Increasingly larger datasets have become a standard ingredient to advancing the state of the art in NLP. However, data quality might have already become the bottleneck to unlock further gains. Given the diversity and the sizes of modern datasets, standard data filtering is not straight-forward to apply, because of the multifacetedness of the harmful data and elusiveness of filtering rules that would generalize across multiple tasks. We study the fitness of task-agnostic self-influence scores of training examples for data cleaning, analyze their efficacy in capturing naturally occurring outliers, and investigate to what extent self-influence based data cleaning can improve downstream performance in machine translation, question answering and text classification, building up on recent approaches to self-influence calculation and automated curriculum learning.
翻译:由于现代数据集的多样性和规模,标准数据过滤不能直接应用,因为有害数据的多面性和过滤规则的难以捉摸性会跨越多种任务,我们研究任务、不可知的自我影响培训范例在数据清理方面的适宜性,分析它们在捕捉自然出现的外部线方面的功效,并调查基于自我影响的数据清理在多大程度上能提高机器翻译、问答和文本分类的下游性能,借鉴最近自我影响计算和自动化课程学习的方法。</s>