17

I have built an R/Shiny app which uses linear regression to predict some metrics.

In order to make this app more interactive, I need to add a line chart, where I can drag the points of the line chart, capture the new points and predict the values based on the new points.

Basically, I'm looking for something like this in RShiny. Any help on how to achieve this?

9
  • You can also check googleVis, they seem to have something similar to your needs
    – Claud H
    Nov 14, 2017 at 11:13
  • combining them will give the static graph. I am looking to make the graph interactive, so that if I am changing the point from (x1,y1) to (x2,y2), my back-end equation should capture the new point and throw the updated results. Please help!
    – savita
    Nov 14, 2017 at 11:14
  • It is possible to build an interactive graph with plotly, see e.g. plot.ly/r/shinyapp-linked-click
    – thmschk
    Nov 14, 2017 at 13:24
  • looking for draggable graph like this: bl.ocks.org/denisemauldin/538bfab8378ac9c3a32187b4d7aed2c2 and dragging the point should change my prediction values if I am using linear regression. Any help in this regard will be highly appreciated
    – savita
    Nov 15, 2017 at 10:55
  • have you seen this: github.com/Yang-Tang/shinyjqui
    – MLavoie
    Jun 21, 2018 at 12:32

2 Answers 2

30
+50

You could do it with R/Shiny + d3.js: A preview, reproducible example, code and a walkthrough can be found below.

Edit: 12/2018 - See the comment of MrGrumble:

"With d3 v5, I had to rename the events from dragstart and dragend to start and end, and change the line var drag = d3.behavior.drag() to var drag d3.drag()."

Reproducible example:

The easiest way is to clone this repository (https://github.com/Timag/DraggableRegressionPoints).

Preview:

Sry for poor gif quality: enter image description here

Explanation:

The code is based on d3.js+shiny+R. It includes a custom shiny function which i named renderDragableChart(). You can set color and radius of the circles. The implementation can be found in DragableFunctions.R.

Interaction of R->d3.js->R:

The location of the data points is initially set in R. See server.R:

df <- data.frame(x = seq(20,150, length.out = 10) + rnorm(10)*8,
                 y = seq(20,150, length.out = 10) + rnorm(10)*8)
df$y[1] = df$y[1] + 80

The graphic is rendered via d3.js. Additions like lines etc. have to be added there. The main gimmicks should be that the points are draggable and the changes should be send to R. The first is realised with .on('dragstart', function(d, i) {} and .on('dragend', function(d, i) {} , the latter with Shiny.onInputChange("JsData", coord);.

The code:

ui.R

includes a custom shiny function DragableChartOutput() which is defined in DragableFunctions.R.

library(shiny)
shinyUI( bootstrapPage( 
  fluidRow(
    column(width = 3,
           DragableChartOutput("mychart")
    ),
    column(width = 9,
           verbatimTextOutput("regression")
    )
  )
))

server.R

also basic shiny except for a custom function renderDragableChart().

library(shiny)
options(digits=2)
df <- data.frame(x = seq(20,150, length.out = 10) + rnorm(10)*8,
                 y = seq(20,150, length.out = 10) + rnorm(10)*8)
df$y[1] = df$y[1] + 80
#plot(df)
shinyServer( function(input, output, session) {

  output$mychart <- renderDragableChart({
    df
  }, r = 3, color = "purple")
  
  output$regression <- renderPrint({
    if(!is.null(input$JsData)){
      mat <- matrix(as.integer(input$JsData), ncol = 2, byrow = TRUE)
      summary(lm(mat[, 2] ~  mat[, 1]))
    }else{
      summary(lm(df$y ~  df$x))
    }
  })
})

The functions are defined in DragableFunctions.R. Note, it could also be implemented with library(htmlwidgets). I decided to implement it the long way as it isn´t much harder and you gain more understanding of the interface.

library(shiny)

dataSelect <- reactiveValues(type = "all")

# To be called from ui.R
DragableChartOutput <- function(inputId, width="500px", height="500px") {
  style <- sprintf("width: %s; height: %s;",
    validateCssUnit(width), validateCssUnit(height))
  tagList(
    tags$script(src = "d3.v3.min.js"),
    includeScript("ChartRendering.js"),
    div(id=inputId, class="Dragable", style = style,
      tag("svg", list())
    )
  )
}

# To be called from server.R
renderDragableChart <- function(expr, env = parent.frame(), quoted = FALSE, color = "orange", r = 10) {
  installExprFunction(expr, "data", env, quoted)
  function(){
    data <- lapply(1:dim(data())[1], function(idx) list(x = data()$x[idx], y = data()$y[idx], r = r))
    list(data = data, col = color)
  } 
}

