The Conversational Search (CS) paradigm facilitates users' interaction with IR systems through natural language sentences, and it is increasingly being used in various scenarios. However, the proliferation of custom conversational search systems and components makes it challenging to compare and and design new CS agents. To tackle this issue, we propose DECAF: a modular and extensible conversational search framework that enables rapid development of conversational agents. DECAF integrates all the necessary components of a modern conversational search system into a uniform interface. DECAF allows for experiments that exhibit a high degree of reproducibility, addressing the reproducibility crisis in the field. DECAF framework includes several state-of-the-art components such as query rewriting, search functions under BoW and dense paradigms, and re-ranking functions. We evaluate the DECAF on two well-known conversational collections, CAsT'19 and CAsT'20, and provide the results as baselines for future practitioners.
A Modular Framework for Conversational Search Reproducible Experimentation: Discussion Paper
Faggioli G.;Ferro N.
2023
Abstract
The Conversational Search (CS) paradigm facilitates users' interaction with IR systems through natural language sentences, and it is increasingly being used in various scenarios. However, the proliferation of custom conversational search systems and components makes it challenging to compare and and design new CS agents. To tackle this issue, we propose DECAF: a modular and extensible conversational search framework that enables rapid development of conversational agents. DECAF integrates all the necessary components of a modern conversational search system into a uniform interface. DECAF allows for experiments that exhibit a high degree of reproducibility, addressing the reproducibility crisis in the field. DECAF framework includes several state-of-the-art components such as query rewriting, search functions under BoW and dense paradigms, and re-ranking functions. We evaluate the DECAF on two well-known conversational collections, CAsT'19 and CAsT'20, and provide the results as baselines for future practitioners.File | Dimensione | Formato | |
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