vii
Preface
e, the majority of biological data pattern discovery tasks have
om traditional univariate approaches, by which the activity of a
olecule is analysed using a statistical test, to more sophisticated
es. Along with the fast development and modernisation of
ology such as the microarray technology, the next-generation
ng and mass-spectroscopy technology, biological pattern
y has gradually become multivariate, nonlinear, multi-species and
ics as well as network-based. It is the so-called big-data era,
ot only has the promising prospect but also brings with it
es such as the computing facility problem, the model complexity
the generalisation capability problem, and importantly the
ation and extrapolation capability problem.
rchers and scientists have therefore made huge efforts to
e such challenges. Among many successful developments,
learning has always played and still plays a very important as
nique role in biological pattern discovery. Almost all machine
areas have greatly engaged in biological pattern discovery from
ised to supervised machine learning, from deterministic
g to stochastic modelling, from classical algorithms to more and
ing-edge algorithms. The variety of biological data, such as from
oarray gene expression data to the next-generation sequencing
m image data to spectroscopy data, have all seen the involvement
s advanced machine learning algorithms and approaches. The
cess of biological pattern discovery could not have been realised
he support of machine learning.