Manuel Torralbo
2025
Fine-Tuning Medium-Scale LLMs for Joint Intent Classification and Slot Filling: A Data-Efficient and Cost-Effective Solution for SMEs
Maia Aguirre
|
Ariane Méndez
|
Arantza del Pozo
|
Maria Ines Torres
|
Manuel Torralbo
Proceedings of the 31st International Conference on Computational Linguistics: Industry Track
Dialogue Systems (DS) are increasingly in demand for automating tasks through natural language interactions. However, the core techniques for user comprehension in DS depend heavily on large amounts of labeled data, limiting their applicability in data-scarce environments common to many companies. This paper identifies best practices for data-efficient development and cost-effective deployment of DS in real-world application scenarios. We evaluate whether fine-tuning a medium-sized Large Language Model (LLM) for joint Intent Classification (IC) and Slot Filling (SF), with moderate hardware resource requirements still affordable by SMEs, can achieve competitive performance using less data compared to current state-of-the-art models. Experiments on the Spanish and English portions of the MASSIVE corpus demonstrate that the Llama-3-8B-Instruct model fine-tuned with only 10% of the data outperforms the JointBERT architecture and GPT-4o in a zero-shot prompting setup in monolingual settings. In cross-lingual scenarios, Llama-3-8B-Instruct drastically outperforms multilingual JointBERT demonstrating a vastly superior performance when fine-tuned in a language and evaluated in the other.
2024
Incremental Learning for Knowledge-Grounded Dialogue Systems in Industrial Scenarios
Izaskun Fernandez
|
Cristina Aceta
|
Cristina Fernandez
|
Maria Ines Torres
|
Aitor Etxalar
|
Ariane Mendez
|
Maia Agirre
|
Manuel Torralbo
|
Arantza Del Pozo
|
Joseba Agirre
|
Egoitz Artetxe
|
Iker Altuna
Proceedings of the 25th Annual Meeting of the Special Interest Group on Discourse and Dialogue
In today’s industrial landscape, seamless collaboration between humans and machines is essential and requires a shared knowledge of the operational domain. In this framework, the technical knowledge for operator assistance has traditionally been derived from static sources such as technical documents. However, experienced operators hold invaluable know-how that can significantly contribute to support other operators. This work focuses on enhancing the operator assistance tasks in the manufacturing industry by leveraging spoken natural language interaction. More specifically, a Human-in-the-Loop (HIL) incremental learning approach is proposed to integrate this expertise into a domain knowledge graph (KG) dynamically, along with the use of in-context learning for Large Language Models (LLMs) to benefit other capabilities of the system. Preliminary results of the experimentation carried out in an industrial scenario, where the graph size was increased in a 25%, demonstrate that the incremental enhancing of the KG benefits the dialogue system’s performance.
Search
Fix data
Co-authors
- Arantza Del Pozo 2
- Ariane Méndez 2
- Maria Inés Torres 2
- Cristina Aceta 1
- Maia Agirre 1
- show all...