Logo image
A Survey on Intent-aware Recommender Systems
Journal article   Open access   Peer reviewed

A Survey on Intent-aware Recommender Systems

Dietmar Jannach and Markus Zanker
ACM Transactions on Recommender Systems, Vol.3(2), pp.1-32
3
2025
Handle:
https://hdl.handle.net/10863/51559

Abstract

Many modern online services feature personalized recommendations. A central challenge when providing such recommendations is that the reason why an individual user accesses the service may change from visit to visit or even during an ongoing usage session. To be effective, a recommender system should therefore aim to take the users’ probable intent of using the service at a certain point in time into account. In recent years, researchers have thus started to address this challenge by incorporating intent-awareness into recommender systems. Correspondingly, a number of technical approaches were put forward, including diversification techniques, intent prediction models, or latent intent modeling approaches. In this article, we survey and categorize existing approaches to building the next generation of Intent-Aware Recommender Systems (IARS). Based on an analysis of current evaluation practices, we outline open gaps and possible future directions in this area, which in particular include the consideration of additional interaction signals and contextual information to further improve the effectiveness of such systems.
pdf
37008901.15 MBDownloadView
Open Access
url
https://dl.acm.org/doi/10.1145/3700890View

Details

Metrics

1 Record Views
Logo image