Emily Bender Sets the Record Straight on "Stochastic Parrots"
Emily Bender Sets the Record Straight on "Stochastic Parrots"
In March 2021, a group of four researchers-a collaboration of linguists and computer scientists-published their now legendary paper âOn the Dangers of Stochastic Parrots: Can Language Models Be Too Big? đŠâ The paper received significant attention at the time (in part because Google fired two of the authors, Timnit Gebru and Margaret Mitchell, shortly before its publication).
It argued that large language models (LLMs) generate text by statistically predicting likely sequences of words rather than understanding what they are saying-a process the authors captured with the metaphor of a âstochastic parrot,â a system that repeats patterns without comprehension. And over the past five years, the analogy has spread well beyond the academic field where it originated, spawning debates and inspiring projects such as a shoulder-mounted robot named the Stochastic Parrot.
But that wider usage has also led to misconceptions about what the phrase originally meant. Lead author Emily M. Bender, a professor of computational linguistics at the University of Washington, recently wrote a blog post to debunk common misconceptions about the paper on its five-year anniversary. Bender spoke with IEEE Spectrum about these misconceptions, the field of computational linguistics, and the current discourse around artificial intelligence.
Whatâs Wrong With the Term âArtificial Intelligenceâ
How would you describe your work as a computational linguist?
Emily M. Bender: Linguistics, very generally, is the study of how language works and how we work with language. I contribute to that, and I also work in computational linguistics, training students who are going to go on to build language technology. Language technology actually stands alone as valuable and interesting, independent of whether or not someone wants to use it for their project of artificial intelligence.
Language technology includes things like automatic transcription, machine translation, spell check. And a lot of the work that I do personally, when I am building things, has to do with building machine-readable, but also human-readable grammars that model linguistic phenomena in different languages. Thatâs about using computers in the service of linguistic hypothesis testing.
Youâve argued that the term âartificial intelligenceâ obscures more than it clarifies. Why?
Bender: Many reasons. I think that it makes it difficult to actually have good discussions about technology and make wise decisions about it, if the way weâre talking about it doesnât make clear what the technology is. The phrase âartificial intelligenceâ both groups together disparate technologies and oversells what each one of them can do. So if we are trying to decide whether or not to use something, how to regulate something, we are much better off with clearer descriptions.
In general conversation, AI has become almost synonymous with âchatbotsâ or âLLMs.â Is that a problem?
Bender: For many people, theyâll say, âI use it to do blah blah blah.â So what do you mean by âitâ? And then theyâll say, âOh, I mean Claudeâ or ChatGPT or Gemini, so they are talking about these chatbots. But then other people will say, âYou canât say AI is all bad, because what about AlphaFold?â So, yes, for many people, they are talking about chatbots built on top of large language models, but [theyâre] also not really clear that those things are separate from something like AlphaFold.
And when we have news reporting that says âscientists use AI to discover a new drug,â well, what did they use? If what theyâre talking about is something much more narrow, maybe itâs protein folding, maybe itâs some other kind of statistical modeling [like in] weather modeling. Thatâs a very different kind of technology than ChatGPT.
Do you think thereâs a value to an umbrella term like âartificial intelligenceâ?
Bender: Well, thereâs a value to people who are trying to sell this-so too the tech companies trying to raise their valuations. Also, the way research funding is set up right now, it is very hard to get funded if you donât call what youâre doing artificial intelligence. That I think is a net negative, but for any individual trapped in that system, that can have value in the moment.
How Stochastic Parrots Have Been Misunderstood
What are the most common misconceptions about the âstochastic parrotsâ metaphor?
Bender: I think one of the biggest ones is, âBender says AI is a stochastic parrot.â That paper was written in late 2020. We were talking about large language models. Iâm pretty sure the word AI comes up only once at the very end, and thatâs talking about how, if youâre going to develop systems that are meant to do things like what people do, you have to be very careful that you are not creating something that can be mistaken for a person. The fact that these systems are designed to mimic the way we use language makes it very easy for people to mistake them for other people.
So in the paper, toward the very end, we sort of generalized to AI. But the phrase âstochastic parrotsâ specifically refers to large language models, and the phrase âartificial intelligenceâ refers to many different things. So we were never claiming that a chess engine or AlphaFold or an image labeling system or a machine translation system, any of those things that are sometimes called artificial intelligence, are stochastic parrots. We were specifically talking about using large language models to produce synthetic text.
