--- library_name: sklearn tags: - fairrelay - logistics - xgboost - sklearn - tabular-classification - fairness datasets: - Cainiao-AI/LaDe-D license: mit --- # FairRelay — Fairness Classification Model (ACCEPT vs REOPTIMIZE) (v2) Part of the **[FairRelay](https://github.com/MUTHUKUMARAN-K-1/FairRelay)** AI logistics platform. ## Model Description Fairness Classification Model (ACCEPT vs REOPTIMIZE) **Version**: v2 — Retrained with realistic, harder data to prevent overfitting and improve real-world robustness. **Type**: XGBoost Pipeline (StandardScaler + XGBoost) **Task**: Classification ### v2 Improvements Over v1 - **Hidden confounders**: Weather, traffic, building access affect ground truth but aren't in features - **Heteroscedastic noise**: Harder cases have more unpredictable outcomes - **Non-linear interactions**: Weight × stairs, packages × rain compound effects - **Measurement error**: Features have ±5-15% sensor/estimation noise - **Boundary ambiguity**: Near-threshold cases have noisy labels (simulating dispatcher disagreement) - **Diverse distributions**: Normal, skewed, bimodal, heavy-tail effort patterns ## Performance - **Accuracy**: 0.9000 - **F1 Score**: 0.9369 - **Precision**: 0.9266 - **Recall**: 0.9474 - **Train-Test Gap**: 0.0211 - **CV F1 (5-fold)**: 0.9401 ± 0.0012 ## Input Features | Feature | Importance | |---------|-----------| | `num_drivers` | 0.0255 | | `avg_effort` | 0.0151 | | `std_dev` | 0.1706 | | `max_gap` | 0.5543 | | `gini_index` | 0.0585 | | `min_effort` | 0.0152 | | `max_effort` | 0.0209 | | `outlier_count` | 0.0605 | | `pct_above_avg` | 0.0138 | | `effort_cv` | 0.0334 | | `skewness` | 0.0145 | | `kurtosis` | 0.0176 | ## Usage ```python from skops import io as sio from huggingface_hub import hf_hub_download import numpy as np model_path = hf_hub_download(repo_id="muthuk1/fairrelay-fairness-classifier", filename="model.skops") untrusted = sio.get_untrusted_types(file=model_path) model = sio.load(model_path, trusted=untrusted) prediction = model.predict(features) ``` ## Part of FairRelay FairRelay is an AI-powered logistics platform for fair load consolidation and dispatch. Built for **LogisticsNow Hackathon 2026** — Challenge #5: AI Load Consolidation. ## License MIT