tidy plots

This commit is contained in:
2026-02-03 21:51:29 +01:00
parent a35670aa72
commit f5b4c247b8
3 changed files with 224 additions and 117 deletions

312
plots.py
View File

@@ -435,8 +435,8 @@ class QualtricsPlotsMixin:
# Base bar chart - use y2 to explicitly start bars at domain minimum
if color_gender:
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('voice:N', title=x_label, sort='-y'),
y=alt.Y('average:Q', title=y_label, scale=alt.Scale(domain=domain)),
x=alt.X('voice:N', title=x_label, sort='-y', axis=alt.Axis(grid=False)),
y=alt.Y('average:Q', title=y_label, scale=alt.Scale(domain=domain), axis=alt.Axis(grid=True)),
y2=alt.datum(domain[0]), # Bars start at domain minimum (bottom edge)
color=alt.Color('gender:N',
scale=alt.Scale(domain=['Male', 'Female'],
@@ -449,10 +449,15 @@ class QualtricsPlotsMixin:
alt.Tooltip('gender:N', title='Gender')
]
)
# Text overlay - inherit color from bars via mark_text
text = bars.mark_text(dy=-5, fontSize=10).encode(
text=alt.Text('count:Q')
)
else:
bars = alt.Chart(stats_df).mark_bar(color=color).encode(
x=alt.X('voice:N', title=x_label, sort='-y'),
y=alt.Y('average:Q', title=y_label, scale=alt.Scale(domain=domain)),
x=alt.X('voice:N', title=x_label, sort='-y', axis=alt.Axis(grid=False)),
y=alt.Y('average:Q', title=y_label, scale=alt.Scale(domain=domain), axis=alt.Axis(grid=True)),
y2=alt.datum(domain[0]), # Bars start at domain minimum (bottom edge)
tooltip=[
alt.Tooltip('voice:N', title='Voice'),
@@ -460,17 +465,17 @@ class QualtricsPlotsMixin:
alt.Tooltip('count:Q', title='Count')
]
)
# Text overlay for counts
text = alt.Chart(stats_df).mark_text(
dy=-5,
color='black',
fontSize=10
).encode(
x=alt.X('voice:N', sort='-y'),
y=alt.Y('average:Q'),
text=alt.Text('count:Q')
)
# Text overlay for counts
text = alt.Chart(stats_df).mark_text(
dy=-5,
color='black',
fontSize=10
).encode(
x=alt.X('voice:N', sort='-y'),
y=alt.Y('average:Q'),
text=alt.Text('count:Q')
)
# Combine layers
chart = (bars + text).properties(
@@ -512,13 +517,16 @@ class QualtricsPlotsMixin:
# Convert to long format, sort by total
stats_df = pl.DataFrame(stats).to_pandas()
# Compute explicit sort order by total (descending)
sort_order = stats_df.drop_duplicates('voice').sort_values('total', ascending=False)['voice'].tolist()
# Interactive legend selection - click to filter
selection = alt.selection_point(fields=['rank'], bind='legend')
# Create stacked bar chart with interactive legend
chart = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('voice:N', title=x_label, sort=alt.EncodingSortField(field='total', op='sum', order='descending')),
y=alt.Y('count:Q', title=y_label, stack='zero'),
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('voice:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, stack='zero', axis=alt.Axis(grid=True)),
color=alt.Color('rank:N',
scale=alt.Scale(domain=['Rank 1 (1st Choice)', 'Rank 2 (2nd Choice)', 'Rank 3 (3rd Choice)'],
range=[ColorPalette.RANK_1, ColorPalette.RANK_2, ColorPalette.RANK_3]),
@@ -530,7 +538,18 @@ class QualtricsPlotsMixin:
alt.Tooltip('rank:N', title='Rank'),
alt.Tooltip('count:Q', title='Count')
]
).add_params(selection).properties(
)
# Text layer showing totals on top of bars
text = alt.Chart(stats_df).transform_filter(
alt.datum.rank == 'Rank 1 (1st Choice)'
).mark_text(dy=-10, color='black').encode(
x=alt.X('voice:N', sort=sort_order),
y=alt.Y('total:Q'),
text=alt.Text('total:Q')
)
chart = alt.layer(bars, text).add_params(selection).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
