Graph Models for Contextual Intention Prediction in Dialog Systems

Pub Date : 2024-03-11 DOI:10.1134/S106456242370117X
D. P. Kuznetsov, D. R. Ledneva
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Abstract

The paper introduces a novel methodology for predicting intentions in dialog systems through a graph-based approach. This methodology involves constructing graph structures that represent dialogs, thus capturing contextual information effectively. By analyzing results from various open and closed domain datasets, the authors demonstrate the substantial enhancement in intention prediction accuracy achieved by combining graph models with text encoders. The primary focus of the study revolves around assessing the impact of diverse graph architectures and encoders on the performance of the proposed technique. Through empirical evaluation, the experimental outcomes affirm the superiority of graph neural networks in terms of both \(Recall@k\) (MAR) metric and computational resources when compared to alternative methods. This research uncovers a novel avenue for intention prediction in dialog systems by leveraging graph-based representations.

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用于对话系统中上下文意向预测的图模型
摘要 本文介绍了一种通过基于图的方法预测对话系统意图的新方法。该方法涉及构建表示对话的图结构,从而有效捕捉上下文信息。通过分析各种开放和封闭领域数据集的结果,作者证明了将图模型与文本编码器相结合可大大提高意图预测的准确性。研究的主要重点是评估不同图架构和编码器对所提技术性能的影响。通过实证评估,实验结果肯定了图神经网络与其他方法相比,在 \(Recall@k\) (MAR) 指标和计算资源方面的优越性。这项研究通过利用基于图的表征,为对话系统中的意图预测开辟了一条新途径。
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