Bayesian ADAPTive Experimental Design
Project description
Bayesian ADAPTive Experimental Design
Run efficient Bayesian adaptive experiments.
This code relates to the following pre-print. But, the pre-print is likely to appear in quite a different form when finally published.
Vincent, B. T., & Rainforth, T. (2017, October 20). The DARC Toolbox: automated, flexible, and efficient delayed and risky choice experiments using Bayesian adaptive design. Retrieved from psyarxiv.com/yehjb
Status: 🔥 Under active development 🔥
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