A Taxonomy for Generating Explanations in Recommender Systems

Friedrich, Gerhard (Alpen-Adria University) | Zanker, Markus (Alpen-Adria University)

AI Magazine 

In recommender systems, explanations serve as an additional type of information that can help users to better understand the system's output and promote objectives such as trust, confidence in decision making or utility. This article proposes a taxonomy to categorize and review the research in the area of explanations. It provides a unified view on the different recommendation paradigms, allowing similarities and differences to be clearly identified.