Modelling persuasion strategies as predictors of task outcome has several real-world applications and has received considerable attention from the computational linguistics community. However, previous research has failed to account for the resisting strategies employed by an individual to foil such persuasion attempts. Grounded in prior literature in cognitive and social psychology, we propose a generalised framework for identifying resisting strategies in persuasive conversations. We instantiate our framework on two distinct datasets comprising persuasion and negotiation conversations. We also leverage a hierarchical sequence-labelling neural architecture to infer the aforementioned resisting strategies automatically. Our experiments reveal the asymmetry of power roles in non-collaborative goal-directed conversations and the benefits accrued from incorporating resisting strategies on the final conversation outcome. We also investigate the role of different resisting strategies on the conversation outcome and glean insights that corroborate with past findings. We also make the code and the dataset of this work publicly available at https://github.com/americast/resper.
翻译:作为任务结果预测者的模拟说服战略有几种现实应用,并得到了计算语言界的相当重视。然而,以前的研究未能说明个人为挫败这种说服企图而采取的抵制战略。根据先前的认知和社会心理学文献,我们提出一个一般框架,用以在有说服力的对话中确定抵制战略。我们将我们的框架放在两个不同的数据集上,其中包括说服力和谈判对话。我们还利用等级顺序标签标志神经结构自动推断上述抵制战略。我们的实验揭示了权力作用在非协作目标定向对话中的不对称性,以及在最后对话结果中纳入抵抗战略所带来的好处。我们还调查了不同抵制战略在对话结果中的作用,并收集了与过去调查结果相符的洞察力。我们还在https://github.com/americast/resper上公布了这项工作的代码和数据集。我们还在https://github. com/ americast/resper上公布了这项工作的代码和数据集。