计算机科学
语义学(计算机科学)
代表(政治)
路径(计算)
情报检索
领域(数学)
透视图(图形)
条件随机场
语义计算
语义网络
语义解释
自然语言处理
语义相似性
人工智能
实体-关系模型
主题模型
语义网
口译(哲学)
语义数据模型
语义角色标注
特征(语言学)
语义分析(机器学习)
知识表示与推理
分布语义学
主题地图
信息抽取
深度学习
语义特征
语义记忆
作者
Jinzhu Zhang,Yue Liu,Linqi Jiang,Jialu Shi
标识
DOI:10.1108/ajim-03-2022-0124
摘要
Purpose This paper aims to propose a method for better discovering topic evolution path and semantic relationship from the perspective of patent entity extraction and semantic representation. On the one hand, this paper identifies entities that have the same semantics but different expressions for accurate topic evolution path discovery. On the other hand, this paper reveals semantic relationships of topic evolution for better understanding what leads to topic evolution. Design/methodology/approach Firstly, a Bi-LSTM-CRF (bidirectional long short-term memory with conditional random field) model is designed for patent entity extraction and a representation learning method is constructed for patent entity representation. Secondly, a method based on knowledge outflow and inflow is proposed for discovering topic evolution path, by identifying and computing semantic common entities among topics. Finally, multiple semantic relationships among patent entities are pre-designed according to a specific domain, and then the semantic relationship among topics is identified through the proportion of different types of semantic relationships belonging to each topic. Findings In the field of UAV (unmanned aerial vehicle), this method identifies semantic common entities which have the same semantics but different expressions. In addition, this method better discovers topic evolution paths by comparison with a traditional method. Finally, this method identifies different semantic relationships among topics, which gives a detailed description for understanding and interpretation of topic evolution. These results prove that the proposed method is effective and useful. Simultaneously, this method is a preliminary study and still needs to be further investigated on other datasets using multiple emerging deep learning methods. Originality/value This work provides a new perspective for topic evolution analysis by considering semantic representation of patent entities. The authors design a method for discovering topic evolution paths by considering knowledge flow computed by semantic common entities, which can be easily extended to other patent mining-related tasks. This work is the first attempt to reveal semantic relationships among topics for a precise and detailed description of topic evolution.
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