
預期的結果將類似于下圖(上圖將顯示原始資料,中圖將顯示 mom 變化資料,下圖將顯示 yoy 變化資料):

參考:

資料
set.seed(123)
date <- seq.POSIXt(as.POSIXct("2017-01-31"), as.POSIXct("2022-12-31"), by = "month")
food_index <- runif(length(date))
energy_index <- runif(length(date))
df <- data.frame(date, food_index, energy_index)
編輯在使用時為每個情節添加字幕patchwork(目前)有點棘手。在這種情況下,我會做的是使用刻面“hack”。為此,我稍微調整了函式以獲取字幕引數并切換到purrr::pmap:
library(tidyr)
library(dplyr)
library(ggplot2)
df_long <- df |>
rename(food_index_raw = food_index, energy_index_raw = energy_index) |>
pivot_longer(-date, names_to = c("variable", ".value"), names_pattern = "^(.*?_index)_(.*)$")
plot_fun <- function(x, y, ylab, subtitle) {
x <- x |>
select(date, variable, value = .data[[y]]) |>
filter(!is.na(value))
ggplot(
x,
aes(
x = date,
y = value,
col = variable
)
)
geom_line(size = 0.6, alpha = 0.5)
geom_point(size = 1, alpha = 0.8)
facet_wrap(~.env$subtitle)
labs(
x = "",
y = ylab
)
theme(strip.background = element_blank(), strip.text.x = element_text(hjust = 0))
}
yvars <- c("raw", "mom", "yoy")
ylabs <- paste0("Unit: ", c("$", "%", "%"))
subtitle <- c("Original", "Month-to-Month", "Year-to-Year")
plots <- purrr::pmap(list(y = yvars, ylab = ylabs, subtitle = subtitle), plot_fun, x = df_long)
library(patchwork)
wrap_plots(plots) plot_layout(ncol = 1)

uj5u.com熱心網友回復:
目標輸出是通過分面完成的,而不是將圖拼接在一起。如果您愿意,您也可以這樣做,但它需要以不同的方式重塑您的資料。您采用哪種方法實際上是一個品味問題。
library(ggplot2)
library(dplyr)
yoy <- function(x) 100 * (x - lag(x, 13)) / lag(x, 12)
mom <- function(x) 100 * (x - lag(x)) / lag(x)
df %>%
mutate(date = as.Date(date, origin = "1899-12-30"),
`Actual value (Dollars).Food Index` = food_index,
`Month-on-month change (%).Food Index` = mom(food_index),
`Year-on-year change (%).Food Index` = yoy(food_index),
`Actual value (Dollars).Energy Index` = energy_index,
`Month-on-month change (%).Energy Index` = mom(energy_index),
`Year-on-year change (%).Energy Index` = yoy(energy_index)) %>%
select(-food_index, -energy_index) %>%
tidyr::pivot_longer(-1) %>%
filter(date > as.Date("2018-01-01")) %>%
tidyr::separate(name, into = c("series", "index"), sep = "\\.") %>%
ggplot(aes(date, value, color = index))
geom_point(na.rm = TRUE)
geom_line()
facet_grid(series~., scales = "free_y")
theme_bw(base_size = 16)

從相關鏈接獲取的可重現資料
df <- structure(list(date = c(42766, 42794, 42825, 42855, 42886, 42916,
42947, 42978, 43008, 43039, 43069, 43100, 43131, 43159, 43190,
43220, 43251, 43281, 43312, 43343, 43373, 43404, 43434, 43465,
43496, 43524, 43555, 43585, 43616, 43646, 43677, 43708, 43738,
43769, 43799, 43830, 43861, 43890, 43921, 43951, 43982, 44012,
44043, 44074, 44104, 44135, 44165, 44196, 44227, 44255, 44286,
44316, 44347, 44377, 44408, 44439, 44469, 44500, 44530, 44561
), food_index = c(58.53, 61.23, 55.32, 55.34, 61.73, 56.91, 54.27,
59.08, 60.11, 66.01, 60.11, 63.41, 69.8, 72.45, 81.11, 89.64,
88.64, 88.62, 98.27, 111.11, 129.39, 140.14, 143.44, 169.21,
177.39, 163.88, 135.07, 151.28, 172.81, 143.82, 162.13, 172.22,
176.67, 179.3, 157.27, 169.12, 192.51, 194.2, 179.4, 169.1, 193.17,
174.92, 181.92, 188.41, 192.14, 203.41, 194.19, 174.3, 174.86,
182.33, 182.82, 185.36, 192.41, 195.59, 202.6, 201.51, 225.01,
243.78, 270.67, 304.57), energy_index = c(127.36, 119.87, 120.96,
112.09, 112.19, 109.24, 109.56, 106.89, 109.35, 108.35, 112.39,
117.77, 119.52, 122.24, 120.91, 125.41, 129.72, 135.25, 139.33,
148.6, 169.62, 184.23, 204.38, 198.55, 189.29, 202.47, 220.23,
240.67, 263.12, 249.74, 240.84, 243.42, 261.2, 256.76, 258.69,
277.98, 289.63, 293.46, 310.81, 318.68, 310.04, 302.17, 298.62,
260.92, 269.29, 258.84, 241.68, 224.18, 216.36, 226.57, 235.98,
253.86, 267.37, 261.99, 273.37, 280.91, 291.84, 297.88, 292.78,
289.79)), row.names = c(NA, 60L), class = "data.frame")
轉載請註明出處,本文鏈接:https://www.uj5u.com/qiye/477214.html
下一篇:在ggplot中繪制輪廓
