Multiple Choice

In a reinforcement learning process that uses human feedback, a 'reference model' with a fixed set of parameters, θref\theta_{\text{ref}}, is used as a baseline. For a specific input prompt, this model calculates that the probability of generating the word 'consequently' as the next word is 0.04. Given that the reference policy, πθref()\pi_{\theta_{\text{ref}}}(\cdot), is formally defined as the probability distribution generated by this reference model, what is the value of πθref(’consequently’)\pi_{\theta_{\text{ref}}}(\text{'consequently'})?

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Updated 2025-09-26

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Ch.4 Alignment - Foundations of Large Language Models

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