ressions and is denoted by ܢ

⋃ሼܠ, ܡሽ. A tight Gaussian cluster

noted by ܢ. A tight cluster box is defined as above, i.e., ߱ൌ

ߤ൅2ߪොሿ for 95% of a Gaussian confidence interval. A candidate

t ܢି is composed of all expressions which are not included in the

ter set ܢ and is denoted by

ܢିൌሼݖ

ି∈ܢ|ݖ

ି∉߱ሽ

(6.18)

d on the initial tight cluster ܢ and an initial candidate outlier set

adaptive learning process is implemented using the Bayesian

mechanism [Yang and Yang, 2013]. The likelihood function of

sian tight cluster is defined as below, where i is an identity vector

ߪିଶ,

ࣦሺܢ|ߤ, ߚሻൌඨߚ

exp ൬െ1

2 ߚሺܢെߤܑሻ

(6.19)

his Gaussian likelihood function, one a priori structure for the

ariance ߚ is defined as an inverse Gamma

IGሺߚ|ܽ, ܾሻൌܾ

Γሺܽሻߚିሺଵା௔ሻexp ൬ܾ

ߚ

(6.20)

or for the mean ߤ is defined as a Gaussian function,

ܩሺߤ|ߤ, ߪ

ሻൌ

1

ඥ2ߨߪ

exp ቆെ

ሺߤെߤ

(6.21)

og-posterior of the likelihood combined with priors leads to the

g model format, where the model parameter set is ߠൌሺߤ, ߚሻ and

-parameter set is ߙൌሺߤ, ߪ

, ܽ, ܾሻ,

ogܲሺߠ|ݖ, ߙሻ∝logࣦሺܢ|ߤ, ߚሻ൅logIGሺߚ|ܽ, ܾሻ

൅logܩሺߤ|ߤ, ߪ

(6.22)

above equation, the log-likelihood is simplified as below,