factorial_anova
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| factorial_anova [2020/06/02 16:42] – [Interpreting interaction] hkimscil | factorial_anova [2025/09/25 10:36] (current) – [e.g.,] hkimscil | ||
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| Line 290: | Line 290: | ||
| < | < | ||
| - | de <- read.csv(" | + | de <- read.csv(" |
| de | de | ||
| Line 309: | Line 309: | ||
| </ | </ | ||
| - | {{:pasted:20200529-165842.png}} | + | < |
| + | > de <- read.csv(" | ||
| + | > de | ||
| + | type w.temp cleanness | ||
| + | 1 | ||
| + | 2 | ||
| + | 3 | ||
| + | 4 | ||
| + | 5 | ||
| + | 6 | ||
| + | 7 | ||
| + | 8 | ||
| + | 9 | ||
| + | 10 1 2 9 | ||
| + | 11 1 2 8 | ||
| + | 12 1 2 10 | ||
| + | 13 2 2 13 | ||
| + | 14 2 2 15 | ||
| + | 15 2 2 12 | ||
| + | 16 2 2 12 | ||
| + | 17 1 3 10 | ||
| + | 18 1 3 12 | ||
| + | 19 1 3 11 | ||
| + | 20 1 3 9 | ||
| + | 21 2 3 12 | ||
| + | 22 2 3 13 | ||
| + | 23 2 3 10 | ||
| + | 24 2 3 13 | ||
| + | > de$type <- factor(de$type, | ||
| + | > de$w.temp <- factor(de$w.temp, | ||
| + | > de | ||
| + | type w.temp cleanness | ||
| + | 1 super | ||
| + | 2 super | ||
| + | 3 super | ||
| + | 4 super | ||
| + | 5 | ||
| + | 6 | ||
| + | 7 | ||
| + | 8 | ||
| + | 9 super | ||
| + | 10 super | ||
| + | 11 super | ||
| + | 12 super | ||
| + | 13 best | ||
| + | 14 best | ||
| + | 15 best | ||
| + | 16 best | ||
| + | 17 super hot 10 | ||
| + | 18 super hot 12 | ||
| + | 19 super hot 11 | ||
| + | 20 super hot 9 | ||
| + | 21 best hot 12 | ||
| + | 22 best hot 13 | ||
| + | 23 best hot 10 | ||
| + | 24 best hot 13 | ||
| + | > de.anova <- aov(cleanness ~ type * w.temp, data=de) | ||
| + | > summary(de.anova) | ||
| + | Df Sum Sq Mean Sq F value | ||
| + | type | ||
| + | w.temp | ||
| + | type: | ||
| + | Residuals | ||
| + | --- | ||
| + | Signif. codes: | ||
| + | > | ||
| + | > with(de, interaction.plot(x.factor=type, | ||
| + | + | ||
| + | + | ||
| + | + | ||
| + | + | ||
| + | > | ||
| + | > | ||
| + | </ | ||
| + | {{:pasted:20240429-083635.png}} | ||
| + | |||
| + | 만약에 손으로 계산했다면 R에서 | ||
| + | < | ||
| + | de <- read.csv(" | ||
| + | de | ||
| + | |||
| + | de$type <- factor(de$type, | ||
| + | de$w.temp <- factor(de$w.temp, | ||
| + | de | ||
| + | |||
| + | de.typenova <- aov(cleanness ~ type * w.temp, data=de) | ||
| + | summary(de.typenova) | ||
| + | |||
| + | with(de, interaction.plot(x.factor=type, | ||
| + | trace.factor=w.temp, | ||
| + | fun=mean, type=" | ||
| + | ylab=" | ||
| + | pch=c(1, | ||
| + | |||
| + | attach(de) | ||
| + | table(type, w.temp) | ||
| + | n.sub <- length(cleanness) | ||
| + | n.type.group <- 2 | ||
| + | n.w.temp.group <- 3 | ||
| + | |||
| + | tapply(cleanness, | ||
| + | df.within.each <- tapply(cleanness, | ||
