Radical Reads

The Algorithm That Could Take Us Inside Shakespeare’s Mind

By Nick Frosst, Co-founder of Cohere

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Image Source: The New York Times; Cohere; Radical Ventures

Editor’s note: Today’s issue of Radical Reads is guest-authored by Nick Frosst, Co-founder of Radical Ventures portfolio company, Cohere.

This week The New York Times featured a collaboration between Cohere and author Stephen Marche in pursuit of some Shakespearean detective work. Stephen, a Shakespeare expert, used Cohere’s platform to determine the authenticity of various pieces supposedly written by Shakespeare. You can read the piece here.

It turns out that the bibliographic practices of the publishing industry were not so great back in Shakespeare’s day. As a result, many versions of the bard’s works exist today. But determining the authenticity and accuracy of those versions remains a subject of debate amongst scholars.

For example, there are three versions of the famous ‘to be or not to be speech’ including a version that starts like this:

       To be, or not to be, ay there’s the point,

       To Die, to sleep, is that all? Aye all:

       No, to sleep, to dream, aye marry there it goes.

It’s a far cry from the iconic version. But how can we determine if he actually wrote it?

Stephen used the Cohere API to create a custom model by fine-tuning our largest language model on all the text he is certain that Shakespeare wrote. He was able to calculate the probability of each of various versions of the “To be or not to be” speech under the probability distribution parameterized by the model.

Using Cohere, he was able to confirm that the most popular phrasing (“to be or not to be, that is the question”) is the version most likely to be written by Shakespeare. Or at least it is the version that a large language model fine-tuned on only Shakespeare thinks is the most likely.

Determining authorship through probability analysis with a fine-tuned language model is not a common approach in academia, but it confirmed the suspicions of a Shakespearean scholar. Importantly, this kind of research is now accessible to any academic. Thanks to the Cohere API, Stephen was able to conduct this research including the fine-tuning and the analysis without any coding expertise.

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Radical Reads is edited by Leah Morris (Senior Director, Velocity Program, Radical Ventures).