Calculating Semantic Textual Similarity (STS) plays a significant role in many applications such as question answering, document summarisation, information retrieval and information extraction. All modern state of the art STS methods rely on word embeddings one way or another. The recently introduced contextualised word embeddings have proved more effective than standard word embeddings in many natural language processing tasks. This paper evaluates the impact of several contextualised word embeddings on unsupervised STS methods and compares it with the existing supervised/unsupervised STS methods for different datasets in different languages and different domains
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
State of the art natural language processing tools are built on context-dependent word embeddings, b...
This paper reports the description and perfor- mance of our system, FBK-HLT, participat- ing in the ...
A thesis submitted in partial fulfilment of the requirements of the University of Wolverhampton for ...
Calculating the Semantic Textual Similarity (STS) is an important research area in natural language ...
Semantic textual similarity (STS) measures how semantically similar two sentences are. In the contex...
We introduce Optimized Word Mover’s Distance (OWMD), a similarity function that compares two sentenc...
Calculating the semantic similarity between sentences is a long-standing problem in the area of nat...
Determining semantic similarity between texts is important in many tasks in information retrieval su...
In natural language processing, short-text semantic similarity (STSS) is a very prominent field. It ...
This research addresses the problem of deriving semantic similarity between words of language using ...
This paper reports our submissions to seman-tic textual similarity task, i.e., task 2 in Se-mantic E...
We address the task of unsupervised Seman- tic Textual Similarity (STS) by ensembling di- verse pre-...
This research presents a new benchmark dataset for evaluating Short Text Semantic Similarity (STSS) ...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
State of the art natural language processing tools are built on context-dependent word embeddings, b...
This paper reports the description and perfor- mance of our system, FBK-HLT, participat- ing in the ...
A thesis submitted in partial fulfilment of the requirements of the University of Wolverhampton for ...
Calculating the Semantic Textual Similarity (STS) is an important research area in natural language ...
Semantic textual similarity (STS) measures how semantically similar two sentences are. In the contex...
We introduce Optimized Word Mover’s Distance (OWMD), a similarity function that compares two sentenc...
Calculating the semantic similarity between sentences is a long-standing problem in the area of nat...
Determining semantic similarity between texts is important in many tasks in information retrieval su...
In natural language processing, short-text semantic similarity (STSS) is a very prominent field. It ...
This research addresses the problem of deriving semantic similarity between words of language using ...
This paper reports our submissions to seman-tic textual similarity task, i.e., task 2 in Se-mantic E...
We address the task of unsupervised Seman- tic Textual Similarity (STS) by ensembling di- verse pre-...
This research presents a new benchmark dataset for evaluating Short Text Semantic Similarity (STSS) ...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
State of the art natural language processing tools are built on context-dependent word embeddings, b...
This paper reports the description and perfor- mance of our system, FBK-HLT, participat- ing in the ...