TREC Ikat 2023: A Test Collection For Evaluating Conversational And Interactive Knowledge Assistants · The Large Language Model Bible Contribute to LLM-Bible

TREC Ikat 2023: A Test Collection For Evaluating Conversational And Interactive Knowledge Assistants

Aliannejadi Mohammad, Abbasiantaeb Zahra, Chatterjee Shubham, Dalton Jeffery, Azzopardi Leif. Arxiv 2024

[Paper]    
Agentic Tools

Conversational information seeking has evolved rapidly in the last few years with the development of Large Language Models (LLMs), providing the basis for interpreting and responding in a naturalistic manner to user requests. The extended TREC Interactive Knowledge Assistance Track (iKAT) collection aims to enable researchers to test and evaluate their Conversational Search Agents (CSA). The collection contains a set of 36 personalized dialogues over 20 different topics each coupled with a Personal Text Knowledge Base (PTKB) that defines the bespoke user personas. A total of 344 turns with approximately 26,000 passages are provided as assessments on relevance, as well as additional assessments on generated responses over four key dimensions: relevance, completeness, groundedness, and naturalness. The collection challenges CSA to efficiently navigate diverse personal contexts, elicit pertinent persona information, and employ context for relevant conversations. The integration of a PTKB and the emphasis on decisional search tasks contribute to the uniqueness of this test collection, making it an essential benchmark for advancing research in conversational and interactive knowledge assistants.

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