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TREC iKAT 2023: A Test Collection for Evaluating Conversational and Interactive Knowledge Assistants

Mohammad Aliannejadi, Zahra Abbasiantaeb, Shubham Chatterjee, Jeff Dalton, Leif Azzopardi

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Abstract

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 Agent (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 CSAs to efficiently navigate diverse personal contexts, elicit pertinent persona information, and employ context for relevant conversations.<br/>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.

Topics & Concepts

BespokeComputer scienceRelevance (law)Test (biology)Context (archaeology)Data collectionKnowledge baseSet (abstract data type)Human–computer interactionWorld Wide WebInformation retrievalMathematicsPaleontologyLawPolitical scienceBiologyProgramming languageStatisticsTopic ModelingAI in Service InteractionsSpeech and dialogue systems
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