Article (Scientific journals)
On-device query intent prediction with lightweight LLMs to support ubiquitous conversations.
DUBIEL, Mateusz; BARGHOUTI, Yasmine; KUDRYAVTSEVA, Kristina et al.
2024In Scientific Reports, 14 (1), p. 12731
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Keywords :
Conversational Agents; Design; Graphical user nterfaces; Information retrieval
Abstract :
[en] Conversational Agents (CAs) have made their way to providing interactive assistance to users. However, the current dialogue modelling techniques for CAs are predominantly based on hard-coded rules and rigid interaction flows, which negatively affects their flexibility and scalability. Large Language Models (LLMs) can be used as an alternative, but unfortunately they do not always provide good levels of privacy protection for end-users since most of them are running on cloud services. To address these problems, we leverage the potential of transfer learning and study how to best fine-tune lightweight pre-trained LLMs to predict the intent of user queries. Importantly, our LLMs allow for on-device deployment, making them suitable for personalised, ubiquitous, and privacy-preserving scenarios. Our experiments suggest that RoBERTa and XLNet offer the best trade-off considering these constraints. We also show that, after fine-tuning, these models perform on par with ChatGPT. We also discuss the implications of this research for relevant stakeholders, including researchers and practitioners. Taken together, this paper provides insights into LLM suitability for on-device CAs and highlights the middle ground between LLM performance and memory footprint while also considering privacy implications.
Disciplines :
Computer science
Author, co-author :
DUBIEL, Mateusz ;  University of Luxembourg > Faculty of Science, Technology and Medicine (FSTM) > Department of Computer Science (DCS)
BARGHOUTI, Yasmine 
KUDRYAVTSEVA, Kristina 
LEIVA, Luis A.  ;  University of Luxembourg > Faculty of Science, Technology and Medicine (FSTM) > Department of Computer Science (DCS)
External co-authors :
yes
Language :
English
Title :
On-device query intent prediction with lightweight LLMs to support ubiquitous conversations.
Publication date :
03 June 2024
Journal title :
Scientific Reports
eISSN :
2045-2322
Publisher :
Nature Research, England
Volume :
14
Issue :
1
Pages :
12731
Peer reviewed :
Peer Reviewed verified by ORBi
Focus Area :
Computational Sciences
European Projects :
HE - 101071147 - SYMBIOTIK - Context-aware adaptive visualizations for critical decision making
FnR Project :
FNR15722813 - Brainsourcing For Affective Attention Estimation, 2021 (01/02/2022-31/01/2025) - Luis Leiva
Funders :
UE - Union Européenne
Funding text :
The experiments presented in this paper were carried out using the HPC facilities of the University of Luxembourg. This work was supported by the Horizon 2020 FET program of the European Union (grant CHIST-ERA-20-BCI-001) and the European Innovation Council Pathfinder program (SYMBIOTIK project, grant 101071147).
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