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arxiv: 2109.00729 · v1 · pith:2MECNXKZ · submitted 2021-09-02 · cs.CL · cs.AI

ConQX: Semantic Expansion of Spoken Queries for Intent Detection based on Conditioned Text Generation

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classification cs.CL cs.AI
keywords detectionintentqueriesexpansiongenerationsemanticspokentext
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Intent detection of spoken queries is a challenging task due to their noisy structure and short length. To provide additional information regarding the query and enhance the performance of intent detection, we propose a method for semantic expansion of spoken queries, called ConQX, which utilizes the text generation ability of an auto-regressive language model, GPT-2. To avoid off-topic text generation, we condition the input query to a structured context with prompt mining. We then apply zero-shot, one-shot, and few-shot learning. We lastly use the expanded queries to fine-tune BERT and RoBERTa for intent detection. The experimental results show that the performance of intent detection can be improved by our semantic expansion method.

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