What does Bayesian refinement primarily involve regarding pre-existing knowledge?
Answer
Integrating it with new observations
The mechanism of Bayesian updating is characterized not by discarding old knowledge, but by integrating that existing knowledge with the information gathered from new observations to refine the belief state.

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Bayesian Belief Update
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