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GreenDB -- A Dataset and Benchmark for Extraction of Sustainability Information of Consumer Goods

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arxiv 2207.10733 v3 pith:332GP4DD submitted 2022-07-21 cs.LG cs.CY

GreenDB -- A Dataset and Benchmark for Extraction of Sustainability Information of Consumer Goods

classification cs.LG cs.CY
keywords sustainabilityproductgreendbhelpproductsconsumerconsumptiondata
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The production, shipping, usage, and disposal of consumer goods have a substantial impact on greenhouse gas emissions and the depletion of resources. Machine Learning (ML) can help to foster sustainable consumption patterns by accounting for sustainability aspects in product search or recommendations of modern retail platforms. However, the lack of large high quality publicly available product data with trustworthy sustainability information impedes the development of ML technology that can help to reach our sustainability goals. Here we present GreenDB, a database that collects products from European online shops on a weekly basis. As proxy for the products' sustainability, it relies on sustainability labels, which are evaluated by experts. The GreenDB schema extends the well-known schema.org Product definition and can be readily integrated into existing product catalogs. We present initial results demonstrating that ML models trained with our data can reliably (F1 score 96%) predict the sustainability label of products. These contributions can help to complement existing e-commerce experiences and ultimately encourage users to more sustainable consumption patterns.

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Cited by 1 Pith paper

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  1. From Query to Conscience: The Importance of Information Retrieval in Empowering Socially Responsible Consumerism

    cs.IR 2026-04 unverdicted novelty 3.0

    Information retrieval can empower socially responsible consumerism by reducing information asymmetries, supporting complex ethical searches, and calibrating consumer knowledge during product decisions.