Another one is that âstochastic parrotâ got picked up and interpreted by other people as a minimization or an insult. It was not meant that way. Other people might be using it that way, but thatâs not how I intended it, because itâs just a description of what these systems actually are. To see it as an insult requires either the belief that the large language model is the kind of thing that can take offense, which it isnât, or that these large language models should be understood as steps toward this grand ideal that I donât hold of artificial intelligence.
What I have been doing in many places-the octopus thought experiment, stochastic parrots, the phrase âsynthetic text-extruding machinesâ-itâs all about trying to make vivid to people who arenât in the business of building language technology what these systems actually do, which is not the same thing as insulting the systems or insulting the people who like the systems.
For readers who donât know, the âoctopus testâ comes from a 2020 paper that imagined an octopus recognizing the statistical patterns within messages passed through an undersea cable. With the octopus test and stochastic parrots, youâve used animal metaphors a couple of times now. Is that intentional?
Bender: No, itâs not intentional. With the octopus thought experiment, I initially had told the story in terms of a dolphin, because dolphins clearly are intelligent animals. My co-author on that paper, Alexander Koller, said it should be an octopus, because first of all, the environment that octopuses live in is much more distinct from where people live. It makes the metaphor more vivid, that the octopus is just feeling these pulses in the cable and has no way to look at what the people are looking at. But also, octopuses are just inherently funnier.
I was looking back at that paper and was surprised that the term âstochastic parrotsâ actually only appears twice in the text itself. Why did you include it in your title?
Bender: Because we liked it! And a catchy title is good self-marketing of an academic paper. The reason that thereâs not so much of it in the paper is that we were really looking at the full range of risks of making language models ever bigger. The phrase âlarge language modelâ also doesnât show up in the paper, because people werenât talking about them that way.
So the section on synthetic text, in some ways it felt like we were on thin ice, because at that point in time it was hard to imagine that anybody would want synthetic text. That part of the paper became much more relevant when OpenAI imposed ChatGPT on the world. Then that particular part of the paper comes out as important. But we also talk about environmental impact. We talk about the ways in which these systems will absorb the biases of their training data. We talk about how the training data is never collected well. Thereâs a lot of various points in there, and the issues about synthetic text were just one.
Researchers at MIT Media Lab created a Stochastic Parrot robot as a response to the observation that many chatbots tend to be sycophantic, or overly agreeable. Does that trend relate to the dangers you laid out in your paper?
Bender: When we wrote that paper in late 2020, at the time, people were not super excited about synthetic text, nor about chatbots. Chatbots had been around. We had Weizenbaumâs Eliza in the 1960s, and then the very annoying automatic customer service systems that have gotten much more fluent with the large language models, and no less annoying. So, that was the state of things.
OpenAI had put out GPT-2 and GPT-3 for people to play with, and you could get them to extrude synthetic text, but the chat interface hadnât been wrapped around those yet. We also hadnât seen the layers of additional training that lead to the behavior thatâs interpreted as sycophantic. The reason that you get the chatbot saying, âOh, thatâs a good idea,â or if you say youâre wrong, it says, âOh, Iâm so sorry, youâre right,â that kind of response has to do with additional layers of training past the original pre-training.
What do you wish more people understood about language models?
Bender: The message that I always bring when I have a chance is that, when the text that comes out of one of these systems makes sense, itâs because we are making sense of it. This is also in the stochastic parrots paper. Anytime we are evaluating this kind of technology, we have to account for our ability to make sense of language and keep that in view as we are deciding whatâs going on with the technology. That is frequently lost in these discussions.
If you were to redo or update the stochastic parrot paper now, is there anything that you would change about it?
Bender: There was one really big form of harm that we did not cover in the paper, and that has to do with exploitative labor practices. Under that, I include both the horrible conditions that many data workers face, and also the massive theft of peopleâs creative and intellectual output that underlies these systems. Those issues should have been included in the paper. Itâs not that they were unknown in the world then, but they didnât make it into what we surveyed, and should be there.
This story was updated on 1 July 2026 to clarify the research areas of the stochastic parrots paper authors.
- [What it Means to Be a Mathematician When AI Does the Math âș]
- [The Great Chatbot Debate: Do They Really Understand? âș]
Gwendolyn Rak is an assistant editor at IEEE Spectrum covering consumer electronics and careers. She holds a masterâs degree in science journalism from New York University and a bachelorâs degree in astrophysics and history from Swarthmore College.
Comments
No comments yet. Start the discussion.