What fundamentally distinguishes experimental bias from random error?
Answer
Bias introduces systematic error consistently in one direction.
Bias introduces systematic error, meaning results are consistently skewed in a particular direction, whereas random error involves unpredictable fluctuations expected in any measurement that tend to cancel out over many trials.

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