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首页> 外文期刊>Journal of machine learning research >Unsupervised Evaluation and Weighted Aggregation of Ranked Classification Predictions
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Unsupervised Evaluation and Weighted Aggregation of Ranked Classification Predictions

机译:对排名分类预测的无监督评估和加权汇总

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Ensemble methods that aggregate predictions from a set of diverse base learners consistently outperform individual classifiers. Many such popular strategies have been developed in a supervised setting, where the sample labels have been provided to the ensemble algorithm. However, with the rising interest in unsupervised algorithms for machine learning and growing amounts of uncurated data, the reliance on labeled data precludes the application of ensemble algorithms to many real world problems. To this end we develop a new theoretical framework for ensemble learning, the Strategy for Unsupervised Multiple Method Aggregation (SUMMA), that estimates the performances of base classifiers and uses these estimates to form an ensemble classifier. SUMMA also generates an ensemble ranking of samples based on the confidence score it assigns to each sample. We illustrate the performance of SUMMA using a synthetic example as well as two real world problems.
机译:合奏方法,从一组各种基础学习者聚合预测始终优于单个分类器。 许多这样的流行策略已经在监督设置中开发,其中示例标签已经提供给集合算法。 然而,随着对机器学习的无监督算法的兴趣升高,越来越多的未经保质的数据,对标记数据的依赖阻止了集合算法在许多现实世界问题中的应用。 为此,我们开发了一个新的集合学习理论框架,估计基本分类器的性能并使用这些估计来形成集合分类器的策略。 Summa还基于其分配给每个样本的置信度分数来生成样本的集合排名。 我们说明了使用综合性示例以及两个现实世界问题的汇总的性能。

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