Rapid growth of multi-modal documents containing images on the Internet expresses strong demand on multi-modal summarization. The challenge is to create a computing method that can uniformly process text and image. Deep learning provides basic models for meeting this challenge. This paper treats extractive multi-modal summarization as a classification problem and proposes a sentence–image classification method based on the multi-modal RNN model. Our method encodes words and sentences with the hierarchical RNN models and encodes the ordered image set with the CNN model and the RNN model, and then calculates the selection probability of sentences and the sentence–image alignment probability through a logistic classifier taking text coverage, ...
Now days many research is going on for text summarization. Because of increasing information in the ...
Single document summarization is the task of producing a shorter version of a document while preserv...
We develop a Ranking framework upon Recursive Neural Networks (R2N2) to rank sentences for multi-doc...
Rapid growth of multi-modal documents containing images on the Internet expresses strong demand on m...
We present SummaRuNNer, a Recurrent Neural Network (RNN) based sequence model for extractive summari...
Automatic text summarization is a mechanism for converting longer text into smaller text while retai...
In this paper, we present a multimodal Recurrent Neural Network (m-RNN) model for generating novel s...
With the Internet becoming widespread, countless articles and multimedia content have been filled in...
Recently, there is a lot of information available on the Internet, which makes it difficult for user...
The internet is comprised of web pages, news articles, status updates, blogs and much more. It is di...
Along with the extreme expansion of big data and the vast development of the internet, making docume...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
There is an exponential growth of text data over the internet, and it is expected to gain significan...
Opinion summarization is a process to produce concise summaries from a large number of opinionated t...
We propose DeepChannel, a robust, data-efficient, and interpretable neural model for extractive docu...
Now days many research is going on for text summarization. Because of increasing information in the ...
Single document summarization is the task of producing a shorter version of a document while preserv...
We develop a Ranking framework upon Recursive Neural Networks (R2N2) to rank sentences for multi-doc...
Rapid growth of multi-modal documents containing images on the Internet expresses strong demand on m...
We present SummaRuNNer, a Recurrent Neural Network (RNN) based sequence model for extractive summari...
Automatic text summarization is a mechanism for converting longer text into smaller text while retai...
In this paper, we present a multimodal Recurrent Neural Network (m-RNN) model for generating novel s...
With the Internet becoming widespread, countless articles and multimedia content have been filled in...
Recently, there is a lot of information available on the Internet, which makes it difficult for user...
The internet is comprised of web pages, news articles, status updates, blogs and much more. It is di...
Along with the extreme expansion of big data and the vast development of the internet, making docume...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
There is an exponential growth of text data over the internet, and it is expected to gain significan...
Opinion summarization is a process to produce concise summaries from a large number of opinionated t...
We propose DeepChannel, a robust, data-efficient, and interpretable neural model for extractive docu...
Now days many research is going on for text summarization. Because of increasing information in the ...
Single document summarization is the task of producing a shorter version of a document while preserv...
We develop a Ranking framework upon Recursive Neural Networks (R2N2) to rank sentences for multi-doc...