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Logic Embeddings for Complex Query Answering

Authors :
Luus, Francois
Sen, Prithviraj
Kapanipathi, Pavan
Riegel, Ryan
Makondo, Ndivhuwo
Lebese, Thabang
Gray, Alexander
Publication Year :
2021

Abstract

Answering logical queries over incomplete knowledge bases is challenging because: 1) it calls for implicit link prediction, and 2) brute force answering of existential first-order logic queries is exponential in the number of existential variables. Recent work of query embeddings provides fast querying, but most approaches model set logic with closed regions, so lack negation. Query embeddings that do support negation use densities that suffer drawbacks: 1) only improvise logic, 2) use expensive distributions, and 3) poorly model answer uncertainty. In this paper, we propose Logic Embeddings, a new approach to embedding complex queries that uses Skolemisation to eliminate existential variables for efficient querying. It supports negation, but improves on density approaches: 1) integrates well-studied t-norm logic and directly evaluates satisfiability, 2) simplifies modeling with truth values, and 3) models uncertainty with truth bounds. Logic Embeddings are competitively fast and accurate in query answering over large, incomplete knowledge graphs, outperform on negation queries, and in particular, provide improved modeling of answer uncertainty as evidenced by a superior correlation between answer set size and embedding entropy.<br />Comment: IBM Research

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2103.00418
Document Type :
Working Paper