Keepin' it real: Linguistic models of authenticity judgments for artificially generated rap lyrics.

Through advances in neural language modeling, it has become possible to generate artificial texts in a variety of genres and styles. While the semantic coherence of such texts should not be over-estimated, the grammatical correctness and stylistic qualities of these artificial texts are at times rem...

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Main Authors: Folgert Karsdorp, Enrique Manjavacas, Mike Kestemont
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0224152
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spelling doaj-aeb2434399f645f48bd04f0cf21ca7892021-03-03T21:19:27ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-011410e022415210.1371/journal.pone.0224152Keepin' it real: Linguistic models of authenticity judgments for artificially generated rap lyrics.Folgert KarsdorpEnrique ManjavacasMike KestemontThrough advances in neural language modeling, it has become possible to generate artificial texts in a variety of genres and styles. While the semantic coherence of such texts should not be over-estimated, the grammatical correctness and stylistic qualities of these artificial texts are at times remarkably convincing. In this paper, we report a study into crowd-sourced authenticity judgments for such artificially generated texts. As a case study, we have turned to rap lyrics, an established sub-genre of present-day popular music, known for its explicit content and unique rhythmical delivery of lyrics. The empirical basis of our study is an experiment carried out in the context of a large, mainstream contemporary music festival in the Netherlands. Apart from more generic factors, we model a diverse set of linguistic characteristics of the input that might have functioned as authenticity cues. It is shown that participants are only marginally capable of distinguishing between authentic and generated materials. By scrutinizing the linguistic features that influence the participants' authenticity judgments, it is shown that linguistic properties such as 'syntactic complexity', 'lexical diversity' and 'rhyme density' add to the user's perception of texts being authentic. This research contributes to the improvement of the quality and credibility of generated text. Additionally, it enhances our understanding of the perception of authentic and artificial art.https://doi.org/10.1371/journal.pone.0224152
collection DOAJ
language English
format Article
sources DOAJ
author Folgert Karsdorp
Enrique Manjavacas
Mike Kestemont
spellingShingle Folgert Karsdorp
Enrique Manjavacas
Mike Kestemont
Keepin' it real: Linguistic models of authenticity judgments for artificially generated rap lyrics.
PLoS ONE
author_facet Folgert Karsdorp
Enrique Manjavacas
Mike Kestemont
author_sort Folgert Karsdorp
title Keepin' it real: Linguistic models of authenticity judgments for artificially generated rap lyrics.
title_short Keepin' it real: Linguistic models of authenticity judgments for artificially generated rap lyrics.
title_full Keepin' it real: Linguistic models of authenticity judgments for artificially generated rap lyrics.
title_fullStr Keepin' it real: Linguistic models of authenticity judgments for artificially generated rap lyrics.
title_full_unstemmed Keepin' it real: Linguistic models of authenticity judgments for artificially generated rap lyrics.
title_sort keepin' it real: linguistic models of authenticity judgments for artificially generated rap lyrics.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Through advances in neural language modeling, it has become possible to generate artificial texts in a variety of genres and styles. While the semantic coherence of such texts should not be over-estimated, the grammatical correctness and stylistic qualities of these artificial texts are at times remarkably convincing. In this paper, we report a study into crowd-sourced authenticity judgments for such artificially generated texts. As a case study, we have turned to rap lyrics, an established sub-genre of present-day popular music, known for its explicit content and unique rhythmical delivery of lyrics. The empirical basis of our study is an experiment carried out in the context of a large, mainstream contemporary music festival in the Netherlands. Apart from more generic factors, we model a diverse set of linguistic characteristics of the input that might have functioned as authenticity cues. It is shown that participants are only marginally capable of distinguishing between authentic and generated materials. By scrutinizing the linguistic features that influence the participants' authenticity judgments, it is shown that linguistic properties such as 'syntactic complexity', 'lexical diversity' and 'rhyme density' add to the user's perception of texts being authentic. This research contributes to the improvement of the quality and credibility of generated text. Additionally, it enhances our understanding of the perception of authentic and artificial art.
url https://doi.org/10.1371/journal.pone.0224152
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