예제 #1
0
    def _payoff_heatmap(
            self,
            data: dataType,
            names: namesType,
            title: titleType = None,
            ax: matplotlib.axes.SubplotBase = None
    ) -> matplotlib.figure.Figure:
        """Generic heatmap plot"""

        if ax is None:
            _, ax = plt.subplots()
        else:
            ax = ax

        figure = ax.get_figure()
        width = max(self.nplayers / 4, 12)
        height = width
        figure.set_size_inches(width, height)
        matplotlib_version = matplotlib.__version__
        cmap = default_cmap(matplotlib_version)
        mat = ax.matshow(data, cmap=cmap)
        ax.set_xticks(range(self.result_set.nplayers))
        ax.set_yticks(range(self.result_set.nplayers))
        ax.set_xticklabels(names, rotation=90)
        ax.set_yticklabels(names)
        ax.tick_params(axis='both', which='both', labelsize=16)
        if title:
            ax.set_xlabel(title)
        figure.colorbar(mat, ax=ax)
        plt.tight_layout()
        return figure
예제 #2
0
파일: plot.py 프로젝트: seanhouser/Axelrod
    def _payoff_heatmap(
            self,
            data: dataType,
            names: namesType,
            title: titleType = None,
            ax: matplotlib.axes.SubplotBase = None
    ) -> matplotlib.figure.Figure:
        """Generic heatmap plot"""
        if not self.matplotlib_installed:
            return None

        if ax is None:
            _, ax = plt.subplots()
        else:
            ax = ax

        figure = ax.get_figure()
        width = max(self.nplayers / 4, 12)
        height = width
        figure.set_size_inches(width, height)
        cmap = default_cmap()
        mat = ax.matshow(data, cmap=cmap)
        plt.xticks(range(self.result_set.nplayers))
        plt.yticks(range(self.result_set.nplayers))
        ax.set_xticklabels(names, rotation=90)
        ax.set_yticklabels(names)
        plt.tick_params(axis='both', which='both', labelsize=16)
        if title:
            plt.xlabel(title)
        # Make the colorbar match up with the plot
        divider = make_axes_locatable(plt.gca())
        cax = divider.append_axes("right", "5%", pad="3%")
        plt.colorbar(mat, cax=cax)
        return figure
예제 #3
0
파일: plot.py 프로젝트: Nikoleta-v3/Axelrod
    def _payoff_heatmap(
        self,
        data: dataType,
        names: namesType,
        title: titleType = None,
        ax: matplotlib.axes.SubplotBase = None,
    ) -> matplotlib.figure.Figure:
        """Generic heatmap plot"""

        if ax is None:
            _, ax = plt.subplots()
        else:
            ax = ax

        figure = ax.get_figure()
        width = max(self.num_players / 4, 12)
        height = width
        figure.set_size_inches(width, height)
        matplotlib_version = matplotlib.__version__
        cmap = default_cmap(matplotlib_version)
        mat = ax.matshow(data, cmap=cmap)
        ax.set_xticks(range(self.result_set.num_players))
        ax.set_yticks(range(self.result_set.num_players))
        ax.set_xticklabels(names, rotation=90)
        ax.set_yticklabels(names)
        ax.tick_params(axis="both", which="both", labelsize=16)
        if title:
            ax.set_xlabel(title)
        figure.colorbar(mat, ax=ax)
        plt.tight_layout()
        return figure
예제 #4
0
    def stackplot(
        self,
        eco,
        title: titleType = None,
        logscale: bool = True,
        ax: matplotlib.axes.SubplotBase = None,
    ) -> matplotlib.figure.Figure:

        populations = eco.population_sizes

        if ax is None:
            _, ax = plt.subplots()
        else:
            ax = ax

        figure = ax.get_figure()
        turns = range(len(populations))
        pops = [
            [populations[iturn][ir] for iturn in turns]
            for ir in self.result_set.ranking
        ]
        ax.stackplot(turns, *pops)

        ax.yaxis.tick_left()
        ax.yaxis.set_label_position("right")
        ax.yaxis.labelpad = 25.0

        ax.set_ylim([0.0, 1.0])
        ax.set_ylabel("Relative population size")
        ax.set_xlabel("Turn")
        if title is not None:
            ax.set_title(title)

        trans = transforms.blended_transform_factory(ax.transAxes, ax.transData)
        ticks = []
        for i, n in enumerate(self.result_set.ranked_names):
            x = -0.01
            y = (i + 0.5) * 1 / self.result_set.num_players
            ax.annotate(
                n,
                xy=(x, y),
                xycoords=trans,
                clip_on=False,
                va="center",
                ha="right",
                fontsize=5,
            )
            ticks.append(y)
        ax.set_yticks(ticks)
        ax.tick_params(direction="out")
        ax.set_yticklabels([])

