AIHCIRMar 17, 2022

Conversational Recommendation: A Grand AI Challenge

arXiv:2203.09126v126 citationsh-index: 61
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that frames conversational recommendation as a grand challenge for AI, targeting developers and researchers in human-computer interaction and recommender systems.

The paper identifies conversational recommender systems as a key AI challenge, highlighting their potential to overcome limitations of current systems by enabling interactive, explainable, and memory-aware recommendations.

Animated avatars, which look and talk like humans, are iconic visions of the future of AI-powered systems. Through many sci-fi movies we are acquainted with the idea of speaking to such virtual personalities as if they were humans. Today, we talk more and more to machines like Apple's Siri, e.g., to ask them for the weather forecast. However, when asked for recommendations, e.g., for a restaurant to go to, the limitations of such devices quickly become obvious. They do not engage in a conversation to find out what we might prefer, they often do not provide explanations for what they recommend, and they may have difficulties remembering what was said one minute earlier. Conversational recommender systems promise to address these limitations. In this paper, we review existing approaches to build such systems, which developments we observe today, which challenges are still open and why the development of conversational recommenders represents one of the next grand challenges of AI.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes