Data quantity and quality are crucial factors for data-driven learning methods. In some target problem domains, there are not many data samples available, which could significantly hinder the learning process. While data from similar domains may be leveraged to help through domain adaptation, obtaining high-quality labeled data for those source domains themselves could be difficult or costly. To address such challenges on data insufficiency for classification problem in a target domain, we propose a weak adaptation learning (WAL) approach that leverages unlabeled data from a similar source domain, a low-cost weak annotator that produces labels based on task-specific heuristics, labeling rules, or other methods (albeit with inaccuracy), and a small amount of labeled data in the target domain. Our approach first conducts a theoretical analysis on the error bound of the trained classifier with respect to the data quantity and the performance of the weak annotator, and then introduces a multi-stage weak adaptation learning method to learn an accurate classifier by lowering the error bound. Our experiments demonstrate the effectiveness of our approach in learning an accurate classifier with limited labeled data in the target domain and unlabeled data in the source domain.
翻译:数据数量和质量是数据驱动学习方法的关键要素。在某些目标问题领域,现有数据样本不多,可能大大妨碍学习过程。虽然可以通过领域适应来利用类似领域的数据,但获取这些来源领域本身的高质量标签数据可能困难或费用高昂。为了应对数据不足导致目标领域分类问题的挑战,我们建议采用适应学习方法(WAL)薄弱,从类似来源领域利用无标签数据,一个低成本的薄弱警告器,根据任务超常、标签规则或其他方法(尽管不准确)产生标签,以及目标领域少量的标签数据。我们的方法首先对受过训练的分类师在数据数量和薄弱说明器性能方面的错误进行理论分析,然后采用多阶段薄弱的适应学习方法,通过降低错误约束来学习准确的分类器。我们的实验表明,我们的方法在学习精确的分类器方面是有效的,目标领域有有限的标签数据,源领域没有标签数据。