Reputation: 1850
Given the data frame below:
import pandas as pd
df = pd.DataFrame({
"n_index": list(range(5)) * 2,
"logic": [True] * 5 + [False] * 5,
"value": list(range(5)) + list(range(5, 10))
})
I'd like to use color and only color to distinguish logic
in a line plot, and mark points on value
s. Specifically, this is my desired output (plotted by R ggplot2):
ggplot(aes(x = n_index, y = value, color = logic), data = df) + geom_line() + geom_point()
I tried to do the same thing with seaborn.lineplot
, and I specified markers=True
but there was no marker:
import seaborn as sns
sns.set()
sns.lineplot(x="n_index", y="value", hue="logic", markers=True, data=df)
I then tried adding style="logic"
in the code, now the markers showed up:
sns.lineplot(x="n_index", y="value", hue="logic", style="logic", markers=True, data=df)
Also I tried forcing the markers to be in the same style:
sns.lineplot(x="n_index", y="value", hue="logic", style="logic", markers=["o", "o"], data=df)
It seems like that I have to specify style
before I can have markers. However, that causes undesired plot output since I don't want to use two aesthetic dimensions on one data dimension. That violates the principles of aesthetic mapping.
Is there any way I can have the lines and points all in the same style but in different colors with seaborn
or Python visualization? (seaborn
is preferred - I don't like the looping way ofmatplotlib
.)
Upvotes: 35
Views: 125578
Reputation: 391
See the problem is that people are getting confused between 'markers' and 'marker'. To enable 'marker' set 'marker='o'' not markers.
sns.lineplot(x=range(1,100),y=err,marker='o')
Upvotes: 29
Reputation: 21
You can set marker='o' in sns.linePlot to draw the marker as a circle for all the different hues, in the appropriate color.
sns.lineplot(x="n_index", y="value", hue="logic", marker="o", data=df)
Upvotes: 2
Reputation: 339052
You can directly use pandas for plotting.
pandas via groupby
fig, ax = plt.subplots()
df.groupby("logic").plot(x="n_index", y="value", marker="o", ax=ax)
ax.legend(["False","True"])
The drawback here would be that the legend needs to be created manually.
pandas via pivot
df.pivot_table("value", "n_index", "logic").plot(marker="o")
seaborn lineplot
For seaborn lineplot it seems a single marker is enough to get the desired result.
sns.lineplot(x="n_index", y="value", hue="logic", data=df, marker="o")
Upvotes: 42
Reputation: 61900
You need to set dashes
parameter to False
also specify the style of the grid to "darkgrid"
:
import pandas as pd
import seaborn as sns
import matplotlib.pyplot as plt
df = pd.DataFrame({
"n_index": list(range(5)) * 2,
"logic": [True] * 5 + [False] * 5,
"value": list(range(5)) + list(range(5, 10))
})
sns.set_style("darkgrid")
sns.lineplot(x="n_index", dashes=False, y="value", hue="logic", style="logic", markers=["o", "o"], data=df)
plt.show()
Upvotes: 5