Sys.setlocale("LC_ALL","C")
[1] "C"
packages = c(
"dplyr","ggplot2","d3heatmap","googleVis","devtools","plotly", "xgboost",
"magrittr","caTools","ROCR","corrplot", "rpart", "rpart.plot",
"doParallel", "caret", "glmnet", "Matrix", "e1071", "randomForest",
"flexclust", "FactoMineR", "factoextra", "maps", "ggmap", "igraph", "rgl",
"tm", "SnowballC", "wordcloud", "slam", "Matrix", "RColorBrewer"
)
existing = as.character(installed.packages()[,1])
for(pkg in packages[!(packages %in% existing)]) install.packages(pkg)
rm(list=ls(all=T))
options(digits=4, scipen=12)
library(dplyr)
Attaching package: 'dplyr'
The following objects are masked from 'package:stats':
filter, lag
The following objects are masked from 'package:base':
intersect, setdiff, setequal, union
library(ggplot2)
Need help getting started? Try the cookbook for R:
http://www.cookbook-r.com/Graphs/
library(maps)
library(ggmap)
Google Maps API Terms of Service: http://developers.google.com/maps/terms.
Please cite ggmap if you use it: see citation('ggmap') for details.
7.1 ggplot2 繪圖套件
7.1.1 基本點狀圖
WHO = read.csv("data/WHO.csv")
# Basic Plot in R
plot(WHO$GNI, WHO$FertilityRate)

library(ggplot2)
# Create the ggplot object with the data and the aesthetic mapping:
scatterplot = ggplot(WHO, aes(x = GNI, y = FertilityRate))
#ggplot會把資料框轉成一個繪圖物件(只給x軸是什麼y軸是什麼,但還沒說到底要畫什麼)
# Add the geom_point geometry
#如果要畫點圖就在後面+geom_point
scatterplot + geom_point()

# Make a line graph instead:
scatterplot + geom_line()

# Switch back to our points:
scatterplot + geom_point()

# Redo the plot with blue triangles instead of circles:
scatterplot + geom_point(color = "blue", size = 3, shape = 21)
# Another option:
scatterplot + geom_point(color = "darkred", size = 3, shape = 8)

# Add a title to the plot:
scatterplot +
geom_point(colour = "blue", size = 3, shape = 17) +
ggtitle("Fertility Rate vs. Gross National Income")

7.1.2 儲存圖檔
# Save our plot:
fertilityGNIplot = scatterplot +
geom_point(colour = "blue", size = 3, shape = 17) +
ggtitle("Fertility Rate vs. Gross National Income")
pdf("MyPlot.pdf")#執行後接下來印的東西都會跑到pdf上
print(fertilityGNIplot)
dev.off()
null device
1
7.1.3 圖形元件屬性
# Color the points by region:
ggplot(WHO, aes(x = GNI, y = FertilityRate, color = Region)) +
geom_point()

#x:經濟指標,y:婦女生產指數
# Color the points according to life expectancy:
ggplot(WHO, aes(x = GNI, y = FertilityRate, color = LifeExpectancy)) +
geom_point()

#liftexpectancy平均壽命,如果是連續變數,顏色就會自動變漸層
# Is the fertility rate of a country was a good predictor of the
# percentage of the population under 15?
ggplot(WHO, aes(x = FertilityRate, y = Under15)) + geom_point()

#基本上生育率高,小於十五歲的人就會變多
7.1.4 數值尺度比例轉換
# Let's try a log transformation:
ggplot(WHO, aes(x = log(FertilityRate), y = Under15)) + geom_point()

7.1.5 回歸趨勢線
# Simple linear regression model to predict the percentage of the
# population under 15, using the log of the fertility rate:
mod = lm(Under15 ~ log(FertilityRate), data = WHO)
summary(mod)
Call:
lm(formula = Under15 ~ log(FertilityRate), data = WHO)
Residuals:
Min 1Q Median 3Q Max
-10.313 -1.774 0.045 1.744 7.717
Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept) 7.654 0.448 17.1 <2e-16 ***
log(FertilityRate) 22.055 0.418 52.8 <2e-16 ***
---
Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
Residual standard error: 2.65 on 181 degrees of freedom
(11 observations deleted due to missingness)
Multiple R-squared: 0.939, Adjusted R-squared: 0.939
F-statistic: 2.79e+03 on 1 and 181 DF, p-value: <2e-16
# Add this regression line to our plot:
ggplot(WHO, aes(x = log(FertilityRate), y = Under15)) +
geom_point() + stat_smooth(method = "lm")

#加條趨勢線 stat_smooth(method = "lm")
7.1.6 趨勢線的信賴區間
# 99% confidence interval
ggplot(WHO, aes(x = log(FertilityRate), y = Under15)) +
geom_point() + stat_smooth(method = "lm", level = 0.99)

#99%信賴區間:族群的平均值會有99%掉在的信賴區間,不是個別的點的平均值
# No confidence interval in the plot
ggplot(WHO, aes(x = log(FertilityRate), y = Under15)) +
geom_point() + stat_smooth(method = "lm", se = FALSE)

#se=false:不要信賴區間(standard error)
# Change the color of the regression line:
ggplot(WHO, aes(x = log(FertilityRate), y = Under15)) +
geom_point() + stat_smooth(method = "lm", colour = "orange")

7.1.7 分群點狀圖
# quiz-1:
ggplot(WHO, aes(x = FertilityRate, y = Under15, col=Region)) +
scale_color_brewer(palette="Accent") +
geom_point()

7.1.8 分格點狀圖
# quiz-1:
ggplot(WHO, aes(x = log(Population), y = GNI, color=Region)) +
geom_point() +
stat_smooth(method='lm') +
facet_wrap(~Region) + theme_bw()

#facet_wrap:每個region畫成一格
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