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Intent Classification for Dialogue Utterances

机译:对话话语的意图分类

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摘要

In this work, we investigate several machine learning methods to tackle the problem of intent classification for dialogue utterances. We start with bag-of-words in combination with Naive Bayes. After that, we employ continuous bag-of-words coupled with support vector machines (SVM). Then, we follow long short-term memory (LSTM) networks, which are made bidirectional. The best performing model is hierarchical, such that it can take advantage of the natural taxonomy within classes. The main experiments are a comparison between these methods on an open sourced academic dataset. In the first experiment, we consider the full dataset. We also consider the given subsets of data separately, in order to compare our results with state-of-the-art vendor solutions. In general we find that the SVM models outperform the LSTM models. The former models achieve the highest macro-F1 for the full dataset, and in most of the individual datasets. We also found out that the incorporation of the hierarchical structure in the intents improves the performance.
机译:在这项工作中,我们调查了几种机器学习方法来解决对话话语的意图分类问题。我们从单词开始与朴素的贝父组合。之后,我们采用连续的单词袋装与支持向量机(SVM)。然后,我们遵循长期内存(LSTM)网络,这是双向的。最好的表演模型是等级的,使得它可以利用类别内的天然分类。主要实验是在开放的源学术数据集中的这些方法之间的比较。在第一个实验中,我们考虑完整的数据集。我们还单独考虑给定的数据子集,以便将我们的结果与最先进的供应商解决方案进行比较。一般来说,我们发现SVM型号优于LSTM模型。前模型为完整数据集实现最高的宏F1,以及大多数单个数据集。我们还发现,在意图中加入了层次结构可以提高性能。

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