Rule learning approaches for knowledge graph completion are efficient, interpretable and competitive to purely neural models. The rule aggregation problem is concerned with finding one plausibility score for a candidate fact which was simultaneously predicted by multiple rules. Although the problem is ubiquitous, as data-driven rule learning can result in noisy and large rulesets, it is underrepresented in the literature and its theoretical foundations have not been studied before in this context. In this work, we demonstrate that existing aggregation approaches can be expressed as marginal inference operations over the predicting rules. In particular, we show that the common Max-aggregation strategy, which scores candidates based on the ru...
With recent advancements in knowledge extraction and knowledge management systems, an enormous numb...
Knowledge Graphs (KGs) are becoming increasingly essential infrastructures in many applications whil...
Knowledge graph (KG) reasoning is an important problem for knowledge graphs. It predicts missing lin...
Rule learning approaches for knowledge graph completion are efficient, interpretable and competitive...
We explore data-driven rule aggregation based on latent feature representations in the context of kn...
Knowledge Graphs (KGs) play an important role in various information systems and have application in...
Knowledge graphs (KGs) facilitate a wide variety of applications due to their ability to store relat...
Ph.D. (Integrated) ThesisExpressing and extracting regularities in multi-relational data, where data...
Over the recent years embeddings have attracted increasing research focus as a means for knowledge g...
Knowledge Graphs (KGs) proliferating on the Web are well known to be incomplete. Much research has b...
International audienceKnowledge graphs (KGs) are huge collections of primarily encyclopedic facts th...
Knowledge graphs (KGs) proliferating on theWeb are known to be incomplete. Much research has been pr...
Large-scale knowledge graphs provide structured representations of human knowledge. However, as it i...
Abstract Knowledge graph (KG) fact prediction aims to complete a KG by determining the truthfulness ...
Logical rules are essential for uncovering the logical connections between relations, which could im...
With recent advancements in knowledge extraction and knowledge management systems, an enormous numb...
Knowledge Graphs (KGs) are becoming increasingly essential infrastructures in many applications whil...
Knowledge graph (KG) reasoning is an important problem for knowledge graphs. It predicts missing lin...
Rule learning approaches for knowledge graph completion are efficient, interpretable and competitive...
We explore data-driven rule aggregation based on latent feature representations in the context of kn...
Knowledge Graphs (KGs) play an important role in various information systems and have application in...
Knowledge graphs (KGs) facilitate a wide variety of applications due to their ability to store relat...
Ph.D. (Integrated) ThesisExpressing and extracting regularities in multi-relational data, where data...
Over the recent years embeddings have attracted increasing research focus as a means for knowledge g...
Knowledge Graphs (KGs) proliferating on the Web are well known to be incomplete. Much research has b...
International audienceKnowledge graphs (KGs) are huge collections of primarily encyclopedic facts th...
Knowledge graphs (KGs) proliferating on theWeb are known to be incomplete. Much research has been pr...
Large-scale knowledge graphs provide structured representations of human knowledge. However, as it i...
Abstract Knowledge graph (KG) fact prediction aims to complete a KG by determining the truthfulness ...
Logical rules are essential for uncovering the logical connections between relations, which could im...
With recent advancements in knowledge extraction and knowledge management systems, an enormous numb...
Knowledge Graphs (KGs) are becoming increasingly essential infrastructures in many applications whil...
Knowledge graph (KG) reasoning is an important problem for knowledge graphs. It predicts missing lin...