@@ -583,6 +602,9 @@ class QualtricsPlotsMixin:
# Interactive legend selection - click to filter
selection = alt.selection_point(fields=['rank'], bind='legend')
# Compute explicit sort order by total (descending)
sort_order = stats_df.drop_duplicates('item').sort_values('total', ascending=False)['item'].tolist()
if color_gender:
# Add gender_rank column for combined color encoding
stats_df['gender_rank'] = stats_df['gender'] + ' - ' + stats_df['rank']
@@ -597,9 +619,9 @@ class QualtricsPlotsMixin:
ColorPalette.GENDER_FEMALE_RANK_1, ColorPalette.GENDER_FEMALE_RANK_2, ColorPalette.GENDER_FEMALE_RANK_3
]
chart = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('item:N', title=x_label, sort=alt.EncodingSortField(field='total', order='descending')),
y=alt.Y('count:Q', title=y_label, stack='zero'),
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('item:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, stack='zero', axis=alt.Axis(grid=True)),
color=alt.Color('gender_rank:N',
scale=alt.Scale(domain=domain, range=range_colors),
legend=alt.Legend(orient='top', direction='horizontal', title=None, columns=3)),
@@ -611,15 +633,11 @@ class QualtricsPlotsMixin:
alt.Tooltip('count:Q', title='Count'),
alt.Tooltip('gender:N', title='Gender')
]
).add_params(selection).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
else:
chart = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('item:N', title=x_label, sort=alt.EncodingSortField(field='total', order='descending')),
y=alt.Y('count:Q', title=y_label, stack='zero'),
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('item:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, stack='zero', axis=alt.Axis(grid=True)),
color=alt.Color('rank:N',
scale=alt.Scale(domain=['Rank 1 (Best)', 'Rank 2', 'Rank 3'],
range=[ColorPalette.RANK_1, ColorPalette.RANK_2, ColorPalette.RANK_3]),
@@ -631,12 +649,37 @@ class QualtricsPlotsMixin:
alt.Tooltip('rank:N', title='Rank'),
alt.Tooltip('count:Q', title='Count')
]
).add_params(selection).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
# Text layer showing totals on top of bars
if color_gender:
# Create a separate chart for totals with gender coloring
text_df = stats_df.drop_duplicates('item')[['item', 'total', 'gender']]
text = alt.Chart(text_df).mark_text(dy=-10).encode(
x=alt.X('item:N', sort=sort_order),
y=alt.Y('total:Q'),
text=alt.Text('total:Q'),
color=alt.condition(
alt.datum.gender == 'Female',
alt.value(ColorPalette.GENDER_FEMALE),
alt.value(ColorPalette.GENDER_MALE)
)
)
else:
text = alt.Chart(stats_df).transform_filter(
alt.datum.rank_order == 1
).mark_text(dy=-10, color='black').encode(
x=alt.X('item:N', sort=sort_order),
y=alt.Y('total:Q'),
text=alt.Text('total:Q')
)
chart = alt.layer(bars, text).add_params(selection).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
chart = self._save_plot(chart, title)
return chart
@@ -669,6 +712,7 @@ class QualtricsPlotsMixin:
# Convert and sort
stats_df = pl.DataFrame(stats).sort('count', descending=True)
sort_order = stats_df['item'].to_list()
# Add rank column for coloring (1-3 vs 4+)
stats_df = stats_df.with_row_index('rank_index')
@@ -691,8 +735,8 @@ class QualtricsPlotsMixin:
]
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('item:N', title=x_label, sort='-y'),
y=alt.Y('count:Q', title=y_label),
x=alt.X('item:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, axis=alt.Axis(grid=True)),
color=alt.Color('gender_category:N',
scale=alt.Scale(domain=domain, range=range_colors),
legend=alt.Legend(orient='top', direction='horizontal', title=None)),
