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I'm using matplotlib in python to build a scatter plot.

suppose I have the following 2 data lists.



then I use X as the X-axis value and Y as the Y-axis value to make a scatter plot. So I will have a picture with 5 scattering points on it, right?

Now the question: is it possible to build connection for these 5 points with the actual data. For example, when I click on one of these 5 points, it can tell me what original data I have used to make this point?

thanks in advance

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I don't think so: matplotlib is still mainly a plotting package, not an interactive analysis package. Though it may incorporate such functionality one day. –  Evert Nov 9 '12 at 10:52

2 Answers 2

up vote 8 down vote accepted

Using a slightly modified version of Joe Kington's DataCursor:

import matplotlib.pyplot as plt
import matplotlib.mlab as mlab
import matplotlib.cbook as cbook
import numpy as np

def fmt(x, y):
    return 'x: {x:0.2f}\ny: {y:0.2f}'.format(x = x, y = y)

class DataCursor(object):
    # http://stackoverflow.com/a/4674445/190597
    """A simple data cursor widget that displays the x,y location of a
    matplotlib artist when it is selected."""
    def __init__(self, artists, x = [], y = [], tolerance = 5, offsets = (-20, 20),
                 formatter = fmt, display_all = False):
        """Create the data cursor and connect it to the relevant figure.
        "artists" is the matplotlib artist or sequence of artists that will be 
        "tolerance" is the radius (in points) that the mouse click must be
            within to select the artist.
        "offsets" is a tuple of (x,y) offsets in points from the selected
            point to the displayed annotation box
        "formatter" is a callback function which takes 2 numeric arguments and
            returns a string
        "display_all" controls whether more than one annotation box will
            be shown if there are multiple axes.  Only one will be shown
            per-axis, regardless. 
        self._points = np.column_stack((x,y))
        self.formatter = formatter
        self.offsets = offsets
        self.display_all = display_all
        if not cbook.iterable(artists):
            artists = [artists]
        self.artists = artists
        self.axes = tuple(set(art.axes for art in self.artists))
        self.figures = tuple(set(ax.figure for ax in self.axes))

        self.annotations = {}
        for ax in self.axes:
            self.annotations[ax] = self.annotate(ax)

        for artist in self.artists:
        for fig in self.figures:
            fig.canvas.mpl_connect('pick_event', self)

    def annotate(self, ax):
        """Draws and hides the annotation box for the given axis "ax"."""
        annotation = ax.annotate(self.formatter, xy = (0, 0), ha = 'right',
                xytext = self.offsets, textcoords = 'offset points', va = 'bottom',
                bbox = dict(boxstyle = 'round,pad=0.5', fc = 'yellow', alpha = 0.5),
                arrowprops = dict(arrowstyle = '->', connectionstyle = 'arc3,rad=0')
        return annotation

    def snap(self, x, y):
        """Return the value in self._points closest to (x, y).
        idx = np.nanargmin(((self._points - (x,y))**2).sum(axis = -1))
        return self._points[idx]
    def __call__(self, event):
        """Intended to be called through "mpl_connect"."""
        # Rather than trying to interpolate, just display the clicked coords
        # This will only be called if it's within "tolerance", anyway.
        x, y = event.mouseevent.xdata, event.mouseevent.ydata
        annotation = self.annotations[event.artist.axes]
        if x is not None:
            if not self.display_all:
                # Hide any other annotation boxes...
                for ann in self.annotations.values():
            # Update the annotation in the current axis..
            x, y = self.snap(x, y)
            annotation.xy = x, y
            annotation.set_text(self.formatter(x, y))


fig = plt.figure()
ax = fig.add_subplot(1, 1, 1)
scat = ax.scatter(x, y)
DataCursor(scat, x, y)


enter image description here

You can click on any of the points and the balloon will show the underlying data values.

My slight modification to the DataCursor was to add the snap method, which ensures that the data point displayed came from the original data set, rather than the location where the mouse actually clicked.

If you have scipy installed, you might prefer this version of the Cursor, which makes the balloon follow the mouse (without clicking):

import matplotlib.pyplot as plt
import numpy as np
import scipy.spatial as spatial

def fmt(x, y):
    return 'x: {x:0.2f}\ny: {y:0.2f}'.format(x=x, y=y)

class FollowDotCursor(object):
    """Display the x,y location of the nearest data point."""
    def __init__(self, ax, x, y, tolerance=5, formatter=fmt, offsets=(-20, 20)):
            x = np.asarray(x, dtype='float')
        except (TypeError, ValueError):
            x = np.asarray(mdates.date2num(x), dtype='float')
        y = np.asarray(y, dtype='float')
        self._points = np.column_stack((x, y))
        self.offsets = offsets
        self.scale = x.ptp()
        self.scale = y.ptp() / self.scale if self.scale else 1
        self.tree = spatial.cKDTree(self.scaled(self._points))
        self.formatter = formatter
        self.tolerance = tolerance
        self.ax = ax
        self.fig = ax.figure
        self.dot = ax.scatter(
            [x.min()], [y.min()], s=130, color='green', alpha=0.7)
        self.annotation = self.setup_annotation()
        plt.connect('motion_notify_event', self)

    def scaled(self, points):
        points = np.asarray(points)
        return points * (self.scale, 1)

    def __call__(self, event):
        ax = self.ax
        # event.inaxes is always the current axis. If you use twinx, ax could be
        # a different axis.
        if event.inaxes == ax:
            x, y = event.xdata, event.ydata
        elif event.inaxes is None:
            inv = ax.transData.inverted()
            x, y = inv.transform([(event.x, event.y)]).ravel()
        annotation = self.annotation
        x, y = self.snap(x, y)
        annotation.xy = x, y
        annotation.set_text(self.formatter(x, y))
        self.dot.set_offsets((x, y))
        bbox = ax.viewLim

    def setup_annotation(self):
        """Draw and hide the annotation box."""
        annotation = self.ax.annotate(
            '', xy=(0, 0), ha = 'right',
            xytext = self.offsets, textcoords = 'offset points', va = 'bottom',
            bbox = dict(
                boxstyle='round,pad=0.5', fc='yellow', alpha=0.75),
            arrowprops = dict(
                arrowstyle='->', connectionstyle='arc3,rad=0'))
        return annotation

    def snap(self, x, y):
        """Return the value in self.tree closest to x, y."""
        dist, idx = self.tree.query(self.scaled((x, y)), k=1, p=1)
            return self._points[idx]
        except IndexError:
            # IndexError: index out of bounds
            return self._points[0]


fig = plt.figure()
ax = fig.add_subplot(1, 1, 1)
ax.scatter(x, y)
cursor = FollowDotCursor(ax, x, y)

enter image description here

share|improve this answer
I would recommend using nanargmin instead of argmin in the "idx = np.argmin" line, but then again I like my code to be robust to the occasional NaN (and actually had this come up when doing something similar). If you don't, then it'll fail silently on any array with a NaN as the argmin will pick NaN, which will cause the annotation not to write :) –  Ezekiel Kruglick Jan 22 '13 at 5:39
@darkgreen: Thanks! That is an improvement. –  HappyLeapSecond Jan 22 '13 at 12:50

Can do this using mpld3 now in a few lines:


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