1 / 11

Further Developments in the Terminological Theory of Data

Further Developments in the Terminological Theory of Data. Frank Farance Farance Inc Daniel Gillman US Bureau of Labor Statistics. Introduction. Statistical Data Axioms Operations Datatypes Values Statistical Data (again) Ontologies. Statistical Data. Categorical Nominal

diallo
Download Presentation

Further Developments in the Terminological Theory of Data

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Further Developments in the Terminological Theory of Data Frank Farance Farance Inc Daniel Gillman US Bureau of Labor Statistics

  2. Introduction • Statistical Data • Axioms • Operations • Datatypes • Values • Statistical Data (again) • Ontologies

  3. Statistical Data • Categorical • Nominal • Sex categories • Ordinal • Preference Scale • Quantitative • Interval • Temperature ˚C (Celsius) • Ratio • Temperature ˚K (Kelvin)

  4. Axioms • All Data Have Equality • Nominal • Exact, Non-numeric, Cardinality • Ordinal • Nominal + Order • Interval • Numeric • Ratio • Interval + Approximate

  5. Operations • Nominal • Determine Equality, Cardinality; No Arithmetic • Ordinal • Determine Equality, Cardinality, Order; Averages • Interval • Equality; Addition / Subtraction • Ratio • Equality; Multiplication / Division

  6. Datatypes • Compare with Statistical Data Typology • Assertions • Axioms • Characterizing Operations • Operations • Value Space • ??

  7. Values • Value = Element of Value Space • Share Notion of Equality • Equality Differs Across Datatypes • Compare Integer Versus Code • Is a Concept • Equality – i.e. compare concepts • Integer • Integer built from natural numbers • Natural number built from sets • Code • Designation of (points to) concept • Concept description stored in repository

  8. Statistical Data (again) • Population • A concept • Therefore, has characteristics • Variables • Not population characteristics • Values • Properties of characteristic • Determinant (P) versus Determinable (Ch) • What is determined (observed) about respondent

  9. Ontologies • Specification of a Conceptualization • Common definition • Tom Gruber, 1994 • Concept system with an associated computational model • Farance and Gillman, 2005 • Value space => Concept System • Assertions and Characterizing operations => Computational model

  10. Ontologies • Datatype is an ontology • Also, Concepts have roles • Property • Characteristic • Values, Variables, Populations • Concept system • Computational Model • Automatically create variables and associated allowed values

  11. Ontologies • Two ontologies for statistical survey work • Datatypes (computational model for data) • Variables (semantical model for data) • How to tie these together? • Values

More Related