A Novel Contrast Co-learning Framework for Generating High Quality Training Data

Zeyu Zheng, Jun Yan, Shuicheng Yan, Ning Liu, Zheng Chen, Ming Zhang
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引用次数: 1

Abstract

The good performances of most classical learning algorithms are generally founded on high quality training data, which are clean and unbiased. The availability of such data is however becoming much harder than ever in many real world problems due to the difficulties in collecting large scale unbiased data and precisely labeling them for training. In this paper, we propose a general Contrast Co-learning (CCL) framework to refine the biased and noisy training data when an unbiased yet unlabeled data pool is available. CCL starts with multiple sets of probably biased and noisy training data and trains a set of classifiers individually. Then under the assumption that the confidently classified data samples may have higher probabilities to be correctly classified, CCL iteratively and automatically filtering out possible data noises as well as adding those confidently classified samples from the unlabeled data pool to correct the bias. Through this process, we can generate a cleaner and unbiased training dataset with theoretical guarantees. Extensive experiments on two public text datasets clearly show that CCL consistently improves the algorithmic classification performance on biased and noisy training data compared with several state-of-the-art classical algorithms.
生成高质量训练数据的新型对比协同学习框架
大多数经典学习算法的良好性能通常建立在高质量的训练数据上,这些训练数据是干净和无偏的。然而,在许多现实世界的问题中,由于难以收集大规模的无偏数据并精确地标记它们以供训练,因此获得此类数据变得比以往任何时候都要困难得多。在本文中,我们提出了一个通用的对比共同学习(CCL)框架,用于在无偏但未标记的数据池可用时精炼有偏和有噪声的训练数据。CCL从多组可能有偏差和有噪声的训练数据开始,并单独训练一组分类器。然后,假设自信分类的数据样本可能具有更高的正确分类概率,迭代并自动过滤掉可能的数据噪声,并从未标记的数据池中添加自信分类的样本来纠正偏差。通过这个过程,我们可以生成一个有理论保证的更干净、无偏的训练数据集。在两个公共文本数据集上进行的大量实验清楚地表明,与几种最先进的经典算法相比,CCL在有偏见和有噪声的训练数据上持续提高了算法的分类性能。
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