Keyphrase Based Evaluation of Automatic Text Summarization
Abstract
The development of methods to deal with the informative contents of the text units in the matching process is a major challenge in automatic summary evaluation systems that use fixed n-gram matching. The limitation causes inaccurate matching between units in a peer and reference summaries. The present study introduces a new Keyphrase based Summary Evaluator KpEval for evaluating automatic summaries. The KpEval relies on the keyphrases since they convey the most important concepts of a text. In the evaluation process, the keyphrases are used in their lemma form as the matching text unit. The system was applied to evaluate different summaries of Arabic multi-document data set presented at TAC2011. The results showed that the new evaluation technique correlates well with the known evaluation systems: Rouge1, Rouge2, RougeSU4, and AutoSummENG MeMoG. KpEval has the strongest correlation with AutoSummENG MeMoG, Pearson and spearman correlation coefficient measures are 0.8840, 0.9667 respectively.
Cite
@article{arxiv.1505.06228,
title = {Keyphrase Based Evaluation of Automatic Text Summarization},
author = {Fatma Elghannam and Tarek El-Shishtawy},
journal= {arXiv preprint arXiv:1505.06228},
year = {2015}
}
Comments
4 pages, 1 figure, 3 tables