Affiliation:
1. Amsterdam School of Communication Research, University of Amsterdam and MediaFutures, Department of Information Science and Media Studies, University of Bergen
2. University of Bergen
3. MediaFutures, Department of Information Science and Media Studies, University of Bergen
4. Marketing and Consumer Behaviour Group, Wageningen University & Research
Abstract
Multi-list recommender systems have become widespread in entertainment and e-commerce applications. Yet, extensive user evaluation research is missing. Since most content is optimized toward a user’s current preferences, this may be problematic in recommender domains that involve behavioral change, such as food recommender systems for healthier food intake. We investigate the merits of multi-list recommendation in the context of internet-sourced recipes. We compile lists that adhere to varying food goals in a multi-list interface, examining whether multi-list interfaces and personalized explanations support healthier food choices. We examine the user evaluation (i.e., diversity, understandability, choice difficulty and satisfaction) of a multi-list recommender interface, linking choice behavior to evaluation aspects through the user experience framework.
We present two studies, based on (1) similar-item retrieval and (2) knowledge-based recommendation. Study 1 (
N
= 366) compared single-list (5 recipes) and multi-list recommenders (25 recipes; presented with or without explanations). Study 2 (
N
= 164) compared single-list and multi-list food recommenders with similar set sizes and varied whether presented explanations were personalized. Multi-list interfaces were perceived as more diverse and understandable than single-list interfaces, while results for choice difficulty and satisfaction were mixed. Moreover, multi-list interfaces triggered changes in food choices, which tended to be unhealthier, but also more goal based.
Funder
Research Council of Norway with funding to MediaFutures: Research Centre for Responsible Media Technology and Innovation, through the Centre for Research-based Innovation scheme
Protein Transition Investment Theme at Wageningen University & Research
DARS Research Group at the University of Bergen
Publisher
Association for Computing Machinery (ACM)
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