male/female colored plots
This commit is contained in:
@@ -458,6 +458,12 @@ def _():
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return
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@app.cell
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def _():
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COLOR_GENDER = True
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return (COLOR_GENDER,)
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@app.cell
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def _():
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mo.md(r"""
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@@ -473,8 +479,8 @@ def _(S, data):
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@app.cell
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def _(S, v_18_8_3):
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S.plot_voice_selection_counts(v_18_8_3, title="Top 8 Voice Selection from 18 Voices", x_label='Voice')
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def _(COLOR_GENDER, S, v_18_8_3):
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S.plot_voice_selection_counts(v_18_8_3, title="Top 8 Voice Selection from 18 Voices", x_label='Voice', color_gender=COLOR_GENDER)
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return
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@@ -487,8 +493,8 @@ def _():
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@app.cell
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def _(S, v_18_8_3):
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S.plot_top3_selection_counts(v_18_8_3, title="Top 3 Voice Selection Counts from 8 Voices", x_label='Voice')
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def _(COLOR_GENDER, S, v_18_8_3):
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S.plot_top3_selection_counts(v_18_8_3, title="Top 3 Voice Selection Counts from 8 Voices", x_label='Voice', color_gender=COLOR_GENDER)
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return
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@@ -508,8 +514,8 @@ def _(S, data):
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@app.cell
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def _(S, top3_voices_weighted):
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S.plot_weighted_ranking_score(top3_voices_weighted, title="Most Popular Voice - Weighted Popularity Score<br>(1st = 3pts, 2nd = 2pts, 3rd = 1pt)")
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def _(COLOR_GENDER, S, top3_voices_weighted):
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S.plot_weighted_ranking_score(top3_voices_weighted, title="Most Popular Voice - Weighted Popularity Score<br>(1st = 3pts, 2nd = 2pts, 3rd = 1pt)", color_gender=COLOR_GENDER)
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return
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@@ -524,8 +530,8 @@ def _():
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@app.cell
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def _(S, top3_voices):
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S.plot_ranking_distribution(top3_voices, x_label='Voice', title="Distribution of Voice Rankings (1st, 2nd, 3rd)")
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def _(COLOR_GENDER, S, top3_voices):
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S.plot_ranking_distribution(top3_voices, x_label='Voice', title="Distribution of Top 3 Voice Rankings (1st, 2nd, 3rd)", color_gender=COLOR_GENDER)
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return
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@@ -580,8 +586,8 @@ def _():
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@app.cell
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def _(S, top3_voices):
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S.plot_most_ranked_1(top3_voices, title="Most Popular Voice<br>(Number of Times Ranked 1st)", x_label='Voice')
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def _(COLOR_GENDER, S, top3_voices):
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S.plot_most_ranked_1(top3_voices, title="Most Popular Voice<br>(Number of Times Ranked 1st)", x_label='Voice', color_gender=COLOR_GENDER)
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return
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@@ -594,10 +600,10 @@ def _():
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@app.cell
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def _(S, data):
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def _(COLOR_GENDER, S, data):
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# Get your voice scale data (from notebook)
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voice_1_10, _ = S.get_voice_scale_1_10(data)
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S.plot_average_scores_with_counts(voice_1_10, x_label='Voice', domain=[1,10], title="Voice General Impression (Scale 1-10)")
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S.plot_average_scores_with_counts(voice_1_10, x_label='Voice', domain=[1,10], title="Voice General Impression (Scale 1-10)", color_gender=COLOR_GENDER)
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return (voice_1_10,)
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@@ -21,8 +21,8 @@ def _():
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@app.cell
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def _():
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TAG_SOURCE = Path('data/reports/Perception-Research-Report_2-2_tagged.pptx')
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TAG_TARGET = Path('data/reports/Perception-Research-Report_2-2_tagged_2.pptx')
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TAG_SOURCE = Path('data/reports/Perception-Research-Report_2-2.pptx')
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TAG_TARGET = Path('data/reports/Perception-Research-Report_2-2_tagged.pptx')
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TAG_IMAGE_DIR = Path('figures/2-2-26')
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return TAG_IMAGE_DIR, TAG_SOURCE, TAG_TARGET
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@@ -43,8 +43,8 @@ def _():
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@app.cell
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def _():
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REPLACE_SOURCE = Path('data/reports/Perception-Research-Report_2-2_tagged_2.pptx')
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REPLACE_TARGET = Path('data/reports/Perception-Research-Report_2-2.pptx')
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REPLACE_SOURCE = Path('data/reports/Perception-Research-Report_2-2.pptx')
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REPLACE_TARGET = Path('data/reports/Perception-Research-Report_2-2_updated.pptx')
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NEW_IMAGES_DIR = Path('figures/2-2-26')
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return NEW_IMAGES_DIR, REPLACE_SOURCE, REPLACE_TARGET
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442
plots.py
442
plots.py
@@ -8,6 +8,7 @@ import altair as alt
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import pandas as pd
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import polars as pl
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from theme import ColorPalette
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from reference import VOICE_GENDER_MAPPING
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import hashlib
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@@ -260,6 +261,61 @@ class QualtricsPlotsMixin:
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label = label.replace('_', ' ').strip()
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return label
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def _get_voice_gender(self, voice_label: str) -> str:
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"""Get the gender of a voice from its label.
