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⚙️ Model Configuration

📊 Forecast Results

🎯 Model Explainability

Understand why the model makes these predictions

📐 Feature Importance (TFT VSN)

Variable Selection Network learns which features matter most.

🧠 Temporal Attention

Which historical days influence each forecast point.

📈 Why This Accuracy?

Historical Patterns
+35%
Weekly Seasonality
+25%
Rolling Statistics
+20%
Trend Component
+12%
External Features
+8%

🎓 Conformal Prediction

Distribution-free coverage guarantee.

P(Y ∈ [L, U]) ≥ 1 - α

Unlike traditional intervals, conformal prediction provides finite-sample guarantees without distributional assumptions.

95.2%Coverage
12.4Avg Width

📋 Performance Metrics

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RMSE
Root Mean Square Error - penalizes large errors
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MAE
Mean Absolute Error - average deviation
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MAPE
Mean Absolute Percentage Error
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Coverage
% of actuals within prediction interval