Representational-Interactive Feature Fusion Method for Text Intent Matching

Jinlei Zhu, Taihao Wang, Chuanfeng Zhang, Kun Zhang, Kun Jing, Houjin Chen
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Abstract

This paper introduces a new architecture for text intent matching method, which fuses deep representational and deep interactive features, then the combined features are trained finally by a single reasoning network model. The architecture mainly includes two fusion typical sub models based on the fusion of separated features. Then, we defined two novel loss functions for the models, and they have very excellent performance in the experiments. More importantly, the F1-Score of our model improves by 2.6% than the art-of-the-methods on the well-known datasets.
文本意图匹配的表示-交互特征融合方法
本文提出了一种新的文本意图匹配方法体系结构,将深度表征特征和深度交互特征融合在一起,最后通过单个推理网络模型对组合特征进行训练。该体系结构主要包括两个基于分离特征融合的融合典型子模型。然后,我们为模型定义了两个新的损失函数,并在实验中取得了很好的效果。更重要的是,我们模型的F1-Score比已知数据集上的方法艺术提高了2.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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