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Parameters:
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voice_label: Voice label (e.g., 'V14', 'Voice 14', etc.)
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Returns:
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'Male' or 'Female', defaults to 'Male' if not found
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"""
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# Extract voice code (e.g., 'V14' from 'Voice 14' or 'V14')
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voice_code = None
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# Try to find VXX pattern
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match = re.search(r'V(\d+)', voice_label)
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if match:
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voice_code = f"V{match.group(1)}"
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else:
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# Try to extract number and prepend V
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match = re.search(r'(\d+)', voice_label)
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if match:
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voice_code = f"V{match.group(1)}"
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if voice_code and voice_code in VOICE_GENDER_MAPPING:
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return VOICE_GENDER_MAPPING[voice_code]
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return "Male" # Default to Male if unknown
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def _get_gender_color(self, gender: str, color_type: str = "primary") -> str:
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"""Get the appropriate color based on gender.
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Parameters:
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gender: 'Male' or 'Female'
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color_type: One of 'primary', 'rank_1', 'rank_2', 'rank_3', 'neutral'
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Returns:
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Hex color string
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"""
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color_map = {
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"Male": {
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"primary": ColorPalette.GENDER_MALE,
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"rank_1": ColorPalette.GENDER_MALE_RANK_1,
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"rank_2": ColorPalette.GENDER_MALE_RANK_2,
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"rank_3": ColorPalette.GENDER_MALE_RANK_3,
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"neutral": ColorPalette.GENDER_MALE_NEUTRAL,
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},
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"Female": {
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"primary": ColorPalette.GENDER_FEMALE,
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"rank_1": ColorPalette.GENDER_FEMALE_RANK_1,
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"rank_2": ColorPalette.GENDER_FEMALE_RANK_2,
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"rank_3": ColorPalette.GENDER_FEMALE_RANK_3,
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"neutral": ColorPalette.GENDER_FEMALE_NEUTRAL,
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}
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}
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return color_map.get(gender, color_map["Male"]).get(color_type, ColorPalette.PRIMARY)
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def plot_average_scores_with_counts(
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self,
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data: pl.LazyFrame | pl.DataFrame | None = None,
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@@ -270,8 +326,13 @@ class QualtricsPlotsMixin:
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height: int | None = None,
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width: int | str | None = None,
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domain: list[float] | None = None,
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color_gender: bool = False,
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) -> alt.Chart:
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"""Create a bar plot showing average scores and count of non-null values for each column."""
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"""Create a bar plot showing average scores and count of non-null values for each column.
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Parameters:
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color_gender: If True, color bars by voice gender (blue=male, pink=female).
