If a prior chosen is very diffuse or flat, what largely dictates the shape of the resulting posterior belief?
Answer
The new data
When a prior is diffuse, spreading probability evenly across possibilities (minimal initial influence), the posterior belief will be almost entirely determined by the information contained within the likelihood function derived from the new data.

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