This is the question you may be asking yourself, surveying the wreckage of 2020 thus far.
There are so many contenders to consider: was it Thursday, March 12, the day after Tom Hanks announced he was sick and the NBA announced it was cancelled? Was it Monday, June 1, the day peaceful protesters were tear gassed so that President Donald Trump could comfortably stroll to his Bible-wielding photo op?
Actually, it was neither, according to the Computational Story Lab of the University of Vermont. Instead, the lab offers this answer: Sunday, May 31. That day was not only the saddest day of 2020 so far, it was also the saddest day recorded by the lab in the last 13 years. Or at least, the saddest day on Twitter.
The researchers call it the Hedonometer. It is the invention of Chris Danforth and his partner Peter Dodds, both trained mathematicians and computer scientists and the co-directors of the lab. The Hedonometer has been up and running for more than a decade now, measuring word choices across millions of tweets, every day, the world over, to come up with a moving measure of well-being.
In fact, the last time The New York Times checked in with the Hedonometer team, in 2015, the main finding to emerge was our tendency toward relentless positivity on social media. “One of the happiest years on Twitter, at least for English,” Danforth said recently with a note of rue. That result now seems an artifact from an ancient era. “Since then it has been a long decline.”
What has remained constant is this: “Happiness is hard to know. It’s hard to measure,” he said. “We don’t have a lot of great data about how people are doing.”
The Computational Story Lab is part of a small but growing field of researchers who try to parse our national mental health through the prism of our online life. After all, never before have we had such an incredible stockpile of real-time data — what’s known as our “digital traces”— to choose from.
And never has that stockpile of information towered as high as it does now, in the summer of 2020: In the first months of the pandemic, Twitter reported a 34% increase in daily average user growth. Without our normal social life as antidote and anchor, our social media now feels more like real life than ever before.
Since 2008, the Hedonometer has gathered a random 10% of all public tweets, every day, across a dozen languages. The tool then looks for words that have been ranked for their happy or sad connotation, counts them, and calculates a kind of national happiness average based on which words are dominating the discourse.
On May 31, the most commonly used words on English language Twitter included “terrorist,” “violence” and “racist.” This was about a week after George Floyd was killed, near the start of the protests that would last all summer.
Since the beginning of the pandemic, the Hedonometer’s sadness readings have set multiple records. This year, “there was a full month — and we never see this — there was a full month of days that the Hedonometer was reading sadder than the Boston Marathon day,” Danforth said. “Our collective attention is very ephemeral. So it was really remarkable then that the instrument, for the first time, showed this sustained, depressed mood, and then it got even worse, when the protests started.”
James Pennebaker, an intellectual founder of online language analysis and a social psychologist at the University of Texas at Austin, became interested in what our choice of words reveals about ourselves — our moods, our characters — exactly at the moment when the internet was first supplying such an enormous stockpile of text to draw from and consider.
“These digital traces are markers that we’re not aware of, but they leave marks that tell us the degree to which you are avoiding things, the degree to which you are connected to people,” said Pennebaker, the author of “The Secret Life of Pronouns,” among other books. “They are telling us how you are paying attention to the world.”
But, Pennebaker said, one of the challenges of this line of research is that language itself is always evolving — and algorithms are notoriously bad at discerning context.
Take, for example, cursing. “Swear words have changed in the last 10 years,” he said, noting that now, far from necessarily being an expression of anger, cursing can be either utterly casual, or even positive, used to emphasise a point or express an enthusiasm. He is updating his electronic dictionaries accordingly.
Munmun De Choudhury, a professor in the School of Interactive Computing at Georgia Tech, is also examining digital data for insights into well-being. De Choudury’s work over the years has focused not only on population studies, like the Hedonometer, but also on the individual.
In 2013, she and colleagues found that by looking at new mothers on social media, they were able to help predict which ones might develop postpartum depression, based on their posts before the birth of their babies. One of the most telling signs? The use of first-person singular pronouns, like “I” and “me.”
“If I’m constantly talking about ‘me,’ it means that my attention has inward focus,” De Choudury said. “In the context of other markers, it can be a correlate of mental illness.”
This finding first emerged in the work of Pennebaker, but De Choudury said that particular study was “eye-opening” for her. “We were pleasantly surprised that there is so much signal in someone’s social media feed that can help us make these predictions,” De Choudury said.
Using data from social media for the study of mental health also helps address the WEIRD problem: an acronym that describes how psychology research is often exclusively composed of subjects who are Western, Educated, and from Industrialised, Rich, and Democratic countries.
“Social media provides a huge benefit because historically most research on mental health has been self-reported, so people were given surveys,” De Choudury said. “And the people who were recruited were either college students or patients at a clinic. We’re now able to look at a much more diverse variety of mental health experiences.”
Examining Twitter data during the first two months of the pandemic outbreak in the United States, De Choudury has been looking for signs of not just simple sadness, like the Hedonometer, but also anxiety, depression, stress and suicidal thoughts. Unsurprisingly, she found that all these levels were significantly higher than during the same months of 2019.
You may be wondering if Twitter is really a representative place to check the state of the general population’s mental health. After all, many of its users tend to refer to it by such nicknames as “hellsite” and “sewer.”
Some studies have shown that frequent social media use is correlated with depression and anxiety. Can we really discern our national happiness based on this particular digital environment and the fraction of the population — 1 in 5 in 2019 — that regularly use Twitter?
Angela Xiao Wu thinks we cannot. Wu, an assistant professor of media, culture and communication at NYU, argues that in the rush to embrace data, many researchers ignore the distorting effects of the platforms themselves.
We know that Twitter’s algorithms are designed to keep us hooked on our timelines, emotionally invested in the content we are presented with, coaxed toward remaining in a certain mental state. “If social scientists then take your resulting state, after all these interventions that these platforms have worked on you, and derive from that a national mood? There’s a huge part of platform incitement that’s embedded in the data, but is not being identified,” she said.
Indeed, Johannes Eichstaedt, a computational social scientist at Stanford, and a founder of the World Well Being Project, concedes that the methods like the ones his own lab uses are far from perfect. “I would say it’s about a C+,” he said. “It’s not that accurate, but it’s better than nothing.”
The closest we get to looking at national mental health otherwise is through surveys like the one Gallup performs — and so far, Gallup’s findings are in line with the early findings of Eichstaedt, De Choudury and the Hedonometer team.
According to Gallup, Americans reported the lowest rates of life satisfaction this year in over a decade, including during the 2008 recession. These statistics are consistent with more IRL observations: for example, the experience of many therapists working long days on Zoom to help patients cope with the same crisis they themselves are going through. “I have never been more exhausted at the end of the day than I am now,” said Michael Garfinkle, a psychoanalyst in New York.
Garfinkle notes that depression among his patients has noticeably increased since the pandemic began, but as well, even more broadly, “Everyone is trying to estimate how everyone else is doing, because everyone is in a state of disorientation that keeps shifting, but not getting better.”
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