Massive study analyzes 23 million headlines from 47 news media outlets in the US from 2000-2019. They find that over this time period, headlines became more likely to denote anger, fear, disgust and sadness and less likely to be emotionally neutral. Headlines from right-leaning news media were consistently more negative than headlines from left-leaning outlets as well.
https://journals.plos.org/plosone/article?id=10.1371/journal.pone.0276367
Longitudinal analysis of sentiment and emotion in news media headlines using automated labelling with Transformer language models

This work describes a chronological (2000–2019) analysis of sentiment and emotion in 23 million headlines from 47 news media outlets popular in the United States. We use Transformer language models fine-tuned for detection of sentiment (positive, negative) and Ekman’s six basic emotions (anger, disgust, fear, joy, sadness, surprise) plus neutral to automatically label the headlines. Results show an increase of sentiment negativity in headlines across written news media since the year 2000. Headlines from right-leaning news media have been, on average, consistently more negative than headlines from left-leaning outlets over the entire studied time period. The chronological analysis of headlines emotionality shows a growing proportion of headlines denoting anger, fear, disgust and sadness and a decrease in the prevalence of emotionally neutral headlines across the studied outlets over the 2000–2019 interval. The prevalence of headlines denoting anger appears to be higher, on average, in right-leaning news outlets than in left-leaning news media.

@taylorlorenz Even otherwise reputable people use all-cap, emotionally charged, hyperbolic words in their headlines to get clicks on their Youtube news channels. If all these miscreants are being DEVASTATED and DESTROYED, why are they still around?