Modeling persuasive language has the potential to better facilitate our decision-making processes. Despite its importance, computational modeling of persuasion is still in its infancy, largely due to the lack of benchmark datasets that can provide quantitative labels of persuasive strategies to expedite this line of research. To this end, we introduce a large-scale multi-domain text corpus for modeling persuasive strategies in good-faith text requests. Moreover, we design a hierarchical weakly-supervised latent variable model that can leverage partially labeled data to predict such associated persuasive strategies for each sentence, where the supervision comes from both the overall document-level labels and very limited sentence-level labels. Experimental results showed that our proposed method outperformed existing semi-supervised baselines significantly. We have publicly released our code at https://github.com/GT-SALT/Persuasion_Strategy_WVAE.
翻译:模拟有说服力的语言有可能更好地促进我们的决策进程。 尽管其重要性很重要,但说服的计算模型尚处于初级阶段,主要原因是缺乏基准数据集,无法提供量化的有说服力的战略标签,以加快这一研究线。为此,我们引入了大规模多域文本程序,用于在善意的文本请求中模拟有说服力的战略。此外,我们设计了一个等级不高、监督薄弱的潜在可变模型,可以利用部分标签数据来预测每个句子的相关有说服力的战略,监督来自整个文件级别标签和非常有限的句级标签。实验结果表明,我们的拟议方法大大超过了现有的半监督基线。我们已经在https://github.com/GT-SALT/Persualion_STRATIGY_WVAE公开发布了我们的代码。