The detection and extraction of abbreviations from unstructured texts can help to improve the performance of Natural Language Processing tasks, such as machine translation and information retrieval. However, in terms of publicly available datasets, there is not enough data for training deep-neural-networks-based models to the point of generalising well over data. This paper presents PLOD, a large-scale dataset for abbreviation detection and extraction that contains 160k+ segments automatically annotated with abbreviations and their long forms. We performed manual validation over a set of instances and a complete automatic validation for this dataset. We then used it to generate several baseline models for detecting abbreviations and long forms. The best models achieved an F1-score of 0.92 for abbreviations and 0.89 for detecting their corresponding long forms. We release this dataset along with our code and all the models publicly in https://github.com/surrey-nlp/AbbreviationDetRepo.
翻译:从非结构化文本中探测和提取缩略语可有助于改进自然语言处理任务(如机器翻译和信息检索)的绩效,然而,从公开可得的数据集来看,没有足够数据用于培训深神经网络模型,以致于对数据进行广泛概括。本文介绍了用于检测和提取的大型缩略语数据集PLOD,这是一个大型缩略语数据集,包含160k+段,自动附加缩略语及其长式说明。我们对一组实例进行了人工验证,并完整地自动验证了该数据集。然后,我们用它生成了若干用于探测缩略语和长式的基线模型。最佳模型取得了一个F1-Scre,缩写为0.92,探测相应的长式模型为0.89。我们在https://github.com/surrey-nlp/AbbreviationDetRepo中公开公布了该数据集及其代码和所有模型。我们用https://github.s/surrey-nlp/AbbreviationDetRep。