Multiple Choice

In a particular self-supervised learning setup, a 'generator' model first processes an input sentence and replaces some of its words with plausible alternatives. A second, more powerful 'discriminator' model then receives this altered sentence. The discriminator's task is to examine each word and determine if it is identical to the word in the original, unaltered sentence.

Consider this example:

  • Original Sentence: "The scientist discovered the new element."
  • Altered Sentence from Generator: "The scientist found the new element."

Given the discriminator's task, how should it classify the words 'found' and 'element' from the altered sentence?

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Updated 2025-09-26

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