在折线图r中绘制分组变量



我正试图构建一个不同股票的细分市场随时间变化的图。为此,我想创建一个折线图,显示随着时间的推移,有多少股票是小盘、中盘和大盘股。

我的数据看起来像这个

ISIN Date Ticker MarketSeg 1 BSP951331318 31-01-2010 UIE Medium 2 BSP951331318 28-02-2010 UIE Medium 3 BSP951331318 31-03-2010 UIE Medium 4 BSP951331318 30-04-2010 UIE Medium 5 BSP951331318 31-05-2010 UIE Medium 6 BSP951331318 30-06-2010 UIE Medium 7 BSP951331318 31-07-2010 UIE Medium 8 BSP951331318 31-08-2010 UIE Medium

到目前为止,我的代码是这样的。

CombData <- CombData %>% group_by(Date) %>%
count(CombData$MarketSeg)
ggplot(data = CombData, aes(x=Date, y=, group=CombData$MarketSeg, color=CombData$MarketSeg))

I、 因此,需要一种方法来计算按日期变量分组的每个段中的金额,这样我就可以输入y变量,因为我的当前代码不适用于计算

如果我做对了,这应该会给你想要的(我认为添加一个带有计数数据的额外列更容易(:

CombData <- CombData %>% 
group_by(Date, MarketSeg) %>%
mutate(count_seg = n())
ggplot(data = CombData, aes(x=Date, y= count_seg, group=MarketSeg, color=MarketSeg)) +
geom_line()

数据:

structure(list(ISIN = c("BSP951331318", "BSP951331318", "BSP951331318", 
"BSP951331318", "BSP951331318", "BSP951331318", "BSP951331318", 
"BSP951331318"), Date = c("31.01.10", "28.02.10", "31.03.10", 
"30.04.10", "31.05.10", "30.06.10", "31.07.10", "31.08.10"), 
Ticker = c("UIE", "UIE", "UIE", "UIE", "UIE", "UIE", "UIE", 
"UIE"), MarketSeg = c("Medium", "Medium", "Medium", "Medium", 
"Medium", "Medium", "Medium", "Medium"), count_seg = c(1L, 
1L, 1L, 1L, 1L, 1L, 1L, 1L)), class = c("grouped_df", "tbl_df", 
"tbl", "data.frame"), row.names = c(NA, -8L), groups = structure(list(
Date = c("28.02.10", "30.04.10", "30.06.10", "31.01.10", 
"31.03.10", "31.05.10", "31.07.10", "31.08.10"), MarketSeg = c("Medium", 
"Medium", "Medium", "Medium", "Medium", "Medium", "Medium", 
"Medium"), .rows = list(2L, 4L, 6L, 1L, 3L, 5L, 7L, 8L)), row.names = c(NA, 
-8L), class = c("tbl_df", "tbl", "data.frame"), .drop = TRUE))

希望这能有所帮助!

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