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基于多尺度空洞卷积的知识图谱表示方法 被引量:1
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作者 杜昊桐 王震 +2 位作者 聂弘毅 姚权铭 李学龙 《中国科学:信息科学》 CSCD 北大核心 2022年第7期1204-1220,共17页
知识图谱嵌入是知识图谱研究中的一项重要课题.它旨在根据已观测到的三元组,学习知识图谱中实体与关系的低维向量表示.知识图谱嵌入在许多下游任务中发挥了巨大作用,例如知识图谱补全、三元组分类.如今,深度模型利用神经网络强大的非线... 知识图谱嵌入是知识图谱研究中的一项重要课题.它旨在根据已观测到的三元组,学习知识图谱中实体与关系的低维向量表示.知识图谱嵌入在许多下游任务中发挥了巨大作用,例如知识图谱补全、三元组分类.如今,深度模型利用神经网络强大的非线性拟合能力,在知识图谱嵌入领域展示出了优异的性能.然而,现有的大多数方法忽略了实体与关系之间的多尺度特征交互,InceptionE是目前唯一考虑到了多尺度交互特征的模型,但由于大量的计算开销导致其很难进行训练.本文提出了一种全新的知识图谱嵌入模型MDCE,它使用多尺度空洞卷积核在不同的尺度空间捕捉丰富的交互特征.同时,MDCE相比于InceptionE方法的计算开销更小.我们在多个基准数据集上进行了大量实验.在链接预测任务上的结果表明,MDCE不仅在性能方面超过了已有的工作,而且更加高效、稳健. 展开更多
关键词 知识图谱 知识图谱嵌入 深层模型 多尺度特征 链接预测 人工智能
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VISTopic:A visual analytics system for making sense of large document collections using hierarchical topic modeling 被引量:1
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作者 Yi Yang quanming yao Huamin Qu 《Visual Informatics》 EI 2017年第1期40-47,共8页
Effective analysis of large text collections remains a challenging problem given the growing volume of available text data.Recently,text mining techniques have been rapidly developed for automatically extracting key i... Effective analysis of large text collections remains a challenging problem given the growing volume of available text data.Recently,text mining techniques have been rapidly developed for automatically extracting key information from massive text data.Topic modeling,as one of the novel techniques that extracts a thematic structure from documents,is widely used to generate text summarization and foster an overall understanding of the corpus content.Although powerful,this technique may not be directly applicable for general analytics scenarios since the topics and topic-document relationship are often presented probabilistically in models.Moreover,information that plays an important role in knowledge discovery,for example,times and authors,is hardly reflected in topic modeling for comprehensive analysis.In this paper,we address this issue by presenting a visual analytics system,VISTopic,to help users make sense of large document collections based on topic modeling.VISTopic first extracts a set of hierarchical topics using a novel hierarchical latent tree model(HLTM)(Liu et al.,2014).In specific,a topic view accounting for the model features is designed for overall understanding and interactive exploration of the topic organization.To leverage multi-perspective information for visual analytics,VISTopic further provides an evolution view to reveal the trend of topics and a document view to show details of topical documents.Three case studies based on the dataset of IEEE VIS conference demonstrate the effectiveness of our system in gaining insights from large document collections. 展开更多
关键词 Topic-modeling Text visualization Visual analytics
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