@@ -703,15 +747,16 @@ class QualtricsPlotsMixin:
]
)
# Text overlay for counts
text = alt.Chart(stats_df).mark_text(
dy=-5,
color='black',
fontSize=10
).encode(
x=alt.X('item:N', sort='-y'),
# Create text layer with gender coloring using conditional
text = alt.Chart(stats_df).mark_text(dy=-5, fontSize=10).encode(
x=alt.X('item:N', sort=sort_order),
y=alt.Y('count:Q'),
text=alt.Text('count:Q')
text=alt.Text('count:Q'),
color=alt.condition(
alt.datum.gender == 'Female',
alt.value(ColorPalette.GENDER_FEMALE),
alt.value(ColorPalette.GENDER_MALE)
)
)
chart = (bars + text).properties(
@@ -722,8 +767,8 @@ class QualtricsPlotsMixin:
else:
# Bar chart with conditional color
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X('item:N', title=x_label, sort='-y'),
y=alt.Y('count:Q', title=y_label),
x=alt.X('item:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, axis=alt.Axis(grid=True)),
color=alt.Color('category:N',
scale=alt.Scale(domain=['Top 3', 'Other'],
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
@@ -740,7 +785,7 @@ class QualtricsPlotsMixin:
color='black',
fontSize=10
).encode(
x=alt.X('item:N', sort='-y'),
x=alt.X('item:N', sort=sort_order),
y=alt.Y('count:Q'),
text=alt.Text('count:Q')
)
@@ -771,6 +816,8 @@ class QualtricsPlotsMixin:
color_gender: If True, color bars by voice gender (blue=male, pink=female).
"""
weighted_df = self._ensure_dataframe(data).to_pandas()
weighted_df.sort_values('Weighted Score', ascending=False, inplace=True)
sort_order = weighted_df['Character'].tolist()
if color_gender:
# Add gender column based on Character name
@@ -778,8 +825,8 @@ class QualtricsPlotsMixin:
# Bar chart with gender coloring
bars = alt.Chart(weighted_df).mark_bar().encode(
x=alt.X('Character:N', title=x_label, sort='-y'),
y=alt.Y('Weighted Score:Q', title=y_label),
x=alt.X('Character:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('Weighted Score:Q', title=y_label, axis=alt.Axis(grid=True)),
color=alt.Color('gender:N',
scale=alt.Scale(domain=['Male', 'Female'],
range=[ColorPalette.GENDER_MALE, ColorPalette.GENDER_FEMALE]),
@@ -793,8 +840,8 @@ class QualtricsPlotsMixin:
else:
# Bar chart
bars = alt.Chart(weighted_df).mark_bar(color=color).encode(
x=alt.X('Character:N', title=x_label, sort='-y'),
y=alt.Y('Weighted Score:Q', title=y_label),
x=alt.X('Character:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('Weighted Score:Q', title=y_label, axis=alt.Axis(grid=True)),
tooltip=[
alt.Tooltip('Character:N'),
alt.Tooltip('Weighted Score:Q', title='Score')
@@ -862,8 +909,11 @@ class QualtricsPlotsMixin:
.to_pandas()
)
# Compute explicit sort order by count (descending)
sort_order = stats_df.sort_values('count', ascending=False)[target_column].tolist()
# Add gender column for all cases when color_gender is True (needed for text layer)
if color_gender:
# Add gender column based on voice label
stats_df['gender'] = stats_df[target_column].apply(self._get_voice_gender)
# Add gender_category column for combined color encoding
stats_df['gender_category'] = stats_df['gender'] + ' - ' + stats_df['category']
@@ -875,9 +925,9 @@ class QualtricsPlotsMixin:
ColorPalette.GENDER_FEMALE, ColorPalette.GENDER_FEMALE_NEUTRAL
]
chart = alt.Chart(stats_df).mark_bar().encode(
x=alt.X(f'{target_column}:N', title=x_label, sort='-y'),
y=alt.Y('count:Q', title=y_label),
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X(f'{target_column}:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, axis=alt.Axis(grid=True)),
color=alt.Color('gender_category:N',
