首页> 外文会议>Panhellenic Conference Informatics(PCI 2005); 20051111-13; Volos(GR) >Improving the Accuracy of Classifiers for the Prediction of Translation Initiation Sites in Genomic Sequences
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Improving the Accuracy of Classifiers for the Prediction of Translation Initiation Sites in Genomic Sequences

机译:提高分类器预测基因组序列中翻译起始位点的准确性

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摘要

The prediction of the Translation Initiation Site (TIS) in a genomic sequence is an important issue in biological research. Although several methods have been proposed to deal with this problem, there is a great potential for the improvement of the accuracy of these methods. Due to various reasons, including noise in the data as well as biological reasons, TIS prediction is still an open problem and definitely not a trivial task. In this paper we follow a three-step approach in order to increase TIS prediction accuracy. In the first step, we use a feature generation algorithm we developed. In the second step, all the candidate features, including some new ones generated by our algorithm, are ranked according to their impact to the accuracy of the prediction. Finally, in the third step, a classification model is built using a number of the top ranked features. We experiment with various feature sets, feature selection methods and classification algorithms, compare with alternative methods, draw important conclusions and propose improved models with respect to prediction accuracy.
机译:基因组序列中翻译起始位点(TIS)的预测是生物学研究中的重要问题。尽管已经提出了几种方法来解决这个问题,但是仍有很大的潜力可以提高这些方法的准确性。由于各种原因,包括数据中的噪声以及生物学原因,TIS预测仍然是一个未解决的问题,绝对不是一件容易的事。在本文中,我们遵循三步法来提高TIS预测精度。第一步,我们使用开发的特征生成算法。第二步,根据所有候选特征对预测准确性的影响,对所有候选特征进行排序,包括由我们的算法生成的一些新特征。最后,在第三步中,使用许多排名最高的要素构建分类模型。我们尝试了各种特征集,特征选择方法和分类算法,与替代方法进行比较,得出重要结论,并就预测准确性提出了改进的模型。

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