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Climate history / Covariance and correlation / Hockey stick graph / Statistics / Temperature record of the past 1000 years / Steve McIntyre / Principal component analysis / Correlation and dependence / M&M / Covariance / AW / Mathematical analysis
Date: 2009-12-09 18:08:18
Climate history
Covariance and correlation
Hockey stick graph
Statistics
Temperature record of the past 1000 years
Steve McIntyre
Principal component analysis
Correlation and dependence
M&M
Covariance
AW
Mathematical analysis

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