Supervised Question Answering systems (QA systems) rely on domain-specific human-labeled data for training. Unsupervised QA systems generate their own question-answer training pairs, typically using secondary knowledge sources to achieve this outcome. Our approach (called PIE-QG) uses Open Information Extraction (OpenIE) to generate synthetic training questions from paraphrased passages and uses the question-answer pairs as training data for a language model for a state-of-the-art QA system based on BERT. Triples in the form of <subject, predicate, object> are extracted from each passage, and questions are formed with subjects (or objects) and predicates while objects (or subjects) are considered as answers. Experimenting on five extractive QA datasets demonstrates that our technique achieves on-par performance with existing state-of-the-art QA systems with the benefit of being trained on an order of magnitude fewer documents and without any recourse to external reference data sources.
翻译:受监督的问答系统(QA系统)依靠特定领域的人类标签数据进行培训。不受监督的质量保证系统产生自己的问答培训配对,通常使用次级知识来源实现这一结果。我们的方法(称为PIE-QG)使用开放信息提取系统(Open Information Information Interproduct Expliton)(OpenIE)来生成来自解释段落的合成培训问题,并将问答配对作为基于BERT的先进质量控制系统语言模型的培训数据。每个通道都提取了“主题、上游、对象”形式的三重数据,在对象(或对象)和上游形成问题,而对象(或主体)则被视为答案。对五个“采掘质量”数据集的实验表明,我们的技术通过现有最先进的QA系统实现平行性能,其好处是在数量较少的文件上接受培训,而无需任何外部参考数据源。