Towards Global, Socio-Economic, and Culturally Aware Recommender Systems
Kelley Ann Yohe

TL;DR
This paper explores integrating cultural identity and socio-economic factors into recommender systems, proposing an ANN model that significantly improves prediction accuracy for personalized recommendations across diverse markets.
Contribution
It introduces an ontology and approach for socio-economic and cultural awareness in recommender systems, enhancing their ability to understand and adapt to diverse user preferences.
Findings
ANN model achieves 95% accuracy in preference prediction
Incorporating socio-economic factors improves recommendation quality
Model outperforms traditional recommender systems in diverse markets
Abstract
Recommender systems have gained increasing attention to personalise consumer preferences. While these systems have primarily focused on applications such as advertisement recommendations (e.g., Google), personalized suggestions (e.g., Netflix and Spotify), and retail selection (e.g., Amazon), there is potential for these systems to benefit from a more global, socio-economic, and culturally aware approach, particularly as companies seek to expand into diverse markets. This paper aims to investigate the potential of a recommender system that considers cultural identity and socio-economic factors. We review the most recent developments in recommender systems and explore the impact of cultural identity and socio-economic factors on consumer preferences. We then propose an ontology and approach for incorporating these factors into recommender systems. To illustrate the potential of our…
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Taxonomy
TopicsDigital Marketing and Social Media · Recommender Systems and Techniques
MethodsOntology · Attentive Walk-Aggregating Graph Neural Network
