abstract = "Mathematical Programming (MP) models are common in
optimization of real-world processes. Models are
usually built by optimization experts in an iterative
manner: an imperfect model is continuously improved
until it approximates the reality well-enough and meets
all technical requirements (e.g., linearity). To
facilitate this task, we propose a Genetic One-Class
Constraint Synthesis method (GOCCS). Given a set of
exemplary states of normal operation of a business
process, GOCCS synthesizes constraints in Linear
Programming or Non-linear Programming form. The
synthesized constraints can be then paired with an
arbitrary objective function and supplied to an
off-the-shelf solver to find optimal parameters of the
process. We assess GOCCS on three families of MP
benchmarks and conclude promising results. We also
apply it to a real-world process of wine production and
optimize that process.",
notes = "'The best QP model synthesized for white wine
is:'