scale=alt.Scale(domain=domain, range=range_colors),
legend=alt.Legend(orient='top', direction='horizontal', title=None)),
@@ -886,15 +936,23 @@ class QualtricsPlotsMixin:
alt.Tooltip('count:Q', title='Selections'),
alt.Tooltip('gender:N', title='Gender')
]
).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
# Text layer with gender coloring using conditional
text = alt.Chart(stats_df).mark_text(dy=-10).encode(
x=alt.X(f'{target_column}:N', sort=sort_order),
y=alt.Y('count:Q'),
text=alt.Text('count:Q'),
color=alt.condition(
alt.datum.gender == 'Female',
alt.value(ColorPalette.GENDER_FEMALE),
alt.value(ColorPalette.GENDER_MALE)
)
)
else:
chart = alt.Chart(stats_df).mark_bar().encode(
x=alt.X(f'{target_column}:N', title=x_label, sort='-y'),
y=alt.Y('count:Q', title=y_label),
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X(f'{target_column}:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, axis=alt.Axis(grid=True)),
color=alt.Color('category:N',
scale=alt.Scale(domain=['Top 8', 'Other'],
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
@@ -903,11 +961,20 @@ class QualtricsPlotsMixin:
alt.Tooltip(f'{target_column}:N', title='Voice'),
alt.Tooltip('count:Q', title='Selections')
]
).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
# Text layer with black color
text = alt.Chart(stats_df).mark_text(dy=-10, color='black').encode(
x=alt.X(f'{target_column}:N', sort=sort_order),
y=alt.Y('count:Q'),
text=alt.Text('count:Q')
)
chart = alt.layer(bars, text).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
chart = self._save_plot(chart, title)
return chart
@@ -954,8 +1021,11 @@ class QualtricsPlotsMixin:
.to_pandas()
)
# Compute explicit sort order by count (descending)
sort_order = stats_df.sort_values('count', ascending=False)[target_column].tolist()
# Add gender column for all cases when color_gender is True (needed for text layer)
if color_gender:
# Add gender column based on voice label
stats_df['gender'] = stats_df[target_column].apply(self._get_voice_gender)
# Add gender_category column for combined color encoding
stats_df['gender_category'] = stats_df['gender'] + ' - ' + stats_df['category']
@@ -967,9 +1037,9 @@ class QualtricsPlotsMixin:
ColorPalette.GENDER_FEMALE, ColorPalette.GENDER_FEMALE_NEUTRAL
]
chart = alt.Chart(stats_df).mark_bar().encode(
x=alt.X(f'{target_column}:N', title=x_label, sort='-y'),
y=alt.Y('count:Q', title=y_label),
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X(f'{target_column}:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, axis=alt.Axis(grid=True)),
color=alt.Color('gender_category:N',
scale=alt.Scale(domain=domain, range=range_colors),
legend=alt.Legend(orient='top', direction='horizontal', title=None)),
@@ -978,15 +1048,23 @@ class QualtricsPlotsMixin:
alt.Tooltip('count:Q', title='In Top 3'),
alt.Tooltip('gender:N', title='Gender')
]
).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
# Text layer with gender coloring using conditional
text = alt.Chart(stats_df).mark_text(dy=-10).encode(
x=alt.X(f'{target_column}:N', sort=sort_order),
y=alt.Y('count:Q'),
text=alt.Text('count:Q'),
color=alt.condition(
alt.datum.gender == 'Female',
alt.value(ColorPalette.GENDER_FEMALE),
alt.value(ColorPalette.GENDER_MALE)
)
)
else:
chart = alt.Chart(stats_df).mark_bar().encode(
x=alt.X(f'{target_column}:N', title=x_label, sort='-y'),
y=alt.Y('count:Q', title=y_label),
bars = alt.Chart(stats_df).mark_bar().encode(
x=alt.X(f'{target_column}:N', title=x_label, sort=sort_order, axis=alt.Axis(grid=False)),