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"""
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df = self._ensure_dataframe(data)
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# Calculate stats for each column (exclude _recordId)
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@@ -280,10 +341,12 @@ class QualtricsPlotsMixin:
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avg_score = df[col].mean()
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non_null_count = df[col].drop_nulls().len()
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label = self._clean_voice_label(col)
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gender = self._get_voice_gender(label) if color_gender else None
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stats.append({
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'voice': label,
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'average': avg_score,
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'count': non_null_count
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'count': non_null_count,
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'gender': gender
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})
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# Convert to pandas for Altair (sort by average descending)
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@@ -293,16 +356,33 @@ class QualtricsPlotsMixin:
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domain = [stats_df['average'].min(), stats_df['average'].max()]
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# Base bar chart - use y2 to explicitly start bars at domain minimum
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bars = alt.Chart(stats_df).mark_bar(color=color).encode(
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x=alt.X('voice:N', title=x_label, sort='-y'),
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y=alt.Y('average:Q', title=y_label, scale=alt.Scale(domain=domain)),
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y2=alt.datum(domain[0]), # Bars start at domain minimum (bottom edge)
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tooltip=[
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alt.Tooltip('voice:N', title='Voice'),
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alt.Tooltip('average:Q', title='Average', format='.2f'),
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alt.Tooltip('count:Q', title='Count')
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]
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)
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if color_gender:
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bars = alt.Chart(stats_df).mark_bar().encode(
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x=alt.X('voice:N', title=x_label, sort='-y'),
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y=alt.Y('average:Q', title=y_label, scale=alt.Scale(domain=domain)),
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y2=alt.datum(domain[0]), # Bars start at domain minimum (bottom edge)
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color=alt.Color('gender:N',
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scale=alt.Scale(domain=['Male', 'Female'],
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range=[ColorPalette.GENDER_MALE, ColorPalette.GENDER_FEMALE]),
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legend=alt.Legend(orient='top', direction='horizontal', title='Gender')),
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tooltip=[
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alt.Tooltip('voice:N', title='Voice'),
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alt.Tooltip('average:Q', title='Average', format='.2f'),
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alt.Tooltip('count:Q', title='Count'),
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alt.Tooltip('gender:N', title='Gender')
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]
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)
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else:
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bars = alt.Chart(stats_df).mark_bar(color=color).encode(
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x=alt.X('voice:N', title=x_label, sort='-y'),
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y=alt.Y('average:Q', title=y_label, scale=alt.Scale(domain=domain)),
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y2=alt.datum(domain[0]), # Bars start at domain minimum (bottom edge)
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tooltip=[
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alt.Tooltip('voice:N', title='Voice'),
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alt.Tooltip('average:Q', title='Average', format='.2f'),
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alt.Tooltip('count:Q', title='Count')
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]
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)
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# Text overlay for counts
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text = alt.Chart(stats_df).mark_text(
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@@ -390,8 +470,14 @@ class QualtricsPlotsMixin:
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y_label: str = "Number of Votes",
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height: int | None = None,
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width: int | str | None = None,
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color_gender: bool = False,
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) -> alt.Chart:
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"""Create a stacked bar chart showing the distribution of rankings (1st to 3rd)."""
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"""Create a stacked bar chart showing the distribution of rankings (1st to 3rd).
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Parameters:
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color_gender: If True, color bars by voice gender with rank intensity
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(blue shades=male, pink shades=female).
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"""
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df = self._ensure_dataframe(data)
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stats = []
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@@ -406,10 +492,11 @@ class QualtricsPlotsMixin:
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if total > 0:
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label = self._clean_voice_label(col)
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stats.append({'item': label, 'rank': 'Rank 1 (Best)', 'count': r1, 'rank1': r1})
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stats.append({'item': label, 'rank': 'Rank 2', 'count': r2, 'rank1': r1})
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stats.append({'item': label, 'rank': 'Rank 3', 'count': r3, 'rank1': r1})
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# stats.append({'item': label, 'rank': 'Rank 4 (Worst)', 'count': r4, 'rank1': r1})
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gender = self._get_voice_gender(label) if color_gender else None
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stats.append({'item': label, 'rank': 'Rank 1 (Best)', 'count': r1, 'total': total, 'gender': gender, 'rank_order': 1})
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stats.append({'item': label, 'rank': 'Rank 2', 'count': r2, 'total': total, 'gender': gender, 'rank_order': 2})
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stats.append({'item': label, 'rank': 'Rank 3', 'count': r3, 'total': total, 'gender': gender, 'rank_order': 3})
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# stats.append({'item': label, 'rank': 'Rank 4 (Worst)', 'count': r4, 'total': total, 'gender': gender, 'rank_order': 4})
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if not stats:
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return alt.Chart(pd.DataFrame({'text': ['No data']})).mark_text().encode(text='text:N')
