Publication | Open Access
Addressing Marketing Bias in Product Recommendations
80
Citations
29
References
2020
Year
Unknown Venue
Marketing AnalyticsDigital MarketingConsumer ResearchCommunicationData SciencePreference LearningBiasConsumer-product InteractionsManagementConsumer BehaviorProduct ImageNiche MarketProduct RecommendationsPersonalized Product RecommendationsAdvertisingMarketingInformation Filtering SystemGroup RecommendersInteractive MarketingArtsCollaborative Filtering
Modern collaborative filtering algorithms seek to provide personalized product recommendations by uncovering patterns in consumer-product interactions. However, these interactions can be biased by how the product is marketed, for example due to the selection of a particular human model in a product image. These correlations may result in the underrepresentation of particular niche markets in the interaction data; for example, a female user who would potentially like motorcycle products may be less likely to interact with them if they are promoted using stereotypically 'male' images.
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