Information systems have revolutionized the provisioning of decision-relevant information, and decision support tools have improved human decisions in many domains. Autonomous decision- making, on the other hand, remains hampered by systems’ inability to faithfully capture human preferences. We present a computational preference model that learns unobtrusively from lim- ited data by pooling observations across like-minded users. Our model quantifies the certainty of its own predictions as input to autonomous decision-making tasks, and it infers probabilistic segments based on user choices in the process. We evaluate our model on real-world preference data collected on a commercial crowdsourcing platform, and we find that it outperforms both individual and population-level estimates in terms of predictive accuracy and the informative- ness of its certainty estimates. Our work takes an important step toward systems that act autonomously on their users’ behalf.

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Erasmus Research Institute of Management
hdl.handle.net/1765/40144
ERIM Report Series Research in Management
Erasmus Research Institute of Management

Peters, M., & Ketter, W. (2013). Towards autonomous decision-making: A probabilistic model for learning multi-user preferences (No. ERS-2013-007-LIS). ERIM Report Series Research in Management. Retrieved from http://hdl.handle.net/1765/40144