Plotly:如何使用热图制作带注释的混淆矩阵?

Plotly: How to make an annotated confusion matrix using a heatmap?

我喜欢使用 Plotly 来可视化所有内容,我正在尝试通过 Plotly 来可视化混淆矩阵,这是我的代码:

def plot_confusion_matrix(y_true, y_pred, class_names):
    confusion_matrix = metrics.confusion_matrix(y_true, y_pred)
    confusion_matrix = confusion_matrix.astype(int)

    layout = {
        "title": "Confusion Matrix", 
        "xaxis": {"title": "Predicted value"}, 
        "yaxis": {"title": "Real value"}
    }

    fig = go.Figure(data=go.Heatmap(z=confusion_matrix,
                                    x=class_names,
                                    y=class_names,
                                    hoverongaps=False),
                    layout=layout)
    fig.show()

结果是

我怎样才能在相应的单元格内显示数字而不是悬停,就像这样

您可以将带注释的热图与 ff.create_annotated_heatmap() 结合使用来获得:

完整代码:

import plotly.figure_factory as ff

z = [[0.1, 0.3, 0.5, 0.2],
     [1.0, 0.8, 0.6, 0.1],
     [0.1, 0.3, 0.6, 0.9],
     [0.6, 0.4, 0.2, 0.2]]

x = ['healthy', 'multiple diseases', 'rust', 'scab']
y =  ['healthy', 'multiple diseases', 'rust', 'scab']

# change each element of z to type string for annotations
z_text = [[str(y) for y in x] for x in z]

# set up figure 
fig = ff.create_annotated_heatmap(z, x=x, y=y, annotation_text=z_text, colorscale='Viridis')

# add title
fig.update_layout(title_text='<i><b>Confusion matrix</b></i>',
                  #xaxis = dict(title='x'),
                  #yaxis = dict(title='x')
                 )

# add custom xaxis title
fig.add_annotation(dict(font=dict(color="black",size=14),
                        x=0.5,
                        y=-0.15,
                        showarrow=False,
                        text="Predicted value",
                        xref="paper",
                        yref="paper"))

# add custom yaxis title
fig.add_annotation(dict(font=dict(color="black",size=14),
                        x=-0.35,
                        y=0.5,
                        showarrow=False,
                        text="Real value",
                        textangle=-90,
                        xref="paper",
                        yref="paper"))

# adjust margins to make room for yaxis title
fig.update_layout(margin=dict(t=50, l=200))

# add colorbar
fig['data'][0]['showscale'] = True
fig.show()

正如@vestland 所说,您可以使用 plotly 注释图形。热图可以作为任何一种绘图图使用。这是从混淆矩阵(基本上只是一个带数字的二维向量)绘制热图的代码。

def plot_confusion_matrix(cm, labels, title):
# cm : confusion matrix list(list)
# labels : name of the data list(str)
# title : title for the heatmap
data = go.Heatmap(z=cm, y=labels, x=labels)
annotations = []
for i, row in enumerate(cm):
    for j, value in enumerate(row):
        annotations.append(
            {
                "x": labels[i],
                "y": labels[j],
                "font": {"color": "white"},
                "text": str(value),
                "xref": "x1",
                "yref": "y1",
                "showarrow": False
            }
        )
layout = {
    "title": title,
    "xaxis": {"title": "Predicted value"},
    "yaxis": {"title": "Real value"},
    "annotations": annotations
}
fig = go.Figure(data=data, layout=layout)
return fig

我发现@vestland 的策略最有用。

但是,与传统的混淆矩阵不同,正确的模型预测是沿着右上角的对角线,而不是左上角。

这可以通过反转混淆矩阵的所有索引值轻松解决,如下所示:

import plotly.figure_factory as ff

z = [[0.1, 0.3, 0.5, 0.2],
     [1.0, 0.8, 0.6, 0.1],
     [0.1, 0.3, 0.6, 0.9],
     [0.6, 0.4, 0.2, 0.2]]

# invert z idx values
z = z[::-1]

x = ['healthy', 'multiple diseases', 'rust', 'scab']
y =  x[::-1].copy() # invert idx values of x

# change each element of z to type string for annotations
z_text = [[str(y) for y in x] for x in z]

# set up figure 
fig = ff.create_annotated_heatmap(z, x=x, y=y, annotation_text=z_text, colorscale='Viridis')

# add title
fig.update_layout(title_text='<i><b>Confusion matrix</b></i>',
                  #xaxis = dict(title='x'),
                  #yaxis = dict(title='x')
                 )

# add custom xaxis title
fig.add_annotation(dict(font=dict(color="black",size=14),
                        x=0.5,
                        y=-0.15,
                        showarrow=False,
                        text="Predicted value",
                        xref="paper",
                        yref="paper"))

# add custom yaxis title
fig.add_annotation(dict(font=dict(color="black",size=14),
                        x=-0.35,
                        y=0.5,
                        showarrow=False,
                        text="Real value",
                        textangle=-90,
                        xref="paper",
                        yref="paper"))

# adjust margins to make room for yaxis title
fig.update_layout(margin=dict(t=50, l=200))

# add colorbar
fig['data'][0]['showscale'] = True
fig.show()