abstract = "Capturing the value in real-world data requires more
than fitting trivial models or visually exploring the
data. Rather, we must efficiently isolate driving
variables, confirm or reject potential outliers and
build models which are both accurate and trustable.
Fortunately, multi-objective genetic programming (aka,
ParetoGP) allows us to achieve this objective. ParetoGP
will be the foundation technology in this tutorial;
however, we will address the entire modeling process
including data balancing, outlier detection and model
usage/exploitation as well as the model development. In
addition to covering the basic theory of ParetoGP, we
explore key points using real-world industrial data
modeling case studies as well as review best practices
of industrial data modeling. Current economic
conditions demand maximum efficiency in developing and
exploiting maximal quality models; ParetoGP has been
used for applications ranging from energy trading to
active design-of-experiments to plant trouble-shooting
to patent litigation modeling to ...",
notes = "Also known as \cite{2330944} Distributed at
GECCO-2012.