Analysis of Categorical Data
نویسنده
چکیده
• Section 10.1 Proportions — Goodness-of-fit • Section 10.2 2 × 2 tables — test of equality of population proportions • Section 10.3 2 × 2 tables — test of independence of categorical variables • Section 10.4 2 × 2 tables — Fisher’s exact test • Section 10.5 r × k tables • Section 10.6 Applicability — when are the methods valid? • Section 10.7 Confidence intervals for differences in porportions • Section 10.8 2 × 2 tables — paired data • Section 10.9 Relative risk and Odd’s ratios
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تاریخ انتشار 2004