Litcius/Paper detail

Can GPT-3 Pass a Writer’s Turing Test?

Katherine Elkins, Jon Chun

2020Journal of Cultural Analytics205 citationsDOIOpen Access PDF

Abstract

Until recently the field of natural language generation relied upon formalized grammar systems, small-scale statistical models, and lengthy sets of heuristic rules. This older technology was fairly limited and brittle: it could remix language into word salad poems or chat with humans within narrowly defined topics. Recently, very large-scale statistical language models have dramatically advanced the field, and GPT-3 is just one example. It can internalize the rules of language without explicit programming or rules. Instead, much like a human child, GPT-3 learns language through repeated exposure, albeit on a much larger scale. Without explicit rules, it can sometimes fail at the simplest of linguistic tasks, but it can also excel at more difficult ones like imitating an author or waxing philosophical.

Topics & Concepts

Computer scienceTuring testHeuristicField (mathematics)GrammarTest (biology)Artificial intelligenceScale (ratio)Language modelNatural language processingNatural languageTuringLanguage identificationProgramming languageLinguisticsMathematicsPhilosophyBiologyPure mathematicsPhysicsQuantum mechanicsPaleontologyComputability, Logic, AI AlgorithmsEvolutionary Algorithms and Applications