Second International Workshop on the Induction of Process Models
While the worlds of science and business typically meet in the presence of a profitable
scheme, individuals from both environments have interests in analyzing complex data
about dynamic systems. Whether motivated by a drive to increase system efficiency or
to understand nature, their shared goal leads to a shared focus on the underlying causal
processes that explain or produce observed phenomena. To this end, researchers
construct models from data derived from observed system behavior and background
knowledge about the candidate processes. Traditional literature on regression,
time-series analysis, and data mining produces descriptive models that may reproduce
the observed data but cannot explain the principal dynamics. Therefore, researchers
are called to develop methods that capture complex temporal and spatial relationships
in terms of domain knowledge (e.g., relevant scientific or business concepts) and that
construct these explanatory process models. |