Yves here. I’m really put off by the premise of this post, both by virtue using Twitter, as well as having my e-mail inbox full of spam. I get put on junk publicist/PR/political lists almost daily, and even when I unsubscribe, they don’t always honor the request. I’m similarly unhappy about junk in my Twitter feeds and junk in the comments to the tweets where I read the conversation.
It’s revealing, and not in a good way, that the authors don’t even attempt to define bots and instead talk around the issue. Well, I can. A bot is a non-human tweet generator. See, that wasn’t hard.
Bots on Twitter are used overwhelmingly to manipulate viewers and/or to serve as unpaid advertising. The only “good” bots I can think of (and Lambert informed me of their existence) are art bots and animal bots, which put out new images automagically on a regular basis, and only Twitter users who subscribe to them get them. The transparency and opting-in make them acceptable. The rest need to go.
I’m appalled that these authors nevertheless attempts to defend bots by trying to identify “manipulative” bots as the evil ones. Sorry, as Edward Bernays described in his classic Propaganda, promoting your story is manipulation. The PMC likes to think their manipulation as “informative” and therefore desirable.
By Kai-Cheng Yang, Doctoral Student in Informatics, Indiana University and Filippo Menczer, Professor of Informatics and Computer Science, Indiana University. Originally published at The Conversation
Twitter reports that fewer than 5% of accounts are fakes or spammers, commonly referred to as “bots.” Since his offer to buy Twitter was accepted, Elon Musk has repeatedly questioned these estimates, even dismissing Chief Executive Officer Parag Agrawal’s public response.
Later, Musk put the deal on hold and demanded more proof.
So why are people arguing about the percentage of bot accounts on Twitter?
As the creators of Botometer, a widely used bot detection tool, our group at the Indiana University Observatory on Social Mediahas been studying inauthentic accounts and manipulation on social media for over a decade. We brought the concept of the “social bot” to the foreground and first estimated their prevalence on Twitter in 2017.
Based on our knowledge and experience, we believe that estimating the percentage of bots on Twitter has become a very difficult task, and debating the accuracy of the estimate might be missing the point. Here is why.
What, Exactly, Is a Bot?
To measure the prevalence of problematic accounts on Twitter, a clear definition of the targets is necessary. Common terms such as “fake accounts,” “spam accounts” and “bots” are used interchangeably, but they have different meanings. Fake or false accounts are those that impersonate people. Accounts that mass-produce unsolicited promotional content are defined as spammers. Bots, on the other hand, are accounts controlled in part by software; they may post content or carry out simple interactions, like retweeting, automatically.
These types of accounts often overlap. For instance, you can create a bot that impersonates a human to post spam automatically. Such an account is simultaneously a bot, a spammer and a fake. But not every fake account is a bot or a spammer, and vice versa. Coming up with an estimate without a clear definition only yields misleading results.
Defining and distinguishing account types can also inform proper interventions. Fake and spam accounts degrade the online environment and violate platform policy. Malicious bots are used to spread misinformation, inflate popularity, exacerbate conflict through negative and inflammatory content, manipulate opinions, influence elections, conduct financial fraud and disrupt communication. However, some bots can be harmless or even useful, for example by helping disseminate news, delivering disaster alerts and conducting research.
Simply banning all bots is not in the best interest of social media users.
For simplicity, researchers use the term “inauthentic accounts” to refer to the collection of fake accounts, spammers and malicious bots. This is also the definition Twitter appears to be using. However, it is unclear what Musk has in mind.
Hard to Count
Even when a consensus is reached on a definition, there are still technical challenges to estimating prevalence.
External researchers do not have access to the same data as Twitter, such as IP addresses and phone numbers. This hinders the public’s ability to identify inauthentic accounts. But even Twitter acknowledges that the actual number of inauthentic accounts could be higher than it has estimated, because detection is challenging.
Inauthentic accounts evolve and develop new tactics to evade detection. For example, some fake accounts use AI-generated faces as their profiles. These faces can be indistinguishable from real ones, even to humans. Identifying such accounts is hard and requires new technologies.
Another difficulty is posed by coordinated accounts that appear to be normal individually but act so similarly to each other that they are almost certainly controlled by a single entity. Yet they are like needles in the haystack of hundreds of millions of daily tweets.
Finally, inauthentic accounts can evade detection by techniques like swapping handles or automatically posting and deleting large volumes of content.
The distinction between inauthentic and genuine accounts gets more and more blurry. Accounts can be hacked, bought or rented, and some users “donate” their credentials to organizations who post on their behalf. As a result, so-called “cyborg” accounts are controlled by both algorithms and humans. Similarly, spammers sometimes post legitimate content to obscure their activity.
We have observed a broad spectrum of behaviors mixing the characteristics of bots and people. Estimating the prevalence of inauthentic accounts requires applying a simplistic binary classification: authentic or inauthentic account. No matter where the line is drawn, mistakes are inevitable.
Missing the Big Picture
The focus of the recent debate on estimating the number of Twitter bots oversimplifies the issue and misses the point of quantifying the harm of online abuse and manipulation by inauthentic accounts.
Through BotAmp, a new tool from the Botometer family that anyone with a Twitter account can use, we have found that the presence of automated activity is not evenly distributed. For instance, the discussion about cryptocurrencies tends to show more bot activity than the discussion about cats. Therefore, whether the overall prevalence is 5% or 20% makes little difference to individual users; their experiences with these accounts depend on whom they follow and the topics they care about.
Recent evidence suggests that inauthentic accounts might not be the only culprits responsible for the spread of misinformation, hate speech, polarization and radicalization. These issues typically involve many human users. For instance, our analysis shows that misinformation about COVID-19 was disseminated overtly on both Twitter and Facebook by verified, high-profile accounts.
Even if it were possible to precisely estimate the prevalence of inauthentic accounts, this would do little to solve these problems. A meaningful first step would be to acknowledge the complex nature of these issues. This will help social media platforms and policymakers develop meaningful responses.