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Update app.py
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app.py
CHANGED
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@@ -66,6 +66,78 @@ selected_dataset_ai = "Volkswagen Customers"
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df_builder_pivot_str = ""
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def plot_model_results(results_df, average_value, title, model_type):
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"""
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Plot model results with specific orders and colors for Trust and NPS models.
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@@ -516,20 +588,20 @@ def analyze_excel_single(file_path):
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# plot trust
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# Get n_samples from output text
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n_samples_trust = output_text.split(": Trust")[1]
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n_samples_trust = n_samples_trust.split("Analysis based on ")[1]
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n_samples_trust = n_samples_trust.split("observations")[0]
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results_df_trust = pd.read_csv(csv_output_path_trust)
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results_df_trust["Importance_percent"] = results_df_trust["Importance"] * 100
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average_value_trust = results_df_trust["Importance_percent"].mean()
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results_df_trust,
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f"Trust Drivers: {file_name}",
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"Trust",
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)
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display_trust_score_1()
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df_builder_pivot_str = ""
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def plot_bucket_fullness(driver_df, title):
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# Set image path
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image_path = "./images/image.png"
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# Load background image
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try:
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img = Image.open(image_path)
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except FileNotFoundError:
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raise FileNotFoundError(f"❌ Error: Background image '{image_path}' not found!")
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# Trust categories (fixed order)
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categories = [
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"Vision Trust", "Development Trust", "Benefit Trust",
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"Competence Trust", "Stability Trust", "Relationship Trust"
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]
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# Extract fullness values from the DataFrame
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percentages = driver_df.mean().tolist()
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# Colors for each bubble
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colors = ["#DF8859", "#E3B05B", "#418387", "#6D93AB", "#375570", "#C63F48"]
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# Bubble positions (aligned with background)
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bubble_positions = [
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(0.66, 1.20), # Vision (moved up)
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(1.4, -0.10), # Development
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(0.66, -1.10), # Benefit
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(-0.70, -1.20), # Competence
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(-1.35, 0.0), # Stability
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(-0.70, 1.15) # Relationship (shifted left)
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]
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# Scale bubble sizes dynamically based on fullness values
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max_size = 0.35 # Maximum bubble size
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min_size = 0.18 # Minimum bubble size
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min_value, max_value = min(percentages), max(percentages)
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# Normalize values to fit in the bubble size range
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bubble_sizes = [
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min_size + (max_size - min_size) * ((p - min_value) / (max_value - min_value + 1e-5))
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for p in percentages
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]
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# Create the figure
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fig, ax = plt.subplots(figsize=(8, 8))
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ax.set_xlim(-2, 2)
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ax.set_ylim(-2, 2)
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ax.axis("off")
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# Display background image
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ax.imshow(img, extent=[-1.5, 1.5, -1.5, 1.5])
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# Draw bubbles with dynamically scaled sizes
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for i, (x, y) in enumerate(bubble_positions):
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size = bubble_sizes[i]
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circle = patches.Circle((x, y), size, facecolor=colors[i], alpha=1.0, lw=1.5)
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ax.add_patch(circle)
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# **Add percentage inside the bubble**
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ax.text(
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x, y, f"{percentages[i]:.1f}%", fontsize=12, fontweight="bold",
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ha="center", va="center", color="white"
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)
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# Save plot to a buffer
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img_buffer = io.BytesIO()
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plt.savefig(img_buffer, format="png", bbox_inches="tight", facecolor=fig.get_facecolor())
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img_buffer.seek(0)
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plt.close(fig)
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# Convert to PIL Image for Gradio display
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return Image.open(img_buffer)
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def plot_model_results(results_df, average_value, title, model_type):
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"""
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Plot model results with specific orders and colors for Trust and NPS models.
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# plot trust
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# Get n_samples from output text
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n n_samples_trust = output_text.split(": Trust")[1]
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n_samples_trust = n_samples_trust.split("Analysis based on ")[1]
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n_samples_trust = n_samples_trust.split("observations")[0]
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results_df_trust = pd.read_csv(csv_output_path_trust)
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results_df_trust["Importance_percent"] = results_df_trust["Importance"] * 100
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average_value_trust = results_df_trust["Importance_percent"].mean()
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# Instead of calling plot_model_results for Trust Drivers,
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# call the separate bubble plot function:
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img_trust = plot_trust_driver_bubbles(
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results_df_trust,
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f"Trust Drivers: {file_name}"
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)
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display_trust_score_1()
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