1. AUTHORSHIP CLASSIFICATION TECHNIQUES: BRIDGING TEXTUAL DOMAINS AND LANGUAGES.
- Author
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Misini, Arta, Kadriu, Arbana, and Canhasi, Ercan
- Subjects
MACHINE learning ,NATURAL language processing ,AUTHORSHIP - Abstract
Authorship classification analyzes an author's prior work to identify their writing style, a unique trait of each language and individual author. This research aims to conduct a thorough comparative analysis of various methods for classifying authorship. The study leverages two corpora: AAALitCorpus of Albanian literary texts and CCAT10 of English columns. We evaluate modelgenerated features across different configurations. The richness of the features and the breadth of the analysis provide a significant understanding of the problem, setting a new standard for comprehensive linguistic investigations across multiple languages. The study indicates that machine learning algorithms accurately discern authorial writing styles, highlighting the complexities of classifying authorship in a cross-linguistic context. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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