# how to calculate mean using apply for this dataframe in r

Hi I have df (te_1_melt) like below and i want to calculate the mean of the each tis. How can i do that using apply in r?

``````                    samples variable       value       tis
6    GCIMB211_SUN_INTERNODE      PC1 -0.16332945 INTERNODE
7         GCIMB211_SUN_LEAF      PC1  0.22555539      LEAF
8         GCIMB211_SUN_ROOT      PC1 -0.24209723      ROOT
9     GCIMB211_SUN_SEEDLING      PC1  0.25053364  SEEDLING
10     GCIMB211_SUN_SILIQUE      PC1  0.25269207   SILIQUE
16     GCR500_SUN_INTERNODE      PC1 -0.16754805 INTERNODE
17          GCR500_SUN_LEAF      PC1  0.29588830      LEAF
18          GCR500_SUN_ROOT      PC1 -0.30497481      ROOT
19      GCR500_SUN_SEEDLING      PC1  0.19962128  SEEDLING
20       GCR500_SUN_SILIQUE      PC1  0.09154038   SILIQUE
``````

Since i don't know how this is done using apply, i just did this..

``````INT <- te_1_melt[grep("INTERNODE", te_1_melt\$tis),]
mean(INT[,3])

LEA <- te_1_melt[grep("LEA", te_1_melt\$tis),]
mean(LEA[,3])

ROOT <- te_1_melt[grep("ROOT", te_1_melt\$tis),]
mean(ROOT[,3])

SEED <- te_1_melt[grep("SEEDLING", te_1_melt\$tis),]
mean(SEED[,3])

SIL <- te_1_melt[grep("SILIQUE", te_1_melt\$tis),]
mean(SIL[,3])

comb <- cbind(mean(INT[,3]), mean(LEA[,3]), mean(ROOT[,3]), mean(SEED[,3]), mean(SIL[,3]))
colnames(comb) <- c("INTERNODE", "LEAF", "ROOT", "SEEDLING", "SILIQUE")
comb
comb_mlet <- melt(comb)
comb_mlet
``````

Even though i got what i wanted (see below), i know this is not efficient and just wanted to learn how this is done using apply. Anybody help?

``````> comb_mlet
Var1      Var2      value
1    1 INTERNODE -0.1382027
2    1      LEAF  0.2651678
3    1      ROOT -0.2878973
4    1  SEEDLING  0.1783773
5    1   SILIQUE  0.1398700
``````

Thanks Upendra

-

In this case you want to use tapply.

``````> tapply(te_1_melt\$value, te_1_melt\$tis, FUN=mean)
INTERNODE       LEAF       ROOT   SEEDLING    SILIQUE
-0.1382027  0.2651678 -0.2878973  0.1783773  0.1398700
``````
-

You can't use `apply` here.You should use a sort of "group by" function. For example, using `plyr`

``````> library(plyr)
> ddply(dat,.(tis),summarise,mm=mean(value))
tis         mm
1 INTERNODE -0.1382027
2      LEAF  0.2651678
3      ROOT -0.2878973
4  SEEDLING  0.1783773
5   SILIQUE  0.1398700
``````
-
Thanks. I didn't know that i can use "plyr" to do this... – upendra Jan 8 '14 at 5:14

Why not `aggregate`?

``````aggregate(value ~ tis, data=df, mean)

#        tis      value
#1 INTERNODE -0.1382027
#2      LEAF  0.2651678
#3      ROOT -0.2878973
#4  SEEDLING  0.1783773
#5   SILIQUE  0.1398700
``````
-
cool...one more new thing i learnt today.. – upendra Jan 8 '14 at 6:57