Abstract
AbstractHow do people learn functions on structured spaces? And how do they use this knowledge to guide their search for rewards in situations where the number of options is large? We study human behavior on structures with graph-correlated values and propose a Bayesian model of function learning to describe and predict their behavior. Across two experiments, one assessing function learning and one assessing the search for rewards, we find that our model captures human predictions and sampling behavior better than several alternatives, generates human-like learning curves, and also captures participants’ confidence judgements. Our results extend past models of human function learning and reward learning to more complex, graph-structured domains.
Funder
National Science Foundation
U.S. Naval Research Laboratory
Alfred P. Sloan Foundation
Publisher
Springer Science and Business Media LLC
Subject
Marketing,Strategy and Management,General Materials Science,Media Technology
Reference87 articles.
1. Auer, P. (2002). Using confidence bounds for exploitation-exploration trade-offs. Journal of Machine Learning Research, 3, 397–422.
2. Balaguer, J., Spiers, H., Hassabis, D., & Summerfield, C. (2016). Neural mechanisms of hierarchical planning in a virtual subway network. Neuron, 90(4), 893–903.
3. Barr, D.J., Levy, R., Scheepers, C., & Tily, H.J. (2013). Random effects structure for confirmatory hypothesis testing: keep it maximal. Journal of Memory and Language, 68(3), 255–278.
4. Behmo, R., Marcombes, P., Dalalyan, A., & Prinet, V. (2010). Towards optimal naive Bayes nearest neighbor. In European Conference on Computer Vision (pp. 171–184).
5. Bhui, R. (2018). Case-based decision neuroscience: economic judgment by similarity. In Goal-directed decision making (pp. 67–103): Elsevier.
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