| Literature DB >> 32585826 |
Qing Zhang1, David Elsweiler1, Christoph Trattner2.
Abstract
This article investigates how visual biases influence the choices made by people and machines in the context of online food. To this end the paper investigates three research questions and shows (i) to what extent machines are able to classify images, (ii) how this compares to human performance on the same task and (iii) which factors are involved in the decision making of both humans and machines. The research reveals that algorithms significantly outperform human labellers on this task with a range of biases being present in the decision-making process. The results are important as they have a range of implications for research, such as recommender technology and crowdsourcing, as is discussed in the article.Entities:
Keywords: crowdsourcing; food classification; visual biases
Year: 2020 PMID: 32585826 DOI: 10.3390/foods9060823
Source DB: PubMed Journal: Foods ISSN: 2304-8158