Trigger$^3$: Refining Query Correction via Adaptive Model Selector
In search scenarios, user experience can be hindered by erroneous queries due to typos, voice errors, or knowledge gaps. Therefore, query correction is crucial for search engines. Current correction models, usually small models trained on specific data, often struggle with queries beyond their train...
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Zusammenfassung: | In search scenarios, user experience can be hindered by erroneous queries due
to typos, voice errors, or knowledge gaps. Therefore, query correction is
crucial for search engines. Current correction models, usually small models
trained on specific data, often struggle with queries beyond their training
scope or those requiring contextual understanding. While the advent of Large
Language Models (LLMs) offers a potential solution, they are still limited by
their pre-training data and inference cost, particularly for complex queries,
making them not always effective for query correction. To tackle these, we
propose Trigger$^3$, a large-small model collaboration framework that
integrates the traditional correction model and LLM for query correction,
capable of adaptively choosing the appropriate correction method based on the
query and the correction results from the traditional correction model and LLM.
Trigger$^3$ first employs a correction trigger to filter out correct queries.
Incorrect queries are then corrected by the traditional correction model. If
this fails, an LLM trigger is activated to call the LLM for correction.
Finally, for queries that no model can correct, a fallback trigger decides to
return the original query. Extensive experiments demonstrate Trigger$^3$
outperforms correction baselines while maintaining efficiency. |
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DOI: | 10.48550/arxiv.2412.12701 |