Topology-aware correlations between relations for inductive link prediction in knowledge graphs
Inductive link prediction---where entities during training and inference stages can be
different---has been shown to be promising for completing continuously evolving knowledge …
different---has been shown to be promising for completing continuously evolving knowledge …
Rule learning from knowledge graphs guided by embedding models
Abstract Rules over a Knowledge Graph (KG) capture interpretable patterns in data and
various methods for rule learning have been proposed. Since KGs are inherently …
various methods for rule learning have been proposed. Since KGs are inherently …
Rule-guided compositional representation learning on knowledge graphs
Abstract Representation learning on a knowledge graph (KG) is to embed entities and
relations of a KG into low-dimensional continuous vector spaces. Early KG embedding …
relations of a KG into low-dimensional continuous vector spaces. Early KG embedding …
Exfakt: A framework for explaining facts over knowledge graphs and text
Fact-checking is a crucial task for accurately populating, updating and curating knowledge
graphs. Manually validating candidate facts is time-consuming. Prior work on automating …
graphs. Manually validating candidate facts is time-consuming. Prior work on automating …
Schema aware iterative Knowledge Graph completion
Abstract Recent success of Knowledge Graph has spurred widespread interests in methods
for the problem of Knowledge Graph completion. However, efforts to understand the quality …
for the problem of Knowledge Graph completion. However, efforts to understand the quality …
Rule Learning over Knowledge Graphs: A Review
Compared to black-box neural networks, logic rules express explicit knowledge, can provide
human-understandable explanations for reasoning processes, and have found their wide …
human-understandable explanations for reasoning processes, and have found their wide …
[PDF][PDF] Learning typed rules over knowledge graphs
Rule learning from large datasets has regained extensive interest as rules are useful for
develo** explainable approaches to many applications in knowledge graphs. However …
develo** explainable approaches to many applications in knowledge graphs. However …
Toward a general framework for multimodal big data analysis
Multimodal Analytics in Big Data architectures implies compounded configurations of the
data processing tasks. Each modality in data requires specific analytics that triggers specific …
data processing tasks. Each modality in data requires specific analytics that triggers specific …
Rule-based knowledge graph completion with canonical models
Rule-based approaches have proven to be an efficient and explainable method for
knowledge base completion. Their predictive quality is on par with classic knowledge graph …
knowledge base completion. Their predictive quality is on par with classic knowledge graph …
Rule induction and reasoning over knowledge graphs
Advances in information extraction have enabled the automatic construction of large
knowledge graphs (KGs) like DBpedia, Freebase, YAGO and Wikidata. Learning rules from …
knowledge graphs (KGs) like DBpedia, Freebase, YAGO and Wikidata. Learning rules from …