This paper presents new techniques for automatically constructing probabilistic programs for data analysis, interpretation, and prediction.
These techniques work with probabilistic domain-specific data modeling languages that capture key properties of a broad class of data generating processes, using Bayesian inference to synthesize probabilistic programs in these modeling languages given observed data.
It uses generative programming techniques to produce domain specific code - see below:
https://dl.acm.org/ft_gateway.cfm?id=3290350&ftid=2027616&dwn=1&CFID=46105614&CFTOKEN=bd554558d8f7ab57-41952796-0E75-1855-A8EFED89006D428F
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