| + | n.within.each <- df.within.each + 1 | ||
| + | df.within <- sum(df.within.each) # df within | ||
| + | |||
| + | var.within <- tapply(cleanness, | ||
| + | ss.within.each <- tapply(cleanness, | ||
| + | ss.within.each | ||
| + | ss.within <- sum(ss.within.each) # ss.within | ||
| + | ss.within | ||
| + | |||
| + | |||
| + | interaction.plot(type, | ||
| + | |||
| + | mean.type <- tapply(cleanness, | ||
| + | mean.w.temp <- tapply(cleanness, | ||
| + | mean.type | ||
| + | mean.w.temp | ||
| + | |||
| + | var.type <- tapply(cleanness, | ||
| + | var.w.temp <- tapply(cleanness, | ||
| + | |||
| + | |||
| + | mean.tot <- mean(cleanness) | ||
| + | var.tot <- var(cleanness) | ||
| + | n.sub <- length(cleanness) | ||
| + | df.tot <- n.sub - 1 | ||
| + | ss.tot <- var.tot * df.tot | ||
| + | |||
| + | ## between | ||
| + | mean.each <- tapply(cleanness, | ||
| + | mean.each | ||
| + | mean.tot <- mean(cleanness) | ||
| + | mean.tot | ||
| + | n.each <- tapply(cleanness, | ||
| + | n.each | ||
| + | n.type.each <- tapply(cleanness, | ||
| + | n.w.temp.each <- tapply(cleanness, | ||
| + | |||
| + | ss.w.bet <- sum(n.each*(mean.each-mean.tot)^2) | ||
| + | ss.w.bet | ||
| + | |||
| + | ss.tot | ||
| + | ss.within | ||
| + | ss.w.bet | ||
| + | ss.w.bet + ss.within | ||
| + | |||
| + | ss.type <- sum(n.type.each * ((mean.tot - mean.type)^2)) | ||
| + | ss.w.temp <- sum(n.w.temp.each * ((mean.tot - mean.w.temp)^2)) | ||
| + | ss.type | ||
| + | ss.w.temp | ||
| + | ss.type.w.temp <- ss.w.bet - (ss.type + ss.w.temp) | ||
| + | ss.type.w.temp | ||
| + | |||
| + | ss.tot | ||
| + | ss.w.bet | ||
| + | ss.within | ||
| + | ss.type | ||
| + | ss.w.temp | ||
| + | ss.type.w.temp | ||
| + | |||
| + | df.tot <- n.sub - 1 | ||
| + | df.w.bet <- (n.type.group * n.w.temp.group) - 1 | ||
| + | df.type <- n.type.group - 1 | ||
| + | df.w.temp <- n.w.temp.group - 1 | ||
| + | df.type.w.temp <- df.w.bet - (df.type + df.w.temp) | ||
| + | df.within <- sum(df.within.each) | ||
| + | |||
| + | df.tot | ||
| + | df.w.bet | ||
| + | df.type | ||
| + | df.w.temp | ||
| + | df.type.w.temp | ||
| + | df.within | ||
| + | |||
| + | ms.type <- ss.type / df.type | ||
| + | ms.w.temp <- ss.w.temp / df.w.temp | ||
| + | ms.type.w.temp <- ss.type.w.temp / df.type.w.temp | ||
| + | ms.within <- ss.within / df.within | ||
| + | |||
| + | ms.type | ||
| + | ms.w.temp | ||
| + | ms.type.w.temp | ||
| + | ms.within | ||
| + | |||
| + | |||
| + | f.type <- ms.type / ms.within | ||
| + | f.w.temp <- ms.w.temp / ms.within | ||
| + | f.type.w.temp <- ms.type.w.temp / ms.within | ||
| + | |||
| + | alpha <- .05 | ||
| + | # confidence interval | ||
| + | ci <- 1 - alpha | ||
| + | |||
| + | f.type | ||
| + | # 봐야할 F분포표에서의 F-value | ||
| + | # qt 처럼 qf 사용 | ||
| + | # qf(alpha, df.w.between, | ||
