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Classifications and tags in Knowledge Accelerators
Last updated: Jun 21, 2024
How the Knowledge Accelerators use classifications and tags in IBM Knowledge Catalog

The Knowledge Accelerators use the IBM Knowledge Catalog classifications and tags, in order to further distinguish business terms for search, filtering and management purposes.

The usage of the classifications and tags are described in the following tables.

Table 1. Standard Classifications
Classifications Usage in IBM Knowledge Accelerators
Personal Information Indicates that the term or data class can be related to Personal Information (PI), which is defined as any data relating to an identified or identifiable individual. PI includes both identifiers, such as someone's name or employee serial number, as well as any personal information that can be reasonably associated with an individual, such as age, profession, preferences, net worth or mobile device location.
Sensitive Personal Information Indicates that the term or data class can be related to Sensitive personal data, which is defined as personal data consisting of information relating to an individual with regard to racial or ethnic origin; political opinions; religious beliefs or other beliefs of a similar nature; trade union membership; physical or mental health or condition; sexual life; or any criminal or alleged criminal history of a person.
Table 2. Business term tags
Business term tag Usage in IBM Knowledge Accelerators
alignment term Indicates that the business term is part of an Industry Alignment Vocabulary.
concept Indicates that the business term is a concept term.
measure Indicates that the business term is a measure term.
performance analysis Indicates that the business term is a performance analysis term.
property Indicates that the business term is a property term.
relationship Indicates that the business term is a relationship term.
role Indicates that the business term is playing a role of an is a type of term.
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