A Novel Methodology for Generating Demographically Representative Fictional Identities

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CSTSDE6N505

Alt text: Academic research paper on methodology for creating demographically accurate fictional identities.

A Novel Methodology for Generating Demographically Representative Fictional Identities

Antonina Lawson
Antonina Lawson
DOI

Abstract

I n an increasingly digitized and data-driven world, the capacity to generate synthetic data that can simulate real-world situations is of immense importance. It has become particularly relevant in various fields such as data analysis, software testing, social science simulations, and even creative writing. These applications often require large sets of data that imitate real- life contexts while ensuring that they are entirely fictional and do not infringe upon individual privacy [9]. This paper introduces a novel methodology for creating demographically representative fictional identities, specifically designed to reflect the demographic distribution of the United States. Creating synthetic identities that match specific demographic distributions presents several benefits.

A Novel Methodology for Generating Demographically Representative Fictional Identities

I n an increasingly digitized and data-driven world, the capacity to generate synthetic data that can simulate real-world situations is of immense importance. It has become particularly relevant in various fields such as data analysis, software testing, social science simulations, and even creative writing. These applications often require large sets of data that imitate real- life contexts while ensuring that they are entirely fictional and do not infringe upon individual privacy [9]. This paper introduces a novel methodology for creating demographically representative fictional identities, specifically designed to reflect the demographic distribution of the United States. Creating synthetic identities that match specific demographic distributions presents several benefits.

Antonina Lawson
Antonina Lawson

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Antonina Lawson. 2026. “. Global Journal of Computer Science and Technology – C: Software & Data Engineering GJCST-C Volume 23 (GJCST Volume 23 Issue C2): .

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Journal Specifications

Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

Issue Cover
GJCST Volume 23 Issue C2
Pg. 17- 22
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GJCST-C Classification: (LCC): QA76.9.D343
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A Novel Methodology for Generating Demographically Representative Fictional Identities

Antonina Lawson
Antonina Lawson

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