y=alt.Y('count:Q', title=y_label, axis=alt.Axis(grid=True)),
color=alt.Color('category:N',
scale=alt.Scale(domain=['Top 3', 'Other'],
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
@@ -995,11 +1073,20 @@ class QualtricsPlotsMixin:
alt.Tooltip(f'{target_column}:N', title='Voice'),
alt.Tooltip('count:Q', title='In Top 3')
]
).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
# Text layer with black color
text = alt.Chart(stats_df).mark_text(dy=-10, color='black').encode(
x=alt.X(f'{target_column}:N', sort=sort_order),
y=alt.Y('count:Q'),
text=alt.Text('count:Q')
)
chart = alt.layer(bars, text).properties(
title=self._process_title(title),
width=width or 800,
height=height or getattr(self, 'plot_height', 400)
)
chart = self._save_plot(chart, title)
return chart
@@ -1056,9 +1143,9 @@ class QualtricsPlotsMixin:
# Horizontal bar chart - use x2 to explicitly start bars at x=1
bars = alt.Chart(stats).mark_bar(color=ColorPalette.PRIMARY).encode(
x=alt.X('mean_score:Q', title='Average Score (1-5)', scale=alt.Scale(domain=[1, 5])),
x=alt.X('mean_score:Q', title='Average Score (1-5)', scale=alt.Scale(domain=[1, 5]), axis=alt.Axis(grid=True)),
x2=alt.datum(1), # Bars start at x=1 (left edge of domain)
y=alt.Y('Voice:N', title='Voice', sort='-x'),
y=alt.Y('Voice:N', title='Voice', sort='-x', axis=alt.Axis(grid=False)),
tooltip=[
alt.Tooltip('Voice:N'),
alt.Tooltip('mean_score:Q', title='Average', format='.2f'),
@@ -1131,8 +1218,8 @@ class QualtricsPlotsMixin:
# Conditional color based on sign
chart = alt.Chart(plot_df).mark_bar().encode(
x=alt.X('trait_display:N', title=None, axis=alt.Axis(labelAngle=0)),
y=alt.Y('correlation:Q', title='Correlation', scale=alt.Scale(domain=[-1, 1])),
x=alt.X('trait_display:N', title=None, axis=alt.Axis(labelAngle=0, grid=False)),
y=alt.Y('correlation:Q', title='Correlation', scale=alt.Scale(domain=[-1, 1]), axis=alt.Axis(grid=True)),
color=alt.condition(
alt.datum.correlation >= 0,
alt.value('green'),
@@ -1180,11 +1267,12 @@ class QualtricsPlotsMixin:
chart = alt.Chart(df.to_pandas()).mark_bar().encode(
x=alt.X('Color:N',
title=None,
axis=alt.Axis(labelAngle=0),
axis=alt.Axis(labelAngle=0, grid=False),
sort=["Green", "Blue", "Orange", "Red"]),
y=alt.Y('correlation:Q',
title='Average Correlation',
scale=alt.Scale(domain=[-1, 1])),
scale=alt.Scale(domain=[-1, 1]),
axis=alt.Axis(grid=True)),
color=alt.condition(
alt.datum.correlation >= 0,
alt.value('green'),
@@ -1240,10 +1328,23 @@ class QualtricsPlotsMixin:
.with_columns(pl.col(column).fill_null("(No Response)"))
.group_by(column)
.agg(pl.len().alias("count"))
.sort("count", descending=True)
.to_pandas()
)
# Apply sorting logic
if column == 'Age':
# Custom sort for Age ranges
# Example values: "18 to 21 years", "25 to 34 years", "70 years or more"
# Extract first number to sort by
stats_df['sort_key'] = stats_df[column].apply(
lambda x: int(re.search(r'\d+', str(x)).group()) if re.search(r'\d+', str(x)) else 999
)
# Use EncodingSortField for Age to avoid schema issues with list-based labels
sort_order = alt.EncodingSortField(field="sort_key", order="ascending")
else:
# Default sort by count descending
sort_order = '-x'
if stats_df.empty:
return alt.Chart(pd.DataFrame({'text': ['No data']})).mark_text().encode(text='text:N')
@@ -1251,22 +1352,31 @@ class QualtricsPlotsMixin:
total = stats_df['count'].sum()
stats_df['percentage'] = (stats_df['count'] / total * 100).round(1)
# Clean y-labels by replacing underscores and wrapping long text
import textwrap
