AIが生成するニュースは理解しにくい(AI-generated news is harder to understand)

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2024-10-23 ミュンヘン大学(LMU)

自動生成されたニュース記事は、手作業で書かれた記事よりも理解しづらいと読者は感じています。LMUの研究によると、AIによる記事は言葉選びや数値の扱いが不適切で、読者の満足度が低いことが判明しました。AI生成記事は事前に編集されているにもかかわらず、読者は手書きの記事の方がわかりやすいと評価しました。研究者は、ニュースの自動生成にはさらに人間の関与が必要で、特に言葉や数値の扱いを改善するべきだと提言しています。

<関連情報>

数字が多すぎ、言葉選びが悪い: 読者が自動化されたデータ主導のニュース記事を理解しにくいと感じる理由 Too many numbers and worse word choice: Why readers find data-driven news articles produced with automation harder to understand

Sina Thäsler-Kordonouri, Neil Thurman, […], and Florian Stalph
Journalism  Published:October 22, 2024
DOI:https://doi.org/10.1177/14648849241262204

AIが生成するニュースは理解しにくい(AI-generated news is harder to understand)

Abstract

The production of data-driven journalism is becoming increasingly automated, impacting its composition and comprehensibility. Given the importance of data-driven reporting for democratic participation, this study investigates, firstly, how readers evaluate the composition of data-driven articles produced with and without the help of automation and, secondly, how these evaluations affect readers’ perceptions of the articles’ comprehensibility. In an online survey experiment, 3135 online news consumers evaluated 24 articles produced with or without automation using criteria developed in prior research. Our factor analysis reduced those criteria to five categories that matter in readers’ evaluations of the articles’ composition: numeric features, writing style, sentence and paragraph length, descriptive language, and word choice. Our results show, firstly, that although the perception of news stories produced with automation did not differ significantly from that of news stories produced without automation regarding sentence and paragraph length and writing style, the stories produced with automation were evaluated as significantly less comprehensible; and, secondly, that this can be explained partly by readers’ perceptions of some of the other article composition categories, which were rated significantly worse in automated articles. Our findings suggest that using automation to produce data-driven news articles changes their perceived composition in ways that negatively impact comprehensibility. However, this study also suggests how such articles could be made more comprehensible. Specifically, when ‘post-editing’ automated articles, journalists should aim to further reduce the quantity of numbers, better explain words that readers are unlikely to understand and change inappropriate wording.

1600情報工学一般
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