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@@ -419,25 +506,59 @@ class QualtricsPlotsMixin:
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# Interactive legend selection - click to filter
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selection = alt.selection_point(fields=['rank'], bind='legend')
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chart = alt.Chart(stats_df).mark_bar().encode(
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x=alt.X('item:N', title=x_label, sort=alt.EncodingSortField(field='rank1', order='descending')),
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y=alt.Y('count:Q', title=y_label, stack='zero'),
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color=alt.Color('rank:N',
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scale=alt.Scale(domain=['Rank 1 (Best)', 'Rank 2', 'Rank 3'],
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range=[ColorPalette.RANK_1, ColorPalette.RANK_2, ColorPalette.RANK_3]),
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legend=alt.Legend(orient='top', direction='horizontal', title=None)),
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order=alt.Order('rank:N', sort='ascending'),
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opacity=alt.condition(selection, alt.value(1), alt.value(0.2)),
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tooltip=[
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alt.Tooltip('item:N', title='Item'),
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alt.Tooltip('rank:N', title='Rank'),
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alt.Tooltip('count:Q', title='Count')
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if color_gender:
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# Add gender_rank column for combined color encoding
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stats_df['gender_rank'] = stats_df['gender'] + ' - ' + stats_df['rank']
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# Define combined domain and range for gender + rank
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domain = [
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'Male - Rank 1 (Best)', 'Male - Rank 2', 'Male - Rank 3',
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'Female - Rank 1 (Best)', 'Female - Rank 2', 'Female - Rank 3'
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]
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).add_params(selection).properties(
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title=self._process_title(title),
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width=width or 800,
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height=height or getattr(self, 'plot_height', 400)
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)
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range_colors = [
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ColorPalette.GENDER_MALE_RANK_1, ColorPalette.GENDER_MALE_RANK_2, ColorPalette.GENDER_MALE_RANK_3,
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ColorPalette.GENDER_FEMALE_RANK_1, ColorPalette.GENDER_FEMALE_RANK_2, ColorPalette.GENDER_FEMALE_RANK_3
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]
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chart = alt.Chart(stats_df).mark_bar().encode(
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x=alt.X('item:N', title=x_label, sort=alt.EncodingSortField(field='total', order='descending')),
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y=alt.Y('count:Q', title=y_label, stack='zero'),
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color=alt.Color('gender_rank:N',
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scale=alt.Scale(domain=domain, range=range_colors),
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legend=alt.Legend(orient='top', direction='horizontal', title=None, columns=3)),
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order=alt.Order('rank_order:Q', sort='ascending'),
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opacity=alt.condition(selection, alt.value(1), alt.value(0.2)),
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tooltip=[
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alt.Tooltip('item:N', title='Item'),
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alt.Tooltip('rank:N', title='Rank'),
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alt.Tooltip('count:Q', title='Count'),
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alt.Tooltip('gender:N', title='Gender')
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]
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).add_params(selection).properties(
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title=self._process_title(title),
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width=width or 800,
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height=height or getattr(self, 'plot_height', 400)
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)
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else:
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chart = alt.Chart(stats_df).mark_bar().encode(
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x=alt.X('item:N', title=x_label, sort=alt.EncodingSortField(field='total', order='descending')),
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y=alt.Y('count:Q', title=y_label, stack='zero'),
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color=alt.Color('rank:N',
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scale=alt.Scale(domain=['Rank 1 (Best)', 'Rank 2', 'Rank 3'],
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range=[ColorPalette.RANK_1, ColorPalette.RANK_2, ColorPalette.RANK_3]),
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legend=alt.Legend(orient='top', direction='horizontal', title=None)),
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order=alt.Order('rank_order:Q', sort='ascending'),
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opacity=alt.condition(selection, alt.value(1), alt.value(0.2)),
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tooltip=[
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alt.Tooltip('item:N', title='Item'),
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alt.Tooltip('rank:N', title='Rank'),
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alt.Tooltip('count:Q', title='Count')
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]
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).add_params(selection).properties(
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title=self._process_title(title),
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width=width or 800,
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height=height or getattr(self, 'plot_height', 400)
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)
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chart = self._save_plot(chart, title)
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return chart
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@@ -450,8 +571,14 @@ class QualtricsPlotsMixin:
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y_label: str = "Count of 1st Place Rankings",
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height: int | None = None,
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width: int | str | None = None,
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color_gender: bool = False,
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) -> alt.Chart:
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"""Create a bar chart showing which item was ranked #1 the most. Top 3 highlighted."""
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"""Create a bar chart showing which item was ranked #1 the most. Top 3 highlighted.
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Parameters:
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color_gender: If True, color bars by voice gender with highlight/neutral intensity
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(blue shades=male, pink shades=female).
