I generated a scatterplot in HTML format using plotly and a generic dataframe. I am aware that it is possible to highlight (with a different color for example) certain data points before generating the plot HTML. However, I wonder if it is possible to add an element to the HTML file that would enable a user to find/highlight a certain data point based on its text label after the plot has been produced.

The code I used to produce the dataframe and scatter:

tab <- data.frame(sample.id = pca$sample.id,
                  EV1 = pca$eigenvect[, 1],
                  EV2 = pca$eigenvect[, 2],

p <- plot_ly(tab, x=tab$EV1, y=tab$EV2, text=tab$sample.id)
p <- layout(p, title="PCA", xaxis=list(title="PC 1"),
          yaxis=list(title="PC 2"))

htmlwidgets::saveWidget(as.widget(p), paste(output_name, ".html", sep=""))

As far as I know there is not builtin functionality in Plotly but you just need a few lines of Javascript code to get the functionality.

Plotly stores the data in a application/json object in the HTML file. You can get the data via

var data = JSON.parse(document.querySelectorAll("script[type='application/json']")[0].innerHTML);

The text elements are stored in


where i is the trace number and j is point number.

Now we need a text field and a button, we can use htmltools for that purpose

p <- htmlwidgets::appendContent(p, htmltools::tags$input(id='inputText', value='Merc', ''), htmltools::tags$button(id='buttonSearch', 'Search'))

Let's add a eventlister to the button which triggers a hover event of the first point of the first trace.

p <- htmlwidgets::appendContent(p, htmltools::tags$script(HTML(
  'document.getElementById("buttonSearch").addEventListener("click", function() 
    var myDiv = document.getElementsByClassName("js-plotly-plot")[0]
    Plotly.Fx.hover(myDiv, [{curveNumber: 0, pointNumber: 0}]);

And the whole code which searches for through all text labels and triggers a hover event when the entered text is found in the label.

enter image description here


pcaCars <- princomp(mtcars, cor = TRUE)
carsHC <- hclust(dist(pcaCars$scores), method = "ward.D2")

carsDf <- data.frame(pcaCars$scores, "cluster" = factor(carsClusters))
carsClusters <- cutree(carsHC, k = 3)

carsDf <- transform(carsDf, cluster_name = paste("Cluster", carsClusters))

p <- plot_ly(carsDf, x = ~Comp.1 , y = ~Comp.2, text = rownames(carsDf),
             mode = "markers", color = ~cluster_name, marker = list(size = 11), type = 'scatter', mode = 'markers')

p <- htmlwidgets::appendContent(p, htmltools::tags$input(id='inputText', value='Merc', ''), htmltools::tags$button(id='buttonSearch', 'Search'))
p <- htmlwidgets::appendContent(p, htmltools::tags$script(HTML(
  'document.getElementById("buttonSearch").addEventListener("click", function()
      var i = 0;
     var j = 0;
      var found = [];
      var myDiv = document.getElementsByClassName("js-plotly-plot")[0]
      var data = JSON.parse(document.querySelectorAll("script[type=\'application/json\']")[0].innerHTML);
      for (i = 0 ;i < data.x.data.length; i += 1) {
        for (j = 0; j < data.x.data[i].text.length; j += 1) {
          if (data.x.data[i].text[j].indexOf(document.getElementById("inputText").value) !== -1) {
            found.push({curveNumber: i, pointNumber: j});
      Plotly.Fx.hover(myDiv, found);

htmlwidgets::saveWidget(p, paste('pca', ".html", sep=""))

The PCA implementation was modified from here.

  • Awesome. This was exactly what I needed. Thank you very much. Mar 1 '17 at 23:28

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.