Bites of Tomorrow: Personalized Recommendations for a Healthier and Greener Plate
By: Jiazheng Jing, Yinan Zhang, Chunyan Miao
Potential Business Impact:
Suggests food to help you live greener.
The recent emergence of extreme climate events has significantly raised awareness about sustainable living. In addition to developing energy-saving materials and technologies, existing research mainly relies on traditional methods that encourage behavioral shifts towards sustainability, which can be overly demanding or only passively engaging. In this work, we propose to employ recommendation systems to actively nudge users toward more sustainable choices. We introduce Green Recommender Aligned with Personalized Eating (GRAPE), which is designed to prioritize and recommend sustainable food options that align with users' evolving preferences. We also design two innovative Green Loss functions that cater to green indicators with either uniform or differentiated priorities, thereby enhancing adaptability across a range of scenarios. Extensive experiments on a real-world dataset demonstrate the effectiveness of our GRAPE.
Similar Papers
Green Recommender Systems: Understanding and Minimizing the Carbon Footprint of AI-Powered Personalization
Information Retrieval
Makes AI recommendations use less energy.
SmartSustain Recommender System: Navigating Sustainability Trade-offs in Personalized City Trip Planning
Human-Computer Interaction
Guides travelers to pick eco-friendly trips.
SmartSustain Recommender System: Navigating Sustainability Trade-offs in Personalized City Trip Planning
Human-Computer Interaction
Guides travelers to greener, less crowded trips.