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Learning a Matching Model with Co-teaching for Multi-turn Response Selection in Retrieval-based Dialogue Systems

机译:在基于检索的对话系统中,通过协同教学学习匹配模型以用于多回合响应选择

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We study learning of a matching model for response selection in retrieval-based dialogue systems. The problem is equally important with designing the architecture of a model, but is less explored in existing literature. To learn a robust matching model from noisy training data, we propose a general co-teaching framework with three specific teaching strategies that cover both teaching with loss functions and teaching with data curriculum. Under the framework, we simultaneously learn two matching models with independent training sets. In each iteration, one model transfers the knowledge learned from its training set to the other model, and at the same time receives the guide from the other model on how to overcome noise in training. Through being both a teacher and a student, the two models learn from each other and get improved together. Evaluation results on two public data sets indicate that the proposed learning approach can generally and significantly improve the performance of existing matching models.
机译:我们研究基于检索的对话系统中响应选择的匹配模型的学习。这个问题与设计模型的体系结构同样重要,但是在现有文献中很少探讨。为了从嘈杂的训练数据中学习鲁棒的匹配模型,我们提出了一种通用的共同教学框架,其中包含三种特定的教学策略,涵盖了损失函数式教学和数据课程式教学。在该框架下,我们同时学习具有独立训练集的两个匹配模型。在每个迭代中,一个模型将从其训练集中学习的知识转移到另一个模型,同时从另一个模型接收有关如何克服训练中的噪声的指南。通过既是老师又是学生,这两种模式可以相互学习,并得到共同改善。对两个公共数据集的评估结果表明,所提出的学习方法可以总体上并显着改善现有匹配模型的性能。

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