PatentMiner: Patent Vacancy Mining via Context-enhanced and Knowledge-guided Graph Attention
Gaochen Wu, Bin Xu, Yuxin Qin, Fei Kong, Bangchang Liu, Hongwen Zhao,, Dejie Chang

TL;DR
PatentMiner introduces a novel approach combining knowledge graphs and advanced graph attention mechanisms to predict potential patents by mining semantic relationships from patent documents.
Contribution
The paper presents a new patent vacancy prediction method using knowledge graphs and context-enhanced graph attention networks, advancing patent mining techniques.
Findings
Context-enhanced Graph Attention Networks outperform baselines.
Patent knowledge graph construction effectively captures semantic relationships.
Proposed method accurately predicts new potential patents.
Abstract
Although there are a small number of work to conduct patent research by building knowledge graph, but without constructing patent knowledge graph using patent documents and combining latest natural language processing methods to mine hidden rich semantic relationships in existing patents and predict new possible patents. In this paper, we propose a new patent vacancy prediction approach named PatentMiner to mine rich semantic knowledge and predict new potential patents based on knowledge graph (KG) and graph attention mechanism. Firstly, patent knowledge graph over time (e.g. year) is constructed by carrying out named entity recognition and relation extrac-tion from patent documents. Secondly, Common Neighbor Method (CNM), Graph Attention Networks (GAT) and Context-enhanced Graph Attention Networks (CGAT) are proposed to perform link prediction in the constructed knowledge graph to dig…
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Taxonomy
TopicsIntellectual Property and Patents · Computational Drug Discovery Methods