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"""
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df = self._ensure_dataframe(data)
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stats = []
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@@ -460,7 +587,8 @@ class QualtricsPlotsMixin:
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for col in ranking_cols:
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count_rank_1 = df.filter(pl.col(col) == 1).height
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label = self._clean_voice_label(col)
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stats.append({'item': label, 'count': count_rank_1})
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gender = self._get_voice_gender(label) if color_gender else None
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stats.append({'item': label, 'count': count_rank_1, 'gender': gender})
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# Convert and sort
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stats_df = pl.DataFrame(stats).sort('count', descending=True)
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@@ -474,23 +602,51 @@ class QualtricsPlotsMixin:
|
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.alias('category')
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).to_pandas()
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# Bar chart with conditional color
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chart = alt.Chart(stats_df).mark_bar().encode(
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x=alt.X('item:N', title=x_label, sort='-y'),
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y=alt.Y('count:Q', title=y_label),
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color=alt.Color('category:N',
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scale=alt.Scale(domain=['Top 3', 'Other'],
|
||||
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
|
||||
legend=None),
|
||||
tooltip=[
|
||||
alt.Tooltip('item:N', title='Item'),
|
||||
alt.Tooltip('count:Q', title='1st Place Votes')
|
||||
if color_gender:
|
||||
# Add gender_category column for combined color encoding
|
||||
stats_df['gender_category'] = stats_df['gender'] + ' - ' + stats_df['category']
|
||||
|
||||
# Define combined domain and range for gender + category
|
||||
domain = ['Male - Top 3', 'Male - Other', 'Female - Top 3', 'Female - Other']
|
||||
range_colors = [
|
||||
ColorPalette.GENDER_MALE, ColorPalette.GENDER_MALE_NEUTRAL,
|
||||
ColorPalette.GENDER_FEMALE, ColorPalette.GENDER_FEMALE_NEUTRAL
|
||||
]
|
||||
).properties(
|
||||
title=self._process_title(title),
|
||||
width=width or 800,
|
||||
height=height or getattr(self, 'plot_height', 400)
|
||||
)
|
||||
|
||||
chart = 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),
|
||||
color=alt.Color('gender_category:N',
|
||||
scale=alt.Scale(domain=domain, range=range_colors),
|
||||
legend=alt.Legend(orient='top', direction='horizontal', title=None)),
|
||||
tooltip=[
|
||||
alt.Tooltip('item:N', title='Item'),
|
||||
alt.Tooltip('count:Q', title='1st Place Votes'),
|
||||
alt.Tooltip('gender:N', title='Gender')
|
||||
]
|
||||
).properties(
|
||||
title=self._process_title(title),
|
||||
width=width or 800,
|
||||
height=height or getattr(self, 'plot_height', 400)
|
||||
)
|
||||
else:
|
||||
# Bar chart with conditional color
|
||||
chart = 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),
|
||||
color=alt.Color('category:N',
|
||||
scale=alt.Scale(domain=['Top 3', 'Other'],
|
||||
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
|
||||
legend=None),
|
||||
tooltip=[
|
||||
alt.Tooltip('item:N', title='Item'),
|
||||
alt.Tooltip('count:Q', title='1st Place Votes')
|
||||
]
|
||||
).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
|
||||
@@ -504,19 +660,43 @@ class QualtricsPlotsMixin:
|
||||
color: str = ColorPalette.PRIMARY,
|
||||
height: int | None = None,
|
||||
width: int | str | None = None,
|
||||
color_gender: bool = False,
|
||||
) -> alt.Chart:
|
||||
"""Create a bar chart showing the weighted ranking score for each character."""
|
||||
"""Create a bar chart showing the weighted ranking score for each character.
|
||||
|
||||
Parameters:
|
||||
color_gender: If True, color bars by voice gender (blue=male, pink=female).
