Knowledge graphs have gained increasing popularity in the last decade in science and technology. However, knowledge graphs are currently relatively simple to moderate semantic structures that are mainly a collection of factual statements. Question answering (QA) benchmarks and systems were so far mainly geared towards encyclopedic knowledge graphs such as DBpedia and Wikidata. We present SciQA a scientific QA benchmark for scholarly knowledge. The benchmark leverages the Open Research Knowledge Graph (ORKG) which includes almost 170,000 resources describing research contributions of almost 15,000 scholarly articles from 709 research fields. Following a bottom-up methodology, we first manually developed a set of 100 complex questions that ca...
The problem of natural language processing over structured data has become a growing research field,...
The problem of natural language processing over structured data has become a growing research field,...
The web is awash in textual data. As users struggle to navigate this textual data, the art and scien...
Answering questions on scholarly knowledge comprising text and other artifacts is a vital part of an...
Being able to access knowledge bases in an intuitive way has been an active area of research over th...
Question Answering (QA) systems are becoming the inspiring model for the future of search engines. W...
Due to the rapid growth of knowledge graphs (KG) as representational learning methods in recent year...
In this work we create a question answering dataset over the DBLP scholarly knowledge graph (KG). DB...
SciQA benchmark of questions and queries. The data dump is in NTriples format (RDF NT) taken from t...
The Scholarly Question Answering over Linked Data (Scholarly QALD) at The International Semantic Web...
Question Answering (QA) over Knowledge Graphs (KG) has the aim of developing a system that is capabl...
Question Answering (QA) over Knowledge Graphs (KG) aims to develop a system that is capable of answe...
Knowledge graphs are a powerful concept for querying large amounts of data. These knowledge graphs a...
Question Answering based on Knowledge Graphs (KGQA) still faces difficult challenges when transformi...
The problem of natural language processing over structured data has become a growing research field,...
The problem of natural language processing over structured data has become a growing research field,...
The web is awash in textual data. As users struggle to navigate this textual data, the art and scien...
Answering questions on scholarly knowledge comprising text and other artifacts is a vital part of an...
Being able to access knowledge bases in an intuitive way has been an active area of research over th...
Question Answering (QA) systems are becoming the inspiring model for the future of search engines. W...
Due to the rapid growth of knowledge graphs (KG) as representational learning methods in recent year...
In this work we create a question answering dataset over the DBLP scholarly knowledge graph (KG). DB...
SciQA benchmark of questions and queries. The data dump is in NTriples format (RDF NT) taken from t...
The Scholarly Question Answering over Linked Data (Scholarly QALD) at The International Semantic Web...
Question Answering (QA) over Knowledge Graphs (KG) has the aim of developing a system that is capabl...
Question Answering (QA) over Knowledge Graphs (KG) aims to develop a system that is capable of answe...
Knowledge graphs are a powerful concept for querying large amounts of data. These knowledge graphs a...
Question Answering based on Knowledge Graphs (KGQA) still faces difficult challenges when transformi...
The problem of natural language processing over structured data has become a growing research field,...
The problem of natural language processing over structured data has become a growing research field,...
The web is awash in textual data. As users struggle to navigate this textual data, the art and scien...