With the advent and popularity of big data mining and huge text analysis in modern times, automated text summarization became prominent for extracting and retrieving important information from documents. This research investigates aspects of automatic text summarization from the perspectives of single and multiple documents. Summarization is a task of condensing huge text articles into short, summarized versions. The text is reduced in size for summarization purpose but preserving key vital information and retaining the meaning of the original document. This study presents the Latent Dirichlet Allocation (LDA) approach used to perform topic modelling from summarised medical science journal articles with topics related to genes and diseases....
Automatic summarization has become an important part in the study of natural language processing sin...
Abstract: This paper deals with using latent semantic analysis in text summarization. We describe a ...
This dataset contains scraped and processed text from roughly 100 years of articles published in the...
With the advent and popularity of big data mining and huge text analysis in modern times, automated ...
In this paper, we present a novel approach that makes use of topic models based on Latent Dirichlet ...
Text summarization solves the problem of presenting the information needed by a user in a compact fo...
In this paper, we present Latent Drichlet Allocation in automatic text summarization to improve accu...
AbstractThis paper proposes a novel similarity measure for automatic text summarization. The topic s...
Text summarization solves the problem of presenting the information needed by a user in a compact fo...
The text data is unstructured. The amount of textual data available is excessive and continues to in...
Automatic text summarization generates a summary that contains sentences reflecting the essential an...
We routinely encounter too much information in the form of social media posts, blogs, news articles,...
Probabilistic topic modeling is a powerful tool to uncover hidden thematic structure of documents. T...
A major problem with automatically-produced summaries in general, and extracts in particular, is tha...
Due to the presence of large amounts of data and its exponential level generation, the manual approa...
Automatic summarization has become an important part in the study of natural language processing sin...
Abstract: This paper deals with using latent semantic analysis in text summarization. We describe a ...
This dataset contains scraped and processed text from roughly 100 years of articles published in the...
With the advent and popularity of big data mining and huge text analysis in modern times, automated ...
In this paper, we present a novel approach that makes use of topic models based on Latent Dirichlet ...
Text summarization solves the problem of presenting the information needed by a user in a compact fo...
In this paper, we present Latent Drichlet Allocation in automatic text summarization to improve accu...
AbstractThis paper proposes a novel similarity measure for automatic text summarization. The topic s...
Text summarization solves the problem of presenting the information needed by a user in a compact fo...
The text data is unstructured. The amount of textual data available is excessive and continues to in...
Automatic text summarization generates a summary that contains sentences reflecting the essential an...
We routinely encounter too much information in the form of social media posts, blogs, news articles,...
Probabilistic topic modeling is a powerful tool to uncover hidden thematic structure of documents. T...
A major problem with automatically-produced summaries in general, and extracts in particular, is tha...
Due to the presence of large amounts of data and its exponential level generation, the manual approa...
Automatic summarization has become an important part in the study of natural language processing sin...
Abstract: This paper deals with using latent semantic analysis in text summarization. We describe a ...
This dataset contains scraped and processed text from roughly 100 years of articles published in the...