In Natural Language Processing, multi-document summarization (MDS) poses many challenges to researchers above those posed by single-document summarization (SDS). These challenges include the increased search space and greater potential for the inclusion of redundant information. While advancements in deep learning approaches have led to the development of several advanced language models capable of summarization, the variety of training data specific to the problem of MDS remains relatively limited. Therefore, MDS approaches which require little to no pretraining, known as few-shot or zero-shot applications, respectively, could be beneficial additions to the current set of tools available in summarization. To explore one possible approach, ...
We propose and develop a simple and efficient algorithm for generating extractive multi-document sum...
In this paper we address two key challenges for extractive multi-document summarization: the search ...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
In Natural Language Processing, multi-document summarization (MDS) poses many challenges to research...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
In multi-document summarization (MDS), the input is a cluster of documents, and the output is the cl...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
Text summarization aims to create a concise and fluent summary that captures the most salient inform...
In this age of Internet, Natural Language Processing (NLP) techniques are the key sources for provid...
This paper describes a method for multi-document update summariza-tion that relies on a double maxim...
By synthesizing information common to retrieved documents, multi-document summarization can help use...
Automatic multi-document summarization (MDS) is the process of extracting the most important informa...
In this paper we address two key challenges for extractive multi-document summarization: the search ...
In this paper we address two key challenges for extractive multi-document summarization: the search ...
Obtaining large-scale and high-quality training data for multi-document summarization (MDS) tasks is...
We propose and develop a simple and efficient algorithm for generating extractive multi-document sum...
In this paper we address two key challenges for extractive multi-document summarization: the search ...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
In Natural Language Processing, multi-document summarization (MDS) poses many challenges to research...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
In multi-document summarization (MDS), the input is a cluster of documents, and the output is the cl...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
Text summarization aims to create a concise and fluent summary that captures the most salient inform...
In this age of Internet, Natural Language Processing (NLP) techniques are the key sources for provid...
This paper describes a method for multi-document update summariza-tion that relies on a double maxim...
By synthesizing information common to retrieved documents, multi-document summarization can help use...
Automatic multi-document summarization (MDS) is the process of extracting the most important informa...
In this paper we address two key challenges for extractive multi-document summarization: the search ...
In this paper we address two key challenges for extractive multi-document summarization: the search ...
Obtaining large-scale and high-quality training data for multi-document summarization (MDS) tasks is...
We propose and develop a simple and efficient algorithm for generating extractive multi-document sum...
In this paper we address two key challenges for extractive multi-document summarization: the search ...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...