bibtex demonstration paper to appear
Appearing in: 2nd International ACM SIGIR Conference on Information Retrieval in the Asia Pacific (SIGIR-AP 2024)
Abstract:
Evaluating the interactions between users and systems presents many challenges. Simulation offers a reliable, re-usable, and repeatable methodology to explore how different users, user behaviours and/or retrieval systems impact performance. With Large Language Models and Generative AI now widely available and accessible, new affordances are possible. These allow researchers to create more “realistic” simulated users that can generate queries and judge items like humans, and to develop new retrieval systems where responses and interactions are conversational and based on retrieval augmented generation. This resource paper presents a community-led initiative to update the Simulation of Interactive Information Retrieval (SimIIR) Framework to enable the simulation of conversational search using LLMs. The largest update provides a conversational search workflow which involves a number of new possible interactions with a search system or agent–enabling a host of new development and evaluation opportunities. Other developments include the Markovian Users, Cognitive States, LLM-based components for assessing snippets/documents/responses, generating queries, deciding on when to stop/continue, and PyTerrier integration. This paper aims to mark the release of SimIIR 3.0 and invites the community to build, extend, and use the resource.
BibTeX @inproceedings{azzopardi:sigirap2024-simiir, author = {Azzopardi, Leif and Breuer, Timo and Engelmann, Bjoern and Kreutz, Christin and MacAvaney, Sean and Maxwell, David and Parry, Andrew and Roegiest, Adam and Wang, Xi and Zerhoudi, Saber}, title = {SimIIR 3: A Framework for Simulating Interactive Information Retrieval}, booktitle = {2nd International ACM SIGIR Conference on Information Retrieval in the Asia Pacific}, year = {2024} }