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

机译:keepin'它真实:人工生成的说唱歌词的真实性判断的语言模型

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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.
机译:通过神经语言建模的进步,可以在各种类型和风格中产生人工文本。虽然这些文本的语义连贯性不应过度估计,但这些人工文本的语法正确性和风格质量有时非常令人信服。在本文中,我们向这种人为生成的文本报告了对人群源真实性判断的研究。作为一个案例研究,我们已经转向喇叭歌词,这是一个既定的当今流行音乐的子类型,以其明确的内容而闻名,并为歌词独特的节奏交付而闻名。我们研究的实证基础是在荷兰的大型主流当代音乐节的背景下进行的实验。除了更多通用因素之外,我们模拟了一个不同的输入的语言特征,可能已经用作真实性提示。结果表明,参与者仅略微能够区分真实和生成的材料。通过仔细审查影响参与者真实性判断的语言特征,表明语言特性如“句法复杂性”,“词汇分集”和“押韵密度”为用户的对文本的认知是真实的。这项研究有助于提高生成文本的质量和信誉。此外,它还提高了我们对真实和人工艺的看法的理解。

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