PQPS:使用RBM和Bi-LSTM的基于现有技术查询的专利摘要

G. Kumaravel, Swamynathan Sankaranarayanan
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引用次数: 3

摘要

对专利的现有技术检索通过对现有技术文件来源的有组织的审查来确定发明的可专利性约束。由于固有的词汇不匹配问题,这种搜索技术带来了挑战。人工完整地处理每一个检索到的相关专利是一项繁琐而耗时的工作,需要自动的专利摘要以方便访问。本文采用深度学习模型进行摘要,因为它们利用了专利中存在的大量数据集来提高摘要的连贯性。本文提出了一种新的专利摘要方法PQPS:基于现有技术查询的专利摘要器,该方法使用受限玻尔兹曼机(RBM)和双向长短期记忆(Bi-LSTM)模型。PQPS还通过使用领域本体和WordNet等知识库进行查询扩展来解决词汇不匹配问题。通过主题建模和引文书目耦合,进一步提高了检索率。实验分析了各种互联智能设备专利样本集。提出的PQPS表明,提取摘要和抽象摘要的可检索性都有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PQPS: Prior-Art Query-Based Patent Summarizer Using RBM and Bi-LSTM
A prior-art search on patents ascertains the patentability constraints of the invention through an organized review of prior-art document sources. This search technique poses challenges because of the inherent vocabulary mismatch problem. Manual processing of every retrieved relevant patent in its entirety is a tedious and time-consuming job that demands automated patent summarization for ease of access. This paper employs deep learning models for summarization as they take advantage of the massive dataset present in the patents to improve the summary coherence. This work presents a novel approach of patent summarization named PQPS: prior-art query-based patent summarizer using restricted Boltzmann machine (RBM) and bidirectional long short-term memory (Bi-LSTM) models. The PQPS also addresses the vocabulary mismatch problem through query expansion with knowledge bases such as domain ontology and WordNet. It further enhances the retrieval rate through topic modeling and bibliographic coupling of citations. The experiments analyze various interlinked smart device patent sample sets. The proposed PQPS demonstrates that retrievability increases both in extractive and abstractive summaries.
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