Query2GMM: Learning Representation with Gaussian Mixture Model for Reasoning over Knowledge Graphs

06/17/2023
by   Yuhan Wu, et al.
0

Logical query answering over Knowledge Graphs (KGs) is a fundamental yet complex task. A promising approach to achieve this is to embed queries and entities jointly into the same embedding space. Research along this line suggests that using multi-modal distribution to represent answer entities is more suitable than uni-modal distribution, as a single query may contain multiple disjoint answer subsets due to the compositional nature of multi-hop queries and the varying latent semantics of relations. However, existing methods based on multi-modal distribution roughly represent each subset without capturing its accurate cardinality, or even degenerate into uni-modal distribution learning during the reasoning process due to the lack of an effective similarity measure. To better model queries with diversified answers, we propose Query2GMM for answering logical queries over knowledge graphs. In Query2GMM, we present the GMM embedding to represent each query using a univariate Gaussian Mixture Model (GMM). Each subset of a query is encoded by its cardinality, semantic center and dispersion degree, allowing for precise representation of multiple subsets. Then we design specific neural networks for each operator to handle the inherent complexity that comes with multi-modal distribution while alleviating the cascading errors. Last, we define a new similarity measure to assess the relationships between an entity and a query's multi-answer subsets, enabling effective multi-modal distribution learning for reasoning. Comprehensive experimental results show that Query2GMM outperforms the best competitor by an absolute average of 5.5%. The source code is available at <https://anonymous.4open.science/r/Query2GMM-C42F>.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/28/2023

LitCQD: Multi-Hop Reasoning in Incomplete Knowledge Graphs with Numeric Literals

Most real-world knowledge graphs, including Wikidata, DBpedia, and Yago ...
research
06/15/2021

Query Embedding on Hyper-relational Knowledge Graphs

Multi-hop logical reasoning is an established problem in the field of re...
research
01/28/2019

Multi-modal dialog for browsing large visual catalogs using exploration-exploitation paradigm in a joint embedding space

We present a multi-modal dialog system to assist online shoppers in visu...
research
10/13/2022

Inductive Logical Query Answering in Knowledge Graphs

Formulating and answering logical queries is a standard communication in...
research
09/03/2022

MMKGR: Multi-hop Multi-modal Knowledge Graph Reasoning

Multi-modal knowledge graphs (MKGs) include not only the relation triple...
research
10/26/2021

Probabilistic Entity Representation Model for Reasoning over Knowledge Graphs

Logical reasoning over Knowledge Graphs (KGs) is a fundamental technique...
research
06/17/2023

Do as I can, not as I get: Topology-aware multi-hop reasoning on multi-modal knowledge graphs

Multi-modal knowledge graph (MKG) includes triplets that consist of enti...

Please sign up or login with your details

Forgot password? Click here to reset