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A Novel Bi-directional Interrelated Model for Joint Intent Detection and Slot Filling
Haihong E; Peiqing Niu; Zhongfu Chen; Meina Song

Abstract
A spoken language understanding (SLU) system includes two main tasks, slot filling (SF) and intent detection (ID). The joint model for the two tasks is becoming a tendency in SLU. But the bi-directional interrelated connections between the intent and slots are not established in the existing joint models. In this paper, we propose a novel bi-directional interrelated model for joint intent detection and slot filling. We introduce an SF-ID network to establish direct connections for the two tasks to help them promote each other mutually. Besides, we design an entirely new iteration mechanism inside the SF-ID network to enhance the bi-directional interrelated connections. The experimental results show that the relative improvement in the sentence-level semantic frame accuracy of our model is 3.79% and 5.42% on ATIS and Snips datasets, respectively, compared to the state-of-the-art model.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| intent-detection-on-atis | SF-ID (BLSTM) network | Accuracy: 97.76 |
| intent-detection-on-atis | SF-ID | Accuracy: 97.76 |
| intent-detection-on-snips | SF-ID (BLSTM) network | Accuracy: 97.43 |
| intent-detection-on-snips | SF-ID | Accuracy: 97.43 |
| slot-filling-on-atis | SF-ID | F1: 0.958 |
| slot-filling-on-snips | SF-ID | F1: 92.23 |
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