SummTriver: A new trivergent model to evaluate summaries automatically without human references

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摘要

The automatic evaluation of summaries is a hard task that continues to be open. The assessment aims to measure simultaneously the informativeness and readability of summaries. The scientific community has tackled this problem with partial solutions, in terms of informativeness, using ROUGE. However, to use this method, it is necessary to have multiple summaries made by humans (the references). Methods without human references have been implemented, but there are still far from being highly correlated to manual evaluations. In this paper we present SummTriver, an automatic evaluation method that tries to be more correlated to manual evaluation by using multiple divergences. The results are promising, especially for summarization campaigns. Besides this, we also present an interesting analysis, at micro-level, of how correlated the manual and automatic summaries evaluation methods are, when we make use of a large quantity of observations.

论文关键词:Automatic text summarization,Summarization evaluation,Jensen-Shanon divergence,Kullback-Leibler divergence,Trivergence of probabilities

论文评审过程:Received 26 March 2017, Revised 9 August 2017, Accepted 7 September 2017, Available online 9 September 2017, Version of Record 5 February 2018.

论文官网地址:https://doi.org/10.1016/j.datak.2017.09.001