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Automated language‐independent authorship verification (for Indo‐European languages)
Author(s) -
Adamovic Sasa,
Miskovic Vladislav,
Milosavljevic Milan,
Sarac Marko,
Veinovic Mladen
Publication year - 2019
Publication title -
journal of the association for information science and technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.903
H-Index - 145
eISSN - 2330-1643
pISSN - 2330-1635
DOI - 10.1002/asi.24163
Subject(s) - computer science , natural language processing , artificial intelligence , support vector machine , set (abstract data type) , feature selection , feature (linguistics) , random forest , selection (genetic algorithm) , linguistics , programming language , philosophy
In this article we examine automated language‐independent authorship verification using text examples in several representative Indo‐European languages, in cases when the examined texts belong to an open set of authors, that is, the author is unknown. We showcase the set of developed language‐dependent and language‐independent features, the model of training examples, consisting of pairs of equal features for known and unknown texts, and the appropriate method of authorship verification. An authorship verification accuracy greater than 90% was accomplished via the application of stylometric methods on four different languages (English, Greek, Spanish, and Dutch, while the verification for Dutch is slightly lower). For the multilingual case, the highest authorship verification accuracy using basic machine‐learning methods, over 90%, was achieved by the application of the kNN and SVM‐SMO methods, using the feature selection method SVM‐RFE. The improvement in authorship verification accuracy in multilingual cases, over 94%, was accomplished via ensemble learning methods, with the MultiboostAB method being a bit more accurate, but Random Forest is generally more appropriate.

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