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Statistics / Estimation theory / Regression analysis / Statistical inference / Measurement / Statistical theory / Confidence interval / Linear regression / Errors and residuals
Date: 2014-09-09 06:17:50
Statistics
Estimation theory
Regression analysis
Statistical inference
Measurement
Statistical theory
Confidence interval
Linear regression
Errors and residuals

HP Prime Technology Corner 28 The Practice of Statistics for the AP Exam, 5e Section 12-1, P. 751

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