Current opinion summarization systems simply generate summaries reflecting important opinions from customer reviews, but the generated summaries may not attract the reader's attention. Although it is helpful to automatically generate professional reviewer-like summaries from customer reviews, collecting many training pairs of customer and professional reviews is generally tricky. We propose a weakly supervised opinion summarization framework, Noisy Pairing and Partial Supervision (NAPA) that can build a stylized opinion summarization system with no customer-professional review pairs. Experimental results show consistent improvements in automatic evaluation metrics, and qualitative analysis shows that our weakly supervised opinion summarization system can generate summaries that look more like those written by professional reviewers.
翻译:目前的意见总结系统仅产生反映客户审查中重要意见的摘要,但产生的摘要可能不会引起读者的注意。虽然自动产生客户审查中专业审查摘要的类似摘要是有益的,但收集许多客户和专业审查培训对等的客户和专业审查一般都很棘手。我们提议一个监督不力的意见总结框架,即Noisy Pairing和部分监督(NAPA),可以建立一个没有客户专业审查对等意见汇总系统的系统。实验结果显示自动评价衡量标准不断改进,定性分析显示,我们监督不力的意见总结系统可以产生更类似于专业审查员编写的摘要。