Now we are only left with generating the d3.js code. This is done in ChartRendering.js. Basically the circles have to be created and "draggable functions" have to be added. As soon as a drag movement is finished we want the updated data to be send to R. This is realised in .on('dragend',.) with Shiny.onInputChange("JsData", coord);});. This data can be accessed in server.R with input$JsData.

var col = "orange";
var coord = [];
var binding = new Shiny.OutputBinding();

binding.find = function(scope) {
  return $(scope).find(".Dragable");
};

binding.renderValue = function(el, data) {
  var $el = $(el);
  var boxWidth = 600;  
  var boxHeight = 400;
  dataArray = data.data
  col = data.col
    var box = d3.select(el) 
            .append('svg')
            .attr('class', 'box')
            .attr('width', boxWidth)
            .attr('height', boxHeight);     
        var drag = d3.behavior.drag()  
        .on('dragstart', function(d, i) { 
                box.select("circle:nth-child(" + (i + 1) + ")")
                .style('fill', 'red'); 
            })
            .on('drag', function(d, i) { 
              box.select("circle:nth-child(" + (i + 1) + ")")
                .attr('cx', d3.event.x)
                .attr('cy', d3.event.y);
            })
      .on('dragend', function(d, i) { 
                circle.style('fill', col);
                coord = []
                d3.range(1, (dataArray.length + 1)).forEach(function(entry) {
                  sel = box.select("circle:nth-child(" + (entry) + ")")
                  coord = d3.merge([coord, [sel.attr("cx"), sel.attr("cy")]])                 
                })
                console.log(coord)
        Shiny.onInputChange("JsData", coord);
            });
            
        var circle = box.selectAll('.draggableCircle')  
                .data(dataArray)
                .enter()
                .append('svg:circle')
                .attr('class', 'draggableCircle')
                .attr('cx', function(d) { return d.x; })
                .attr('cy', function(d) { return d.y; })
                .attr('r', function(d) { return d.r; })
                .call(drag)
                .style('fill', col);
};

// Regsiter new Shiny binding
Shiny.outputBindings.register(binding, "shiny.Dragable");
4
  • Could the function also be used to plot lines and adapt the vertices?
    – SeGa
    Jun 22, 2018 at 18:34
  • In general yes. The plot is generated via d3.js. So it would have to be added there. Jun 22, 2018 at 19:45
  • 1
    Yes, it's a very nice feature! I didn't want to manually award the bounty, as I dont know about @savita, but your answer totally deserves it and is unrivaled anyway ;)
    – SeGa
    Jun 28, 2018 at 8:08
  • With d3 v5, I had to rename the events from dragstart and dragend to start and end, and change the line var drag = d3.behavior.drag() to var drag d3.drag().
    – MrGumble
    Dec 11, 2018 at 10:32
11

You could also do this with shiny editable shapes in plotly:

library(plotly)
library(purrr)
library(shiny)

ui <- fluidPage(
  fluidRow(
    column(5, verbatimTextOutput("summary")),
    column(7, plotlyOutput("p"))
  )
)

server <- function(input, output, session) {

  rv <- reactiveValues(
    x = mtcars$mpg,
    y = mtcars$wt
  )
  grid <- reactive({
    data.frame(x = seq(min(rv$x), max(rv$x), length = 10))
  })
  model <- reactive({
    d <- data.frame(x = rv$x, y = rv$y)
    lm(y ~ x, d)
  })

  output$p <- renderPlotly({
    # creates a list of circle shapes from x/y data
    circles <- map2(rv$x, rv$y, 
      ~list(
        type = "circle",
        # anchor circles at (mpg, wt)
        xanchor = .x,
        yanchor = .y,
        # give each circle a 2 pixel diameter
        x0 = -4, x1 = 4,
        y0 = -4, y1 = 4,
        xsizemode = "pixel", 
        ysizemode = "pixel",
        # other visual properties
        fillcolor = "blue",
        line = list(color = "transparent")
      )
    )

    # plot the shapes and fitted line
    plot_ly() %>%
      add_lines(x = grid()$x, y = predict(model(), grid()), color = I("red")) %>%
      layout(shapes = circles) %>%
      config(edits = list(shapePosition = TRUE))
  })

  output$summary <- renderPrint({a
    summary(model())
  })

  # update x/y reactive values in response to changes in shape anchors
  observe({
    ed <- event_data("plotly_relayout")
    shape_anchors <- ed[grepl("^shapes.*anchor$", names(ed))]
    if (length(shape_anchors) != 2) return()
    row_index <- unique(readr::parse_number(names(shape_anchors)) + 1)
    pts <- as.numeric(shape_anchors)
    rv$x[row_index] <- pts[1]
    rv$y[row_index] <- pts[2]
  })

}

shinyApp(ui, server)

enter image description here

1
  • Will this work with a ggplot object? Sep 30, 2021 at 5:18

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