Interpretable Early Warnings using Machine Learning in an Online Game-experiment
arXiv stat.ML / 3/23/2026
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Key Points
- The paper presents a machine-learning-based early warning system that combines multiple time-series features with gradient-boosted decision trees and memory-retaining components to predict regime shifts in the online game r/place.
- Trained on 2022 r/place data, the method detects about half of the transitions within 20 minutes at a false positive rate of 3.6%, and it generalizes to the 2023 event.
- SHAP is used to interpret predictions, revealing drivers such as critical slowing down, lack of innovation or coordination, turbulent histories, and low image complexity.
- The results suggest ML indicators can be effective for forecasting regime shifts in socio-ecological systems and may generalize to other online social systems beyond r/place.
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