Abstract
AbstractVoluntary sustainability standards are quickly gaining ground. Whether and how they work in the field, however, remains largely unclear. This is troubling for standards organizations since it hinders the improvement of their standards to achieve a higher impact. One reason why it is difficult to understand the mechanics of VSS is heterogeneity in compliance. We apply machine learning techniques to analyze compliance with one particular VSS: Rainforest Alliance-for which we have detailed audit data for all certified coffee and cocoa producers. In a first step, we deploy a k-modes algorithm to identify four clusters of producers with similar non-compliance patterns. In a second step, we match a large array of data to the producers to identify drivers of non-compliance. Our findings help VSS to implement targeted training or risk assessment using prediction. Further, they are a starting point for future causal analyses.
Publisher
Springer Science and Business Media LLC
Subject
Management, Monitoring, Policy and Law,Economics and Econometrics,Geography, Planning and Development
Reference49 articles.
1. Abarca-Orozco, S. J. (2015). Production and marketing innovations in Fair Trade and organic coffee cooperatives in the Córdoba-Huatusco corridor in Veracruz, Mexico (Dissertation). Iowa State University.
2. Borsky, S., & Spata, M. (2018). The impact of fair trade on smallholders’ capacity to adapt to climate change. Sustainable Development, 26(4), 379–398.
3. Breiman, L. (2001). Random forests. Machine Learning, 45(1), 5–32.
4. Bruederle, A., & Hodler, R. (2017). Nighttime Lights as a Proxy for Human Development at the Local Level. CESifo Working Papers, 6555.
5. Cao, F., Liang, J., Li, D., & Zhao, X. (2013). A weighting k-modes algorithm for subspace clustering of categorical data. Neurocomputing, 108, 23–30.
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