Experiential Literature?:Comparing the work of A.I. and Human Authors.

Jones, Nathan (2022) Experiential Literature?:Comparing the work of A.I. and Human Authors. APRIA Journal. (In Press)

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Abstract

Using artificial intelligence-authored texts as a baseline for reading literary originals can help us discern what is new about today’s literature, rather than relying on the A.I. itself to embody that new-ness. GPT-3 is a language model that uses deep learning to produce human-like text. Its writing is (in)credibile at first sight, but, like dreams, quickly becomes boring, nonsensical, or both. Engineers suggest this shortcoming indicates a complexity issue, but it also reveals an aspect of literary innovation: how stylistic tendencies are extended to disrupt normative reading habits in ways that are analogous to the disruptive experience our present and emergent reality. There is a dark irony to GPT-3’s inability to write coherently into the future: large language models are exploitative and wasteful technologies accessible only to multi-million-pound corporations. The commercial ambitions of the tool are evident in a curiously banal kind of writing, entirely symptomatic of the corporate-engineered sense of normalcy that obscures successive, irreversible crises as we sleep walk through the glitch era. Contrary to this, experimental literary practices can provoke critical-sensory engagement with the difficulties of our time. I propose that GPT-3 can be a measure of what effective literary difficulty is. I test this using two recent works, The Employees, a novel by Olga Ravn, and the ‘Septology’ series of novels by Jon Fosse. I contrast their ‘experiential literature’ with blankly convincing machine-authored versions of their work.

Item Type:
Journal Article
Journal or Publication Title:
APRIA Journal
Subjects:
ID Code:
178319
Deposited By:
Deposited On:
28 Oct 2022 12:40
Refereed?:
Yes
Published?:
In Press
Last Modified:
22 Nov 2022 12:01