stats_df['clean_label'] = stats_df[column].astype(str).str.replace('_', ' ').apply(
lambda x: textwrap.wrap(x, width=25) if isinstance(x, str) else [str(x)]
)
# Calculate max lines for height adjustment
max_lines = stats_df['clean_label'].apply(len).max() if not stats_df.empty else 1
# Generate title if not provided
if title is None:
clean_col = column.replace('_', ' ').replace('/', ' / ')
title = f"Distribution: {clean_col}"
# Calculate appropriate height based on number of categories
# Calculate appropriate height based on number of categories and wrapping
num_categories = len(stats_df)
bar_height = 18 # pixels per bar
bar_height = max(20, max_lines * 15) # pixels per bar, scale with lines
calculated_height = max(120, num_categories * bar_height + 40) # min 120px, +40 for title/padding
# Horizontal bar chart - categories on Y axis, counts on X axis
bars = alt.Chart(stats_df).mark_bar(color=ColorPalette.PRIMARY).encode(
x=alt.X('count:Q', title='Count', axis=alt.Axis(grid=False)),
y=alt.Y(f'{column}:N', title=None, sort='-x', axis=alt.Axis(labelLimit=150)),
x=alt.X('count:Q', title='Count', axis=alt.Axis(grid=True)),
y=alt.Y('clean_label:N', title=None, sort=sort_order, axis=alt.Axis(labelLimit=300, grid=False)),
tooltip=[
alt.Tooltip(f'{column}:N', title=column.replace('_', ' ')),
alt.Tooltip('clean_label:N', title=column.replace('_', ' ')),
alt.Tooltip('count:Q', title='Count'),
alt.Tooltip('percentage:Q', title='Percentage', format='.1f')
]
@@ -1282,7 +1392,7 @@ class QualtricsPlotsMixin:
color=ColorPalette.TEXT
).encode(
x='count:Q',
y=alt.Y(f'{column}:N', sort='-x'),
y=alt.Y('clean_label:N', sort=sort_order),
text='count:Q'
)
chart = (bars + text)
@@ -1335,8 +1445,8 @@ class QualtricsPlotsMixin:
plot_df = pl.DataFrame(trait_correlations).to_pandas()
chart = alt.Chart(plot_df).mark_bar().encode(
x=alt.X('trait_display:N', title=None, axis=alt.Axis(labelAngle=0)),
y=alt.Y('correlation:Q', title='Correlation', scale=alt.Scale(domain=[-1, 1])),
x=alt.X('trait_display:N', title=None, axis=alt.Axis(labelAngle=0, grid=False)),
y=alt.Y('correlation:Q', title='Correlation', scale=alt.Scale(domain=[-1, 1]), axis=alt.Axis(grid=True)),
color=alt.condition(
alt.datum.correlation >= 0,
alt.value('green'),
@@ -1516,8 +1626,8 @@ class QualtricsPlotsMixin:
x=alt.X('Trait:N',
title=x_label,
sort=trait_order,
axis=alt.Axis(labelAngle=-45, labelLimit=200)),
y=alt.Y('Count:Q', title=y_label),
axis=alt.Axis(labelAngle=-45, labelLimit=200, grid=False)),
y=alt.Y('Count:Q', title=y_label, axis=alt.Axis(grid=True)),
xOffset='Character:N',
color=alt.Color('Character:N',
scale=alt.Scale(domain=characters,
@@ -1633,8 +1743,8 @@ class QualtricsPlotsMixin:
y=alt.Y('trait:N',
title=x_label,
sort=reversed_sort,
axis=alt.Axis(labelLimit=200)),
x=alt.X('count:Q', title=y_label),
axis=alt.Axis(labelLimit=200, grid=False)),
x=alt.X('count:Q', title=y_label, axis=alt.Axis(grid=True)),
color=alt.Color('category:N',
scale=alt.Scale(
domain=['Original Trait', 'Other Trait'],
@@ -1973,8 +2083,8 @@ class QualtricsPlotsMixin:
tooltip_title = 'Mean Score' if has_means else 'Rank 1 %' if has_ranks else 'Score'
bars = alt.Chart(summary_df).mark_bar(color=ColorPalette.PRIMARY).encode(
x=alt.X('group:N', title='Group', sort='-y'),
y=alt.Y('sig_count:Q', title='# of Significant Differences'),
x=alt.X('group:N', title='Group', sort='-y', axis=alt.Axis(grid=False)),
y=alt.Y('sig_count:Q', title='# of Significant Differences', axis=alt.Axis(grid=True)),
tooltip=[
alt.Tooltip('group:N', title='Group'),
alt.Tooltip('sig_count:Q', title='Sig. Differences'),