Opponent modeling is the task of inferring another party's mental state within the context of social interactions. In a multi-issue negotiation, it involves inferring the relative importance that the opponent assigns to each issue under discussion, which is crucial for finding high-value deals. A practical model for this task needs to infer these priorities of the opponent on the fly based on partial dialogues as input, without needing additional annotations for training. In this work, we propose a ranker for identifying these priorities from negotiation dialogues. The model takes in a partial dialogue as input and predicts the priority order of the opponent. We further devise ways to adapt related data sources for this task to provide more explicit supervision for incorporating the opponent's preferences and offers, as a proxy to relying on granular utterance-level annotations. We show the utility of our proposed approach through extensive experiments based on two dialogue datasets. We find that the proposed data adaptations lead to strong performance in zero-shot and few-shot scenarios. Moreover, they allow the model to perform better than baselines while accessing fewer utterances from the opponent. We release our code to support future work in this direction.
翻译:相对性模型的任务是在社会互动的背景下推断另一方的精神状态。在多问题谈判中,它涉及推断对手对所讨论的每个问题所赋予的相对重要性,这对于找到高价值交易至关重要。这项任务的实用模型需要根据部分对话作为投入,在不需额外说明来进行培训的情况下,在飞行上推断对手的这些优先事项。在这项工作中,我们建议从谈判对话中确定这些优先事项的等级。模型采用部分对话作为投入,并预测对手的优先顺序。我们进一步设计了调整相关数据源的方法,以便对纳入对手的偏好进行更明确的监督,并提议作为依赖颗粒语级说明的替代。我们通过基于两个对话数据集的广泛实验,展示了我们拟议方法的效用。我们发现,拟议的数据调整导致零点和微小的情景的强性能。此外,它们允许模型在从对手获取较少的直言中比基线更好地运行。我们发布了我们的代码,以支持今后朝这个方向开展工作。