tides,
ܡොൌ܁ܟ܍ൌ۰ሺ܆ሻܟ܍
(3.46)
mple implementation of BBFNN is to use a maximum likelihood
of a logistic regression model to estimate w. The sigmoid
is used for squashing ܡො into the interval between zero and one,
ૈൌ
1
1 ݁ିܡො
(3.47)
rnoulli likelihood function is generated based on the logit vector
ࣦൌߨ
௬ሺ1 െߨሻଵି௬
ே
ୀଵ
(3.48)
mising this likelihood can estimate w. Based on the estimated
rameters ܟෝ, which is the estimated version of w, a constructed
model can be used to scan a long polyprotein sequence to identify
protease cleavage sites for a specific protease or posttranslational
tion sites for a specific chemical.
NN has been implemented in different versions. For instance, a
BBFNN and an orthogonal kernel machine.
he Bayesian BBFNN algorithm
esian BBFNN is an extension to BBFNN. The aim of developing
sian BBFNN is for generating a more robust BBFNN modelling
m for protease cleavage peptide data analysis [Yang, 2005b].
an error vector is denoted by ܍ൌሺ݁ଵ, ݁ଶ, ⋯, ݁ேሻ௧, a linear
ion of K bio-basis functions is defined as below,
ݕොൌݓࣜሺܠ, ܛሻൌݕെ݁
ୀଵ
(3.49)