November 12, 2024, 11:30–12:30
Toulouse
Room Auditorium 4 (First floor - TSE building)
Abstract
How do the ratings of critics and amateurs compare and how should they be combined? Previous research has produced mixed results about the first question, while the second remains unanswered. We have created a new, unique dataset, with wine ratings from critics and amateurs, and simulated a recommender system using the k-nearest-neighbor algorithm. We then formalized the advice seeking network spanned by that algorithm and studied people's relative influence. We find that critics are more consistent than amateurs, and thus their advice is more predictive than advice from amateurs. Getting advice from both groups can further boost performance. Our network theoretic approach allows us to identify influential critics, talented amateurs, and the information flow between groups. Our results provide evidence about the informational function of critics, while our framework is broadly applicable and can be leveraged to devise good decision strategies and more transparent recommender systems
Reference
Pantelis Analytis (Danish Institute for Advanced Studies), “A recommender network perspective on the informational value of critics and crowds”, IAST General Seminar, Toulouse: IAST, November 12, 2024, 11:30–12:30, room Auditorium 4 (First floor - TSE building).