Knowledge Graphs are a great resource to capture semantic knowledge in terms of entities and relationships between the entities. However, current deep learning models takes as input distributed representations or vectors. Thus, the graph is compressed in a vectorized representation. We conduct a study to examine if the deep learning model can compress a graph and then output the same graph with most of the semantics intact. Our experiments show that Transformer models are not able to express the full semantics of the input knowledge graph. We find that this is due to the disparity between the directed, relationship and type based information contained in a Knowledge Graph and the fully connected token-token undirected graphical interpretati...
Knowledge graphs (KGs) contain rich information about world knowledge, entities, and relations. Thus...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.In recent years, ther...
Since its inception in the 1940s, computing has been dominated by a logic-driven paradigm, with its ...
Knowledge Graphs are a great resource to capture semantic knowledge in terms of entities and relatio...
A fundamental question in natural language processing is - what kind of language structure and seman...
The availability and use of knowledge graphs have become commonplace as a compact storage of informa...
Remarkable progress in research has shown the efficiency of Knowledge Graphs (KGs) in extracting val...
Deep Learning advances have enabled more fluent and flexible text generation. However, while these n...
Large-scale Knowledge Graphs (KGs), such as Wikipedia and many enterprises or other domain-specific ...
AbstractConceptual graphs are a semantic representation that has a direct mapping to natural languag...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
In recent years, Deep Graph Networks (DGNs) have proven to be one of the state-of-art for representa...
Embedding based Knowledge Graph (KG) Completion has gained much attention over the past few years. M...
Heterogeneous knowledge graphs are emerging as an abstraction to represent complex data, such as soc...
This report consists of two papers presented at the March 1990 GRAGRA meeting in Bremen: the more g...
Knowledge graphs (KGs) contain rich information about world knowledge, entities, and relations. Thus...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.In recent years, ther...
Since its inception in the 1940s, computing has been dominated by a logic-driven paradigm, with its ...
Knowledge Graphs are a great resource to capture semantic knowledge in terms of entities and relatio...
A fundamental question in natural language processing is - what kind of language structure and seman...
The availability and use of knowledge graphs have become commonplace as a compact storage of informa...
Remarkable progress in research has shown the efficiency of Knowledge Graphs (KGs) in extracting val...
Deep Learning advances have enabled more fluent and flexible text generation. However, while these n...
Large-scale Knowledge Graphs (KGs), such as Wikipedia and many enterprises or other domain-specific ...
AbstractConceptual graphs are a semantic representation that has a direct mapping to natural languag...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
In recent years, Deep Graph Networks (DGNs) have proven to be one of the state-of-art for representa...
Embedding based Knowledge Graph (KG) Completion has gained much attention over the past few years. M...
Heterogeneous knowledge graphs are emerging as an abstraction to represent complex data, such as soc...
This report consists of two papers presented at the March 1990 GRAGRA meeting in Bremen: the more g...
Knowledge graphs (KGs) contain rich information about world knowledge, entities, and relations. Thus...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.In recent years, ther...
Since its inception in the 1940s, computing has been dominated by a logic-driven paradigm, with its ...