Escaping the McNamara Fallacy: Towards more Impactful Recommender Systems Research

Dietmar Jannach*, C. Bauer

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Recommender systems are among today’s most successful application areas of artificial intelligence. However, in the recommender systems research community, we have fallen prey to a McNamara fallacy to a worrying extent: In the majority of our research efforts, we rely almost exclusively on computational measures such as prediction accuracy, which are easier to make than applying other evaluation methods. However, it remains unclear whether small improvements in terms of such computational measures matter greatly and whether they lead us to better systems in practice. A paradigm shift in terms of our research culture and goals is therefore needed. We can no longer focus exclusively on abstract computational measures but must direct our attention to research questions that are more relevant and have more impact in the real world. In this work, we review the various ways of how recommender systems may create value; how they, positively or negatively, impact consumers, businesses, and the society; and how we can measure the resulting effects. Through our analyses, we identify a number of research gaps and propose ways of broadening and improving our methodology in a way that leads us to more impactful research in our field.
Original languageEnglish
Pages (from-to)79-95
JournalAI Magazine
Volume41
Issue number4
DOIs
Publication statusPublished - 28 Dec 2020

Keywords

  • recommender systems
  • evaluation
  • methods
  • Paradigm change
  • methodology
  • impact-orientation

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