将Plotly Forecast graph转换为ggplot graph

将Plotly Forecast graph转换为ggplot graph,r,ggplot2,plotly,R,Ggplot2,Plotly,我使用了一个预测软件包,并将数据绘成图表。现在我需要使用ggplot而不是plotly。我找到了这个,它使用一个函数在ggplot中绘制预测,但我无法使代码正常工作。另外,我知道forecast中的autoplot函数使用ggplot,但它限制了定制 这是我的Plotly运行代码 library(ggplot2) library(forecast) library(plotly) df<-structure(list(Date = structure(c(1831

我使用了一个预测软件包,并将数据绘成图表。现在我需要使用ggplot而不是plotly。我找到了这个,它使用一个函数在ggplot中绘制预测,但我无法使代码正常工作。另外,我知道forecast中的autoplot函数使用ggplot,但它限制了定制

这是我的Plotly运行代码

 library(ggplot2)
    library(forecast)
    library(plotly)
    df<-structure(list(Date = structure(c(18316, 18317, 18318, 18319, 
    18320, 18321, 18322, 18323, 18324, 18325, 18326, 18327, 18328, 
    18329, 18330, 18331, 18332, 18333, 18334, 18335, 18336, 18337, 
    18338, 18339, 18340, 18341, 18342, 18343, 18344, 18345, 18346, 
    18347, 18348, 18349, 18350, 18351, 18352, 18353, 18354, 18355, 
    18356, 18357, 18358, 18359, 18360, 18361, 18362, 18363, 18364, 
    18365, 18366, 18367, 18368, 18369, 18370, 18371, 18372, 18373, 
    18374, 18375, 18376, 18377, 18378, 18379, 18380, 18381, 18382, 
    18383, 18384, 18385, 18386, 18387, 18388, 18389, 18390, 18391, 
    18392, 18393, 18394, 18395, 18396, 18397, 18398, 18399, 18400, 
    18401, 18402, 18403, 18404, 18405, 18406, 18407, 18408, 18409, 
    18410), class = "Date"), Count = c(5L, 11L, 26L, 43L, 45L, 45L, 
    46L, 56L, 56L, 56L, 57L, 57L, 60L, 63L, 63L, 67L, 67L, 75L, 95L, 
    97L, 103L, 111L, 118L, 127L, 130L, 137L, 149L, 158L, 159L, 152L, 
    152L, 159L, 168L, 171L, 188L, 194L, 216L, 237L, 261L, 335L, 385L, 
    456L, 561L, 637L, 743L, 798L, 869L, 1020L, 1091L, 1148L, 1176L, 
    1196L, 1296L, 1395L, 1465L, 1603L, 1619L, 1657L, 1792L, 1887L, 
    1986L, 2217L, 2249L, 2254L, 2241L, 2327L, 2459L, 2745L, 2883L, 
    3169L, 3291L, 3732L, 4028L, 4142L, 4695L, 4952L, 5901L, 6314L, 
    7101L, 7683L, 8436L, 9124L, 9852L, 10645L, 11234L, 11962L, 12559L, 
    13275L, 13911L, 14569L, 15029L, 15181L, 15097L, 15146L, 15229L
    )), class = "data.frame", row.names = c(NA, -95L)) 

    # frequency here in days
    tm<-ts(df$Count,frequency = 365.25 )

    fit.xts <- auto.arima(tm,approximation=FALSE,stepwise=FALSE)
    forecast_length <- 60
    fore.xts <- forecast(fit.xts, h=forecast_length)

   #formating the forecasting date
    fore.dates <- seq(df$Date[length(df$Date)], by=df$Date[length(df$Date)] - 
    df$Date[length(df$Date)-1], len=forecast_length)

    plot_ly() %>%
      add_lines(x = df$Date, y = tm,
            color = I("black"), 
            name = "Observed", 
            marker=list(mode='lines')) %>% 
    # this will add line of prediction, which looks linear ! strange !
    # what's the alternative of mean value?
      add_lines(x = fore.dates, y = fore.xts$mean, color = I("blue"), name = 
 "Prediction") %>%
      add_ribbons(x = fore.dates, 
              #this prints even negative values of prediction !
              ymin = fore.xts$lower[, 2],
              ymax = fore.xts$upper[, 2],
              color = I("gray90"), 
              name = "95% confidence") %>%
       layout(legend = list(orientation = "h",   # show entries horizontally
                       xanchor = "center",  # use center of legend as anchor
                       x = 0.5))
库(ggplot2)
图书馆(预测)
图书馆(绘本)
df这将是一个选项(创建预测日期并将其与存储在
fore.xts
中的预测一起绘制):


这就是你要找的吗?

什么是
qxts
?代码中没有定义。谢谢。检查更新版本如果你看起来很棒,如何使用相同的日期格式包含日期欢迎!您所说的“包含天数的相同日期格式”是什么意思?预测的打印点?如您所知,在plotly中,日期可以自动缩放为m/d/y。我想用ggplot我应该使用“scale_x_date”你能更新答案,包括图例:观察、预测、置信区间。
Date <- seq(max(qxts$Date) + 1, max(qxts$Date) + 60, "day")
forecast_point <- fore.xts$mean
forecast_lower <- fore.xts$lower[,2]
forecast_upper <- fore.xts$upper[,2]

forecast_df <- tibble(Date, forecast_point, forecast_lower, forecast_upper)

#without confidence intervals
qxts %>% 
  ggplot(aes(x = Date, y = y)) +
  geom_point() + 
  geom_line() + 
  geom_line(data = forecast_df, aes(x = Date, y = forecast_point), color = "blue")
#with confidence intervals
qxts %>% 
  ggplot(aes(x = Date, y = y)) +
  geom_point() + 
  geom_line() + 
  geom_smooth(data = forecast_df, aes(x = Date, y = forecast_point, ymax = forecast_upper, ymin = forecast_lower), stat = "identity")