|
||||
"""
|
||||
weighted_df = self._ensure_dataframe(data).to_pandas()
|
||||
|
||||
# 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),
|
||||
tooltip=[
|
||||
alt.Tooltip('Character:N'),
|
||||
alt.Tooltip('Weighted Score:Q', title='Score')
|
||||
]
|
||||
)
|
||||
if color_gender:
|
||||
# Add gender column based on Character name
|
||||
weighted_df['gender'] = weighted_df['Character'].apply(self._get_voice_gender)
|
||||
|
||||
# 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),
|
||||
color=alt.Color('gender:N',
|
||||
scale=alt.Scale(domain=['Male', 'Female'],
|
||||
range=[ColorPalette.GENDER_MALE, ColorPalette.GENDER_FEMALE]),
|
||||
legend=alt.Legend(orient='top', direction='horizontal', title='Gender')),
|
||||
tooltip=[
|
||||
alt.Tooltip('Character:N'),
|
||||
alt.Tooltip('Weighted Score:Q', title='Score'),
|
||||
alt.Tooltip('gender:N', title='Gender')
|
||||
]
|
||||
)
|
||||
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),
|
||||
tooltip=[
|
||||
alt.Tooltip('Character:N'),
|
||||
alt.Tooltip('Weighted Score:Q', title='Score')
|
||||
]
|
||||
)
|
||||
|
||||
# Text overlay
|
||||
text = bars.mark_text(
|
||||
@@ -545,8 +725,14 @@ class QualtricsPlotsMixin:
|
||||
y_label: str = "Number of Times Chosen",
|
||||
height: int | None = None,
|
||||
width: int | str | None = None,
|
||||
color_gender: bool = False,
|
||||
) -> alt.Chart:
|
||||
"""Create a bar plot showing the frequency of voice selections."""
|
||||
"""Create a bar plot showing the frequency of voice selections.
|
||||
|
||||
Parameters:
|
||||
color_gender: If True, color bars by voice gender with highlight/neutral intensity
|
||||
(blue shades=male, pink shades=female).
|
||||
"""
|
||||
df = self._ensure_dataframe(data)
|
||||
|
||||
if target_column not in df.columns:
|
||||
@@ -573,22 +759,52 @@ class QualtricsPlotsMixin:
|
||||
.to_pandas()
|
||||
)
|
||||
|
||||
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),
|
||||
color=alt.Color('category:N',
|
||||
scale=alt.Scale(domain=['Top 8', 'Other'],
|
||||
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
|
||||
legend=None),
|
||||
tooltip=[
|
||||
alt.Tooltip(f'{target_column}:N', title='Voice'),
|
||||
alt.Tooltip('count:Q', title='Selections')
|
||||
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']
|
||||
|
||||
# Define combined domain and range for gender + category
|
||||
domain = ['Male - Top 8', 'Male - Other', 'Female - Top 8', 'Female - Other']
|
||||
range_colors = [
|
||||
ColorPalette.GENDER_MALE, ColorPalette.GENDER_MALE_NEUTRAL,
|
||||
ColorPalette.GENDER_FEMALE, ColorPalette.GENDER_FEMALE_NEUTRAL
|
||||
]
|
||||
).properties(
|
||||
title=self._process_title(title),
|
||||
width=width or 800,
|
||||
height=height or getattr(self, 'plot_height', 400)
|
||||
)
|
||||
|
||||
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),
|
||||
color=alt.Color('gender_category:N',
|
||||
scale=alt.Scale(domain=domain, range=range_colors),
|
||||
legend=alt.Legend(orient='top', direction='horizontal', title=None)),
|
||||
tooltip=[
|
||||
alt.Tooltip(f'{target_column}:N', title='Voice'),
|
||||
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)
|
||||
)
|
||||
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),
|
||||
color=alt.Color('category:N',
|
||||
scale=alt.Scale(domain=['Top 8', 'Other'],
|
||||
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
|
||||
legend=None),
|
||||
tooltip=[
|
||||
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)
|
||||
)
|
||||
|
||||
chart = self._save_plot(chart, title)
|
||||
return chart
|
||||
@@ -602,8 +818,14 @@ class QualtricsPlotsMixin:
|
||||
y_label: str = "Count of Mentions in Top 3",
|
||||
height: int | None = None,
|
||||
width: int | str | None = None,
|
||||
color_gender: bool = False,
|
||||
) -> alt.Chart:
|
||||
"""Question: Which 3 voices are chosen the most out of 18?"""
|
||||
"""Question: Which 3 voices are chosen the most out of 18?
|
||||
|
||||
Parameters:
|
||||
color_gender: If True, color bars by voice gender with highlight/neutral intensity
|
||||
(blue shades=male, pink shades=female).
