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APPENDIX 
The definition of some of the measures from ISO/IEC 
DIC 25024 are as follows: 
1) Accuracy: represents the degree to which data has 
attributes that correctly represent the true value of 
an  intended  attribute  of  a  concept  in  a  specific 
context. 
2) Completeness: represents the degree to which data 
has  values  for  all  expected  attributes  in  specific 
context of use. 
3) Credibility: represents the degree to which data has 
attributes that are true and accepted by users in a 
specific context of use. 
4) Currentness: represents the degree to which data 
has attributes that are of the right age in a specific 
context of use. 
5) Accessibility: represents the degree to which data 
can be accessed in specific context of use, by users 
in need of special configuration. 
6) Compliance: represents the  degree to  which data 
has  attributes  that  adhere  to  standards, 
conventions and regulations in a specific context 
of use. 
7)  Confidentiality:  represents  the  degree  to  which 
data  has  attributes  that  ensure  that  is  only 
accessible  by  authorized  users  in  a  specific 
context of use. 
8) Efficiency: represents the degree to which data has 
attributes that can  be  processed  and provide  the 
expected  levels  of  performance  by  appropriate 
amounts of resources in a specific context of use. 
9) Precision: represents the degree to which data has 
attributes  that  are  exact  in  a  specific  context  of 
use. 
10) Traceability: represents the degree to which data 
has attributes that provide an audit trail of access