| + | qf(ci, df.type, df.within) | ||
| + | # 혹은 | ||
| + | # qf(alpha, df.type, df.within, lower.tail = F) | ||
| + | # 도 마찬가지 | ||
| + | pf(f.type, df.type, df.within, lower.tail = F) | ||
| + | |||
| + | f.w.temp | ||
| + | qf(ci, df.w.temp, df.within) | ||
| + | pf(f.w.temp, | ||
| + | |||
| + | f.type.w.temp | ||
| + | qf(ci, df.type.w.temp, | ||
| + | pf(f.type.w.temp, | ||
| + | |||
| + | # aov result | ||
| + | summary(de.typenova) | ||
| + | </ | ||
| - | ===== 예 ===== | + | ===== 예 2. cookie experiment |
| * {{: | * {{: | ||
| Line 322: | Line 537: | ||
| $SS_{total}=\Sigma{X^2}-\frac{G^2}{N}$ | $SS_{total}=\Sigma{X^2}-\frac{G^2}{N}$ | ||
| $SS_{\text{between}}=\Sigma{\frac{T^2}{n}}-\frac{G^2}{N}$ | $SS_{\text{between}}=\Sigma{\frac{T^2}{n}}-\frac{G^2}{N}$ | ||
| - | $SS_{within} | + | $SS_{\text{within}} = \Sigma{SS_{\text{each |
| - | $df_{between} | + | $df_{\text{between}} = k - 1$ |
| - | $df_{within} | + | $df_{\text{within}} = \Sigma{df_{each \; treatment}} $ |
| $SS_{total} = SS_{between} + SS_{within}$ | $SS_{total} = SS_{between} + SS_{within}$ | ||
| Line 366: | Line 581: | ||
| * $SS_{within}$ | * $SS_{within}$ | ||
| - | * $SS_{within} = \Sum{SS_{within}} = 1502 + 940 + 1062 + 1084 = 4588$ | + | * $SS_{within} = \Sigma{SS_{within}} = 1502 + 940 + 1062 + 1084 = 4588$ |
| * $SS_{between}$ | * $SS_{between}$ | ||
| * $SS_{between} = 5108 - 4588 = 520 $ | * $SS_{between} = 5108 - 4588 = 520 $ | ||
| * $SS_A$ | * $SS_A$ | ||
| * $SS_B$ | * $SS_B$ | ||
| - | * $SS_{AxB}$ | + | * $SS_{\text{AxB}}$ |
| MS | MS | ||
| * $MS_{A}$ | * $MS_{A}$ | ||
| * $MS_{B}$ | * $MS_{B}$ | ||
| - | * $MS_{AxB}$ | + | * $MS_{\text{AxB}}$ |
| * $MS_{Within}$ | * $MS_{Within}$ | ||
| F-ratio | F-ratio | ||
| * $F_{A}$ | * $F_{A}$ | ||
| * $F_{B}$ | * $F_{B}$ | ||
| - | * $F_{AxB}$ | + | * $F_{\text{AxB}}$ |
| Tests of Between-Subjects Effects | Tests of Between-Subjects Effects | ||
| Line 395: | Line 610: | ||
| | a R Squared = .102 (Adjusted R Squared = .066) |||||| | | a R Squared = .102 (Adjusted R Squared = .066) |||||| | ||
| + | 데이터 파일 | ||
| + | {{: | ||
| + | 손으로 계산하기 | ||
| + | {{: | ||
| - | {{http:// | ||
| < | < | ||
| cookies <- read.csv(" | cookies <- read.csv(" | ||
| Line 661: | Line 879: | ||
| Build hypotheses. Use ANOVA with critical level = .05 to test the researcher' | Build hypotheses. Use ANOVA with critical level = .05 to test the researcher' | ||
| + | see [[https:// | ||
| ====== Materials and links ====== | ====== Materials and links ====== | ||
| * {{: | * {{: | ||
| - | * http:// | ||
| - | * http:// | ||
| - | * http:// | ||
| - | * http:// | ||
| - | * http:// | ||
| - | * http:// | ||
| - | {{tag>factorial anova, | + | {{tag>factorial_anova |
factorial_anova.1591083721.txt.gz · Last modified: by hkimscil
