Pytorch implementation of paper "A Bi-model based RNN Semantic Frame Parsing Model for Intent Detection and Slot Filling".
We only build the model with decoder.
We do not tune the hyper-parameters carefully as it is so boring. Obtaining best result of intent accuracy is 0.9843 and f1 score of slot filling is 0.9563 when model runs a lot of epoch(need some lucky), but still lower than the claimed result of that paper(0.9899, 0.9689).
--- | Intent acc | Slot filling F1 |
---|---|---|
paper | 0.9899 | 0.9689 |
reproduce | 0.9843 | 0.9600 |
Pytorch>=0.4.0, python3.
python train.py