Detecting Effects of AI-Mediated Communication on Language Complexity and Sentiment
Detecting Effects of AI-Mediated Communication on Language Complexity and Sentiment
Given the subtle human-like effects of large language models on linguistic patterns, this study examines shifts in language over time to detect the impact of AI-mediated communication (AI- MC) on social media. We compare a replicated dataset of 970,919 tweets from 2020 (pre-ChatGPT) with 20,000 tweets from the same period in 2024, all of which mention Donald Trump during election periods. Using a combination of Flesch-Kincaid readability and polarity scores, we analyze changes in text complexity and sentiment. Our findings reveal a significant increase in mean sentiment polarity (0.12 vs. 0.04) and a shift from predominantly neutral content (54.8% in 2020 to 39.8% in 2024) to more positive expressions (28.6% to 45.9%). These findings suggest not only an increasing presence of AI in social media communication but also its impact on language and emotional expression patterns.
Kristen Sussman、Daniel Carter
计算技术、计算机技术
Kristen Sussman,Daniel Carter.Detecting Effects of AI-Mediated Communication on Language Complexity and Sentiment[EB/OL].(2025-04-28)[2025-05-16].https://arxiv.org/abs/2504.19556.点此复制
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