论文标题
学习开放意图检测的判别性表示和决策边界
Learning Discriminative Representations and Decision Boundaries for Open Intent Detection
论文作者
论文摘要
公开意图检测是自然语言理解中的一个重要问题,旨在确定看不见的开放意图,同时确保已知的意图识别绩效。但是,当前的方法面临两个主要挑战。首先,他们努力学习友好的表现,以仅了解已知意图的先验知识来检测公开意图。其次,缺乏有效的方法来获得已知意图的特定而紧凑的决策边界。为了解决这些问题,本文介绍了一个名为DA-ADB的原始框架,该框架连续地学习了远距离感知的意图表示和自适应决策边界以进行开放意图检测。具体而言,我们首先利用距离信息来增强意图表示的区别能力。然后,我们设计了一种新颖的损失功能,以通过平衡经验和开放空间风险来获得适当的决策界限。广泛的实验证明了拟议的距离了解和边界学习策略的有效性。与最先进的方法相比,我们的框架在三个基准数据集上取得了重大改进。此外,它通过不同比例的标记数据和已知类别产生稳健的性能。
Open intent detection is a significant problem in natural language understanding, which aims to identify the unseen open intent while ensuring known intent identification performance. However, current methods face two major challenges. Firstly, they struggle to learn friendly representations to detect the open intent with prior knowledge of only known intents. Secondly, there is a lack of an effective approach to obtaining specific and compact decision boundaries for known intents. To address these issues, this paper presents an original framework called DA-ADB, which successively learns distance-aware intent representations and adaptive decision boundaries for open intent detection. Specifically, we first leverage distance information to enhance the distinguishing capability of the intent representations. Then, we design a novel loss function to obtain appropriate decision boundaries by balancing both empirical and open space risks. Extensive experiments demonstrate the effectiveness of the proposed distance-aware and boundary learning strategies. Compared to state-of-the-art methods, our framework achieves substantial improvements on three benchmark datasets. Furthermore, it yields robust performance with varying proportions of labeled data and known categories.