在ggplotly散点图中添加自定义数据标签 [英] Add custom data label in ggplotly scatterplot

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问题描述

我希望在光标悬停在每个数据点而不是x和y值上方时显示每个数据点的Species.我使用iris数据集.另外,我希望能够单击一个数据点以使标签保持不变,并且在选择图中的新位置时不会消失. (如果可能的话 ).基本是标签.持久性问题是一个加号.这是我的应用程序:

I would like to display the Species for each data point when the cursor is over the point rather than the than the x and y values. I use the iris dataset. Also I want to be able to click on a data point to make the label persistent and not get disapperaed when I choose a new spot in the plot. (if possible ). The basic is the label. The persistence issue is a plus. Here is my app:

## Note: extrafont is a bit finnicky on Windows, 
## so be sure to execute the code in the order 
## provided, or else ggplot won't find the font

# Use this to acquire additional fonts not found in R
install.packages("extrafont");library(extrafont)
# Warning: if not specified in font_import, it will 
# take a bit of time to get all fonts
font_import(pattern = "calibri")
loadfonts(device = "win")

#ui.r
library(shiny)
library(ggplot2)
library(plotly)
library(extrafont)
library(ggrepel)
fluidPage(

  # App title ----
  titlePanel(div("CROSS CORRELATION",style = "color:blue")),

  # Sidebar layout with input and output definitions ----
  sidebarLayout(

    # Sidebar panel for inputs ----
    sidebarPanel(

      # Input: Select a file ----
      fileInput("file1", "Input CSV-File",
                multiple = TRUE,
                accept = c("text/csv",
                           "text/comma-separated-values,text/plain",
                           ".csv")),

      # Horizontal line ----
      tags$hr(),

      # Input: Checkbox if file has header ----
      checkboxInput("header", "Header", TRUE),

      # Input: Select separator ----
      radioButtons("sep", "Separator",
                   choices = c(Comma = ",",
                               Semicolon = ";",
                               Tab = "\t"),
                   selected = ","),


      # Horizontal line ----
      tags$hr(),

      # Input: Select number of rows to display ----
      radioButtons("disp", "Display",
                   choices = c(Head = "head",
                               All = "all"),
                   selected = "head")





    ),
    # Main panel for displaying outputs ----
    mainPanel(

      tabsetPanel(type = "tabs",
                  tabPanel("Table",
                           shiny::dataTableOutput("contents")),
                  tabPanel("Correlation Plot",
                           tags$style(type="text/css", "
           #loadmessage {
                                      position: fixed;
                                      top: 0px;
                                      left: 0px;
                                      width: 100%;
                                      padding: 5px 0px 5px 0px;
                                      text-align: center;
                                      font-weight: bold;
                                      font-size: 100%;
                                      color: #000000;
                                      background-color: #CCFF66;
                                      z-index: 105;
                                      }
                                      "),conditionalPanel(condition="$('html').hasClass('shiny-busy')",
                                                          tags$div("Loading...",id="loadmessage")
                                      ),
                           fluidRow(
                             column(3, uiOutput("lx1")),
                           column(3,uiOutput("lx2"))),
                           hr(),
                           fluidRow(
                             tags$style(type="text/css",
                                        ".shiny-output-error { visibility: hidden; }",
                                        ".shiny-output-error:before { visibility: hidden; }"
                             ),
                           column(3,uiOutput("td")),
                           column(3,uiOutput("an"))),
                           fluidRow(
                           plotlyOutput("sc"))
      ))
  )))
#server.r
function(input, output) {


  output$contents <- shiny::renderDataTable({

    iris
  })


  output$lx1<-renderUI({
    selectInput("lx1", label = h4("Select 1st Expression Profile"), 
                choices = colnames(iris[,1:4]), 
                selected = "Lex1")
  })
  output$lx2<-renderUI({
    selectInput("lx2", label = h4("Select 2nd Expression Profile"), 
                choices = colnames(iris[,1:4]), 
                selected = "Lex2")
  })

  output$td<-renderUI({
    radioButtons("td", label = h4("Trendline"),
                 choices = list("Add Trendline" = "lm", "Remove Trendline" = ""), 
                 selected = "")
  })

  output$an<-renderUI({

    radioButtons("an", label = h4("Correlation Coefficient"),
                 choices = list("Add Cor.Coef" = cor(subset(iris, select=c(input$lx1)),subset(iris, select=c(input$lx2))), "Remove Cor.Coef" = ""), 
                 selected = "")
  })  


