What does the likelihood function describe in terms of observed data (D) and a parameter state (θ)?
Answer
The probability of observing the data seen, under each possible state of the world
The likelihood function, $P(D|\theta)$, quantifies how well each potential hypothesis ($\theta$) explains the specific data ($D$) that was actually collected, showing the relative plausibility of parameters given fixed data.

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