go back

Volume 17, No. 12

VQFT: A Visual Query Approach Based on Full-Text Search for Knowledge Graphs

Authors:
Zhaozhuo Li, Xin Wang, Meng Wang, Yajun Yang, Bohan Li, Dong Han

Abstract

Existing knowledge graph query approaches, whether traditional textual query languages or visual query languages, have steep learning curves that are unfriendly for non-expert users. This demonstration presents a Visual Query approach based on Full-Text search for knowledge graphs, called VQFT, which simplifies the process of querying knowledge graphs for users. Inspired by full-text search techniques, VQFT aims to combine the user-friendliness of visual query with the intuitiveness of full-text search, enabling users to query knowledge graphs as straightforward as using a search engine. Faceted full-text indexes, visual query constructor, and an interactive user interface are designed to achieve this goal. User tests and surveys have demonstrated that VQFT is more user-friendly and easier to learn than existing methods, which simplifies the construction of knowledge graph queries for non-expert users.

PVLDB is part of the VLDB Endowment Inc.

Privacy Policy