗传规划是解决这一问题的一种很有前途的方法。本研究的目的是检验专家知识感知初始化器在遗传规划框架中可以发挥的作用。我们证明了这种专家知识感知的初始化器优于随机初始化器和枚举初始化器。
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引用次数: 14
Mask functions for the symbolic modeling of epistasis using genetic programming 使用遗传规划的上位性符号建模的掩码函数
R. Urbanowicz, Nate Barney, B. C. White, J. Moore
The study of common, complex multifactorial diseases in genetic epidemiology is complicated by nonlinearity in the genotype-to-phenotype mapping relationship that is due, in part, to epistasis or gene-gene interactions. Symobolic discriminant analysis (SDA) is a flexible modeling approach which uses genetic programming (GP) to evolve an optimal predictive model using a predefined collection of mathematical functions, constants, and attributes. This has been shown to be an effective strategy for modeling epistasis. In the present study, we introduce the genetic .mask. as a novel building block which exploits expert knowledge in the form of a pre-constructed relationship between two attributes. The goal of this study was to determine whether the availability of.mask.building blocks improves SDA performance. The results of this study support the idea that pre-processing data improves GP performance.
遗传流行病学中常见的、复杂的多因素疾病的研究由于基因型-表型作图关系的非线性而变得复杂,这在一定程度上是由于上位性或基因-基因相互作用。符号判别分析(SDA)是一种灵活的建模方法,它使用遗传规划(GP)利用预定义的数学函数、常数和属性集合来进化出最优的预测模型。这已被证明是一个有效的策略建模上位。在本研究中,我们介绍了遗传掩膜。作为一种新的构建块,它以两个属性之间预先构建的关系的形式利用专家知识。本研究的目的是确定.mask.构建块的可用性是否能提高SDA的性能。本研究的结果支持了预处理数据可以提高GP性能的观点。
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引用次数: 4
Mask Functions for the Symbolic Modeling of Epistasis Using Genetic Programming. 基于遗传规划的上位性符号建模的掩模函数。
Ryan J Urbanowicz, Bill C White, Jason H Moore

The study of common, complex multifactorial diseases in genetic epidemiology is complicated by nonlinearity in the genotype-to-phenotype mapping relationship that is due, in part, to epistasis or gene-gene interactions. Symobolic discriminant analysis (SDA) is a flexible modeling approach which uses genetic programming (GP) to evolve an optimal predictive model using a predefined collection of mathematical functions, constants, and attributes. This has been shown to be an effective strategy for modeling epistasis. In the present study, we introduce the genetic "mask" as a novel building block which exploits expert knowledge in the form of a pre-constructed relationship between two attributes. The goal of this study was to determine whether the availability of "mask" building blocks improves SDA performance. The results of this study support the idea that pre-processing data improves GP performance.

遗传流行病学中常见的、复杂的多因素疾病的研究由于基因型-表型作图关系的非线性而变得复杂,这在一定程度上是由于上位性或基因-基因相互作用。符号判别分析(SDA)是一种灵活的建模方法,它使用遗传规划(GP)利用预定义的数学函数、常数和属性集合来进化出最优的预测模型。这已被证明是一个有效的策略建模上位。在本研究中,我们引入了遗传“面具”作为一种新的构建块,它以两个属性之间预先构建的关系的形式利用专家知识。本研究的目的是确定“掩模”构建块的可用性是否能提高SDA的性能。本研究的结果支持了预处理数据可以提高GP性能的观点。
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引用次数: 0
A Balanced Accuracy Fitness Function Leads to Robust Analysis using Grammatical Evolution Neural Networks in the Case of Class Imbalance. 在类不平衡的情况下,平衡的准确度适应度函数使语法进化神经网络具有鲁棒性分析。
Nicholas E Hardison, Theresa J Fanelli, Scott M Dudek, David M Reif, Marylyn D Ritchie, Alison A Motsinger-Reif

Grammatical Evolution Neural Networks (GENN) is a computational method designed to detect gene-gene interactions in genetic epidemiology, but has so far only been evaluated in situations with balanced numbers of cases and controls. Real data, however, rarely has such perfectly balanced classes. In the current study, we test the power of GENN to detect interactions in data with a range of class imbalance using two fitness functions (classification error and balanced error), as well as data re-sampling. We show that when using classification error, class imbalance greatly decreases the power of GENN. Re-sampling methods demonstrated improved power, but using balanced accuracy resulted in the highest power. Based on the results of this study, balanced error has replaced classification error in the GENN algorithm.

语法进化神经网络(GENN)是一种用于检测遗传流行病学中基因-基因相互作用的计算方法,但迄今为止仅在病例和对照数量平衡的情况下进行了评估。然而,真实的数据很少有如此完美平衡的类。在当前的研究中,我们使用两个适应度函数(分类误差和平衡误差)以及数据重采样来测试GENN在具有一定类别不平衡范围的数据中检测相互作用的能力。我们发现,当使用分类误差时,类不平衡大大降低了GENN的功率。重新采样方法证明了改进的功率,但使用平衡精度导致最高功率。根据本研究的结果,平衡误差已经取代了GENN算法中的分类误差。
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引用次数: 4
Alternative Cross-Over Strategies and Selection Techniques for Grammatical Evolution Optimized Neural Networks. 语法进化优化神经网络的替代交叉策略和选择技术。
Alison A Motsinger, Lance W Hahn, Scott M Dudek, Kelli K Ryckman, Marylyn D Ritchie
One of the most difficult challenges in human genetics is the identification and characterization of susceptibility genes for common complex human diseases. The presence of gene-gene and gene-environment interactions comprising the genetic architecture of these diseases presents a substantial statistical challenge. As the field pushes toward genome-wide association studies with hundreds of thousands, or even millions, of variables, the development of novel statistical and computational methods is a necessity. Previously, we introduced a grammatical evolution optimized NN (GENN) to improve upon the trial-and-error process of choosing an optimal architecture for a pure feed-forward back propagation neural network. GENN optimizes the inputs from a large pool of variables, the weights, and the connectivity of the network - including the number of hidden layers and the number of nodes in the hidden layer. Thus, the algorithm automatically generates optimal neural network architecture for a given data set. Like all evolutionary computing algorithms, grammatical evolution relies on evolutionary operators like crossover and selection to learn the best solution for a given dataset. We wanted to understand the effect of fitness proportionate versus ordinal selection schemes, and the effect of standard and novel crossover strategies on the performance of GENN.
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引用次数: 13
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Genetic and Evolutionary Computation Conference : [proceedings]. Genetic and Evolutionary Computation Conference
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