Learning Patent Speak: Investigating Domain-Specific Word Embeddings

Julian Risch, Ralf Krestel
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引用次数: 4

Abstract

A patent examiner needs domain-specific knowledge to classify a patent application according to its field of invention. Standardized classification schemes help to compare a patent application to previously granted patents and thereby check its novelty. Due to the large volume of patents, automatic patent classification would be highly beneficial to patent offices and other stakeholders in the patent domain. However, a challenge for the automation of this costly manual task is the patent-specific language use. To facilitate this task, we present domain-specific pre-trained word embeddings for the patent domain. We trained our model on a very large dataset of more than 5 million patents to learn the language use in this domain. We evaluated the quality of the resulting embeddings in the context of patent classification. To this end, we propose a deep learning approach based on gated recurrent units for automatic patent classification built on the trained word embeddings. Experiments on a standardized evaluation dataset show that our approach increases average precision for patent classification by 17 percent compared to state-of-the-art approaches.
学习专利语言:研究特定领域的词嵌入
专利审查员需要特定领域的知识来根据其发明领域对专利申请进行分类。标准化分类方案有助于将专利申请与先前授予的专利进行比较,从而检查其新颖性。由于专利数量庞大,专利自动分类对专利局和专利领域的其他利益相关者非常有利。然而,自动化这项昂贵的手工任务的一个挑战是特定于专利的语言使用。为了方便完成这项任务,我们提出了针对专利领域的特定领域的预训练词嵌入。我们在一个超过500万专利的大数据集上训练我们的模型,以学习该领域的语言使用。我们在专利分类的背景下评估了结果嵌入的质量。为此,我们提出了一种基于门控循环单元的深度学习方法,用于基于训练好的词嵌入的自动专利分类。在标准化评估数据集上的实验表明,与最先进的方法相比,我们的方法将专利分类的平均精度提高了17%。
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