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A Robust Semantic Frame Parsing Pipeline on a New Complex Twitter Dataset

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arxiv 2212.08987 v1 pith:IOLUOMXJ submitted 2022-12-18 cs.CL cs.AI

A Robust Semantic Frame Parsing Pipeline on a New Complex Twitter Dataset

classification cs.CL cs.AI
keywords emphdatasetframeparsingpatternssemantictwitterpipeline
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Most recent semantic frame parsing systems for spoken language understanding (SLU) are designed based on recurrent neural networks. These systems display decent performance on benchmark SLU datasets such as ATIS or SNIPS, which contain short utterances with relatively simple patterns. However, the current semantic frame parsing models lack a mechanism to handle out-of-distribution (\emph{OOD}) patterns and out-of-vocabulary (\emph{OOV}) tokens. In this paper, we introduce a robust semantic frame parsing pipeline that can handle both \emph{OOD} patterns and \emph{OOV} tokens in conjunction with a new complex Twitter dataset that contains long tweets with more \emph{OOD} patterns and \emph{OOV} tokens. The new pipeline demonstrates much better results in comparison to state-of-the-art baseline SLU models on both the SNIPS dataset and the new Twitter dataset (Our new Twitter dataset can be downloaded from https://1drv.ms/u/s!AroHb-W6_OAlavK4begsDsMALfE?e=c8f2XX ). Finally, we also build an E2E application to demo the feasibility of our algorithm and show why it is useful in real application.

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