        if logscale:
            ax.set_xscale("log")

        plt.tight_layout()
        return figure
예제 #5
0
파일: plot.py 프로젝트: Nikoleta-v3/Axelrod
    def stackplot(
        self,
        eco,
        title: titleType = None,
        logscale: bool = True,
        ax: matplotlib.axes.SubplotBase = None,
    ) -> matplotlib.figure.Figure:

        populations = eco.population_sizes

        if ax is None:
            _, ax = plt.subplots()
        else:
            ax = ax

        figure = ax.get_figure()
        turns = range(len(populations))
        pops = [
            [populations[iturn][ir] for iturn in turns]
            for ir in self.result_set.ranking
        ]
        ax.stackplot(turns, *pops)

        ax.yaxis.tick_left()
        ax.yaxis.set_label_position("right")
        ax.yaxis.labelpad = 25.0

        ax.set_ylim([0.0, 1.0])
        ax.set_ylabel("Relative population size")
        ax.set_xlabel("Turn")
        if title is not None:
            ax.set_title(title)

        trans = transforms.blended_transform_factory(ax.transAxes, ax.transData)
        ticks = []
        for i, n in enumerate(self.result_set.ranked_names):
            x = -0.01
            y = (i + 0.5) * 1 / self.result_set.num_players
            ax.annotate(
                n,
                xy=(x, y),
                xycoords=trans,
                clip_on=False,
                va="center",
                ha="right",
                fontsize=5,
            )
            ticks.append(y)
        ax.set_yticks(ticks)
        ax.tick_params(direction="out")
        ax.set_yticklabels([])

        if logscale:
            ax.set_xscale("log")

        plt.tight_layout()
        return figure
예제 #6
0
def plt_settings_axes(g: matplotlib.axes.SubplotBase,
                      count_df: dask.dataframe.core.DataFrame,
                      grouping_col: list, facet: str, hide_xtitle: bool,
                      log_y: bool) -> None:
    """
    Helper function for plot settings, used in function plt_generic_1d.
    Modifies parameter g for setting titles, axis, formats, etc.
    :param g: matplotlib Axes which will be modified directly in the function.
    :param count_df: pandas dataframe which is plotted.
    :param grouping_col: column for x axis.
    :param facet: parameter passed by function plt_generic_1d, giving information
    on whether we are plotting and average or a count value (on y axis).
    :param hide_xtitle: if set to True, doesn't display title for x axis 
    :param log_y: if set to True, plot in logarithmic scale (for y axis)
    :return: nothing. changes are done directly by modifying parameter g.
    """

    if facet not in ['freq', 'avg']:
        raise ValueError(
            'Parameter facet should be a string of value either "freq" or "avg"'
        )

    # SET X AXIS
    # Labels
    # no particular setup if number of labels is less than the first threshold
    num_xlabels = len(count_df[grouping_col])

    if num_xlabels < LABEL_THRESHOLD_ROTATION:
        g.set_xticklabels(count_df[grouping_col])

    # rotate by 90 degrees if number of labels is between first and second threshold
    elif num_xlabels < LABEL_THRESHOLD_SELECT:
        g.set_xticklabels(count_df[grouping_col], rotation=90)

    # display only certain labels (and rotate by 45 degrees) if number of labels is higher
    else:
        number_of_steps = num_xlabels / 50

        l = np.arange(0, num_xlabels, number_of_steps)

        pos = (l / num_xlabels) * (max(g.get_xticks()) - min(g.get_xticks()))
        g.set_xticks(pos)
        g.set_xticklabels(count_df[grouping_col].iloc[l], rotation=45)

    # Title
    # option to remove the x axis title (when its obvious, e.g. for the years)
    if hide_xtitle:
        g.set_xlabel('')
    else:
        g.set_xlabel(grouping_col)

    # SET Y AXIS
    # log scale option
    if log_y:
        g.set_yscale("log")
        if facet == 'freq':
            g.set_ylabel('# content items (log scale)')
        elif facet == 'avg':
            g.set_ylabel('title length (log scale)')

    else:
        if facet == 'freq':
            g.set_ylabel('# content items')
        elif facet == 'avg':
            g.set_ylabel('title length')

    # Labels
    ylabels = ['{:,.0f}'.format(y) for y in g.get_yticks()]
    g.set_yticklabels(ylabels)

    # Plot Title
    if facet == 'freq':
        g.set_title('Number of content items by %s' % grouping_col)
    elif facet == 'avg':
        g.set_title('Average title length of content items by %s' %
                    grouping_col)