Evaluating the selection of content in a summary is important both for human-written summaries, which can be a useful pedagogical tool for reading and writing skills, and machine-generated summaries, which are increasingly being deployed in information management. The pyramid method assesses a summary by aggregating content units from the summaries of a wise crowd (a form of crowdsourcing). It has proven highly reliable but has largely depended on manual annotation. We propose PEAK, the first method to automatically assess summary content using the pyramid method that also generates the pyramid content models. PEAK relies on open information extraction and graph algorithms. The resulting scores correlate well with manually derived pyramid s...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Human variation in content selection in summarization has given rise to some fundamental research qu...
This paper presents the use of Support Vector Machines (SVM) to detect relevant information to be ...
The manual Pyramid method for summary evaluation, which focuses on the task of determining if a summ...
We present an empirically grounded method for evaluating content selection in summarization. It inco...
From the outset of automated generation of summaries, the difficulty of evaluation has been widely d...
The manual Pyramid method for summary evaluation, which focuses on the task of determining if a su...
Summarization is the process of creating a more compact textual representation of a document or a co...
Human variation in content selection in summarization has given rise to some fundamental re-search q...
From the outset of automated generation of summaries, the diÆculty of eval-uation has been widely di...
In DUC 2005, the pyramid method for content evaluation was used for the first time in a crosssite ev...
Human variation in content selection in summarization has given rise to some fundamental research qu...
The pyramid evaluation effort for the 2006 Document Understanding Conference involved twenty-two sit...
PACLIC 21 / Seoul National University, Seoul, Korea / November 1-3, 2007conference pape
A summary is a shortened version of a text that contains the main points of the original content. Au...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Human variation in content selection in summarization has given rise to some fundamental research qu...
This paper presents the use of Support Vector Machines (SVM) to detect relevant information to be ...
The manual Pyramid method for summary evaluation, which focuses on the task of determining if a summ...
We present an empirically grounded method for evaluating content selection in summarization. It inco...
From the outset of automated generation of summaries, the difficulty of evaluation has been widely d...
The manual Pyramid method for summary evaluation, which focuses on the task of determining if a su...
Summarization is the process of creating a more compact textual representation of a document or a co...
Human variation in content selection in summarization has given rise to some fundamental re-search q...
From the outset of automated generation of summaries, the diÆculty of eval-uation has been widely di...
In DUC 2005, the pyramid method for content evaluation was used for the first time in a crosssite ev...
Human variation in content selection in summarization has given rise to some fundamental research qu...
The pyramid evaluation effort for the 2006 Document Understanding Conference involved twenty-two sit...
PACLIC 21 / Seoul National University, Seoul, Korea / November 1-3, 2007conference pape
A summary is a shortened version of a text that contains the main points of the original content. Au...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Human variation in content selection in summarization has given rise to some fundamental research qu...
This paper presents the use of Support Vector Machines (SVM) to detect relevant information to be ...