Many articles on the same news are daily published by online newspapers and by various social media. To ease news article exploration sentence-based summarization algorithms aim at automatically generating for each news a summary consisting of the most salient sentences in the original articles. However, since sentence selection is error-prone, the automatically generated summaries are still subject to manual validation by domain experts. If the validation step not only focuses on pruning less relevant content but also on enriching summaries with missing yet relevant sentences this activity may become extremely time consuming. The paper focuses on summarizing news articles by means of an itemset-based technique. To tune summarizer performa...
With the diffusion of online newspapers and social media, users are becoming capable of retrieving d...
Abstract. In this paper we present NewsInEssence, a fully deployed digital news system. A user selec...
Abstract:- In this paper, we propose a practical approach for extracting the most relevant sentences...
Many articles on the same news are daily published by online newspapers and by various social media....
952-962Due to the presence of large amounts of data and its exponential level generation, the manual...
Recently, we live with a huge amount of data. For example, we have great amount of news articles eve...
In this paper, we investigate extractive multi-document summarisation algorithms over newswire corp...
This dissertation provides a new method for sentence embedding and document summarization. The topic...
Human-quality text summarization systems are difficult to design, and even more difficult to evaluat...
We present a methodology for summarization of news about current events in the form of briefings tha...
Novelty, coverage and balance are important requirements in topic-focused summarization, which to a ...
Many organizations want to have a clearer insight of the content of their users ’ reviews. There are...
This thesis is about automatic summarization, with experimental results on multi- document news topi...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
A summary of any event type is only complete if certain information aspects are mentioned. For a cou...
With the diffusion of online newspapers and social media, users are becoming capable of retrieving d...
Abstract. In this paper we present NewsInEssence, a fully deployed digital news system. A user selec...
Abstract:- In this paper, we propose a practical approach for extracting the most relevant sentences...
Many articles on the same news are daily published by online newspapers and by various social media....
952-962Due to the presence of large amounts of data and its exponential level generation, the manual...
Recently, we live with a huge amount of data. For example, we have great amount of news articles eve...
In this paper, we investigate extractive multi-document summarisation algorithms over newswire corp...
This dissertation provides a new method for sentence embedding and document summarization. The topic...
Human-quality text summarization systems are difficult to design, and even more difficult to evaluat...
We present a methodology for summarization of news about current events in the form of briefings tha...
Novelty, coverage and balance are important requirements in topic-focused summarization, which to a ...
Many organizations want to have a clearer insight of the content of their users ’ reviews. There are...
This thesis is about automatic summarization, with experimental results on multi- document news topi...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
A summary of any event type is only complete if certain information aspects are mentioned. For a cou...
With the diffusion of online newspapers and social media, users are becoming capable of retrieving d...
Abstract. In this paper we present NewsInEssence, a fully deployed digital news system. A user selec...
Abstract:- In this paper, we propose a practical approach for extracting the most relevant sentences...