论文标题
使用知识图嵌入社会政治的关系学习分析
Relational Learning Analysis of Social Politics using Knowledge Graph Embedding
论文作者
论文摘要
知识图(KGS)最近引起了学术界和行业的广泛关注。实际上,结合图技术和各种图形数据集的大量数据使研究社区构建了复杂的图形分析工具。因此,KGS的应用已扩展以解决不同领域中的许多现实生活问题。尽管当前繁殖的通用kg含量丰富,但仍有至关重要的需要构建域特异性kg。此外,在建造和增强KG的过程中,应吸收质量和信誉,尤其是从社交媒体数据等混合质量资源传播的KG。本文提出了一个新型的基于信誉域的KG嵌入框架。该框架涉及捕获从异质资源获得的数据融合到由域本体论描绘的正式kg表示中。所提出的方法利用各种基于知识的存储库来丰富文本内容的语义,从而促进信息的互操作性。所提出的框架还体现了一个信誉模块,以确保数据质量和可信度。然后使用多种嵌入技术将构造的kg嵌入在低维语义上的空间中。在链接预测,群集和可视化任务上证明并证实了构造的kg及其嵌入的效用。
Knowledge Graphs (KGs) have gained considerable attention recently from both academia and industry. In fact, incorporating graph technology and the copious of various graph datasets have led the research community to build sophisticated graph analytics tools. Therefore, the application of KGs has extended to tackle a plethora of real-life problems in dissimilar domains. Despite the abundance of the currently proliferated generic KGs, there is a vital need to construct domain-specific KGs. Further, quality and credibility should be assimilated in the process of constructing and augmenting KGs, particularly those propagated from mixed-quality resources such as social media data. This paper presents a novel credibility domain-based KG Embedding framework. This framework involves capturing a fusion of data obtained from heterogeneous resources into a formal KG representation depicted by a domain ontology. The proposed approach makes use of various knowledge-based repositories to enrich the semantics of the textual contents, thereby facilitating the interoperability of information. The proposed framework also embodies a credibility module to ensure data quality and trustworthiness. The constructed KG is then embedded in a low-dimension semantically-continuous space using several embedding techniques. The utility of the constructed KG and its embeddings is demonstrated and substantiated on link prediction, clustering, and visualisation tasks.