2022
Conference article  Open Access

Rhythmic and psycholinguistic features for authorship tasks in the Spanish parliament: evaluation and analysis

Corbara S., Chulvi B., Rosso P., Moreo Fernandez A.

Authorship analysis  Text masking  Political speech 

Among the many tasks of the authorship field, Authorship Identification aims at uncovering the author of a document, while Author Profiling focuses on the analysis of personal characteristics of the author(s), such as gender, age, etc. Methods devised for such tasks typically focus on the style of the writing, and are expected not to make inferences grounded on the topics that certain authors tend to write about. In this paper, we present a series of experiments evaluating the use of topic-agnostic feature sets for Authorship Identification and Author Profiling tasks in Spanish political language. In particular, we propose to employ features based on rhythmic and psycholinguistic patterns, obtained via different approaches of text masking that we use to actively mask the underlying topic. We feed these feature sets to a SVM learner, and show that they lead to results that are comparable to those obtained by a BETO transformer, when the latter is trained on the original text, i.e., potentially learning from topical information. Moreover, we further investigate the results for the different authors, showing that variations in performance are partially explainable in terms of the authors' political affiliation and communication style.



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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:472050,
	title = {Rhythmic and psycholinguistic features for authorship tasks in the Spanish parliament: evaluation and analysis},
	author = {Corbara S. and Chulvi B. and Rosso P. and Moreo Fernandez A.},
	year = {2022}
}

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