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An ensemble strategy for Haplotype Inference based on the internal variability of algorithms

机译:基于算法内部变异性的单倍型推理集成策略

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In this paper, we present an ensemble strategy for haplotype inference problem. The proposed approach generates an ensemble solution from several haplotype matrices yielded by a non-deterministic algorithm. We performed extensive experiments and statistical performance evaluation. Besides the inference accuracy based on Switch Error, our analysis controls the execution time as well. The results show that the proposed method: (1) generates more accurate solutions compared to the existing strategies, (2) improves the precision of haplotyping techniques, such as fastPHASE, Beagle, and Mach, and (3) the Beagle based ensemble produced solutions with quality comparable to the more accurate but more computing intensive method: fastPHASE.
机译:在本文中,我们提出了一种针对单倍型推理问题的集成策略。所提出的方法从由非确定性算法产生的几个单倍型矩阵中产生一个整体解。我们进行了广泛的实验和统计性能评估。除了基于“开关错误”的推理准确性外,我们的分析还控制了执行时间。结果表明,所提出的方法:(1)与现有策略相比,生成更准确的解决方案;(2)提高了诸如fastPHASE,Beagle和Mach等单体型技术的精度;(3)基于Beagle的集成生成的解决方案其质量堪比更准确,但计算强度更高的方法:fastPHASE。

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