Many digital libraries recommend literature to their users considering the similarity between a query document and their repository. However, they often fail to distinguish what is the relationship that makes two documents alike. In this paper, we model the problem of finding the relationship between two documents as a pairwise document classification task. To find the semantic relation between documents, we apply a series of techniques, such as GloVe, Paragraph-Vectors, BERT, and XLNet under different configurations (e.g., sequence length, vector concatenation scheme), including a Siamese architecture for the Transformer-based systems. We perform our experiments on a newly proposed dataset of 32,168 Wikipedia article pairs and Wikidata pro...
© 2017 Elsevier Inc. A traditional classification approach based on keyword matching represents each...
Abstract. The exponential growth of Wikipedia recently attracts the attention of a large number of r...
Proceedings of the First Workshop on Semantic Wikis - From Wiki to Semantics co-located with the ESW...
The ongoing astounding growth of text data has created an enormous need for fast and efficient Text ...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
Wikipedia is a goldmine of information. Each article describes a single concept, and together they c...
Abstract. The Wikipedia is the largest online collaborative knowledge sharing system, a free encyclo...
Background knowledge as provided by repositories such as WordNet is of critical importance for linki...
In this data article, we provide experimental data to compute the semantic similarity between the co...
Concept prerequisite relation prediction is a common task in the field of knowledge discovery. Conce...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
AbstractWe propose a method for computing semantic relatedness between words or texts by using knowl...
Traditional techniques of document clustering do not consider the semantic relationships between wor...
Semantic document clustering is a type of unsupervised learning in which documents are grouped toget...
Wikipedia provides a semantic network for computing semantic relatedness in a more structured fashio...
© 2017 Elsevier Inc. A traditional classification approach based on keyword matching represents each...
Abstract. The exponential growth of Wikipedia recently attracts the attention of a large number of r...
Proceedings of the First Workshop on Semantic Wikis - From Wiki to Semantics co-located with the ESW...
The ongoing astounding growth of text data has created an enormous need for fast and efficient Text ...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
Wikipedia is a goldmine of information. Each article describes a single concept, and together they c...
Abstract. The Wikipedia is the largest online collaborative knowledge sharing system, a free encyclo...
Background knowledge as provided by repositories such as WordNet is of critical importance for linki...
In this data article, we provide experimental data to compute the semantic similarity between the co...
Concept prerequisite relation prediction is a common task in the field of knowledge discovery. Conce...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
AbstractWe propose a method for computing semantic relatedness between words or texts by using knowl...
Traditional techniques of document clustering do not consider the semantic relationships between wor...
Semantic document clustering is a type of unsupervised learning in which documents are grouped toget...
Wikipedia provides a semantic network for computing semantic relatedness in a more structured fashio...
© 2017 Elsevier Inc. A traditional classification approach based on keyword matching represents each...
Abstract. The exponential growth of Wikipedia recently attracts the attention of a large number of r...
Proceedings of the First Workshop on Semantic Wikis - From Wiki to Semantics co-located with the ESW...