|
||||
"""
|
||||
df = self._ensure_dataframe(data)
|
||||
|
||||
if target_column not in df.columns:
|
||||
@@ -629,22 +851,52 @@ class QualtricsPlotsMixin:
|
||||
.to_pandas()
|
||||
)
|
||||
|
||||
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),
|
||||
color=alt.Color('category:N',
|
||||
scale=alt.Scale(domain=['Top 3', 'Other'],
|
||||
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
|
||||
legend=None),
|
||||
tooltip=[
|
||||
alt.Tooltip(f'{target_column}:N', title='Voice'),
|
||||
alt.Tooltip('count:Q', title='In Top 3')
|
||||
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']
|
||||
|
||||
# Define combined domain and range for gender + category
|
||||
domain = ['Male - Top 3', 'Male - Other', 'Female - Top 3', 'Female - Other']
|
||||
range_colors = [
|
||||
ColorPalette.GENDER_MALE, ColorPalette.GENDER_MALE_NEUTRAL,
|
||||
ColorPalette.GENDER_FEMALE, ColorPalette.GENDER_FEMALE_NEUTRAL
|
||||
]
|
||||
).properties(
|
||||
title=self._process_title(title),
|
||||
width=width or 800,
|
||||
height=height or getattr(self, 'plot_height', 400)
|
||||
)
|
||||
|
||||
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),
|
||||
color=alt.Color('gender_category:N',
|
||||
scale=alt.Scale(domain=domain, range=range_colors),
|
||||
legend=alt.Legend(orient='top', direction='horizontal', title=None)),
|
||||
tooltip=[
|
||||
alt.Tooltip(f'{target_column}:N', title='Voice'),
|
||||
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)
|
||||
)
|
||||
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),
|
||||
color=alt.Color('category:N',
|
||||
scale=alt.Scale(domain=['Top 3', 'Other'],
|
||||
range=[ColorPalette.PRIMARY, ColorPalette.NEUTRAL]),
|
||||
legend=None),
|
||||
tooltip=[
|
||||
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)
|
||||
)
|
||||
|
||||
chart = self._save_plot(chart, title)
|
||||
return chart
|
||||
|
||||
18
theme.py
18
theme.py
@@ -59,6 +59,24 @@ class ColorPalette:
|
||||
"#457B9D", # Steel Blue
|
||||
]
|
||||
|
||||
# Gender-based colors (Male = Blue tones, Female = Pink tones)
|
||||
# Primary colors by gender
|
||||
GENDER_MALE = "#0077B6" # Medium Blue (same as PRIMARY)
|
||||
GENDER_FEMALE = "#B6007A" # Medium Pink
|
||||
|
||||
# Ranking colors by gender (Darkest -> Lightest)
|
||||
GENDER_MALE_RANK_1 = "#004C6D" # Dark Blue
|
||||
GENDER_MALE_RANK_2 = "#0077B6" # Medium Blue
|
||||
GENDER_MALE_RANK_3 = "#669BBC" # Light Steel Blue
|
||||
|
||||
GENDER_FEMALE_RANK_1 = "#6D004C" # Dark Pink
|
||||
GENDER_FEMALE_RANK_2 = "#B6007A" # Medium Pink
|
||||
GENDER_FEMALE_RANK_3 = "#BC669B" # Light Pink
|
||||
|
||||
# Neutral colors by gender (for non-highlighted items)
|
||||
GENDER_MALE_NEUTRAL = "#B8C9D9" # Grey-Blue
|
||||
GENDER_FEMALE_NEUTRAL = "#D9B8C9" # Grey-Pink
|
||||
|
||||
|
||||
def jpmc_altair_theme():
|
||||
"""JPMC brand theme for Altair charts."""
|
||||
|
||||
7
utils.py
7
utils.py
@@ -508,9 +508,16 @@ def update_ppt_alt_text(ppt_path: Union[str, Path], image_source_dir: Union[str,
|
||||
print(f"Error updating alt text for {original_path}: {e}")
|
||||
|
||||
else:
|
||||
# Check if image already has alt text set - if so, skip reporting as unmatched
|
||||
existing_alt = _get_shape_alt_text(shape)
|
||||
if existing_alt:
|
||||
# Image already has alt text, no need to report as unmatched
|
||||
continue
|
||||
|
||||
shape_id = getattr(shape, 'shape_id', getattr(shape, 'id', 'Unknown ID'))
|
||||
shape_name = shape.name if shape.name else f"Unnamed Shape (ID: {shape_id})"
|
||||
hash_type = "pHash" if use_perceptual_hash else "SHA1"
|
||||
|
||||
unmatched_images.append({
|
||||
'slide': i+1,
|
||||
'shape_name': shape_name,
|
||||
|
||||
Reference in New Issue
Block a user