abstract = "Financial forecasting is a vital area in computational
finance. This importance is reflected in the literature
by the continuous development of new algorithms. EDDIE
is well-established genetic programming financial
forecasting tool, which has successfully been applied
to a variety of international datasets. Recently, we
introduced hyper-heuristics to EDDIE. This was the
first time in the literature that hyper-heuristics were
used for financial forecasting. Results showed that
this introduction significantly benefited the
performance of the algorithm. However, an issue was
encountered in the way that low level heuristics were
selected during the search process, because it was
considered to be a static way. To address this issue,
in this paper we further improve our algorithm by
introducing a Choice Function, which is a score based
technique that offers a more dynamic selection of the
low-level heuristics. This paper presents preliminary
results, after having tested the Choice Function
approach with 10 datasets. These results show that the
introduction of the Choice Function is beneficial to
EDDIE, thus making it a very promising tool for future
investigation on financial forecasting problems.",
notes = "CEC 2013 - A joint meeting of the IEEE, the EPS and
the IET.