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首页> 外文期刊>Neural Computing & Applications >Integrating genomic binding site predictions using real-valued meta classifiers
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Integrating genomic binding site predictions using real-valued meta classifiers

机译:使用实值元分类器整合基因组结合位点预测

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摘要

Currently the best algorithms for predicting transcription factor binding sites in DNA sequences are severely limited in accuracy. There is good reason to believe that predictions from different classes of algorithms could be used in conjunction to improve the quality of predictions. In this paper, we apply single layer networks, rules sets, support vector machines and the Adaboost algorithm to predictions from 12 key real valued algorithms. Furthermore, we use a ‘window’ of consecutive results as the input vector in order to contextualise the neighbouring results. We improve the classification result with the aid of under- and over-sampling techniques. We find that support vector machines and the Adaboost algorithm outperform the original individual algorithms and the other classifiers employed in this work. In particular they give a better tradeoff between recall and precision.
机译:目前,预测DNA序列中转录因子结合位点的最佳算法的准确性受到严格限制。有充分的理由相信,可以结合使用不同类算法的预测来提高预测质量。在本文中,我们将单层网络,规则集,支持向量机和Adaboost算法应用于12种关键实值算法的预测。此外,我们使用连续结果的“窗口”作为输入向量,以便将相邻结果关联起来。我们借助欠采样和过采样技术来改善分类结果。我们发现,支持向量机和Adaboost算法的性能优于原始的单独算法和这项工作中采用的其他分类器。特别是,它们在召回率和精度之间提供了更好的折衷。

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