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Boosting naïve Bayesian learning on a large subset of MEDLINE.

机译:在大量MEDLINE上促进纯朴素的贝叶斯学习。

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摘要

We are concerned with the rating of new documents that appear in a large database (MEDLINE) and are candidates for inclusion in a small specialty database (REBASE). The requirement is to rank the new documents as nearly in order of decreasing potential to be added to the smaller database as possible, so as to improve the coverage of the smaller database without increasing the effort of those who manage this specialty database. To perform this ranking task we have considered several machine learning approaches based on the naï ve Bayesian algorithm. We find that adaptive boosting outperforms naï ve Bayes, but that a new form of boosting which we term staged Bayesian retrieval outperforms adaptive boosting. Staged Bayesian retrieval involves two stages of Bayesian retrieval and we further find that if the second stage is replaced by a support vector machine we again obtain a significant improvement over the strictly Bayesian approach.
机译:我们关注大型数据库(MEDLINE)中出现的新文档的等级,这些新文档是否适合包含在小型专业数据库(REBASE)中。要求是对新文档进行排名,以便尽可能地减小添加到较小数据库中的可能性,以便在不增加管理该专业数据库的人员的工作的情况下提高较小数据库的覆盖范围。为了执行此排名任务,我们考虑了基于朴素贝叶斯算法的几种机器学习方法。我们发现自适应提升优于单纯的贝叶斯,但是我们称之为阶段贝叶斯检索的一种新型提升优于自适应提升。阶段性贝叶斯检索涉及贝叶斯检索的两个阶段,我们进一步发现,如果第二阶段被支持向量机代替,我们将再次获得比严格贝叶斯方法明显的改进。

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