SOLID: Self-seeding and Multi-intent Self-instructing LLMs for Generating Intent-aware Information-Seeking Dialogs
| Authors | |
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| Publication date | 2025 |
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| Book title | Annual Conference of the Nations of the Americas Chapter of the Association for Computational Linguistics : Proceedings of the Conference : Findings |
| Book subtitle | NAACL 2025 : April 29-May 4, 2025 |
| ISBN (electronic) |
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| Event | 2025 Annual Conference of the Nations of the Americas Chapter of the Association for Computational Linguistics, NAACL 2025 |
| Pages (from-to) | 6390–6410 |
| Publisher | Kerrville, TX: Association for Computational Linguistics |
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| Abstract |
Intent prediction in information-seeking dialogs is challenging and requires a substantial amount of data with human-labeled intents for effective model training. While Large Language Models (LLMs) have demonstrated effectiveness in generating synthetic data, existing methods typically rely on human feedback and are tailored to structured, task-oriented intents. In this paper, we leverage LLMs for zero-shot generation of large-scale, open-domain, intent-aware information-seeking dialogs to serve as training data for intent prediction models. We introduce SOLID, a method that generates dialogs turn by turn using novel self-seeding and multi-intent self-instructing strategies. Additionally, we propose SOLID-RL, a finetuned version that generates an entire dialog in one step using data created with SOLID. SOLID and SOLID-RL are each used to generate over 300k intent-aware dialogs, significantly surpassing the size of existing datasets. Experiments show that intent prediction models trained on sampled dialogs generated by SOLID and SOLID-RL outperform those trained solely on human-generated dialogs. Our findings demonstrate the potential of LLMs to expand training datasets, as they provide valuable resources for conversational agents across multiple tasks. Our self-seeding and self-instructing approaches are adaptable to various conversational data types and languages with minimal modifications. |
| Document type | Conference contribution |
| Language | English |
| Published at | https://doi.org/10.18653/v1/2025.findings-naacl.357 |
| Downloads |
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