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arxiv: 2404.14415 · v1 · pith:7VWIHODC · submitted 2024-03-26 · cs.CL

Domain Adaptation in Intent Classification Systems: A Review

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classification cs.CL
keywords classificationintentsystemsreviewdomainresearcherstasksadaptation
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Dialogue agents, which perform specific tasks, are part of the long-term goal of NLP researchers to build intelligent agents that communicate with humans in natural language. Such systems should adapt easily from one domain to another to assist users in completing tasks. Researchers have developed a broad range of techniques, objectives, and datasets for intent classification to achieve such systems. Despite the progress in developing intent classification systems (ICS), a systematic review of the progress from a technical perspective is yet to be conducted. In effect, important implementation details of intent classification remain restricted and unclear, making it hard for natural language processing (NLP) researchers to develop new methods. To fill this gap, we review contemporary works in intent classification. Specifically, we conduct a thorough technical review of the datasets, domains, tasks, and methods needed to train the intent classification part of dialogue systems. Our structured analysis describes why intent classification is difficult and studies the limitations to domain adaptation while presenting opportunities for future work.

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  1. Training LLMs with Reinforcement Learning for Intent-Aware Personalized Question Answering

    cs.CL 2026-05 unverdicted novelty 5.0

    IAP uses RL to train LLMs to explicitly infer and apply implicit user intent in single-turn personalized QA, achieving ~7.5% average macro-score gains over baselines on LaMP-QA.