Parallel Intent and Slot Prediction using MLB Fusion
Intent and Slot Identification are two important tasks in Spoken Language Understanding (SLU). For a natural language utterance, there is a high correlation between these two tasks. A lot of work has been done on each of these using Recurrent-Neural-Networks (RNN), Convolution Neural Networks (CNN)...
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Zusammenfassung: | Intent and Slot Identification are two important tasks in Spoken Language
Understanding (SLU). For a natural language utterance, there is a high
correlation between these two tasks. A lot of work has been done on each of
these using Recurrent-Neural-Networks (RNN), Convolution Neural Networks (CNN)
and Attention based models. Most of the past work used two separate models for
intent and slot prediction. Some of them also used sequence-to-sequence type
models where slots are predicted after evaluating the utterance-level intent.
In this work, we propose a parallel Intent and Slot Prediction technique where
separate Bidirectional Gated Recurrent Units (GRU) are used for each task. We
posit the usage of MLB (Multimodal Low-rank Bilinear Attention Network) fusion
for improvement in performance of intent and slot learning. To the best of our
knowledge, this is the first attempt of using such a technique on text based
problems. Also, our proposed methods outperform the existing state-of-the-art
results for both intent and slot prediction on two benchmark datasets |
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DOI: | 10.48550/arxiv.2003.09211 |