 output$sc<-renderPlotly({

   p1 <- ggplot(iris, aes_string(x = input$lx1, y = input$lx2))+

     # Change the point options in geom_point
     geom_point(color = "darkblue") +
     # Change the title of the plot (can change axis titles
     # in this option as well and add subtitle)
     labs(title = "Cross Correlation") +
     # Change where the tick marks are
     scale_x_continuous(breaks = seq(0, 2.5, 30)) +
     scale_y_continuous(breaks = seq(0, 2.5, 30)) +
     # Change how the text looks for each element
     theme(title = element_text(family = "Calibri", 
                                size = 10, 
                                face = "bold"), 
           axis.title = element_text(family = "Calibri Light", 
                                     size = 16, 
                                     face = "bold", 
                                     color = "darkgrey"), 
           axis.text = element_text(family = "Calibri", 
                                    size = 11))+
     theme_bw()+
     geom_smooth(method = input$td)+
     annotate("text", x = 10, y = 10, label = as.character(input$an))
   ggplotly(p1) %>%
     layout(hoverlabel = list(bgcolor = "white", 
                              font = list(family = "Calibri", 
                                          size = 9, 
                                          color = "black")))

 }) 




}

推荐答案

1.工具提示

您可以通过多种方式更改工具提示,如

You can change the tooltip in a number of ways, as described here. To just show Species in the tooltip, something like this should work:

library(ggplot2)
library(plotly)
p1 <- ggplot(iris, aes_string(x = "Sepal.Length", 
                                y = "Sepal.Width",
                                key = "Species")) +
      geom_point()
ggplotly(p1, source = "select", tooltip = c("key"))

2.永久标签

我不确定如何在单击时留下plotly工具提示,但是您可以使用 plotly单击事件以获取被单击的点,然后在ggplot上添加一个geom_text图层.

I'm not sure how to leave the plotly tooltip on the point upon clicking, but you could use a plotly click event to get the clicked point and then add a geom_text layer to your ggplot.

3.最少的例子

我已将您的代码修改为一个简单的示例.通常,如果您创建一个最小示例并删除应用程序中不需要重新创建问题的部分,这会很有帮助(例如更改字体).

I've adapated your code to make a simpler example. Generally, it's helpful if you create a minimal example and remove sections of your app that aren't needed to recreate your question (e.g. changing fonts).

library(shiny)
library(plotly)
library(ggplot2)

ui <- fluidPage(
  plotlyOutput("iris")
)

server <- function(input, output, session) {
  output$iris <- renderPlotly({
      # set up plot
      p1 <- ggplot(iris, aes_string(x = "Sepal.Length", 
                                    y = "Sepal.Width",
                                    key = "Species")) +
          geom_point()

      # get clicked point
      click_data <- event_data("plotly_click", source = "select")
      # if a point has been clicked, add a label to the plot
      if(!is.null(click_data)) {
          label_data <- data.frame(x = click_data[["x"]],
                                   y = click_data[["y"]],
                                   label = click_data[["key"]],
                                   stringsAsFactors = FALSE)
         p1 <- p1 + 
             geom_text(data = label_data,
                       aes(x = x, y = y, label = label),
                       inherit.aes = FALSE, nudge_x = 0.25)
      }
      # return the plot
      ggplotly(p1, source = "select", tooltip = c("key"))
  })
  }

shinyApp(ui, server)

保留所有标签

您可以使用reactiveValues将每次点击存储在反应性data.frame中,并将此data.frame用于您的geom_text图层.

You can store each click in a reactive data.frame using reactiveValues and use this data.frame for your geom_text layer.

library(shiny)
library(plotly)
library(ggplot2)

ui <- fluidPage(
    plotlyOutput("iris")
)

server <- function(input, output, session) {
    # 1. create reactive values
    vals <- reactiveValues()
    # 2. create df to store clicks
    vals$click_all <- data.frame(x = numeric(),
                                y = numeric(),
                                label = character())
    # 3. add points upon plot click
    observe({
        # get clicked point
        click_data <- event_data("plotly_click", source = "select")
        # get data for current point
        label_data <- data.frame(x = click_data[["x"]],
                                 y = click_data[["y"]],
                                 label = click_data[["key"]],
                                 stringsAsFactors = FALSE)
        # add current point to df of all clicks
        vals$click_all <- merge(vals$click_all,
                                label_data, 
                                all = TRUE)
    })
    output$iris <- renderPlotly({
        # set up plot
        p1 <- ggplot(iris, aes_string(x = "Sepal.Length", 
                                      y = "Sepal.Width",
                                      key = "Species")) +
            geom_point() + 
            # 4. add labels for clicked points
            geom_text(data = vals$click_all,
                      aes(x = x, y = y, label = label),
                      inherit.aes = FALSE, nudge_x = 0.25)
        # return the plot
        ggplotly(p1, source = "select", tooltip = c("key"))
    })
}

shinyApp(ui, server)

这篇关于在ggplotly散点图中添加自定义数据标签的文章就介绍到这了,希望我们推荐的答案对大家有所帮助,也希望大家多多支持IT屋!

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