The Culture: Trend Forecasting Model (XGBoost)

Multi-class XGBoost classifier predicting a fashion trend's lifecycle stage (emerging, growing, peak, stable, declining) from engagement and velocity signals.

Overall accuracy

0.2024

Per-class metrics

  • declining: precision=0.219, recall=0.389, f1=0.280
  • emerging: precision=0.143, recall=0.083, f1=0.105
  • growing: precision=0.333, recall=0.125, f1=0.182
  • peak: precision=0.118, recall=0.125, f1=0.121
  • stable: precision=0.211, recall=0.286, f1=0.242

Features used

Categorical (one-hot): ['garment_type', 'color', 'archetype_affinity', 'season', 'region', 'trend_velocity', 'price_tier'] Numeric: ['mention_count', 'save_count', 'search_volume_index', 'post_engagement_avg', 'week_over_week_growth_pct', 'thrift_availability_score', 'influencer_adoption_score']

Usage

See the inference / Hugging Face call cells in the training notebook for a full working example.

Part of The Culture ML model suite.

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